| Literature DB >> 27981852 |
Sarah S Park1, David A Skaar1, Randy L Jirtle1,2,3, Cathrine Hoyo1.
Abstract
Obesity is a complex and multifactorial disease, which likely comprises multiple subtypes. Emerging data have linked chemical exposures to obesity. As organismal response to environmental exposures includes altered gene expression, identifying the regulatory epigenetic changes involved would be key to understanding the path from exposure to phenotype and provide new tools for exposure detection and risk assessment. In this report, we summarize published data linking early-life exposure to the heavy metals, cadmium and lead, to obesity. We also discuss potential mechanisms, as well as the need for complete coverage in epigenetic screening to fully identify alterations. The keys to understanding how metal exposure contributes to obesity are improved assessment of exposure and comprehensive establishment of epigenetic profiles that may serve as markers for exposures.Entities:
Keywords: DNA methylation; cadmium; epigenetics; lead; obesity
Mesh:
Year: 2016 PMID: 27981852 PMCID: PMC5514981 DOI: 10.2217/epi-2016-0047
Source DB: PubMed Journal: Epigenomics ISSN: 1750-192X Impact factor: 4.778
Relationship between childhood obesity and its correlates and epigenetic alterations.
| Dalgaard (2016) | 26824653 | Germany | n = 18 obese and n = 22 nonobese children ages 2–15 years (prepubertal) | Mice: glucose tolerance, basal metabolic rate, levels of fasting plasma hormones, fatty acids, adipokines, adipocyte histology, size and number | Mice: perigonadal white adipose tissue. Humans: subcutaneous white adipose tissue; qRT-PCR, RNA-seq and reduced representation bisulfite sequencing | Trim28 dependent network can trigger obesity in an on/off manner. An obesity ‘on’ position is associated with the reduced expression of | [ |
| Mansego (2016) | 26780939 | Spain | n = 12 obese and n = 12 nonobese children and n = 95 in validation sample | BMI | Peripheral blood leukocytes; 450K and validation through MassARRAY EpiTYPER | 16 differentially methylated CpGs identified between obese and nonobese children. Three miRNAs, | [ |
| Wang (2015) | 26717317 | China | n = 110 severely obese and n = 110 nonobese children ages 7–17 years, age and sex matched | Height, weight, hip and waist circumference, fasting levels of glucose, total cholesterol, triglycerides, HDL-C, LDL-C, ALT | Peripheral blood leukocytes; MassARRAY EpiTYPER on | [ | |
| Huang (2015) | 26646899 | Australia | n = 54 severely obese and n = 54 nonobese children (each group pooled for methylation analysis). For validation, n = 78 obese and n = 71 nonobese children with mean age: 12–13 years (which includes the discovery set) | BMI, fasting insulin and glucose, blood pressure, cholesterol, LDL, HDL, triglycerides | Pooled DNA from whole blood; 450K and pyrosequencing for validation on individual samples | 129 differentially methylated CpG loci in 81 genes with >10% difference in methylation. Candidate genes validated and identified include | [ |
| Cao-Lei (2015) | 26098974 | Canada | n = 31 (19 male and 12 female adolescents at mean age 13.3 years) | Height, weight, waist circumference | T-cells from blood; 450K | Prenatal maternal stress is associated with BMI and central adiposity and is mediated by DNA methylation of genes in Type 1 and 2 diabetes pathways with a potentially protective role | [ |
| Pan (2015) | 26011824 | Singapore | n = 991 infants (weight and subscapular and triceps skinfolds measured between birth and 24 months) | Weight, length and subscapular and triceps skinfold | Umbilical cord tissue; 450K | Reported positive association between | [ |
