| Literature DB >> 34021560 |
Ye Wang1, Yuchao Jiang2, Bing Yao3, Kun Huang4, Yunlong Liu5, Yue Wang6, Xiao Qin7, Andrew J Saykin8, Li Chen1.
Abstract
Understanding the functional consequence of noncoding variants is of great interest. Though genome-wide association studies or quantitative trait locus analyses have identified variants associated with traits or molecular phenotypes, most of them are located in the noncoding regions, making the identification of causal variants a particular challenge. Existing computational approaches developed for prioritizing noncoding variants produce inconsistent and even conflicting results. To address these challenges, we propose a novel statistical learning framework, which directly integrates the precomputed functional scores from representative scoring methods. It will maximize the usage of integrated methods by automatically learning the relative contribution of each method and produce an ensemble score as the final prediction. The framework consists of two modes. The first 'context-free' mode is trained using curated causal regulatory variants from a wide range of context and is applicable to predict regulatory variants of unknown and diverse context. The second 'context-dependent' mode further improves the prediction when the training and testing variants are from the same context. By evaluating the framework via both simulation and empirical studies, we demonstrate that it outperforms integrated scoring methods and the ensemble score successfully prioritizes experimentally validated regulatory variants in multiple risk loci.Entities:
Keywords: functional score; noncoding variants; prioritization
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Year: 2021 PMID: 34021560 PMCID: PMC8574971 DOI: 10.1093/bib/bbab189
Source DB: PubMed Journal: Brief Bioinform ISSN: 1467-5463 Impact factor: 13.994