Communications Biology (Sep 2021)
Identifying the lungs as a susceptible site for allele-specific regulatory changes associated with type 1 diabetes risk
Abstract
Ho, Nyaga et al. develop a machine learning approach for ranking tissue-specific gene regulatory affects, used here for type 1 diabetes SNPs. They identify the lung as a site where these regulatory impacts can be most impactful, which may contribute to understanding the link between respiratory issues and risk of islet autoantibody seroconvernsion.