Identifying noncoding risk variants using disease-relevant gene regulatory networks

Long Gao(University of Pennsylvania), Yasin Uzun(Children's Hospital of Philadelphia), Peng Gao(Children's Hospital of Philadelphia), Bing He(Children's Hospital of Philadelphia), Xiaoke Ma(Xidian University), Jiahui Wang(Jackson Laboratory), Shizhong Han(Johns Hopkins University), Kai Tan(Children's Hospital of Philadelphia)
Nature Communications
February 12, 2018
Cited by 68Open Access
Full Text

Abstract

Identifying noncoding risk variants remains a challenging task. Because noncoding variants exert their effects in the context of a gene regulatory network (GRN), we hypothesize that explicit use of disease-relevant GRNs can significantly improve the inference accuracy of noncoding risk variants. We describe Annotation of Regulatory Variants using Integrated Networks (ARVIN), a general computational framework for predicting causal noncoding variants. It employs a set of novel regulatory network-based features, combined with sequence-based features to infer noncoding risk variants. Using known causal variants in gene promoters and enhancers in a number of diseases, we show ARVIN outperforms state-of-the-art methods that use sequence-based features alone. Additional experimental validation using reporter assay further demonstrates the accuracy of ARVIN. Application of ARVIN to seven autoimmune diseases provides a holistic view of the gene subnetwork perturbed by the combinatorial action of the entire set of risk noncoding mutations.


Related Papers

No related papers found

Powered by citation graph analysis