| Wu (2015) | 25922107 | China | n = 59 obese and n = 39 nonobese children ages 8–18 years | BMI, glucose, total cholesterol, triglycerides, HDL, LDL. Questionnaire about sedentary behavior and physical activity | Peripheral blood leukocytes; MassARRAY EpiTYPER on | Associations between | [ |
| Eriksson (2015) | 25887538 | Greece | n = 24 obese and n = 23 nonobese pre-adolescent females; n = 11 obese and n = 11 nonobese pre-adolescent males ages 9–13 years | BMI | Peripheral whole blood; 27K | Genome wide DNA methylation reveals lower | [ |
| Ding (2015) | 25871514 | China | n = 32 obese and n = 32 nonobese children sex and age matched ages 3–6 years | BMI | Peripheral blood leukocytes; 385K and validation of select genes using pyrosequencing | 251 promoters and 575 CpG islands demethylated in obese compared to nonobese children and 141 promoters and 277 CpG islands hypermethylated and a chromosomal imbalance of demethylated promoters and CpG islands on chromosomes 3,16,17 and 19 and more differentially methylated promoters and CpG islands on chromosome X over Y. Validated differentially methylated promoters of | [ |
| Gardner (2015) | 25779370 | USA | n = 32 obese and n = 32 nonobese African–American children ages 5–6 years | BMI, percent body fat, questionnaire on food and satiety responsiveness | Saliva; DNA methylation analysis on the promoters of seven candidate obesity genes: | Food and satiety responsiveness were respectively higher and lower in obese female children than nonobese females. | [ |
| Wu (2015) | 25696115 | China | n = 59 obese and n = 39 nonobese children ages 8–18 years | Weight, height and full metabolic panel | Peripheral blood leukocytes; MassARRAY | Methylation of | [ |
| Yan (2014) | 25347678 | | Weight, body composition and adipose cell size | Inguinal white adipose tissue and interscapular brown adipose tissue for RNA expression (qRT-PCR) of adipose related genes | Increased exposure to PAH led to increases in weight, fat mass and adipose gene expression in offspring and also grandoffspring. Higher expression of | [ | |
| Garcia-Cardona (2014) | 24549138 | Mexico | n = 106 (66 male and 40 female adolescents ages 10–16 years) | BMI, fasting glucose, cholesterol, triglycerides, leptin, total adiponectin | Peripheral blood leukocytes; | [ | |
| Azzi (2014) | 24316753 | France | n = 254 mother–infant pairs | Biparietal diameter, head and abdominal circumferences, femur length, weight, height and C-peptide levels | Umbilical cord blood; ASMM-RTQ-PCR of the | Positive association between | [ |
| Yoo (2014) | 24222450 | South Korea | n = 90 mother–infant pairs and follow-up at ages 7–9 years | Height, weight, waist circumference, glucose, triglycerides, cholesterol, HDL cholesterol | Umbilical cord blood from infants and blood from the median cubital vein in children after overnight fasting; pyrosequencing of | Hypermethylation of | [ |
| Deodati (2013) | 23774180 | Italy | n = 85 obese children age ∼11 years | Oral glucose tolerance, blood levels of C-peptide, insulin and glucose, blood pressure, body composition (DXA scan), height, weight, birth weight, triglycerides, total cholesterol, HDL, LDL, adiponectin and leptin | Blood lymphocytes; Methyl-Profiler DNA Methylation qPCR Assay for | Association between the degree of | [ |
| Xu (2013) | 23644594 | USA | n = 48 obese (24 females, 24 males) and n = 48 (sex and age-matched) nonobese African–American youth ages 14–20 years | BMI | Peripheral blood leukocytes; 450K | Both DMCs and DVCs can predict obesity status | [ |
| Perng (2013) | 23638120 | Colombia | n = 553 children ages 5–12 years | BMI-for-age Z-score, waist circumference Z-score, skinfold thickness ratio (subscapular to triceps) Z-score, height-for-age Z-score. | Peripheral blood leukocytes; pyrosequencing | Lower | [ |
