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两种适应权重方法在基于家系的设计中检测罕见变异关联。

Two adaptive weighting methods to test for rare variant associations in family-based designs.

机构信息

Department of Mathematical Sciences, Michigan Technological University, Houghton, Michigan 49931, USA.

出版信息

Genet Epidemiol. 2012 Jul;36(5):499-507. doi: 10.1002/gepi.21646. Epub 2012 Jun 1.

Abstract

Although next-generation DNA sequencing technologies have made rare variant association studies feasible and affordable, the development of powerful statistical methods for rare variant association studies is still under way. Most of the existing methods for rare variant association studies compare the number of rare mutations in a group of rare variants (in a gene or a pathway) between cases and controls. However, these methods assume that all causal variants are risk to diseases. Recently, several methods that are robust to the direction and magnitude of effects of causal variants have been proposed. However, they are applicable to unrelated individuals only, whereas family data have been shown to improve power to detect rare variants. In this article, we propose two adaptive weighting methods for rare variant association studies based on family data for quantitative traits. Using extensive simulation studies, we evaluate and compare our proposed methods with two methods based on the weights proposed by Madsen and Browning. Our results show that both proposed methods are robust to population stratification, robust to the direction and magnitude of the effects of causal variants, and more powerful than the methods using weights suggested by Madsen and Browning, especially when both risk and protective variants are present.

摘要

虽然下一代 DNA 测序技术使得罕见变异关联研究变得可行和负担得起,但针对罕见变异关联研究的强大统计方法的发展仍在进行中。大多数针对罕见变异关联研究的现有方法比较病例组和对照组中一组罕见变异(在一个基因或一条途径中)的罕见突变数量。然而,这些方法假设所有因果变异都是疾病的风险因素。最近,已经提出了几种针对因果变异的方向和程度具有稳健性的方法。然而,它们仅适用于无关个体,而已经证明家族数据可以提高检测罕见变异的能力。在本文中,我们提出了两种基于家系数据的针对数量性状的罕见变异关联研究的自适应加权方法。通过广泛的模拟研究,我们评估并比较了我们提出的方法与基于 Madsen 和 Browning 提出的权重的两种方法。我们的结果表明,两种提出的方法都对群体分层具有稳健性,对因果变异的方向和程度具有稳健性,并且比使用 Madsen 和 Browning 提出的权重的方法更有效,尤其是当存在风险和保护变异时。

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