首页> 外文期刊>European journal of human genetics: EJHG >A weighted burden test using logistic regression for integrated analysis of sequence variants, copy number variants and polygenic risk score.
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A weighted burden test using logistic regression for integrated analysis of sequence variants, copy number variants and polygenic risk score.

机译:使用逻辑回归对序列变体的综合分析,复制数变体和多基因风险分数进行加权负担。

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摘要

Previously described methods of analysis allow variants in a gene to be weighted more highly according to rarity and/or predicted function and then for the variant contributions to be summed into a gene-wise risk score, which can be compared between cases and controls using a t-test. However, this does not allow incorporating covariates into the analysis. Schizophrenia is an example of an illness where there is evidence that different kinds of genetic variation can contribute to risk, including common variants contributing to a polygenic risk score (PRS), very rare copy number variants (CNVs) and sequence variants. A logistic regression approach has been implemented to compare the gene-wise risk scores between cases and controls, while incorporating as covariates population principal components, the PRS and the presence of pathogenic CNVs and sequence variants. A likelihood ratio test is performed, comparing the likelihoods of logistic regression models with and without this score. The method was applied to an ethnically heterogeneous exome-sequenced sample of 6000 controls and 5000 schizophrenia cases. In the raw analysis, the test statistic is inflated but inclusion of principal components satisfactorily controls for this. In this dataset, the inclusion of the PRS and effect from CNVs and sequence variants had only small effects. The set of genes which are FMRP targets showed some evidence for enrichment of rare, functional variants among cases (p?=?0.0005). This approach can be applied to any disease in which different kinds of genetic and non-genetic risk factors make contributions to risk.
机译:先前描述的分析方法允许基因中的变体更高度根据稀有和/或预测的功能更高的重量,然后用于总结为基因明智的风险评分的变体贡献,这可以使用a的情况和控制之间进行比较T检验。然而,这不允许将协变量纳入分析。精神分裂症是有证据表明不同种类的遗传变异可以有助于风险的疾病的举例,包括有助于多种基因风险评分(PRS),非常罕见的拷贝数变体(CNV)和序列变体的常见变体。已经实施了一种逻辑回归方法以比较病例和对照之间的基因风险评分,同时将其作为协变量群体主成分,PRS和致病性CNV和序列变体的存在。执行似然比测试,比较逻辑回归模型的可能性和没有此分数的可能性。将该方法应用于6000种对照和5000例的符号异质末端测序样品。在原始分析中,测试统计量充气但包含主要成分令人满意的控制。在该数据集中,包含来自CNV和序列变体的PR和效果只有很小的效果。作为FMRP靶标的基因集显示了一些富含罕见的功能变体的综合症(P?= 0.0005)。这种方法可以应用于不同种类的遗传和非遗传危险因素对风险作出贡献的任何疾病。

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