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A New Testing Strategy to Identify Rare Variants with Either Risk or Protective Effect on Disease

机译:一种新的检测策略,用于识别对疾病具有风险或保护作用的稀有变体

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Rapid advances in sequencing technologies set the stage for the large-scale medical sequencing efforts to be performed in the near future, with the goal of assessing the importance of rare variants in complex diseases. The discovery of new disease susceptibility genes requires powerful statistical methods for rare variant analysis. The low frequency and the expected large number of such variants pose great difficulties for the analysis of these data. We propose here a robust and powerful testing strategy to study the role rare variants may play in affecting susceptibility to complex traits. The strategy is based on assessing whether rare variants in a genetic region collectively occur at significantly higher frequencies in cases compared with controls (or vice versa). A main feature of the proposed methodology is that, although it is an overall test assessing a possibly large number of rare variants simultaneously, the disease variants can be both protective and risk variants, with moderate decreases in statistical power when both types of variants are present. Using simulations, we show that this approach can be powerful under complex and general disease models, as well as in larger genetic regions where the proportion of disease susceptibility variants may be small. Comparisons with previously published tests on simulated data show that the proposed approach can have better power than the existing methods. An application to a recently published study on Type-1 Diabetes finds rare variants in gene IFIH1 to be protective against Type-1 Diabetes. Author Summary Risk to common diseases, such as diabetes, heart disease, etc., is influenced by a complex interaction among genetic and environmental factors. Most of the disease-association studies conducted so far have focused on common variants, widely available on genotyping platforms. However, recent advances in sequencing technologies pave the way for large-scale medical sequencing studies with the goal of elucidating the role rare variants may play in affecting susceptibility to complex traits. The large number of rare variants and their low frequencies pose great challenges for the analysis of these data. We present here a novel testing strategy, based on a weighted-sum statistic, that is less sensitive than existing methods to the presence of both risk and protective variants in the genetic region under investigation. We show applications to simulated data and to a real dataset on Type-1 Diabetes.
机译:测序技术的飞速发展为在不久的将来进行大规模医学测序工作奠定了基础,以评估复杂疾病中稀有变异的重要性为目标。新疾病易感基因的发现需要用于罕见变异分析的强大统计方法。此类变体的低频和预期数量众多,对这些数据的分析造成了很大的困难。我们在这里提出一种强大而强大的测试策略,以研究稀有变体在影响对复杂性状易感性中可能发挥的作用。该策略基于评估与对照组相比病例中遗传区域中的罕见变异是否以明显更高的频率共同发生(反之亦然)。拟议方法的主要特点是,尽管这是同时评估可能大量稀有变异的总体测试,但疾病变异既可以是保护变异,也可以是风险变异,当两种变异都存在时,统计功效会适度降低。通过仿真,我们表明,这种方法在复杂和一般的疾病模型下以及在疾病易感性变异比例可能较小的较大遗传区域中都可以发挥强大作用。与先前发布的模拟数据测试的比较表明,所提出的方法比现有方法具有更好的功能。对最近发表的关于1型糖尿病的研究的一项应用发现,基因IFIH1中的罕见变体可以保护1型糖尿病。作者摘要遗传和环境因素之间复杂的相互作用影响着诸如糖尿病,心脏病等常见疾病的风险。迄今为止,进行的大多数疾病关联研究都集中在常见的变异体上,这些变异体在基因分型平台上广泛使用。但是,测序技术的最新进展为大规模医学测序研究铺平了道路,其目的是阐明稀有变异体可能在影响复杂性状易感性中发挥的作用。大量的稀有变体及其低频特征对这些数据的分析提出了巨大的挑战。我们在此提出一种基于加权和统计量的新颖测试策略,该策略比现有方法对正在研究的遗传区域中存在风险和保护性变体的敏感性低。我们展示了对1型糖尿病的模拟数据和真实数据集的应用。

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