| Literature DB >> 30255820 |
Svetlana Cherlin1, Maggie Haitian Wang2, Heike Bickeböller3, Rita M Cantor4.
Abstract
BACKGROUND: Fenofibrate (Fb) is a known treatment for elevated triglyceride (TG) levels. The Genetics of Lipid Lowering Drugs and Diet Network (GOLDN) study was designed to investigate potential contributors to the effects of Fb on TG levels. Here, we summarize the analyses of 8 papers whose authors had access to the GOLDN data and were grouped together because they pursued investigations into Fb treatment responses as part of GAW20. These papers report explorations of a variety of genetics, epigenetics, and study design questions. Data regarding treatment with 160 mg of micronized Fb per day for 3 weeks included pretreatment and posttreatment TG and methylation levels (ML) at approximately 450,000 epigenetic markers (cytosine-phosphate-guanine [CpG] sites). In addition, approximately 1 million single-nucleotide polymorphisms (SNPs) were genotyped or imputed in each of the study participants, drawn from 188 pedigrees.Entities:
Keywords: Epigenetics; Fenofibrate treatment; GOLDN study; Predictive modeling; Triglycerides
Mesh:
Substances:
Year: 2018 PMID: 30255820 PMCID: PMC6156837 DOI: 10.1186/s12863-018-0652-5
Source DB: PubMed Journal: BMC Genet ISSN: 1471-2156 Impact factor: 2.797
Primary aims and statistical modeling methods
| First Named Author | Aims of the Analysis | Analytic Methods |
|---|---|---|
| Cantor | Filter CpG sites for those exhibiting genetic contributions to ML; targeted meQTL studies | Concordance of familiality and variability of CpG distributional outliers, LMM |
| Cherlin | Predicting TG response to Fb with SNPs | LASSO penalized regression |
| Hsu | Evaluating adjustments for family structure | LMM |
| Wu | Genome-wide | LMM |
| Xia | Evaluate ML in predicting TG response to Fb | ANN, GEE, and LMM |
| Xu | Predicting TG response to Fb with SNPs | LMM and KST |
| Yang | Association between homozygosity intensity and TG response to Fb | GEE |
| Yasmeen | Predicting TG response to Fb with SNPs and CpG ML | KST and linear regression |
ANN Artificial neural networks, CpG Cytosine-phosphate-guanine, Fb Fenofibrate, GEE Generalized estimating equations, KST Kernel score test, LASSO Least absolute shrinkage and selection operator, LMM Linear mixed models, meQTL Methylation quantitative trait locus, ML Methylation level, SNPs Single nucleotide polymorphisms, TG Triglyceride levels
Design elements of studies addressing fenofibrate treatment effects
| First Named Author | Outcome Variable | Genetic & Genomic Predictors | Baseline Measures | PCs | Covariates Included | Treatment of Family Data |
|---|---|---|---|---|---|---|
| Cantor | Post ML sib corrs & SDs, meQTL | SNPs | Pre ML sib corrs & SDs | LMM | ||
| Cherlin | Ln (postTG) | SNPs | Ln (preTG) | 20 | Age, center, smoking | PCs |
| Hsu | PreTG | SNPs | 4 | Age, sex, center | LMM Independents | |
| Wu | Ln (postML − preML) | SNPs | 10 | Age, sex, batch, smoking | LMM | |
| Xia | (PostTG − preTG)/preTG | PreTG | 10 | Age, sex, smoking, ML | Empirical kinships | |
| Xu | PostTG − preTG | SNPs | 10 | Age, center, ATP, smoking, IDF | LMM | |
| Yang | PostTG − preTG | SNPs | 10 | Age, sex, center, ATP, smoking, IDF | GEE | |
| Yasmeen | Ln (postTG) | ML, SNPs | Ln (preTG) | none | Age | Independents |
ATP Adult Treatment Panel, IDF International Diabetes Federation, LMM linear mixed model, Ln natural logarithm, meQTL methylation quantitative trait locus, ML Methylation levels, PCs Number of principal components; pre, pretreatment; post, posttreatment, SDs Standard deviations; sib corrs, sibling correlations, SNPs Single-nucleotide polymorphisms, TG Triglyceride levels
Primary results for GAW20 treatment response group
| First Named Author | Results |
|---|---|
| Cantor | Genetic screening of ML identifies |
| Cherlin | LASSO regression on LD-pruned GWAS data provides low prediction power in simulated and real data; increasing samples to 7 K provides detectable signals and reasonable prediction accuracy. |
| Hsu | LMM is the preferable approach when adjusting for family structure. |
| Wu | Genome-wide studies identify 229 |
| Xia | Adding CpG ML to a neural network with SNPs and clinical traits improves prediction of TG response to Fb by 4%. |
| Xu | TG LMM identifies 4 significant SNPs, including rs964184 previously associated with lipid lowering statins. |
| Yang | |
| Yasmeen | Including CpG–SNP interactions improves a KST TG prediction model; previously reported |
CpG Cytosine-phosphate-guanine, Fb Fenofibrate, GEE Generalized estimating equation, GWAS Genome-wide association study, KST Kernel score test, LASSO Least absolute shrinkage and selection operator, LD Linkage disequilibrium, LMM Linear mixed models, meQTL Methylation quantitative trait locus, ML Methylation level, SNP Single-nucleotide polymorphism, TG Triglyceride