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Dietary iron interacts with diet composition to modulate the endocannabinoidome and the gut microbiome in mice

Published online by Cambridge University Press:  14 February 2025

Fredy Alexander Guevara Agudelo
Affiliation:
Centre Nutrition, santé et société (NUTRISS), et Institut sur la Nutrition et les aliments fonctionnels (INAF), Université Laval, Québec, Canada Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada École de nutrition, Faculté des sciences de l’agriculture et de l’alimentation, Université Laval, Québec, Canada
Nadine Leblanc
Affiliation:
Centre Nutrition, santé et société (NUTRISS), et Institut sur la Nutrition et les aliments fonctionnels (INAF), Université Laval, Québec, Canada Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada
Isabelle Bourdeau-Julien
Affiliation:
Centre Nutrition, santé et société (NUTRISS), et Institut sur la Nutrition et les aliments fonctionnels (INAF), Université Laval, Québec, Canada Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada École de nutrition, Faculté des sciences de l’agriculture et de l’alimentation, Université Laval, Québec, Canada
Gabrielle St-Arnaud
Affiliation:
Centre Nutrition, santé et société (NUTRISS), et Institut sur la Nutrition et les aliments fonctionnels (INAF), Université Laval, Québec, Canada Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada École de nutrition, Faculté des sciences de l’agriculture et de l’alimentation, Université Laval, Québec, Canada
Fadil Dahhani
Affiliation:
Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada Faculté de médecine, Institut universitaire de cardiologie et pneumologie de Québec, Université Laval, Québec, Canada
Nicolas Flamand
Affiliation:
Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada Faculté de médecine, Institut universitaire de cardiologie et pneumologie de Québec, Université Laval, Québec, Canada
Alain Veilleux
Affiliation:
Centre Nutrition, santé et société (NUTRISS), et Institut sur la Nutrition et les aliments fonctionnels (INAF), Université Laval, Québec, Canada Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada École de nutrition, Faculté des sciences de l’agriculture et de l’alimentation, Université Laval, Québec, Canada
Vincenzo Di Marzo
Affiliation:
Centre Nutrition, santé et société (NUTRISS), et Institut sur la Nutrition et les aliments fonctionnels (INAF), Université Laval, Québec, Canada Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada École de nutrition, Faculté des sciences de l’agriculture et de l’alimentation, Université Laval, Québec, Canada Faculté de médecine, Institut universitaire de cardiologie et pneumologie de Québec, Université Laval, Québec, Canada
Frédéric Raymond*
Affiliation:
Centre Nutrition, santé et société (NUTRISS), et Institut sur la Nutrition et les aliments fonctionnels (INAF), Université Laval, Québec, Canada Chaire d’excellence en recherche du Canada sur l’axe microbiome – endocannabinoidome dans la santé métabolique (CERC-MEND), Québec, Canada École de nutrition, Faculté des sciences de l’agriculture et de l’alimentation, Université Laval, Québec, Canada
*
Corresponding author: Frédéric Raymond; Email: frederic.raymond@fsaa.ulaval.ca

Abstract

The endocannabinoidome (eCBome) and the gut microbiota have been implicated in diet-induced obesity and impaired metabolism. While the eCBome and the gut microbiome are known to respond to diet macronutrient composition, interaction with micronutrient intake has been relatively unexplored. Iron (Fe) is an essential micronutrient for the function of enzymes involved in energy and lipid metabolism. Here, we evaluated how 28 days of Fe depletion and enrichment, in interaction with Low Fat-Low Sucrose (LFLS) or High Fat-High Sucrose (HFHS) diets, affect the host via the eCBome, and modulate intestinal gut microbial communities. Circulating levels of N-oleoyl-ethanolamine (OEA) showed an elevation associated with Fe-enriched LFLS diet, while the Fe-depleted HFHS diet showed an elevation of N-arachidonoyl-ethanolamine (anandamide, AEA) and a decrease of circulating linoleic acid. In parallel, the response of intestinal inflammatory mediators to Fe in the diet showed decreased levels of prostaglandins PGE1, PGE3, and 1a,1b-dihomo PGF2α in the caecum. Individual differences in microbial taxa were less pronounced in the ileum than in the caecum, where Eubacterium coprostanoligenes group showed an increase in relative abundance associated with Fe-depleted LFLS diets. In conclusion, our study shows that Fe intake modulates the response to the macronutrient composition of the diet in mice.

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Research Article
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© The Author(s), 2025. Published by Cambridge University Press in association with The Nutrition Society

Introduction

Iron (Fe) is a fundamental micronutrient that plays a role in oxygen transport (Lakhal-Littleton and Robbins, Reference Lakhal-Littleton and Robbins2017), the synthesis of metabolic enzymes (Cerami, Reference Cerami2017), cellular respiration (Oexle et al., Reference Oexle, Gnaiger and Weiss1999), and the maintenance of normal immune function (Ni et al., Reference Ni, Yuan, Kuang, Li, Zhou, Di and Scindia2022). Fe mediates electron transfer and oxygen supply in oxidation–reduction reactions which, although vital for maintaining normal cellular metabolism, can also result in the generation of toxic reactive oxygen species ROS (Hentze et al., Reference Hentze, Muckenthaler and Andrews2004). Fe is obtained from the diet in different forms and can be classified into two types: heme-Fe and non-heme Fe. Heme-Fe is found mainly in animal products and is the most bioavailable form, with absorption rates between 15% and 35%. This form of Fe is readily absorbed but accounts for only 5%–10% in most diets.

Obesity is associated with low-grade chronic inflammation (Ellulu et al., Reference Ellulu, Patimah, Khaza’ai, Rahmat and Abed2017) and over the last few years, it has been reported that this condition alters Fe metabolism. In adults and children, obesity is linked to hypoferraemia, impaired Fe absorption, and lower Fe stores despite adequate dietary Fe intake (Baumgartner et al., Reference Baumgartner, Smuts, Aeberli, Malan, Tjalsma and Zimmermann2013). In particular, individuals with obesity or combined chronic inflammatory diseases are more likely to have hypoferraemia, which could be associated with Fe deprivation caused by the inflammatory response (Yanoff et al., Reference Yanoff, Menzie, Denkinger, Sebring, McHugh, Remaley and Yanovski2007). Reduced plasma ferritin has been previously observed to improve nonalcoholic fatty liver disease in individuals with obesity, suggesting that it is essential to consider the Fe status in the treatment of obesity-related metabolic dysfunction (Moore Heslin et al., Reference Moore Heslin, O’donnell, Buffini, Nugent, Walton, Flynn and McNulty2021). Recent studies have emphasized the importance of Fe in the regulation of lipid homeostasis (Rodríguez-Pérez et al., Reference Rodríguez-Pérez, Vrhovnik, González-Alzaga, Fernández, Martin-Olmedo, Olea, Fiket, Kniewald and Arrebola2018). Indeed, both Fe insufficiency, especially in severe obesity (Aigner et al., Reference Aigner, Feldman and Datz2014) and Fe overload syndrome has been well-studied in association with obesity-related diseases (Moore Heslin et al., Reference Moore Heslin, O’donnell, Buffini, Nugent, Walton, Flynn and McNulty2021).

Host-microbiota interactions are directly influenced by Fe, which alters bacterial growth in the intestine. Both deficiency and excess of Fe are important in terms of gut microbiota dysbiosis. Dysbiosis has been associated with a number of human diseases, such as autoimmune disorders (Collado et al., Reference Collado, Rautava, Isolauri and Salminen2015), increased vulnerability to cancers (Viaud et al., Reference Viaud, Daillère, Boneca, Lepage, Pittet, Ghiringhelli, Trinchieri, Goldszmid and Zitvoge2014), irritable bowel syndrome (Kostic et al., Reference Kostic, Xavier and Gevers2014), and the progression of obesity (Boulangé et al., Reference Boulangé, Neves, Chilloux, Nicholson and Dumas2016). Gut microbiota and their metabolites could potentially exert an influence on inflammatory conditions in the host (Feng et al., Reference Feng, Chen and Wang2018). Indeed, it is well known that gut microbiota plays a major role in the development of food absorption and low-grade inflammation (Al Bander et al., Reference Al Bander, Dekker Nitert, Mousa and Naderpoor2020). Although there are increased amounts of dietary Fe in the colon, bacteria may still compete to incorporate Fe due to the formation of Fe complexes with other food components and the low solubility of ferric Fe due to a higher pH in the colon (Kortman et al., Reference Kortman, Raffatellu, Swinkels and Tjalsma2014). Immune-mediated inflammatory diseases, such as Crohn’s disease (CD), ulcerative colitis (UC), multiple sclerosis (MS), and rheumatoid arthritis (RA), modify the composition of the gut microbiota and Fe has also been linked to the development of these diseases (Kaitha et al., Reference Kaitha, Bashir and Ali2015).

Fe is an essential cofactor for peroxidase, lipoxygenase, and cyclooxygenase enzymes involved in the catabolism of arachidonic acid. Arachidonic acid (AA) plays essential roles, especially in cell signalling through its role as a precursor of numerous eicosanoids such as prostaglandins and leukotrienes. Indeed, previous studies have shown that Fe-citrate but not sodium citrate (Na-citrate) downregulates the production of PGE2 (Hisakawa et al., Reference Hisakawa, Nishiya, Tahara, Matsumori and Hashimoto1998). Moreover, AA is also a molecular block of the endocannabinoids 2-arachidonoyl-glycerol (2-AG) and N-arachidonoyl-ethanolamine (Anandamide or AEA), that have signalling functions in appetite regulation and energy metabolism, in relation to the modulation of neurotransmitter release (Almeida et al., Reference Almeida, Dias-Rocha, Calviño and Trevenzoli2022), which could involve physiological and pathophysiological phenomena.

