| Literature DB >> 35933330 |
Xiuyuan Jin1,2, Liye Zhang1,2, Jiadong Ji3, Tao Ju1,2, Jinghua Zhao4, Zhongshang Yuan5,6.
Abstract
BACKGROUND: Transcriptome-wide association studies (TWASs) have shown great promise in interpreting the findings from genome-wide association studies (GWASs) and exploring the disease mechanisms, by integrating GWAS and eQTL mapping studies. Almost all TWAS methods only focus on one gene at a time, with exception of only two published multiple-gene methods nevertheless failing to account for the inter-dependence as well as the network structure among multiple genes, which may lead to power loss in TWAS analysis as complex disease often owe to multiple genes that interact with each other as a biological network. We therefore developed a Network Regression method in a two-stage TWAS framework (NeRiT) to detect whether a given network is associated with the traits of interest. NeRiT adopts the flexible Bayesian Dirichlet process regression to obtain the gene expression prediction weights in the first stage, uses pointwise mutual information to represent the general between-node correlation in the second stage and can effectively take the network structure among different gene nodes into account.Entities:
Keywords: Biological networks; Blood pressure; Dirichlet process regression; Pointwise mutual information; TWAS
Mesh:
Year: 2022 PMID: 35933330 PMCID: PMC9356418 DOI: 10.1186/s12864-022-08809-w
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 4.547
Fig. 1Simulation results of renin secretion network under fixed effecting nodes or edges. Type I error and power of both NeRiT and PMNT with data simulated based on renin secretion network under fixed effecting nodes or edges and four different between-node correlation patterns using DPR as the imputation model in TWAS. The red dotted line represents the significance level (). A Only node has effect; (B) Only edge has effect; the results for effecting node (C) or for effecting edge (D) when both node and edge change with changing node hanging on the edge; the results for effecting node (E) or for effecting edge (F) when both node and edge change with changing node not hanging on the edge
Fig. 2Simulation results of lipid and atherosclerosis network under fixed effecting nodes or edges. Type I error and power of both NeRiT and PMNT with data simulated based on lipid and atherosclerosis network under random effecting nodes or edges and four different between-node correlation patterns using DPR as the imputation model in TWAS. The red dotted line represents the significance level (). A Only node has effect; (B) Only edge has effect; the results for effecting node (C) or for effecting edge (D) when both node and edge change with changing node hanging on the edge; the results for effect node (E) or for effecting edge (F) when both node and edge change with changing node not hanging on the edge
Renin secretion network regression of both methods with p values in parenthesis
| Trait | NeRiT | PMNT | |
|---|---|---|---|
Aldosterone-regulated sodium reabsorption network regression of both methods with p values in parenthesis
| Trait | NeRiT | PMNT | |
|---|---|---|---|
Fig. 3The network structure based on the renin secretion pathway from KEGG
Fig. 4The network structure based on the lipid and atherosclerosis pathway from KEGG
Fig. 5The network structure based on the aldosterone-regulated sodium reabsorption pathway from KEGG