| St-Pierre (2012) | 22907587 | Canada | n = 50 mother–infant pairs | Birth and placenta weight, height, head and thorax circumferences | Maternal and umbiliical cord blood and placental tissue biopsy (maternal and fetal sides) intervillous tissue and chorionic villi and fetal villous tissue; pyrosequencing of | Placental DNA methylation changes of | [ |
| Kuehnen (2012) | 22438814 | Germany | n = 91 females and n = 80 males obese average age 11 years and n = 55 females and n = 35 males nonobese average age 17.9 years and n = 21 from longitudinal birth cohort study with peripheral blood DNA at ages 5 or 13 years (normal weight) and at 13 or 20 years (obese) and newborn screening cards (peripheral blood DNA from Guthrie spots) | BMI | Peripheral blood; bisulfite sequencing of | DNA hypermethylation variant at intron 2-exon 3 boundary in | [ |
| Relton (2012) | 22431966 | UK | Two birth cohorts. n = 24 (11–13 years) for gene expression analysis and n = 178 (∼9 years) for DNA methylation analysis | BMI, birth weight and body composition–fat and lean mass (DXA scan) | Peripheral blood and umbilical cord blood; sodium bisulfite pyrosequencing and GoldenGate assay | DNA methylation in umbilical cord blood has some association with altered gene expression, body size and composition in childhood | [ |
| Almen (2012) | 22234326 | Greece | n = 23 obese and n = 24 nonobese pre-adolescent females ages ∼10–12 years | Height and weight | Peripheral whole blood; 27K | Methylation level differences in five sites (six genes) between homozygous carriers of normal allele and obesity risk allele of | [ |
| Michels (2011) | 21980406 | USA | n = 319 mother–infant pairs | Birth weight, gestational age, birth weight/placenta weight ratio, height | Umbilical cord blood; | Lower | [ |
| Godfrey (2011) | 21471513 | UK | Two cohorts. n = 78 infants then as 9 year olds and n = 239 infants then as 6 year olds | Adiposity (measured by DXA scan), birth weight | Umbilical cord tissue; MassARRAY EpiTYPER of five candidate genes | Higher methylation of | [ |
ALT: Alanine aminotransferase; ASMM; Allele-specific methylated multiplex; DMC: Differentially methylated CpG site; DMR: Differentially methylated region; DVC: Differentially variable CpG site; HDL: High-density lipoprotein; LDL: Low-density lipoprotein; MS; Methylation specific; PAH; Polycyclic aromatic hydrocarbon; qRT; Quantitative reverse transcriptase; RTQ; Real-time quantitative.
Relationships between cadmium or lead exposure and obesity and its correlates
| Ba (2016) | 27634282 | | Early life cadmium exposure | Adiposity (body fat, lean mass and total mass), plasma TC, LDL, VLDL, HDL, plasma and liver TG, plasma free fatty acids, plasma leptin, gut microbiota and hepatic gene expression | In male mice, LDC exposure led to fat accumulation and increased levels of plasma TC, TG and free fatty acids and liver TG, alterations in gut microbiota and hepatic gene expression related to fatty-acid and lipid metabolism was enhanced. Transplant of fecal microbiota from LDC exposed male mice into unexposed male controls led to increased mass and percent body fat in these recipients | [ | |
| Wu (2016) | 26962054 | | Early-life lead exposure | Gut microbiota composition and body weight | Increased adult body weight in male mice. Decrease of aerobes and increase of anaerobes in lead exposed mice. Changes in gut microbiota and body weight in male mice | [ | |
| Cassidy-Bushrow (2016) | 26358768 | USA | n = 299 children (ages 2–3 years) | Early-life lead exposure | BMI | Having detectable blood lead levels associated with smaller body size at 2–3 years of age | [ |
| Faulk (2014) | 25105421 | —— | Early-life lead exposure | Energy expenditure, spontaneous activity, food intake, body weight and composition and glucose tolerance | Increases in food intake at differing ages for females and males. Increased body fat, body weight and insulin response in males | [ | |