The endocannabinoid system (eCBs) is a signalling system comprised of endogenous lipids mediators, the endocannabinoids AEA (also known as anandamide) and 2-AG, which bind to two G protein-coupled receptors, the cannabinoid type 1 and type 2 (CB1 and CB2) receptors, expressed throughout the body. The endocannabinoidome (eCBome) is defined as an extension of the eCBs that also includes the congeners of AEA and 2-AG, the N-acyl-ethanolamines (NAEs) and 2-monoacyl-glycerols (2-MAGs), respectively, together with additional enzymes and receptors related to these molecules (Iannotti and Di Marzo, Reference Iannotti and Di Marzo2021). Endocannabinoids and their congeners are synthesized from membrane phospholipid precursors containing the corresponding fatty acids either esterified to the 2-hydroxy group of glycerol in, usually, phosphatidylinositol, for 2-MAGs, or amidated by the NH2-group of phosphatidylethanolamine, for NAEs (Simard et al., Reference Simard, Archambault, Lavoie, Dumais, Di Marzo and Flamand2022). The eCBome is involved in several physiological processes such as satiety, energy control, and other essential functions in metabolic health (Silvestri and Di Marzo, Reference Silvestri and Di Marzo2013). For instance, N-oleoyl-ethanolamine (OEA) can inhibit food intake, while palmitoylethanolamide (PEA) has anti-inflammatory activity through the activation of several receptors including peroxisome proliferator-activated receptor α (PPARα) (Alhouayek and Muccioli, Reference Alhouayek and Muccioli2014). The eCBome mediates a number of physiological and pathophysiological responses in the intestine via activation of the cannabinoid receptors, TRPV channels, and several GPR, for example, maintaining homeostasis in the gut by controlling hypercontractility and permeability, and promoting regeneration after injury (Taschler et al., Reference Taschler, Hasenoehrl, Storr and Schicho2017). The small intestine serves both as an organ for digestion and absorption of food, and for signalling to the brain and peripheral organs about the amount of incoming food (Psichas et al., Reference Psichas, Reimann and Gribble2015). NAEs and 2-MAGs may participate in the regulation of gut–brain signalling in relation to the control of food intake.

The crosstalk between the intestinal eCBome and gut microbiota regulates many gastrointestinal functions, such as hormone secretion, intestinal permeability, motility, immune response, and nutrient absorption (Cuddihey et al., Reference Cuddihey, Macnaughton and Sharkey2022). There are numerous environmental and host genetic factors that can impact on the structure of the intestinal microbiota, but diet is considered to be the main driver (Moles and Otaegui, Reference Moles and Otaegui2020). Studies have been focused on exploring the impact of macronutrients, such as carbohydrates and proteins, on colonic and faecal bacterial populations (Castonguay-paradis et al., Reference Castonguay-paradis, Lacroix, Rochefort, Parent, Perron, Martin, Lamarche, Raymond, Flamand, Di Marzo and Veilleux2020; Rowland et al., Reference Rowland, Gibson, Heinken, Scott, Swann, Thiele and Tuohy2018). However, there have been substantially fewer investigations on the modulatory effects of micronutrients. Previous studies have demonstrated that lipid mediators, including the eCBome, can be modulated by micronutrients in interaction with the macronutrient composition of the diet (Guevara Agudelo et al., Reference Guevara Agudelo, Leblanc, Bourdeau-Julien, St-Arnaud, Lacroix, Martin, Flamand, Veilleux, Di Marzo and Raymond2022).

In this work, we investigated how diets depleted (12 mg/kg) or enriched (150 mg/kg) in Fe modulate the eCBome and gut microbiome response to a Low Fat-Low Sucrose (LFLS) or High Fat-High Sucrose (HFHS) diet in an obesity mice model. Intake of Fe was chosen to represent low and high Fe consumption without inducing deficiency or toxicity, thus covering the full range of safe dietary intake (Asperti et al., Reference Asperti, Gryzik, Brilli, Castagna, Corbella, Gottardo, Girelli, Tarantino, Arosio and Poli2018; B R Blakley, Reference Blakley and Hamilton1988; Nutrition, N. R. C. (US) Subcommittee on Laboratory Animal Nutrition, Reference Nutrition1995). Our hypothesis is that the host response to diet macronutrient composition will be affected by Fe intake. Specifically, we studied the response of the circulating eCBome, as well as the ileum and caecum eCBome, microbiome, and inflammation mediators. Special attention is given to the intestinal response to dietary conditions, as the intestine is the first organ to be exposed to the diet. Experiments were conducted with male and female mice to examine the impact of Fe and diet formulation on gut microbiota and eCBome. The data were then stratified to assess the influence of sex on the responses of mice to Fe. Our results highlight the complexity of studying dietary components, as many interactions were observed between Fe intake and diet macronutrient composition.

Materials and methods

Animals, diets, and housing

The study was approved by the Université Laval animal ethics committee (CPAUL 2019-006). Forty-eight 6-week-old C57BL/6 J male and female mice were purchased from Jackson Laboratory (USA) and were individually housed in the animal facility of the Institute of Nutrition and Functional Foods (INAF), in standard cages under controlled temperature (22 °C) and relative humidity (50%) with a 12 h day/night cycle. At arrival, all mice were acclimated to their new environment for a one-week adaptation period, during which they received a normal chow diet (AIN-93G-purified diet #110700, Dyets Inc., Bethlehem, PA, USA). Following this time, mice were randomly assigned to four groups (n = 12 per group, 6 males and 6 females). The groups were defined according to four diet designs. Supplementary Table S1 presents the formulation for the four diet groups set as follows: Enriched (150 mg/kg) and depleted (12 mg/kg) concentrations of Fe in combination with High Fat-High Sucrose (HFHS: 23.6% fat, 17% sucrose, Research Diets Inc., NJ, USA), and Low Fat-Low Sucrose (LFLS: 4.3% fat, 7% sucrose, Research Diets Inc., NJ, USA). In this study, Fe was provided as ferric citrate. The diets were formulated to be isonitrogenous, although different in energy and lipid content between HFHS and LFLS. Total energy in diets was determined with an adiabatic Parr 6300 calorimeter (Parr Instrument Company, Moline, IL, USA) and was similar among LFLS and among HFHS diets (Fe-depleted LFLS 3967.15 cal/g; Fe-enriched LFLS 3906.3 cal/g; Fe-depleted HFHS 4936.85 cal/g; Fe-enriched HFHS 4886.9 cal/g). Dietary protein content was determined by combustion (Dumas method) using a LECO FP-528 apparatus (LECO Corporation, St. Joseph, MI, USA) and was 14.75% [w/w] for Fe-depleted LFLS, 14.31% for Fe-enriched LFLS, 18.79% for Fe-depleted HFHS, and 18.16% for Fe-enriched HFHS. Dietary fat content was measured with an ANKOMXT10 Extractor (ANKOM Technology, Macedon, NY, USA) and was different between the diets, reflecting the fact that we have low-fat and high-fat diet (Fe-depleted 12 mg/kg LFLS 3.81% [w/w]; Fe-enriched 150 mg/kg LFLS 4.25% [w/w]; Fe-depleted 12 mg/kg HFHS 21.62% [w/w]; Fe-enriched 150 mg/kg HFHS 22.13% [w/w]). Animals were fed ad libitum with these diets for 28 days and had access to ad libitum water. Body weight and food intake were monitored twice weekly. Mice were killed by cardiac puncture. Whole blood was collected in K3-EDTA tubes to obtain plasma (1780g, 10 min). Ileum and caecum tissues were collected at 10 and 2 cm from the ileocaecal junction, respectively. Luminal contents were collected in PBS by gentle scraping. Tissue samples from both ileum and caecum were treated with RNAlater Stabilization Solution (ThermoFisher, USA) to preserve the integrity of RNA until its subsequent extraction. All samples were stored at −80 °C until further analysis.

Endocannabinoidome quantification

Lipids were extracted from plasma samples (40 μL) as in (Turcotte et al., Reference Turcotte, Archambault, Dumais, Martin, Blanchet, Bissonnette, Ohashi, Yamamoto, Laviolette, Veilleux, Boulet, Marzo and Flamand2020). In brief, plasma samples were diluted to a volume 500 μL with Tris buffer (50 mM, pH = 7). A total of 5 μL of deuterated standards were added to each sample and then vortexed. Two millilitres of toluene were then added, and samples were vortexed for 30 s. Samples were next placed in a dry ice-ethanol bath to freeze the aqueous phase. The toluene phase was then collected and evaporated to dryness under a stream of nitrogen. Ileum and caecum samples (5–10 mg) were extracted and processed exactly as in (Manca et al., Reference Manca, Boubertakh, Leblanc, Deschênes, Lacroix, Martin, Houde, Veilleux, Flamand, Muccioli, Raymond, Cani, Di Marzo and Silvestri2020). All lipid extracts were then resuspended with 60 μL of mobile phases (50% Solvent A and 50% solvent B) and then injected (40 μL) on the injected onto an HPLC column (Kinetex C8, 150 × 2.1 mm, 2.6 μM; Phenomenex) as described before (Everard et al., Reference Everard, Plovier, Rastelli, Van Hul, de Wouters d’Oplinter, Geurts, Druart, Robine, Delzenne, Muccioli, De Vos, Luquet, Flamand, Marzo and Cani2019). Quantification of eCBome-related mediators was performed using a Shimadzu 8050 triple quadrupole mass spectrometer. The following metabolites were quantified: 1/2-oleoyl-glycerol (2-OG), 1/2-linoleoyl-glycerol (LG), 1/2-arachidonoylglycerol (2-AG), 1/2-eicosapentaenoyl-glycerol (2-EPG), 1/2-docosapentaenoyl(n-3)-glycerol (2-DPG), 2-docosahexaenoylglycerol (1/2-DHG), N-palmitoyl-ethanolamine (PEA), N-stearoylethanolamine (SEA), N-oleoyl-ethanolamine (OEA), N-linoleoyl-ethanolamine (LEA), N-arachidonoyl-ethanolamine (AEA), N-eicosapentaenoyl-ethanolamine (EPEA), N-docosapentaenoyl-ethanolamine (DPEA), N-docosahexaenoyl-ethanolamine (DHEA), arachidonic acid (AA), docosahexaenoic acid (DHA), docosaepentaenoic acid (DPA), eicosapentaenoic acid (EPA), stearidonic acid (SDA), linoleic acid (LA), PGD2, PGE1, PGE2, PGE3, 1a,1b-dihomo PGF (1a,1b-dihomo PGF), thromboxane B2 (TBX), N-Palmitoyl-Glycine and N-Oleoyl-Serotonin. For the MAGs, the signals from the sn-1(3) and the sn-2 isomers were combined and presented as 2-MAGs, to take into account the rapid isomerization of the sn-2 isomer to sn-1(3).

