| Literature DB >> 33962692 |
Jordi Mayneris-Perxachs1,2,3, Marina Cardellini4, Lesley Hoyles5,6, Jèssica Latorre1,2,3, Francesca Davato4, José Maria Moreno-Navarrete1,2,3, María Arnoriaga-Rodríguez1,2,3, Matteo Serino7,8, James Abbott5, Richard H Barton5, Josep Puig1,2,3, Xavier Fernández-Real9, Wifredo Ricart1,2,3, Christopher Tomlinson5, Mark Woodbridge5, Paolo Gentileschi10, Sarah A Butcher5, Elaine Holmes5, Jeremy K Nicholson5, Vicente Pérez-Brocal11,12, Andrés Moya11,12, Donald Mc Clain13,14, Rémy Burcelin7,8, Marc-Emmanuel Dumas5,15,16,17, Massimo Federici4, José-Manuel Fernández-Real18,19,20.
Abstract
BACKGROUND: The gut microbiome and iron status are known to play a role in the pathophysiology of non-alcoholic fatty liver disease (NAFLD), although their complex interaction remains unclear.Entities:
Keywords: Ferritin; Gut microbiome; Iron status; Metagenomics; Non-alcoholic fatty liver disease; Obesity; Shotgun sequencing; Systems medicine
Mesh:
Substances:
Year: 2021 PMID: 33962692 PMCID: PMC8106161 DOI: 10.1186/s40168-021-01052-7
Source DB: PubMed Journal: Microbiome ISSN: 2049-2618 Impact factor: 14.650
Fig. 1Association of serum ferritin with liver fat accumulation, gene richness and the gut microbiome composition. Association of serum ferritin with degree of liver fat accumulation in a the discovery and b replication cohorts (Mann-Kendall trend test and Wilcoxon tests). c Association of hs-CRP with serum ferritin quartiles in the replication cohort (Mann-Kendall trend test and Wilcoxon tests). d Association of microbial gene richness with ferritin quartiles in a subsample of obese women from the discovery and replication cohorts (generalized linear model GLM). e Bacterial families and f genera associated with serum ferritin in a subsample of obese women from the discovery and replication cohorts. Mnet penalized regression models were built on bacterial data including age, BMI, country and hs-CRP as covariates. g Volcano plot of differential bacterial abundance and h metagenome KEGG functions associated with ferritin as calculated from shotgun metagenomic sequencing in an independent cohort of obese and non-obese subjects, adjusting for age, BMI, sex and hs-CRP. Significantly different taxa are coloured according to phylum. adaB, methylated-DNA-[protein]-cysteine S-methyltransferase; cpg; glutamate carboxypeptidase; cycA; d-serine/d-alanine/glycine transporter; fabA, 3-hydroxyacyl-[acyl-carrier protein] dehydratase/trans-2-decenoyl-[acyl-carrier protein] isomerase; fabM; trans-2-decenoyl-[acyl-carrier protein] isomerase; gshA, glutamate-cysteine ligase; nei endonuclease VIII; entF, enterobactin synthetase component F; FTR, FTH1, efeU, high-affinity iron transporter; hemG; menaquinone-dependent protoporphyrinogen oxidase; hutM, histidine permease; mtsC; iron/zinc/manganese/copper transport system permease protein; mtsA; iron/zinc/manganese/copper transport system substrate-binding protein; PARP, poly [ADP-ribose] polymerase; seqA; negative modulator of initiation of replication; yqjH, ferric-chelate reductase (NADPH)
Fig. 2Association of transcriptomic data with serum ferritin. a Permutation test for the goodness-of-fit (R2Y) and goodness of prediction (Q2Y) obtained from the O-PLS model between serum ferritin and hepatic transcriptome in a subsample of the discovery and replication cohorts from Italy and Spain (n = 86). b Significant transcripts associated with serum ferritin after further validation of the O-PLS significant variables by pSC adjusting for age, sex, BMI and country. c Pathways significantly associated with serum ferritin based on mapping associated transcripts by over-representation analysis with hypergeometric test. d Permutation tests for the O-PLS model between serum ferritin and SLCs (n = 86). e Significant SLCs associated with serum ferritin after further validation of the O-PLS results by pSC adjusting for age, sex, BMI, and country. f O2-PLS scores for the joint variation between microbial families and genes associated with serum ferritin. A model with 2 predictive components, and 1 orthogonal component for the genes and bacterial families blocks, was constructed based on 7-fold cross-validation. g O2-PLS joint loadings plots, where pcorr represents the correlation-scaled loadings from the gene block and qcorr represents the correlation-scaled loadings from the bacterial families block. h Heatmap displaying z-scores of the ferritin-associated transcripts for each subject. Clustering was based on Euclidean distances and Ward linkage. Genes associated with liver fat