约束(计算机辅助设计)
推论
基因
计算生物学
公制(单位)
计算机科学
基因组
贝叶斯推理
贝叶斯概率
机器学习
贝叶斯定理
人类基因组
人口
生物
人工智能
遗传学
数学
医学
运营管理
几何学
环境卫生
经济
作者
Tony Zeng,Jeffrey P. Spence,Hakhamanesh Mostafavi,Jonathan K. Pritchard
标识
DOI:10.1101/2023.05.19.541520
摘要
Abstract Measures of selective constraint on genes have been used for many applications including clinical interpretation of rare coding variants, disease gene discovery, and studies of genome evolution. However, widely-used metrics are severely underpowered at detecting constraint for the shortest ~25% of genes, potentially causing important pathogenic mutations to be over-looked. We developed a framework combining a population genetics model with machine learning on gene features to enable accurate inference of an interpretable constraint metric, s het . Our estimates outperform existing metrics for prioritizing genes important for cell essentiality, human disease, and other phenotypes, especially for short genes. Our new estimates of selective constraint should have wide utility for characterizing genes relevant to human disease. Finally, our inference framework, GeneBayes, provides a flexible platform that can improve estimation of many gene-level properties, such as rare variant burden or gene expression differences.
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