16S rRNA gene sequencing

Intestinal luminal contents were lysed using bead beating (0.1 mm silica beads) before enzymatic digestion with 50 mg of lysozyme and 200 U/μL mutanolysin (37 °C, 45 min). Microbial DNA was extracted using the QIAamp DNA Stool minikit (Qiagen, CA, USA), and amplification of the V3-V4 region was performed using the primers Bact-0341-b-S-17 (5′-CCTACGGGNGGCWGCAG-3′) and Bact-0785-a-A-21 (5′-GACTACHVGGGTATCTAATCC-3′) (Illumina, CA, USA). Libraries were purified using magnetic beads AMPURE XP (Beckman Coulter Canada Lp), and libraries were assessed on gel using QIAexcel (Qiagen, CA, USA). High-throughput sequencing (2- by 300-bp paired end) was performed on a MiSeq platform (Illumina, CA, USA). Sequences were processed using the DADA2 package (version 1.16.0) (Callahan et al., Reference Callahan, McMurdie, Rosen, Han, Johnson and Holmes2016) and associations with bacterial taxa were obtained using the Ribosomal Database Project reference database Silva version 132. Microbiome abundances were normalized using rarefaction (Rarefaction; Vegan R package). Reads were rarefied to 5000 reads to account for depth bias (McMurdie and Holmes, Reference McMurdie and Holmes2014). Samples with read count lower than 5000 but higher than 2000 reads were kept in the analysis as is. Before rarefaction, we observed 5113 ASV and after rarefaction we observed 4923 ASV. Raw sequences were deposited to SRA under accession PRJNA977215 (https://www.ncbi.nlm.nih.gov/bioproject/PRJNA977215/).

mRNA isolation, reverse transcription, and qPCR

RNA was extracted from the ileum and caecum samples with the RNeasy Plus mini kit (Qiagen, CA, USA) according to the manufacturer’s instructions and eluted in 30 μL of UltraPure distilled water (Invitrogen, USA). RNA concentration and purity were determined by measuring the absorbance of RNA in a nanodrop at 260 and 280 nm. A total of 500 nanograms of RNA was reverse transcribed with a high-capacity cDNA reverse transcription kit (Applied Biosystems, CA, USA). We used 7500 Real-Time PCR System (Applied biosystems, CA, USA) to perform quantitative PCR to assess the expression of 2 genes associated with anti-inflammatory activity (Il10 and Tgfb1) and 2 genes associated with pro-inflammatory activity (Il1b and Tnfa) with one housekeeping gene (Hprt). Primers and probes for TaqMan qPCR assays were purchased as commercial kits (ThermoFisher Scientific, Burlington, ON, Canada) and TaqMan assay IDs were as follows: Hprt (Mm03024075_m1), Il10 (Mm01288386_m1), Tgfb1 (Mm01178820_m1), Il1b (Mm00434228_m1), and Tnfa (Mm00443258_m1). All expression data were normalized by the threshold cycle (2-ΔΔCT) method using Hprt as an internal control (Livak and Schmittgen, Reference Livak and Schmittgen2001).

Statistical analyses

Data are expressed as mean ± SEM. Generalized linear regression models were used to identify the effects of Fe, diet, and sex on ranked values of eCBome mediators and gut microbiome relative abundances. We used a three-way ANOVA based on a linear model that included interactions between diet formulation (LFLS vs. HFHS), Fe concentration (depleted vs. enriched), and sex of the animal (female or male). The differences were considered statistically significant with P values of P < 0.05 using contrast tests between Fe-depleted and Fe-enriched levels, LFLS and HFHS formulations, the sex of animals (female and male), and the combination between Fe levels and diet formulations. Spearman correlations were used to investigate associations between microbiome families and eCBome mediators. Adjustments for multiple testing were obtained using false-discovery rate (FDR). Analyses were performed with R software version 4.0.2. Principal-component analysis was performed using the FactoMineR R package (Lê et al., Reference Lê, Josse and Husson2008). PERMANOVA was performed between two of the segments of the intestine (ileum and caecum) with 999 permutations in conjunction with Canberra distances between samples using package vegan in R (v2.5.7).

Results

Dietary Fe intake has no impact on weight gain

Variations in dietary Fe intake showed no clear effect on the weight gain of the mice after 28 days. However, as expected, mice fed with HFHS diets showed an increase in weight in comparison with LFLS, regardless of Fe intake (Figure 1). As for sex differences, male mice showed a greater weight gain than females on both types of Fe-enriched and Fe-depleted diets (Supplementary Figure S1). These results suggest that Fe has a limited impact on weight gain in mice for the period of treatment.

Figure 1. Weight gain in mice fed Fe-enriched and Fe-depleted LFLS or HFHS diets. Groups of 12 mice (6F/6M) were fed Fe-enriched /or Fe-depleted diets combined with LFLS or HFHS diet for 28 days. Generalized linear regression models were used to identify the effects of Fe and macronutrient diet formulation interactions on weight gain (%) over time for 28 days of study. Data are expressed as mean ± SEM (n = 12).

Dietary iron influences circulating N-acylethanolamine production in interaction with diet composition

We quantified the eCBome mediators (NAEs, MAGs) and some of their corresponding polyunsaturated fatty acids (PUFAs) in plasma, ileum, and caecum samples (Figure 2). As observed in previous work, the eCBome response was different between plasma and the two intestinal segments studied (Guevara Agudelo et al., Reference Guevara Agudelo, Leblanc, Bourdeau-Julien, St-Arnaud, Lacroix, Martin, Flamand, Veilleux, Di Marzo and Raymond2022). Macronutrient composition of the diet was the main driver of eCBome concentrations, and modulation by diet and Fe intake was not homogeneous between tissues. Overall, the influence of Fe on NAEs, MAGs, and PUFAs was always observed in interaction with the diet. Indeed, OEA showed a significant increase associated with the enrichment of Fe in LFLS diet whereas lower OEA concentrations were observed in the other conditions (Figure 2A). Circulating levels of MAGs were also modulated by Fe in interaction with diet composition. For instance, we observed that 2-AG was reduced in Fe-enriched LFLS diet compared with Fe-enriched HFHS diet. By contrast, 2-OG was increased in Fe-depleted LFLS diet compared with HFHS diet. Interestingly, significant increase of the PUFA LA was associated with the depletion of Fe in the diet in combination with LFLS (Figure 2C). Caecum SDA showed a statistically significant reduction associated with Fe depletion in HFHS diet. These results suggest a differential role of Fe intake and its interaction with dietary fat and sucrose levels in modulating the concentration of some eCBome mediators or their corresponding fatty acids. Several fatty acids and eCBome mediators were modulated solely by the diet. Circulating 2-DHG, 2-DPG, DHEA, LEA, and SEA showed an increase associated strictly with HFHS diets, while 2-EPG, as well as its precursor EPA, showed a reduction associated with HFHS diets. In the intestine, we observed that modulation of most NAEs and MAGs and their corresponding PUFAs were associated with dietary fat content and not dietary Fe levels. In the ileum, AEA and SEA were higher with HFHS than the LFLS diet. By contrast, in the caecum, EPA showed an increase with LFLS. 2-AG, 2-DHG, 2-DPG, and 2-LG levels were higher with the HFHS than the LFLS diet. Overall, these results indicate that Fe, in interaction with the macronutrient composition of the diet, influences the production of circulating NAEs, while the formulation of HFHS diets mainly increased MAGs in the intestine.

Figure 2. Diet and Fe modulation of endocannabinoidome mediators and some of their corresponding fatty acids. Boxplot representation of the eCBome mediators. (A) N-acylethanolamines (NAEs), (B) 2-monoacylglycerols (2-MAGs), and (C) long chain ω-6 and ω-3 polyunsaturated fatty acids (PUFAs) response to Fe-depleted and Fe-enriched LFLS or HFHS diets. Data are expressed as the mean ± SEM (n = 12). P values of linear contrast analysis are detailed when significant (p < 0.05) using contrast tests between enriched and depleted Fe levels, LFLS and HFHS formulations, and the combination between Fe levels and formulations. The star ‘*’ symbol was used to show the effect of Fe alone or in interaction with LFLS or HFHS. The numeral ‘#’ symbol was used to denote the effect of only LFLS or HFHS. The samples were analysed at day 28 of the study.

Iron modulates the concentration of caecal prostaglandins with the LFLS diet

In addition to endocannabinoid congeners and PUFAs, we also quantified lipid mediators that could respond differentially to dietary intake of Fe. In this sense, we evaluated the response of PGE1, PGE2, PGE3, and 1a,1b-dihomo PGF (Figure 3). In the caecum, we observed that the enrichment of Fe in the diet decreased the levels of prostaglandins PGE1, PGE3, and 1a,1b-dihomo PGF2α. PGE2 exhibited a similar trend of reduction with Fe enrichment but did not display a significant difference. We did not observe this effect in the ileum (Figure 3A). In the intestine, the expression of genes involved in inflammation was not influenced by dietary Fe intake, but rather by diet formulation (Figure 3B). For instance, in the ileum, we observed an increase of Tnfa expression levels only in those mice fed with the HFHS diet with depleted Fe, while in the caecum this increase was not evident. In addition, the expression of Il1b was significantly increased by the LFLS diet in caecum. Taken together, these results point to a possible role of Fe intake in intestinal immune response by modulating the production of bioactive lipids such as prostaglandins, although with limited effect on the intestinal expression of inflammation-associated genes.

Figure 3. Response of intestinal prostaglandins and mRNA gene expression of immune response in Fe-depleted and Fe-enriched LFLS or HFHS diets in the intestine. Boxplot representation of the eCBome mediators in (A) ileum and (B) caecum. mRNA expression of immune response as fold change (FC) calculated using the ΔΔCT method in Fe-depleted and Fe-enriched LFLS or HFHS diets in the intestine, ileum, and caecum. Data are expressed as the mean ± SEM (n = 12). P values of linear contrast analysis are detailed when significant (p < 0.05) using contrast tests between enriched and depleted Fe levels, LFLS and HFHS formulations and the combination between Fe levels and formulations. Gene expression was normalized to Hprt. The star ‘*’ symbol was used to show the effect of Fe alone or in interaction with LFLS or HFHS. The numeral ‘#’ symbol was used to denote the effect of only LFLS or HFHS. The samples were analysed at day 28 of the study.

Iron affects specific microbial species in interaction with the diet

We investigated whether specific gut microbial families responded differentially to dietary Fe enrichment and whether these associations were dependent on fat and sucrose intake. As observed previously (Guevara Agudelo et al., Reference Guevara Agudelo, Leblanc, Bourdeau-Julien, St-Arnaud, Lacroix, Martin, Flamand, Veilleux, Di Marzo and Raymond2022), the intestinal microbiota composition showed a remarkable differentiation between the segments of the intestine (p < 0.01, PERMANOVA) (Figure 4A). Interindividual differences in microbial taxa were more pronounced in the ileum than in the caecum, which was more homogeneous. Thus, in the ileum, microbiome did not show a clear influence of Fe or diet (Figure 4B), while in the caecum the difference was evident between LFLS and HFHS diets (Figure 4C). Three intestinal microbial families (Eubacterium coprostanoligenes group, Streptococcaceae, and Muribaculaceae) responded directly to Fe intake or interaction between Fe and diet content exclusively in caecum, as in the ileum no microbial family responded to the dietary changes in Fe, be it alone or in interaction with diet. For instance, E. coprostanoligenes group bacteria showed an increase in its relative abundance associated with the interaction of Fe-depletion with LFLS diets. Similarly, the relative abundance of Streptococcaceae was higher with the interaction between the depletion of dietary Fe with the HFHS formulation (Figure 5A). Concomitantly, Muribaculaceae showed a slight increase in its relative abundance due to the interaction of Fe-enrichment with LFLS formulations. Other microbial families in the ileum such as Lactobacillaceae responded to the macronutrient content of the diet and exhibited a higher abundance with HFHS diets. Bacteroidaceae was more abundant with the LFLS diet, and Lachnospiraceae was increased with HFHS diet (Figure 5B). Interestingly, increased abundance of both microbial taxa occurred only in Fe-depleted diets. Taken together, these results indicate that Fe, in interaction with diet formulation, shifted specific microbial families in an intestinal segment-dependent manner.

