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基因关联与机器学习改善1型糖尿病的发现与预测。

Genetic association and machine learning improves discovery and prediction of type 1 diabetes.

作者信息

McGrail Carolyn, Sears Timothy J, Kudtarkar Parul, Carter Hannah, Gaulton Kyle

机构信息

Biomedical sciences graduate program, University of California San Diego, La Jolla CA.

Bioinformatics and Systems Biology Program, University of California San Diego, La Jolla CA.

出版信息

medRxiv. 2024 Aug 2:2024.07.31.24311310. doi: 10.1101/2024.07.31.24311310.

Abstract

Type 1 diabetes (T1D) has a large genetic component, and expanded genetic studies of T1D can lead to novel biological and therapeutic discovery and improved risk prediction. In this study, we performed genetic association and fine-mapping analyses in 817,718 European ancestry samples genome-wide and 29,746 samples at the MHC locus, which identified 165 independent risk signals for T1D of which 19 were novel. We used risk variants to train a machine learning model (named T1GRS) to predict T1D, which highly differentiated T1D from non-disease and type 2 diabetes (T2D) in Europeans as well as African Americans at or beyond the level of current standards. We identified extensive non-linear interactions between risk loci in T1GRS, for example between HLA-DQB1*57 and coding and non-coding HLA alleles, and and other beta cell loci, that provided mechanistic insight and improved risk prediction. T1D individuals formed distinct clusters based on genetic features from T1GRS which had significant differences in age of onset, HbA1c, and renal disease severity. Finally, we provided T1GRS in formats to enhance accessibility of risk prediction to any user and computing environment. Overall, the improved genetic discovery and prediction of T1D will have wide clinical, therapeutic, and research applications.

摘要

1型糖尿病(T1D)具有很大的遗传成分,对T1D进行扩展的遗传研究可带来新的生物学和治疗发现,并改善风险预测。在本研究中,我们对817718例欧洲血统样本进行了全基因组遗传关联和精细定位分析,并对29746例位于主要组织相容性复合体(MHC)位点的样本进行了分析,确定了165个T1D的独立风险信号,其中19个是新发现的。我们使用风险变异训练了一个机器学习模型(名为T1GRS)来预测T1D,该模型在区分欧洲人和非裔美国人的T1D与非疾病及2型糖尿病(T2D)方面表现出色,达到或超过了当前标准水平。我们在T1GRS中发现了风险位点之间广泛的非线性相互作用,例如HLA - DQB1*57与编码和非编码HLA等位基因之间,以及与其他β细胞位点之间的相互作用,这为发病机制提供了见解并改善了风险预测。基于T1GRS的遗传特征,T1D个体形成了不同的聚类,这些聚类在发病年龄、糖化血红蛋白(HbA1c)和肾脏疾病严重程度方面存在显著差异。最后,我们以多种格式提供T1GRS,以提高任何用户和计算环境对风险预测的可及性。总体而言,T1D遗传发现和预测的改进将具有广泛的临床、治疗和研究应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2ceb/11312647/d7a34c4a032a/nihpp-2024.07.31.24311310v1-f0001.jpg

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