| Delvaux (2014) | 24742724 | Belgium | n = 114 children ages 7–9 years (n = 57 females and 57 males) | Prenatal cadmium exposure | BMI, abdominal fat (waist circumference) and subcutaenous fat (skinfolds) | Inverse association between prenatal cadmium exposure and body weight, BMI, abdominal fat and subcutaenous fat in females | [ |
| Scinicariello (2013) | 24099784 | USA | NHANES data 1999–2006 children and adolescents ages 3–19 years | Lead exposure | BMI | Inverse association between blood lead levels and BMI | [ |
| Tian (2009) | 19404590 | China | n = 106 infants measured again at ∼4.5 years | Prenatal cadmium exposure | Birth weight and height, weight and height at ∼4.5 years, WPPSI-R | Higher levels of cord blood cadmium associated with lower birth weight and length and at ∼4.5 years, lower height and WPPSI-R-IQ full scores | [ |
| Leasure (2008) | 18335103 | —— | Early-life lead exposure | Body weight, motor activity, dopamine levels | Late onset obesity in 1-year-old male mice and motor abnormalities in male mice | [ | |
| Berkowitz (2006) | 16376613 | USA | n = 169,878 birth certificate data for five communities in proximity to the Bunker Hill Superfund site | Prenatal lead exposure (due to lead smelter fire). Air emissions of high concentrations of lead | Preterm birth, SGA, TLBW and TMBW among term infants | Maternal lead exposure associated with increased risk of TLBW and SGA and reduced TMBW | [ |
| Sanin (2001) | 11331680 | Mexico | n = 329 mother–infant pairs | Early-life lead exposure | Weight at age one month and weight gain from birth to one month | Maternal lead burden inversely associated with infant weight at one month of age and weight gain between birth and one month of age | [ |
| Gonzalez-Cossio (1997) | 9346987 | Mexico | n = 272 mother–infant pairs | Early-life lead exposure | Birth weight | Maternal bone-lead burden inversely associated with birth weight | [ |
| Kim (1995) | 8529592 | USA | n = 236 at age ∼7 years (1975–1978) and follow-up 13 years later n = 58 at age ∼20 years (1989–1990) | Lead exposure | Weight and height | Dentin lead levels were positively associated with BMI in 1975–1978 and increase in BMI between 1975–1978 and 1989–1990 | [ |
HDL: High-density lipoprotein; LDC; Low dose cadmium; LDL: Low-density lipoprotein; SGA: Small for gestational age; TC: Total cholesterol; TG: Triglycerides; TLBW: Term low birth weight; TMBW: Term mean birth weight; VLDL: Very low-density lipoprotein.
Relationships between cadmium or lead exposure and epigenetic alterations
| Nye (2016) | NA | USA | n = 321 mother–infant pairs | Prenatal lead exposure | Birth weight, changes in WHZ between birth to 1 year, 1–2 years and 2–3 years of age and DNA methylation | Peripheral blood leukocytes (umbilical cord); pyrosequencing of | Prenatal lead exposure inversely associated with birth weight, positively associated with WHZ change by 2–3 years and hypermethylation at the | [ |
| Sen (2015) | 26417717 | USA | n = 35 mother–infant pairs | Prenatal lead exposure | DNA methylation | Dried blood spots: MNBS, CNBS, CCBS; 450K | 564 loci with altered DNA methylation in the CNBS of children whose mothers had high neonatal blood lead levels | [ |
| Vidal (2015) | 26173596 | USA | n = 319 mother–infant pairs | Prenatal cadmium exposure | Birth weight and DNA methylation | Peripheral blood leukocytes (umbilical cord); pyrosequencing of | Higher maternal cadmium levels associated with lower birth weight and lower DNA methylation at the | [ |
| Li (2016) | 26115033 | USA | n = 64 females and n = 41 males ages 25–30 years (Blood lead concentration data available for these individuals at ages birth to 78 months) | Early-life lead exposure | DNA methylation of 22 imprinted genes | Peripheral blood leukocytes; MassARRAY EpiTYPER | Early-life lead exposure associated with sex-dependent DNA methylation differences in the imprinted gene DMRs of | [ |