Figure 4. Intestinal microbiota composition in response to Fe-enriched and Fe-depleted LFLS or HFHS diets. (A) Relative bacterial abundance at the family level in response to Fe-enriched and Fe-depleted LFLS or HFHS diets in ileum and caecum. Families representing less than 1% of total bacterial abundance were aggregated. Dendrogram showing hierarchical clustering based on Canberra distance between samples determines the sample order. The corresponding annotations for tissue, sex, diet, and Fe level are displayed. Principal component analysis shows the impact of Fe-depleted/enriched and LFLS/HFHS diets on gut microbiota composition in the (B) ileum, and (C) caecum. PERMANOVA indicates the significance of microbiota composition between the dietary conditions. The samples were analysed at day 28 of the study.

Figure 5. Effect of Fe-depleted and Fe-enriched LFLS or HFHS diets on bacterial relative abundance at the family level in the ileum and caecum. (A) Effect of Fe in the interaction of LFLS and HFHS formulations on intestinal microbial families. (B) Effect of solely LFLS or HFHS formulations. Data are expressed as the mean ± SEM (n = 48). P values of linear contrast analysis are detailed in the bottom when significant (p < 0.05) using contrast tests between enriched and depleted Fe levels, LFLS and HFHS formulations, and the combination between Fe levels and formulations. The star ‘*’ symbol was used to show the effect of Fe alone or interaction with LFLS or HFHS. The numeral ‘#’ symbol was used to denote the effect of only LFLS or HFHS. The samples analysed and showed are at day 28 of the study.

Dietary Fe in interaction with sex influences circulating N-acylethanolamines, cytokine gene expression, and specific intestinal bacteria

In addition to the impact of dietary Fe and diet formulations, we studied the effect of Fe and its interaction with the sex of the animals regarding the changes in the production of eCBome mediators, intestinal cytokine gene expression and gut microbiota species. We found that circulatory levels of DHEA showed an interaction between Fe-depletion and the sex of the animal, such as reduced DHEA levels in Fe-depletion were observed only in females (Figure 6A). Concomitantly, we found a significant increase in the expression levels of Tgfb1 in females compared with males under the interaction between the Fe-enriched diets with the HFHS formulation (Figure 6B). Similarly, microbial families such as Ruminococcaceae and Lachnospiraceae exhibited a reduction in their relative abundance associated with the interaction between Fe enrichment in diets and female mice. In addition, the reduction of Fe in the diets increased the relative abundance of specific microbial families in female mice such as Lachnospiraceae and Ruminococcaceae. Furthermore, Lachnospiraceae family showed an increase in males over females with Fe-enriched diets and the HFHS diet.

Figure 6. Iron influences in a sex-dependent manner circulating N-acylethanolamines (NAEs), cytokine gene expression, and intestinal microbial species. (A) Boxplot representation of the NAEs in plasma, (B) mRNA expression of Tgfb1 as fold change (FC) calculated using the ΔΔCT method, (C) relative abundances of Ruminococcaceae in the ileum and (D) Lachnospiraceae in the caecum. Data are expressed as the mean ± SEM (n = 48). P values of linear contrast analysis are marked with a star ‘*’ when significant (p < 0.05) using contrast test between enriched and depleted Fe levels, LFLS and HFHS formulations, the combination between Fe levels and formulations, and the sex of the animal.

Discussion

In this study, we investigated the effect of Fe depletion (12 mg/kg) and enrichment (150 mg/kg), in interaction with macronutrients (LFLS or HFHS), on the eCBome and gut microbiota in a mouse model susceptible to obesity. In contrast with several studies that used bleedings or diets with less than 6 mg Fe/kg to characterize the metabolic defects associated with severe Fe deficiency (B R Blakley, Reference Blakley and Hamilton1988; Cooksey et al., Reference Cooksey, Jones, Gabrielsen, Huang, Simcox, Luo, Soesanto, Rienhoff, Abel and McClain2010; Santos et al., Reference Santos, Clevers, De Sousa and Marx1998), we did not target severe dietary Fe depletion, and the model used here did not provoke either anaemia in the Fe-depleted diets or hemochromatosis in the Fe-enriched diets. The present study could be considered short-term as it was only 4-weeks long. Although our aim was not to produce systemic and tissue inflammation, previous studies have shown that 4 weeks of an obesogenic diet in mice is enough to alter the inflammatory phenotype and provoke changes in gut microbiota (Cani et al., Reference Cani, Possemiers, Van De Wiele, Guiot, Everard, Rottier, Geurts, Naslain, Neyrinck, Lambert, Muccioli and Delzenne2009; Guevara Agudelo et al., Reference Guevara Agudelo, Leblanc, Bourdeau-Julien, St-Arnaud, Lacroix, Martin, Flamand, Veilleux, Di Marzo and Raymond2022).

The results obtained here suggest that short-term Fe administration may have little direct effect on body weight modulation, since there was no weight gain associated with either the enrichment or depletion of Fe during the length of the study. The fact that caloric intake did not increase significantly after Fe supplementation could explain the lack of Fe-associated weight gain. It is possible that the interaction between Fe and other nutrients may have affected weight gain in comparison with other studies using different diets (Lynch and Cook, Reference Lynch and Cook1980; Piskin et al., Reference Piskin, Cianciosi, Gulec, Tomas and Capanoglu2022). In this regard, Fe absorption may be influenced by the presence of other nutrients in the diet, which were not investigated. Yet, there is increasing evidence that obesity and Fe status are connected (Cepeda-Lopez et al., Reference Cepeda-Lopez, Aeberli and Zimmermann2013; Kitamura et al., Reference Kitamura, Yokoyama, Taoka, Nagano, Hosoda, Taworntawat, Nakamura, Ogawa, Tsubota and Watanabe2021), as human studies report a reduction in Fe plasma levels with increasing adiposity (Manios et al., Reference Manios, Moschonis, Chrousos, Lionis, Mougios, Kantilafti, Tzotzola, Skenderi, Petridou, Tsalis, Sakellaropoulou, Skouli and Katsarou2013; Seltzer and Mayer, Reference Seltzer and Mayer1963; Wenzel et al., Reference Wenzel, Stults and Mayer1962). Indeed, long-term treatment of Fe deficiency anaemia for 4–6 months by increasing Fe gradually induced weight loss (Aktas et al., Reference Aktas, Alcelik, Yalcin, Karacay, Kurt, Akduman and Savli2014). Besides, it has also been reported that Fe supplementation for 15 weeks reduces diet-induced weight gain (Kitamura et al., Reference Kitamura, Yokoyama, Taoka, Nagano, Hosoda, Taworntawat, Nakamura, Ogawa, Tsubota and Watanabe2021), with significant changes being observed from 12 weeks of treatment.

Accumulating evidence has revealed a strong link between dietary Fe and lipid metabolism (Cunnane and McAdoo, Reference Cunnane and McAdoo1987; Zhou et al., Reference Zhou, Kubow and Egeland2011). In fact, fatty acid composition in tissues can be modified as a consequence of nutritional Fe deficiency (Johnson et al., Reference Johnson, Kramer, Briske-Anderson and Holman1989). Furthermore, the role of Fe in fatty acid desaturation has been demonstrated (Romero et al., Reference Romero, Jordá, Rozès, Martínez-Pastor and Puig2018). Previous studies have also shown the production of ω-6 PUFAs, particularly LA, can be regulated by dietary Fe levels (Ananda Rao et al., Reference Ananda Rao, Manix and Larkin1980). Concordantly, we found a significant increase in LA associated with dietary Fe-enrichment in combination with LFLS (Figure 2C). We evaluated the effect of Fe intake in interactions with low or high calorie diets on the circulating and intestinal levels of the most studied eCBome mediators (NAEs and MAGs), and some of their corresponding PUFAs. The eCBome is known to be highly influenced by dietary intake as well as by body composition (Castonguay-paradis et al., Reference Castonguay-paradis, Lacroix, Rochefort, Parent, Perron, Martin, Lamarche, Raymond, Flamand, Di Marzo and Veilleux2020). It is understood to play an important role in physiological processes related to metabolic health (Di Marzo, Reference Di Marzo2018). In this study, the influence of Fe on NAEs, MAGs, and PUFAs was always observed in interaction with diet formulations. Indeed, OEA showed a significant increase associated with the enrichment of Fe in LFLS diet only, with the other conditions having lower and comparable OEA concentrations (Figure 2A). As expected, circulating levels of AEA were higher with the HFHS diet (Lacroix et al., Reference Lacroix, Pechereau, Leblanc, Boubertakh, Houde, Martin, Flamand, Silvestri, Raymond, Marzo, Veilleux and David2019), but interestingly this difference was more pronounced in interaction with Fe-depletion, as it was for DHEA. Recently, there has been growing interest in a group of NAEs that are congeners of AEA but that seem instead to act through mechanisms independent of cannabinoid receptors. This group includes the monounsaturated analogue OEA (Piomelli, Reference Piomelli2013; Romano et al., Reference Romano, Coccurello, Giacovazzo, Bedse, Moles and Gaetani2014), which share biosynthetic and catabolic pathways with AEA (Okamoto et al., Reference Okamoto, Morishita, Tsuboi, Tonai and Ueda2004) but exerts contrary effects on the regulation of food intake and lipid metabolism. Unlike AEA, OEA has no binding affinity to the CB1 receptor (V M Showalter et al., Reference Showalter, Compton, Martin and Abood1996) and its administration reduces food consumption in rodents. Supplementation with Fe has been associated with increased appetite and food intake independently of weight gain (Gao et al., Reference Gao, Li, Scott Gabrielsen, Simcox, Lee, Jones, Cooksey, Stoddard, Cefalu and McClain2015). In this study, we found a significant increase in OEA levels associated with Fe enrichment in the LFLS diet, although there was no significant correlation between circulating OEA levels and food intake (p = 0.81, Spearman correlation). Recent studies have shown that OEA acts as a gut-derived satiety factor (De Filippo et al., Reference De Filippo, Costa, Becagli, Monroy, Provensi and Passani2023; Gaetani et al., Reference Gaetani, Fu, Cassano, Dipasquale, Romano, Righetti, Cianci, Laconca, Giannini, Scaccianoce, Mairesse, Cuomo and Piomelli2010) and might be involved in eating disorders (Gaetani et al., Reference Gaetani, Kaye, Cuomo and Piomelli2008), obesity (Matias et al., Reference Matias, Gatta-Cherifi, Tabarin, Clark, Leste-Lasserre, Marsicano, Piazza and Cota2012) and type 2 diabetes (Annuzzi et al., Reference Annuzzi, Piscitelli, Marino, Patti, Giacco, Costabile, Bozzetto, Riccardi, Verde, Petrosino, Rivellese and Marzo2010). Among other functions, OEA controls the secretion of GLP-1, suggesting a synergistic action of this NAE with intestinal microorganisms in the regulation of several homeostatic functions, since GLP-1 has numerous metabolic actions including decreased gastric clearance, inhibition of food intake, and stimulation of glucose-dependent insulin secretion (Müller et al., Reference Müller, Finan, Bloom, D’Alessio, Drucker, Flatt, Fritsche, Gribble, Grill, Habener, Holst, Langhans, Meier, Nauck, Perez-Tilve, Pocai, Reimann, Sandoval, Schwartz and Tschöp2019). Results of this study suggest that Fe intake may modulate circulating OEA levels and this points out to the possibility of dietary interventions to increase levels of this mediator and, hence, affect its main receptors, that is the peroxisome proliferator-activate receptor α (PPARα), the transient receptor potential vanilloid of type 1 (TRPV1) channel, and the G-protein-coupled receptor 119 (GPR119), all of which are known to counteract obesity (Christie et al., Reference Christie, Wittert, Li and Page2018; Grimaldi, Reference Grimaldi2001).

