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Network Analysis of Drug Effect on Triglyceride-associated DNA Methylation

Overview
Journal BMC Proc
Publisher Biomed Central
Specialty Biology
Date 2018 Oct 3
PMID 30275881
Citations 6
Authors
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Abstract

Background: DNA methylation, an epigenetic modification, can be affected by environmental factors and thus regulate gene expression levels that can lead to alterations of certain phenotypes. Network analysis has been used successfully to discover gene sets that are expressed differently across multiple disease states and suggest possible pathways of disease progression. We applied this framework to compare DNA methylation levels before and after lipid-lowering medication and to identify modules that differ topologically between the two time points, revealing the association between lipid medication and these triglyceride-related methylation sites.

Methods: We performed quality control using beta-mixture quantile normalization on 463,995 cytosine-phosphate-guanine (CpG) sites and deleted problematic sites, resulting in 423,004 probes. We identified 14,850 probes that were nominally associated with triglycerides prior to treatment and performed weighted gene correlation network analysis (WGCNA) to construct pre- and posttreatment methylation networks of these probes. We then applied both WGCNA module preservation and generalized Hamming distance (GHD) to identify modules with topological differences between the pre- and posttreatment. For modules with structural changes between 2 time points, we performed pathway-enrichment analysis to gain further insight into the biological function of the genes from these modules.

Results: Six triglyceride-associated modules were identified using pretreatment methylation probes. The same 3 modules were not preserved in posttreatment data using both the module-preservation and the GHD methods. Top-enriched pathways for the 3 differentially methylated modules are sphingolipid signaling pathway, proteoglycans in cancer, and metabolic pathways ( values < 0.005). One module in particular included an enrichment of lipid-related pathways among the top results.

Conclusions: The same 3 modules, which were differentially methylated between pre- and posttreatment, were identified using both WGCNA module-preservation and GHD methods. Pathway analysis revealed that triglyceride-associated modules contain groups of genes that are involved in lipid signaling and metabolism. These 3 modules may provide insight into the effect of fenofibrate on changes in triglyceride levels and these methylation sites.

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References
1.
Teschendorff A, Marabita F, Lechner M, Bartlett T, Tegner J, Gomez-Cabrero D . A beta-mixture quantile normalization method for correcting probe design bias in Illumina Infinium 450 k DNA methylation data. Bioinformatics. 2012; 29(2):189-96. PMC: 3546795. DOI: 10.1093/bioinformatics/bts680. View

2.
Kriebel J, Herder C, Rathmann W, Wahl S, Kunze S, Molnos S . Association between DNA Methylation in Whole Blood and Measures of Glucose Metabolism: KORA F4 Study. PLoS One. 2016; 11(3):e0152314. PMC: 4809492. DOI: 10.1371/journal.pone.0152314. View

3.
Safran M, Dalah I, Alexander J, Rosen N, Iny Stein T, Shmoish M . GeneCards Version 3: the human gene integrator. Database (Oxford). 2010; 2010:baq020. PMC: 2938269. DOI: 10.1093/database/baq020. View

4.
Ruan D, Young A, Montana G . Differential analysis of biological networks. BMC Bioinformatics. 2015; 16:327. PMC: 4600256. DOI: 10.1186/s12859-015-0735-5. View

5.
Irvin M, Zhi D, Joehanes R, Mendelson M, Aslibekyan S, Claas S . Epigenome-wide association study of fasting blood lipids in the Genetics of Lipid-lowering Drugs and Diet Network study. Circulation. 2014; 130(7):565-72. PMC: 4209699. DOI: 10.1161/CIRCULATIONAHA.114.009158. View