| Literature DB >> 34245595 |
Nayang Shan1, Yuhan Xie2, Shuang Song1, Wei Jiang2, Zuoheng Wang2, Lin Hou1,3.
Abstract
Recently polygenetic risk score (PRS) has been successfully used in the risk prediction of complex human diseases. Many studies incorporated internal information, such as effect size distribution, or external information, such as linkage disequilibrium, functional annotation, and pleiotropy among multiple diseases, to optimize the performance of PRS. To leverage on multiomics datasets, we developed a novel flexible transcriptional risk score (TRS), in which messenger RNA expression levels were imputed and weighted for risk prediction. In simulation studies, we demonstrated that single-tissue TRS has greater prediction power than LDpred, especially when there is a large effect of gene expression on the phenotype. Multitissue TRS improves prediction accuracy when there are multiple tissues with independent contributions to disease risk. We applied our method to complex traits, including Crohn's disease, type 2 diabetes, and so on. The single-tissue TRS method outperformed LDpred and AnnoPred across the tested traits. The performance of multitissue TRS is trait-dependent. Moreover, our method can easily incorporate information from epigenomic and proteomic data upon the availability of reference datasets.Entities:
Keywords: gene imputation; multiomics; risk prediction; transcriptional risk scores
Mesh:
Year: 2021 PMID: 34245595 PMCID: PMC8604733 DOI: 10.1002/gepi.22424
Source DB: PubMed Journal: Genet Epidemiol ISSN: 0741-0395 Impact factor: 2.344