Several 2-MAGs, including 2-AG, 2-DPG, and 2-DHG, showed higher concentrations with Fe-enriched HFHS diet compared with Fe-enriched LFLS diet both in plasma and in the caecum, but not in the ileum. These mediators have been linked to the modulation of metabolic activity and inflammation (Barrie and Manolios, Reference Barrie and Manolios2017; Hillard, Reference Hillard2017; Poursharifi et al., Reference Poursharifi, Murthy, Prentki and Murthy Madiraju2017). Intestinal 2-MAG metabolism is tightly linked to re-esterification to triacylglycerol and crosstalk between Fe and lipid pathways, including alterations in cholesterol, sphingolipid, and lipid droplet metabolism in response to Fe levels have been reported (Chon et al., Reference Chon, Yin, Dixon and Storch2007; Rockfield et al., Reference Rockfield, Chhabra, Robertson, Rehman, Bisht and Nanjundan2018). In a previous study, we investigated the impact of the trace mineral selenium (Se) on the eCBome (Guevara Agudelo et al., Reference Guevara Agudelo, Leblanc, Bourdeau-Julien, St-Arnaud, Lacroix, Martin, Flamand, Veilleux, Di Marzo and Raymond2022). Although Se had a significant effect on weight gain particularly under LFLS diet, it showed an opposite effect to Fe in its impact on intestinal 2-MAGs levels. Notably, the levels of mediators such as 2-AG, 2-DHG, and 2-DPG in the caecum were favoured in Se-depleted HFHS diets, whereas, in the present study, we observed that these mediators were increased by the HFHS diet only in the presence of Fe supplementation (Figure 2B). Given the association between tissular 2-AG levels and dysmetabolism, observed also in humans (Silvestri and Di Marzo, Reference Silvestri and Di Marzo2013), it is tempting to speculate that individuals may be protected by the negative effects of a cafeteria-type diet with supplementation of Se and slight reduction of dietary Fe.

Fe is an important cofactor involved in the synthesis of AA, which plays functions associated with cell signalling and serves as a precursor of numerous oxygenated derivatives such as prostaglandins. The fact that we have identified increased circulating PUFAs and 2-MAGs is consistent with a Fe proposed involvement in immune response (Nairz and Weiss, Reference Nairz and Weiss2020). Indeed, during Fe-supplementation, increased release of AA and eicosanoids have been associated with lipid oxidation reactions (Peterson et al., Reference Peterson, Gerrard, Rao, Krick and White1978), and prostaglandin metabolism (Mattera et al., Reference Mattera, Stone, Bahhur and Kuryshev2001; Wright and Fischer, Reference Wright and Fischer1997). We observed reduced levels of PGE1 and PGE3 as well as a trend for reduced levels of PGE2 in the caecum with the Fe-enriched LFLS diet, suggesting lowered inflammation in this tissue. These effects were not observed in the ileum, which possibly reflects the lack of changes observed in this tissue of the biosynthetic precursors of PGE2 (AA and possibly 2-AG) and of PGE3 (EPA and possibly 2-EPG) and the increase of the pro-inflammatory cytokine, Tnfa, with the Fe-depleted HFHS.

Bioavailability of Fe in the gut lumen also plays an important role for the microbes that reside in this dynamic environment (Seyoum et al., Reference Seyoum, Baye and Humblot2021). Competition for its acquisition takes place at the intestinal host-bacteria interface (Nairz et al., Reference Nairz, Schroll, Sonnweber and Weiss2010; Yilmaz and Li, Reference Yilmaz and Li2018). Fe availability is known to be critical for bacterial growth, and Fe starvation is an effective strategy to limit bacterial survival. Nutrients from the diet are absorbed in different sections of the intestine (Kiela and Ghishan, Reference Kiela and Ghishan2016), which promotes specific microbial niches (Pereira and Berry, Reference Pereira and Berry2017). In microorganisms, Fe serves as a cofactor for proteins involved in key microbial metabolic pathways such as redox reactions, DNA synthesis, and the production of short-chain fatty acids (SCFA) (Dostal et al., Reference Dostal, Lacroix, Bircher, Pham, Follador, Zimmermann and Chassard2015) and, subsequently, the proliferation and growth of almost all microbiota, including both the commensal and pathogenic species, are dependent on the utilization of unabsorbed dietary Fe. We report, here that a limited number of microbial families exhibited different relative abundances based on Fe and macronutrient intake. While intestinal microbiota composition displayed a remarkable differentiation between the segments of the intestine, differences in microbiome composition associated with Fe intake were observed in the caecum but not in the ileum. Here we found that the Eubacterium coprostanoligenes group, a cholesterol-reducing intestinal bacterium that synthesizes coprostanol (Juste & Gérard, Reference Juste and Gerard2021), and Streptococcaceae both show an increase in their relative abundance following Fe-depletion but under different macronutrient combinations. This suggests the presence of macronutrients may be necessary for the adaptation of some microbial species to the changes in the bioavailability of intestinal micronutrients (Sung et al., Reference Sung, Yu and Han2023). By contrast, we found that Muribaculaceae shows an increase in its relative abundance during Fe-enrichment in combination with LFLS diets, which had already been observed in a previous study (Ippolito et al., Reference Ippolito, Piccolo, Robeson, Barney, Ali, Singh and Hennigar2022). Other microbial families, including Lactobacillaceae, Bacteroidaceae, and Lachnospiraceae, responded exclusively to dietary formulations and not to Fe intake (Figure 5B). Interestingly, Lactobacillus was found by Dostal and collaborators to be modulated by Fe in mice given a chow diet (Dostal et al., Reference Dostal, Chassard, Hilty, Zimmermann, Jaeggi, Rossi and Lacroix2012), strengthening the idea that the interaction between micronutrients and macronutrients is a key element in microbiome modulation. Taken together, these results highlight the fundamental shaping factor exerted by diet on intestinal populations. Finally, although dietary components other than Fe levels were determinants for the differential production of eCBome mediators and intestinal microbial families, the sex of the mice also impacted both systems, which is consistent with previous findings (Guevara Agudelo et al., Reference Guevara Agudelo, Leblanc, Bourdeau-Julien, St-Arnaud, Lacroix, Martin, Flamand, Veilleux, Di Marzo and Raymond2022).

Conclusions

Overall, our results indicate that the macronutrient composition of the diet modulates the response of the eCBome and the microbiome to Fe intake in mice, a phenomenon that was also observed for selenium, another trace mineral (Guevara Agudelo et al., Reference Guevara Agudelo, Leblanc, Bourdeau-Julien, St-Arnaud, Lacroix, Martin, Flamand, Veilleux, Di Marzo and Raymond2022). Specifically, an increase in circulating levels of OEA was associated with Fe enrichment in the LFLS diet, concomitantly with decreased concentrations of plasma LA, caecal prostaglandins, and the caecal abundance of E. coprostanoligenes, potentially in reaction to Fe availability in a less dietary rich environment. By contrast, the Fe-depleted HFHS diet showed an elevation of AEA, which is usually associated with negative metabolic health outcomes. This suggests a crosstalk between the amounts of trace minerals and the dietary macronutrient content to generate a differential impact on the levels of eCBome mediators and their potential role in metabolic complications. In conclusion, our findings show that Fe might, in interaction with the diet, modulate intestinal processes as well as the host response to dietary stress. This study demonstrates how complex is the interplay between dietary components, the gut microbiota ecosystem, and host lipid signalling systems. The present findings should open the path for mechanistic studies exploring the molecular basis of the impact of macronutrients on the gut microbiome–eCBome axis, in response to Fe deficit or supplementation, and the role of this interaction in low-grade inflammation such as that accompanying diet-induced obesity.

Supplementary material

The supplementary material for this article can be found at http://doi.org/10.1017/gmb.2025.1.

Disclosure statement

The authors declare none.

Author contribution

Conceptualization, F.A.G.A., N.L., V.D., and F.R.; Methodology, F.A.G.A., N.L., G.S., and F.R.; Formal Analysis, F.A.G.A., I.B.J., N.F., N.F., V.D., and F.R.; Data Curation, F.A.G.A and F.R.; Writing—Original Draft, F.A.G.A, V.D, and F.R.; Writing—Review and Editing, F.A.G.A., I.B.J., N.F., G.S., N.F., A.V., V.D., and F.R.; Supervision,V.D. and F.R; Funding Acquisition, V.D., and F.R.

Funding

This work was carried out within the activities of the Canada Excellence Research Chair in Microbiome-Endocannabinoidome Axis in Metabolic Health, held by V. Di Marzo and funded by the Canadian Federal Government Tri-Agency (CERC programme) and the CFI Leaders fund. FR is funded by NSERC Discovery Grant (RGPIN-2020-03922). FR and VD are funded by CIHR (Team Grant: Canadian Microbiome Initiative 2: Research Teams – Dissecting host–microbiome modifiers of type 2 diabetes risk and complications). Computing was performed on Digital Research Alliance of Canada infrastructure (FR, RRG2734). This work was also supported by the Sentinelle Nord program (Laval University) via its support to the Joint International Research Unit – MicroMenu (VD), which is funded by the Sentinelle Nord programme supported by the Apogée programme.