| Sen (2015) | 26077427 | USA | n = 25 males and n = 18 females from ages 3 months to 5 years | Early-life lead exposure | DNA methylation | Dried blood spots; 450K | Early-life lead exposure leads to 5-mC clustering into three sub-types: sex-specific and conserved. In the conserved subtype, increased DNA methylation around the transcription start site of | [ |
| Sen (2015) | 26046694 | Mexico | n = 24 female and n = 24 male infants and | Prenatal lead exposure | DNA methylation | Umbilical cord blood; 450K and MeDIP-450K (modified 450K) | Lead exposure associated 5-mC and 5-hmC clusters identified. These can be divided into sex-independent and sex-dependent categories with possible roles as early biomarkers of lead exposure | [ |
| Senut (2014) | 24519525 | —— | Lead exposure | Neuronal differentiation and DNA methylation | hESCs; 450K | Lead exposure affects neuronal differentiation of hESCs altering number and morphology of generated neurons. Lead exposure also alters DNA methylation of genes involved in neurodevelopmental pathways | [ | |
| Sanders (2014) | 24169490 | USA | n = 17 mother–infant pairs | Prenatal cadmium exposure | DNA methylation | Maternal venous blood and umbilical cord blood; MIRA | Cadmium exposure associated patterns of DNA methylation in maternal and newborn DNA | [ |
| Faulk (2013) | 24059796 | —— | Early-life lead exposure | Body weight and DNA methylation | Tail DNA; coat color classification and pyrosequencing of imprinted | Dose and sex-specific effects were identified. Increase in wean body weight in males developmentally exposed to lead. Male specific effects at | [ | |
| Kippler (2013) | 23644563 | Bangladesh | n = 127 mother–infant pairs and n = 56 children age 4.5 years | Prenatal cadmium exposure | Birth weight and DNA methylation | Umbilical cord blood and blood mononuclear cells from the 4.5-year-old children; 450K | Maternal cadmium exposure associated with sex-specific changes to DNA methylation. CpG sites associated with cadmium exposure identified in both newborns and 4.5 year old children and cadmium-associated changes in methylation related to lower birth weight | [ |
| Schneider (2013) | 23246732 | —— | Early-life lead exposure | Protein expression of Dnmts and methyl cytosine-binding proteins | Hippocampus; Western blot of DNA methyltransferases (Dnmt1, Dnmt3a) and methyl cytosine-binding protein (MeCP2, Mbd1) | Lead exposure affects Dnmt1 and Dnmt3a expression in the rat hippocampus. Expression of MeCP2 is affected by lead exposure in females | [ |
CNBS: Child neonatal blood spots; CCBS: Child's current blood spot; Dnmts: DNA methyl-transferases; hESCs: Human embryonic stem cells; MIRA: Methylated CpG island recovery assay; MNBS: Maternal neonatal blood spots; NA: Not available; WHZ: Weight-for-height Z score.
Hypothesized relationships linking exposure, epigenetics and obesity.
This schema summarizes the hypothesized relationships between an exposure such as to heavy metals and increased risk of obesity and its comorbidities including cardiovascular disease, Type 2 diabetes and dyslipidemia. Epigenetic alterations may provide a means by which metal exposure alters obesity risk, but the known neurodevelopmental effects and remodeling of gut microbiota by metal exposures may also contribute, influencing behavior and metabolism. Bidirectional interactions between neurodevelopmental effects, the microbiome and the epigenome could together alter each of these factors to individually or synergistically contribute to obesity. The suggested complexity of interactions highlights the need for comprehensive ascertainment of exposure and their effects.