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MR-LDP: a two-sample Mendelian randomization for GWAS summary statistics accounting for linkage disequilibrium and horizontal pleiotropy

机译:MR-LDP:用于GWAS概要统计核算的两个样本孟德尔随机化核算链接不平衡和水平膜质

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摘要

The proliferation of genome-wide association studies (GWAS) has prompted the use of two-sample Mendelian randomization (MR) with genetic variants as instrumental variables (IVs) for drawing reliable causal relationships between health risk factors and disease outcomes. However, the unique features of GWAS demand that MR methods account for both linkage disequilibrium (LD) and ubiquitously existing horizontal pleiotropy among complex traits, which is the phenomenon wherein a variant affects the outcome through mechanisms other than exclusively through the exposure. Therefore, statistical methods that fail to consider LD and horizontal pleiotropy can lead to biased estimates and false-positive causal relationships. To overcome these limitations, we proposed a probabilistic model for MR analysis in identifying the causal effects between risk factors and disease outcomes using GWAS summary statistics in the presence of LD and to properly account for horizontal pleiotropy among genetic variants (MR-LDP) and develop a computationally efficient algorithm to make the causal inference. We then conducted comprehensive simulation studies to demonstrate the advantages of MR-LDP over the existing methods. Moreover, we used two real exposure–outcome pairs to validate the results from MR-LDP compared with alternative methods, showing that our method is more efficient in using all-instrumental variants in LD. By further applying MR-LDP to lipid traits and body mass index (BMI) as risk factors for complex diseases, we identified multiple pairs of significant causal relationships, including a protective effect of high-density lipoprotein cholesterol on peripheral vascular disease and a positive causal effect of BMI on hemorrhoids.
机译:全基因组关联分析的增殖(GWAS),促使使用两个样本孟德尔随机(MR)与作为工具变量(IVS)绘制的健康危险因素和疾病的成果之间可靠的因果关系的遗传变异。然而,GWAS需求的独特的功能,MR方法占两者连锁不平衡(LD)和遍在已有的水平多效性复杂性状之中,这是现象,其中一个变体影响通过比仅通过曝光其他机制的结果。因此,没有考虑到LD和水平多效性的统计方法可能会导致偏估计和假阳性的因果关系。为了克服这些限制,我们提出了MR分析的概率模型在LD和正确解释的遗传变异(MR-LDP)之间的横向多效性存在利用GWAS汇总统计识别危险因素和疾病结果之间的因果效应和发展高效计算的算法,使因果推论。然后,我们进行了全面的模拟研究现有的方法在证明MR-LDP的优势。此外,我们使用两个实曝光结果对验证来​​自MR-LDP的结果与替代方法相比,显示出,我们的方法是在采用全器乐变体LD更有效。通过进一步施加MR-LDP来脂质性状和身体质量指数(BMI)为复杂的疾病的危险因素,我们确定了多对显著因果关系的,包括高密度脂蛋白胆固醇的上外周血管病和有保护作用的正因果BMI对痔疮影响。

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