References

Aigner, E, Feldman, A and Datz, C (2014) Obesity as an emerging risk factor for iron deficiency. Nutrients 35873600. https://doi.org/10.3390/nu6093587.Google Scholar
Aktas, G, Alcelik, A, Yalcin, A, Karacay, S, Kurt, S, Akduman, M and Savli, H (2014) Treatment of iron deficiency anemia induces weight loss and improves metabolic parameters. La Clinica Terapeutica. https://doi.org/10.7471/CT.2014.1688.Google Scholar
Al Bander, Z, Dekker Nitert, M, Mousa, A and Naderpoor, N (2020) the gut microbiota and inflammation: an overview. International Journal of Environmental Research and Public Health 20, 121. https://doi.org/10.3390/ijerph17207618.Google Scholar
Alhouayek, M and Muccioli, GG (2014) Harnessing the anti-inflammatory potential of palmitoylethanolamide. Drug Discovery Today 19, 16321639. https://doi.org/10.1016/j.drudis.2014.06.007.Google Scholar
Almeida, MM, Dias-Rocha, CP, Calviño, C and Trevenzoli, IH (2022) Lipid endocannabinoids in energy metabolism, stress and developmental programming. Molecular and Cellular Endocrinology 542. https://doi.org/10.1016/j.mce.2021.111522.Google Scholar
Ananda Rao, G, Manix, M and Larkin, EC (1980) Reduction of essential fatty acid deficiency in rat fed a low iron fat free diet. Lipids 15(1), 5560. https://doi.org/10.1007/BF02534119.Google Scholar
Annuzzi, G, Piscitelli, F, Marino, LD, Patti, L, Giacco, R, Costabile, G, Bozzetto, L, Riccardi, G, Verde, R, Petrosino, S, Rivellese, AA and Marzo, VD (2010) Differential alterations of the concentrations of endocannabinoids and related lipids in the subcutaneous adipose tissue of obese diabetic patients. Lipids in Health and Disease 9, 18. https://doi.org/10.1186/1476-511X-9-43.Google Scholar
Asperti, M., Gryzik, M, Brilli, E, Castagna, A, Corbella, M, Gottardo, R, Girelli, D, Tarantino, G, Arosio, P and Poli, M (2018) Sucrosomial® iron supplementation in mice: Effects on blood parameters, hepcidin, and inflammation. Nutrients 10(10), 1349. https://doi.org/10.3390/nu10101349Google Scholar
Barrie, N and Manolios, N (2017) The endocannabinoid system in pain and inflammation: Its relevance to rheumatic disease. The Journal of Rheumatology 4, 210218. https://doi.org/10.5152/eurjrheum.2017.17025.Google Scholar
Baumgartner, J, Smuts, CM, Aeberli, I, Malan, L, Tjalsma, H and Zimmermann, MB (2013) Overweight impairs efficacy of iron supplementation in iron-deficient South African children: A randomized controlled intervention. IJO 2430. https://doi.org/10.1038/ijo.2012.145.Google Scholar
Blakley, BR and Hamilton, DL (1988) The effect of iron deficiency on the immune response in mice. Drug-Nutrient Interactions 5, 249255.Google Scholar
Boulangé, CL, Neves, AL, Chilloux, J, Nicholson, JK and Dumas, ME (2016) Impact of the gut microbiota on inflammation, obesity, and metabolic disease. Genome Medicine 8, 112. https://doi.org/10.1186/s13073-016-0303-2.Google Scholar
Callahan, BJ, McMurdie, PJ, Rosen, MJ, Han, AW, Johnson, AJA and Holmes, SP (2016) DADA2: High-resolution sample inference from Illumina amplicon data. Nature Methods 13, 581583. https://doi.org/10.1038/nmeth.3869.Google Scholar
Cani, PD, Possemiers, S, Van De Wiele, T, Guiot, Y, Everard, A, Rottier, O, Geurts, L, Naslain, D, Neyrinck, A, Lambert, DM, Muccioli, GG and Delzenne, NM (2009) Changes in gut microbiota control inflammation in obese mice through a mechanism involving GLP-2-driven improvement of gut permeability. Gut 58, 10911103. https://doi.org/10.1136/gut.2008.165886.Google Scholar
Castonguay-paradis, S, Lacroix, S, Rochefort, G, Parent, L, Perron, J, Martin, C, Lamarche, B, Raymond, F, Flamand, N, Di Marzo, V and Veilleux, A (2020) Dietary fatty acid intake and gut microbiota determine circulating endocannabinoidome signaling beyond the effect of body fat. Scientific Reports 10, 111. https://doi.org/10.1038/s41598-020-72861-3.Google Scholar
Cepeda-Lopez, AC, Aeberli, I and Zimmermann, MB (2013) Does obesity increase risk for iron deficiency? A review of the literature and the potential mechanisms. International Journal for Vitamin and Nutrition Research 80, 263270. https://doi.org/10.1024/0300-9831/a000033Google Scholar
Cerami, C (2017) Iron nutriture of the fetus, neonate, infant, and child. Annals of Nutrition and Metabolism 71, 814. https://doi.org/10.1159/000481447.Google Scholar
Chon, SH, Yin, XZ, Dixon, JL and Storch, J (2007) Intestinal monoacylglycerol metabolism: Developmental and nutritional regulation of monoacylglycerol lipase and monoacylglycerol acyltransferase. Journal of Biological Chemistry 282, 3334633357. https://doi.org/10.1074/jbc.M706994200.Google Scholar
Christie, S, Wittert, GA, Li, H and Page, AJ (2018) Involvement of TRPV1 channels in energy homeostasis. Frontiers in Endocrinology 1, 420. https://doi.org/10.3389/fendo.2018.00420.Google Scholar
Collado, MC, Rautava, S, Isolauri, E and Salminen, S (2015) Gut microbiota: A source of novel tools to reduce the risk of human disease? Pediatric Research 77, 182188. https://doi.org/10.1038/pr.2014.173.Google Scholar
Cooksey, RC, Jones, D, Gabrielsen, S, Huang, J, Simcox, JA, Luo, B, Soesanto, Y, Rienhoff, H, Abel, ED and McClain, DA (2010) Dietary iron restriction or iron chelation protects from diabetes and loss of β-cell function in the obese (ob/ob lep−/−) mouse. American Journal of Physiology-Endocrinology and Metabolism 298(6), E1236. https://doi.org/10.1152/ajpendo.00022.2010.Google Scholar
Cuddihey, H, Macnaughton, WK and Sharkey, KA (2022) Role of the endocannabinoid system in the regulation of intestinal homeostasis. Cellular and Molecular Gastroenterology and Hepatology 14, 947963. https://doi.org/10.1016/j.jcmgh.2022.05.015.Google Scholar
Cunnane, SC and McAdoo, KR (1987) Iron intake influences essential fatty acid and lipid composition of rat plasma and erythrocytes. The Journal of Nutrition 117(9), 15141519. https://doi.org/10.1093/jn/117.9.1514.Google Scholar
De Filippo, C, Costa, A, Becagli, MV, Monroy, MM, Provensi, G and Passani, MB (2023) Gut microbiota and oleoylethanolamide in the regulation of intestinal homeostasis. Frontiers in Endocrinology 14, 1135157. https://doi.org/10.3389/fendo.2023.1135157.Google Scholar
Di Marzo, V (2018) New approaches and challenges to targeting the endocannabinoid system. Nature Reviews Drug Discovery 12, 623639. https://doi.org/10.1038/nrd.2018.115.Google Scholar
Dostal, A, Chassard, C, Hilty, FM, Zimmermann, MB, Jaeggi, T, Rossi, S and Lacroix, C (2012) Iron depletion and repletion with ferrous sulfate or electrolytic iron modifies the composition and metabolic activity of the gut microbiota in rats. The Journal of Nutrition 271277. https://doi.org/10.3945/jn.111.148643.Google Scholar
Dostal, A, Lacroix, C, Bircher, L, Pham, VT, Follador, R, Zimmermann, MB and Chassard, C (2015) Iron modulates butyrate production by a child gut microbiota in vitro. mBio 6(6). https://doi.org/10.1128/mBio.01453-15.Google Scholar
Ellulu, MS, Patimah, I, Khaza’ai, H, Rahmat, A and Abed, Y (2017) Obesity and inflammation: The linking mechanism and the complications. Archives of Medical Science 13(4), 851863. https://doi.org/10.5114/aoms.2016.58928.Google Scholar
Everard, A, Plovier, H, Rastelli, M, Van Hul, M, de Wouters d’Oplinter, A, Geurts, L, Druart, C, Robine, S, Delzenne, NM, Muccioli, GG, De Vos, WM, Luquet, S, Flamand, N, Marzo, VD and Cani, PD (2019) Intestinal epithelial N-acylphosphatidylethanolamine phospholipase D links dietary fat to metabolic adaptations in obesity and steatosis. Nature Communications 117. https://doi.org/10.1038/s41467-018-08051-7.Google Scholar
Feng, Q, Chen, W-D and Wang, Y-D (2018) Gut microbiota: An integral moderator in health and disease. Frontiers in Microbiology 18. https://doi.org/10.3389/fmicb.2018.00151.Google Scholar
Gaetani, S, Fu, J, Cassano, T, Dipasquale, P, Romano, A, Righetti, L, Cianci, S, Laconca, L, Giannini, E, Scaccianoce, S, Mairesse, J, Cuomo, V and Piomelli, D (2010). The fat-induced satiety factor oleoylethanolamide suppresses feeding through central release of oxytocin. Journal of Neuroscience 30(24), 8096. https://doi.org/10.1523/JNEUROSCI.0036-10.2010.Google Scholar
Gaetani, S, Kaye, WH, Cuomo, V and Piomelli, D (2008) Role of endocannabinoids and their analogues in obesity and eating disorders. Eating and Weight Disorders 1, 18.Google Scholar
Gao, Y, Li, Z, Scott Gabrielsen, J, Simcox, JA, Lee, SH, Jones, D, Cooksey, B, Stoddard, G, Cefalu, WT and McClain, DA (2015) Adipocyte iron regulates leptin and food intake. The Journal of Clinical Investigation 125, 36813691. https://doi.org/10.1172/JCI81860.Google Scholar
Grimaldi, PA (2001). The roles of PPARs in adipocyte differentiation. Progress in Lipid Research 40(4), 269281. https://doi.org/10.1016/s0163-7827(01)00005-4.Google Scholar
Guevara Agudelo, FA, Leblanc, N, Bourdeau-Julien, I, St-Arnaud, G, Lacroix, S, Martin, C, Flamand, N, Veilleux, A, Di Marzo, V and Raymond, F (2022) Impact of selenium on the intestinal microbiome-eCBome axis in the context of diet-related metabolic health in mice. Frontiers in Immunology 13, 115. https://doi.org/10.3389/fimmu.2022.1028412.Google Scholar
Hentze, MW, Muckenthaler, MU and Andrews, NC (2004) Balancing acts: Molecular control of mammalian iron metabolism. Cell 117, 285297. https://doi.org/10.1016/s0092-8674(04)00343-5.Google Scholar
Hillard, CJ (2017) Circulating Endocannabinoids: From whence do they come and where are they going? NPP Reviews 43, 155172. https://doi.org/10.1038/npp.2017.130.Google Scholar
Hisakawa, N, Nishiya, K, Tahara, K, Matsumori, A and Hashimoto, K (1998) Down regulation by iron of prostaglandin E 2 production by human synovial fibroblasts. Annals of the Rheumatic Diseases 57, 742746. https://doi.org/10.1136/ard.57.12.742.Google Scholar
Iannotti, FA and Di Marzo, V (2021) The gut microbiome, endocannabinoids and metabolic disorders. Journal of Endocrinology 248(2), R83R97. https://doi.org/10.1530/JOE-20-0444.Google Scholar
Ippolito, JR, Piccolo, BD, Robeson, MS, Barney, DE, Ali, J, Singh, P and Hennigar, SR (2022) Iron deficient diets modify the gut microbiome and reduce the severity of enteric infection in a mouse model of S Typhimurium-induced enterocolitis . Journal of Nutritional Biochemistry 107. https://doi.org/10.1016/j.jnutbio.2022.109065.Google Scholar
Johnson, SB, Kramer, TR, Briske-Anderson, M and Holman, RT (1989). Fatty acid pattern of tissue phospholipids in copper and iron deficiencies. Lipids 24(2), 141145. https://doi.org/10.1007/BF02535252.Google Scholar
Juste, C and Gerard, P (2021) Cholesterol-to-Coprostanol Conversion by the Gut Microbiota: What We Know, Suspect, and Ignore. Microorganisms. 9(9), 1881. https://doi.org/10.3390/microorganisms9091881.Google Scholar
Kaitha, S, Bashir, M and Ali, T (2015) Iron deficiency anemia in inflammatory bowel disease. World Journal of Gastrointestinal Pathophysiology 62. https://doi.org/10.4291/wjgp.v6.i3.62.Google Scholar
Kiela, PR and Ghishan, FK (2016) Physiology of intestinal absorption and secretion. Best Practice & Research Clinical Gastroenterology 30, 145159. https://doi.org/10.1016/j.bpg.2016.02.007.Google Scholar
Kitamura, N, Yokoyama, Y, Taoka, H, Nagano, U, Hosoda, S, Taworntawat, T, Nakamura, A, Ogawa, Y, Tsubota, K and Watanabe, M (2021) Iron supplementation regulates the progression of high fat diet induced obesity and hepatic steatosis via mitochondrial signaling pathways. Scientific Reports 11, 117. https://doi.org/10.1038/s41598-021-89673-8.Google Scholar