accumulation from O-PLS modelling are highlighted in bold, whereas those associated with bacterial families from O2-PLS modelling are highlighted in colour boxes. i Heatmap for the pSC adjusted by age, BMI, sex, and country between ferritin-associated plasma and j urine metabolites with ferritin-associated transcripts (n = 86). k Significant (p < 0.05) pSC adjusted for age, BMI and country, between ferritin-associated families and transcripts (n = 56). Only significant associations (p < 0.05) are displayed. Significant associations after a pFDR correction (pFDR < 0.05) are highlighted with a black box. l–n Expression of upregulated (GSK3B, PDE7A, SBNO2) and o–s downregulated genes (GYS2, SEC24B, SOCS2, MTUS1 and SLC51A) in human primary hepatocytes after treatment with iron and palmitic acid. Data are mean ± SEM. Comparisons by one-way ANOVA. *p < 0.05, **p < 0.01, ***p < 0.001 compared to control group based on t test. #p < 0.05, ##p < 0.01, ###p < 0.001 compared to PA group based on t test. Ctrl, control group; PA, palmitic acid; Fe48h, pre-treatment iron 50 μM for 48h; Fe72h, pre-treatment iron 50 μM for 72h; Fe48h + PA, pre-treatment iron 50 μM for 48h + palmitic acid 200 μM for 24 h; Fe72h + PA, pre-treatment iron 50 μM for 72 h + palmitic acid 200 μM for 24 h
Fig. 3Associations of metabolomic data with serum ferritin. Permutation tests for the goodness-of-fit (R2Y) and goodness of prediction (Q2Y) obtained from the O-PLS model between serum ferritin and a the serum (n = 48) and e urine metabolome (n = 47) in the discovery cohort, and b the serum (n = 328) and f urine metabolome (n = 322) in the replication cohort. Significant c, d serum and g, h urine metabolites associated with serum ferritin after further validation of O-PLS identified metabolites by pSC adjusting for age, sex, BMI and country. i O2-PLS scores for the joint variation between plasma and urine metabolites and microbial families associated with serum ferritin. A model with 2 predictive components, and 0 and 1 orthogonal component for the metabolites and bacterial families blocks, was constructed based on 7-fold cross-validation. j O2-PLS joint loadings plots, where pcorr represents the correlation-scaled loadings from the gene block and qcorr represents the correlation-scaled loadings from the bacterial families block. k Heatmap for the pSC adjusted by age, BMI and country between ferritin-associated urine and l plasma metabolites with ferritin-associated bacterial families (n = 56). Only significant associations (p < 0.05) are displayed. Significant associations after a pFDR correction (pFDR < 0.05) are highlighted with a black box
Fig. 4Validation studies in primary hepatocytes and FMT mice. a Scheme of the experimental design for study 1. Mice were fed for 9 weeks diets containing low- (LI), low-normal- (LNI), high-normal- (HNI), moderately high- (MHI) and high- (HI) iron doses. b Heatmap displaying genus relative abundances for each mouse. c Principal coordinate analysis (PCoA) depicting dissimilarities between groups based on unifrac distance metrics. d Scheme of the experimental design for study 2. Mice were fed either a high fat diet (HFD) or a no-HFD diet containing four different iron doses (LI, LNI, HNI, MHI) for 10 weeks. e Variations in the Shannon diversity index, f Chao1 richness estimator and g observed species of mice fed either a HFD or a no-HFD with different iron doses (LI, LNI, HNI, MHI). h PCoA based on Canberra distance metric for the no-HFD-fed mice and i the HFD-fed mice with different iron doses. Differences in microbial composition between iron doses for each diet were assessed by PERMANOVA using 999 permutations. j, k Permutation tests for the O-PLS models between iron dose and bacterial families or genera in HFD-fed mice, respectively. l Significant families and m genera identified from O-PLS regression loadings to be associated with iron dose. n Scheme of the experimental design for study 3. Low-ferritin (n = 3) and high-ferritin (n = 3) microbiota human donors were selected and for each donor their faecal samples were transplanted n = 6–8 mice after antibiotic treatment. After 14 days following colonization gavage mice were sacrificed and iron and liver fat accumulation-related genes (n = 22) were measured by PCR. o Permutation test for the O-PLS-DA model between mice genes and the human donor group (low- or high- ferritin). p Significant mouse genes associated with donor group from O-PLS-DA regression loadings. q Ferroportin (Slc40a1) and r Tfrc expression according to the donor ferritin concentration