孟德尔随机化
工具变量
因果推理
影像遗传学
神经影像学
生命银行
多元统计
多元微积分
认知
错误发现率
计算机科学
计量经济学
医学
机器学习
遗传变异
生物信息学
数学
生物
遗传学
精神科
基因型
基因
控制工程
工程类
作者
Chen Mo,Zhenyao Ye,Hongjie Ke,Tong Lu,Travis Canida,Song Liu,Qiong Wu,Zhiwei Zhao,Yizhou Ma,L. Elliot Hong,Peter Kochunov,Tianzhou Ma,Shuo Chen
出处
期刊:PubMed
日期:2022-01-06
卷期号:27: 73-84
被引量:8
摘要
The advent of simultaneously collected imaging-genetics data in large study cohorts provides an unprecedented opportunity to assess the causal effect of brain imaging traits on externally measured experimental results (e.g., cognitive tests) by treating genetic variants as instrumental variables. However, classic Mendelian Randomization methods are limited when handling high-throughput imaging traits as exposures to identify causal effects. We propose a new Mendelian Randomization framework to jointly select instrumental variables and imaging exposures, and then estimate the causal effect of multivariable imaging data on the outcome. We validate the proposed method with extensive data analyses and compare it with existing methods. We further apply our method to evaluate the causal effect of white matter microstructure integrity (WM) on cognitive function. The findings suggest that our method achieved better performance regarding sensitivity, bias, and false discovery rate compared to individually assessing the causal effect of a single exposure and jointly assessing the causal effect of multiple exposures without dimension reduction. Our application results indicated that WM measures across different tracts have a joint causal effect that significantly impacts the cognitive function among the participants from the UK Biobank.
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