Kortman, GAM, Raffatellu, M, Swinkels, DW and Tjalsma, H (2014) Nutritional iron turned inside out: Intestinal stress from a gut microbial perspective. FEMS Microbiology Reviews 38, 12021234. https://doi.org/10.1111/1574-6976.12086.Google Scholar
Kostic, AD, Xavier, RJ and Gevers, D (2014) The microbiome in inflammatory bowel disease: Current status and the future ahead. Gastroenterology 146, 14891499. https://doi.org/10.1053/j.gastro.2014.02.009.Google Scholar
Lacroix, S, Pechereau, F, Leblanc, N, Boubertakh, B, Houde, A, Martin, C, Flamand, N, Silvestri, C, Raymond, F, Marzo, VD, Veilleux, A and David, LA (2019) Rapid and concomitant gut microbiota and endocannabinoidome response to diet-induced obesity in mice. MSystems 4, 114. https://doi.org/10.1128/mSystems.00407-19.Google Scholar
Lakhal-Littleton, S and Robbins, PA (2017) The interplay between iron and oxygen homeostasis with a particular focus on the heart. Journal of Applied Physiology 123, 967973. https://doi.org/10.1152/japplphysiol.00237.2017.Google Scholar
, S, Josse, J and Husson, F (2008) FactoMineR: An R package for multivariate analysis. Journal of Statistical Software 25, 118. https://doi.org/10.18637/jss.v025.i01.Google Scholar
Livak, KJ and Schmittgen, TD (2001) Analysis of relative gene expression data using real-time quantitative PCR and the 2−ΔΔCT method. Methods 25, 402408. https://doi.org/10.1006/meth.2001.1262.Google Scholar
Lynch, SR and Cook, JD (1980) Interaction of vitamin C and iron. Annals of the New York Academy of Sciences 355(1), 3244. https://doi.org/10.1111/j.1749-6632.1980.tb21325.x.Google Scholar
Manca, C, Boubertakh, B, Leblanc, N, Deschênes, T, Lacroix, S, Martin, C, Houde, A, Veilleux, A, Flamand, N, Muccioli, GG, Raymond, F, Cani, PD, Di Marzo, V and Silvestri, C (2020). Germ-free mice exhibit profound gut microbiota-dependent alterations of intestinal endocannabinoidome signaling. Journal of Lipid Research 7085. https://doi.org/10.1194/jlr.RA119000424.Google Scholar
Manios, Y, Moschonis, G, Chrousos, GP, Lionis, C, Mougios, V, Kantilafti, M, Tzotzola, V, Skenderi, KP, Petridou, A, Tsalis, G, Sakellaropoulou, A, Skouli, G and Katsarou, C (2013) The double burden of obesity and iron deficiency on children and adolescents in Greece: the Healthy Growth Study. Journal of Human Nutrition and Dietetics 26(5), 470478. https://doi.org/10.1111/jhn.12025.Google Scholar
Matias, I, Gatta-Cherifi, B, Tabarin, A, Clark, S, Leste-Lasserre, T, Marsicano, G, Piazza, PV and Cota, D (2012) Endocannabinoids measurement in human saliva as potential biomarker of obesity. PloS One 7(7), 19. https://doi.org/10.1371/journal.pone.0042399.Google Scholar
Mattera, R, Stone, GP, Bahhur, N and Kuryshev, YA (2001) Increased release of arachidonic acid and eicosanoids in iron-overloaded cardiomyocytes. Circulation 103, 23952401. https://doi.org/10.1161/01.cir.103.19.2395.Google Scholar
McMurdie, PJ and Holmes, S (2014) Waste not, want not: Why rarefying microbiome data is inadmissible. PLOS Computational Biology 10, 112. https://doi.org/10.1371/journal.pcbi.1003531.Google Scholar
Moles, L and Otaegui, D (2020) The impact of diet on microbiota evolution and human health. Is diet an adequate tool for microbiota modulation? Nutrients 130. https://doi.org/10.3390/nu12061654.Google Scholar
Moore Heslin, A, O’donnell, A, Buffini, M, Nugent, AP, Walton, J, Flynn, A and McNulty, BA (2021) Risk of iron overload in obesity and implications in metabolic health. Nutrients 13(5), 1539. https://doi.org/10.3390/nu13051539.Google Scholar
Müller, TD, Finan, B, Bloom, S. R., D’Alessio, D, Drucker, DJ, Flatt, PR, Fritsche, A, Gribble, F, Grill, HJ, Habener, JF, Holst, JJ, Langhans, W, Meier, JJ, Nauck, MA, Perez-Tilve, D, Pocai, A, Reimann, F, Sandoval, DA, Schwartz, TW, … Tschöp, MH (2019). Glucagon-like peptide 1 (GLP-1). Molecular Metabolism 30, 72130. https://doi.org/10.1016/j.molmet.2019.09.010.Google Scholar
Nairz, M, Schroll, A, Sonnweber, T and Weiss, G (2010) The struggle for iron - a metal at the host-pathogen interface. Cellular Microbiology 12, 16911702. https://doi.org/10.1111/j.1462-5822.2010.01529.x.Google Scholar
Nairz, M and Weiss, G (2020) Iron in infection and immunity. Aspects of Molecular Medicine 75, 118. https://doi.org/10.1016/j.mam.2020.100864.Google Scholar
Ni, S, Yuan, Y, Kuang, Y, Li, X, Zhou, B, Di, A and Scindia, YM (2022) Iron metabolism and immune regulation. Frontiers in Immunology 111. https://doi.org/10.3389/fimmu.2022.816282.Google Scholar
Nutrition, N. R. C. (US) Subcommittee on Laboratory Animal Nutrition (1995) Nutrient Requirements of the Mouse. National Academies Press (US)).Google Scholar
Oexle, H, Gnaiger, E and Weiss, G (1999) Iron-dependent changes in cellular energy metabolism: Influence on citric acid cycle and oxidative phosphorylation. Biochim Biophys Acta 1413, 99107. https://doi.org/10.1016/s0005-2728(99)00088-2.Google Scholar
Okamoto, Y, Morishita, J, Tsuboi, K, Tonai, T and Ueda, N (2004) Molecular characterization of a phospholipase D generating anandamide and its congeners. Journal of Biological Chemistry 279, 52985305. https://doi.org/10.1074/jbc.M306642200.Google Scholar
Pereira, FC and Berry, D (2017) Microbial nutrient niches in the gut. Environmental Microbiology 19, 13661378. https://doi.org/10.1111/1462-2920.13659.Google Scholar
Peterson, DA, Gerrard, JM, Rao, GHR, Krick, TP and White, JG (1978) Ferrous iron mediated oxidation of arachidonic acid: Studies employing nitroblue tetrazolium (NBT). Prostaglandins and Medicine 1, 304317. https://doi.org/10.1016/0161-4630(78)90050-2.Google Scholar
Piomelli, D (2013) A fatty gut feeling. Trends in Endocrinology & Metabolism 24, 332341. https://doi.org/10.1016/j.tem.2013.03.001.Google Scholar
Piskin, E, Cianciosi, D, Gulec, S, Tomas, M and Capanoglu, E (2022) Iron absorption: Factors, limitations, and improvement methods. ACS Omega 7(24), 2044120456. https://doi.org/10.1021/acsomega.2c01833.Google Scholar
Poursharifi, P, Murthy, R, Prentki, M and Murthy Madiraju, SR (2017) Monoacylglycerol signalling and ABHD6 in health and disease. Diabetes, Obesity & Metabolism 1. https://doi.org/10.1111/dom.13008.Google Scholar
Psichas, A, Reimann, F and Gribble, FM (2015) Gut chemosensing mechanisms. The Journal of Clinical Investigation 125(3), 908. https://doi.org/10.1172/JCI76309.Google Scholar
Rockfield, S, Chhabra, R, Robertson, M, Rehman, N, Bisht, R and Nanjundan, M (2018) Links between iron and lipids: Implications in some major human diseases. Pharmaceuticals 11. https://doi.org/10.3390/ph11040113.Google Scholar
Rodríguez-Pérez, C, Vrhovnik, P, González-Alzaga, B, Fernández, MF, Martin-Olmedo, P, Olea, N, Fiket, Ž, Kniewald, G and Arrebola, JP (2018) Socio-demographic, lifestyle, and dietary determinants of essential and possibly-essential trace element levels in adipose tissue from an adult cohort. Environmental Pollution 878888. https://doi.org/10.1016/j.envpol.2017.09.093.Google Scholar
Romano, A, Coccurello, R, Giacovazzo, G, Bedse, G, Moles, A and Gaetani, S (2014) Oleoylethanolamide: A novel potential pharmacological alternative to cannabinoid antagonists for the control of appetite. BioMed Research International 110. https://doi.org/10.1155/2014/203425.Google Scholar
Romero, AM, Jordá, T, Rozès, N, Martínez-Pastor, MT and Puig, S (2018) Regulation of yeast fatty acid desaturase in response to iron deficiency. Biochimica et Biophysica Acta. Molecular and Cell Biology of Lipids 1863(6), 657668. https://doi.org/10.1016/j.bbalip.2018.03.008.Google Scholar
Rowland, I, Gibson, G, Heinken, A, Scott, K, Swann, J, Thiele, I, Tuohy, K (2018) Gut microbiota functions: metabolism of nutrients and other food components. European Journal of Nutrition 57, 124. https://doi.org/10.1007/s00394-017-1445-8.Google Scholar
Santos, M, Clevers, H, De Sousa, M and Marx, JJM (1998) Adaptive response of iron absorption to anemia, increased erythropoiesis, iron deficiency, and iron loading in β2-microglobulin knockout mice. Blood 91(8), 30593065. https://doi.org/10.1182Google Scholar
Seltzer, CC and Mayer, J (1963) Serum iron and iron-binding capacity in adolescents. ii. comparison of obese and nonobese subjects. The American Journal of Clinical Nutrition 13, 354361. https://doi.org/10.1093/ajcn/13.6.354.Google Scholar
Seyoum, Y, Baye, K and Humblot, C (2021) Iron homeostasis in host and gut bacteria – a complex interrelationship. Gut Microbes 13. https://doi.org/10.1080/19490976.2021.1874855.Google Scholar
Showalter, VM, Compton, DR, Martin, BR and Abood, ME (1996). Evaluation of binding in a transfected cell line expressing a peripheral cannabinoid receptor (CB2): identification of cannabinoid receptor subtype selective ligands. The Journal of Pharmacology and Experimental Therapeutics 3, 989999.Google Scholar
Silvestri, C and Di Marzo, V (2013) The endocannabinoid system in energy homeostasis and the etiopathology of metabolic disorders. Cell Metabolism 17(4), 475490. https://doi.org/10.1016/j.cmet.2013.03.001.Google Scholar
Simard, M, Archambault, AS, Lavoie, JPC, Dumais, É, Di Marzo, V and Flamand, N (2022) Biosynthesis and metabolism of endocannabinoids and their congeners from the monoacylglycerol and N-acyl-ethanolamine families. Biochemical Pharmacology 205, 115261. https://doi.org/10.1016/j.bcp.2022.115261.Google Scholar
Sung, Y, Yu, YC and Han, JM (2023) Nutrient sensors and their crosstalk. Experimental & Molecular Medicine 55(6), 10761089. https://doi.org/10.1038/s12276-023-01006-z.Google Scholar
Taschler, U, Hasenoehrl, C, Storr, M and Schicho, R (2017) Cannabinoid receptors in regulating the GI tract: Experimental evidence and therapeutic relevance. Handbook of Experimental Pharmacology, 239, 343362. https://doi.org/10.1007/164_2016_105.Google Scholar
Turcotte, C, Archambault, A-S, Dumais, É, Martin, C, Blanchet, M-R, Bissonnette, E, Ohashi, N, Yamamoto, K, Laviolette, M, Veilleux, A, Boulet, L-P, DMarzo, V and Flamand, N (2020). Endocannabinoid hydrolysis inhibition unmasks that unsaturated fatty acids induce a robust biosynthesis of 2-arachidonoyl-glycerol and its congeners in human myeloid leukocytes. FASEB Journal 42534265. https://doi.org/10.1096/fj.201902916R.Google Scholar
Viaud, S, Daillère, R, Boneca, IG, Lepage, P, Pittet, MJ, Ghiringhelli, F, Trinchieri, G, Goldszmid, R and Zitvoge, L (2014) Harnessing the intestinal microbiome for optimal therapeutic immunomodulation. Cancer Research 42174221. https://doi.org/10.1158/0008-5472.CAN-14-0987.Google Scholar
Wenzel, BJ, Stults, HB and Mayer, J (1962) Hypoferraemia in obese adolescents. Lancet 280, 327328. https://doi.org/10.1016/s0140-6736(62)90110-1.Google Scholar
Wright, MO and Fischer, JG (1997) The effect of high dietary iron and low vitamin E on lipid peroxidation and prostaglandin E2 in a model of colon cancer. Journal of the American Dietetic Association. https://doi.org/10.1016/S0002-8223(97)00540-3.Google Scholar
Yanoff, LB, Menzie, CM, Denkinger, B, Sebring, NG, McHugh, T, Remaley, AT and Yanovski, JA (2007) Inflammation and iron deficiency in the hypoferremia of obesity. International Journal of Obesity 31, 14121419. https://doi.org/10.1038/sj.ijo.0803625.Google Scholar
Yilmaz, B and Li, H (2018) Gut microbiota and iron: The crucial actors in health and disease. Pharmaceuticals 11, 120. https://doi.org/10.3390/ph11040098.Google Scholar
Zhou, YE, Kubow, S and Egeland, GM (2011) Is iron status associated with highly unsaturated fatty acid status among Canadian Arctic Inuit? Food & Function 2, 381385. https://doi.org/10.1039/C1FO10051CGoogle Scholar
Figure 0

