贝叶斯概率
先验概率
后验概率
计算机科学
收缩估计器
因果分析
前列腺癌
贝叶斯网络
计算生物学
癌症
人工智能
生物
遗传学
数学
统计
最小方差无偏估计量
均方误差
估计量的偏差
作者
Xiang Li,Pak C. Sham,Yan Zhang
标识
DOI:10.1016/j.ajhg.2023.12.007
摘要
The aim of fine mapping is to identify genetic variants causally contributing to complex traits or diseases. Existing fine-mapping methods employ Bayesian discrete mixture priors and depend on a pre-specified maximum number of causal variants, which may lead to sub-optimal solutions. In this work, we propose a Bayesian fine-mapping method called h2-D2, utilizing a continuous global-local shrinkage prior. We also present an approach to define credible sets of causal variants in continuous prior settings. Simulation studies demonstrate that h2-D2 outperforms current state-of-the-art fine-mapping methods such as SuSiE and FINEMAP in accurately identifying causal variants and estimating their effect sizes. We further applied h2-D2 to prostate cancer analysis and discovered some previously unknown causal variants. In addition, we inferred 369 target genes associated with the detected causal variants and several pathways that were significantly over-represented by these genes, shedding light on their potential roles in prostate cancer development and progression.
科研通智能强力驱动
Strongly Powered by AbleSci AI