Figure 1. Weight gain in mice fed Fe-enriched and Fe-depleted LFLS or HFHS diets. Groups of 12 mice (6F/6M) were fed Fe-enriched /or Fe-depleted diets combined with LFLS or HFHS diet for 28 days. Generalized linear regression models were used to identify the effects of Fe and macronutrient diet formulation interactions on weight gain (%) over time for 28 days of study. Data are expressed as mean ± SEM (n = 12).

Figure 1

Figure 2. Diet and Fe modulation of endocannabinoidome mediators and some of their corresponding fatty acids. Boxplot representation of the eCBome mediators. (A) N-acylethanolamines (NAEs), (B) 2-monoacylglycerols (2-MAGs), and (C) long chain ω-6 and ω-3 polyunsaturated fatty acids (PUFAs) response to Fe-depleted and Fe-enriched LFLS or HFHS diets. Data are expressed as the mean ± SEM (n = 12). P values of linear contrast analysis are detailed when significant (p < 0.05) using contrast tests between enriched and depleted Fe levels, LFLS and HFHS formulations, and the combination between Fe levels and formulations. The star ‘*’ symbol was used to show the effect of Fe alone or in interaction with LFLS or HFHS. The numeral ‘#’ symbol was used to denote the effect of only LFLS or HFHS. The samples were analysed at day 28 of the study.

Figure 2

Figure 3. Response of intestinal prostaglandins and mRNA gene expression of immune response in Fe-depleted and Fe-enriched LFLS or HFHS diets in the intestine. Boxplot representation of the eCBome mediators in (A) ileum and (B) caecum. mRNA expression of immune response as fold change (FC) calculated using the ΔΔCT method in Fe-depleted and Fe-enriched LFLS or HFHS diets in the intestine, ileum, and caecum. Data are expressed as the mean ± SEM (n = 12). P values of linear contrast analysis are detailed when significant (p < 0.05) using contrast tests between enriched and depleted Fe levels, LFLS and HFHS formulations and the combination between Fe levels and formulations. Gene expression was normalized to Hprt. The star ‘*’ symbol was used to show the effect of Fe alone or in interaction with LFLS or HFHS. The numeral ‘#’ symbol was used to denote the effect of only LFLS or HFHS. The samples were analysed at day 28 of the study.

Figure 3

Figure 4. Intestinal microbiota composition in response to Fe-enriched and Fe-depleted LFLS or HFHS diets. (A) Relative bacterial abundance at the family level in response to Fe-enriched and Fe-depleted LFLS or HFHS diets in ileum and caecum. Families representing less than 1% of total bacterial abundance were aggregated. Dendrogram showing hierarchical clustering based on Canberra distance between samples determines the sample order. The corresponding annotations for tissue, sex, diet, and Fe level are displayed. Principal component analysis shows the impact of Fe-depleted/enriched and LFLS/HFHS diets on gut microbiota composition in the (B) ileum, and (C) caecum. PERMANOVA indicates the significance of microbiota composition between the dietary conditions. The samples were analysed at day 28 of the study.

Figure 4

Figure 5. Effect of Fe-depleted and Fe-enriched LFLS or HFHS diets on bacterial relative abundance at the family level in the ileum and caecum. (A) Effect of Fe in the interaction of LFLS and HFHS formulations on intestinal microbial families. (B) Effect of solely LFLS or HFHS formulations. Data are expressed as the mean ± SEM (n = 48). P values of linear contrast analysis are detailed in the bottom when significant (p < 0.05) using contrast tests between enriched and depleted Fe levels, LFLS and HFHS formulations, and the combination between Fe levels and formulations. The star ‘*’ symbol was used to show the effect of Fe alone or interaction with LFLS or HFHS. The numeral ‘#’ symbol was used to denote the effect of only LFLS or HFHS. The samples analysed and showed are at day 28 of the study.

Figure 5

Figure 6. Iron influences in a sex-dependent manner circulating N-acylethanolamines (NAEs), cytokine gene expression, and intestinal microbial species. (A) Boxplot representation of the NAEs in plasma, (B) mRNA expression of Tgfb1 as fold change (FC) calculated using the ΔΔCT method, (C) relative abundances of Ruminococcaceae in the ileum and (D) Lachnospiraceae in the caecum. Data are expressed as the mean ± SEM (n = 48). P values of linear contrast analysis are marked with a star ‘*’ when significant (p < 0.05) using contrast test between enriched and depleted Fe levels, LFLS and HFHS formulations, the combination between Fe levels and formulations, and the sex of the animal.

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