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A fast and powerful tree-based association test for detecting complex joint effects in case–control studies

机译:一种快速而强大的基于树的关联测试用于检测病例对照研究中的复杂关节效应

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摘要

>Motivation: Multivariate tests derived from the logistic regression model are widely used to assess the joint effect of multiple predictors on a disease outcome in case–control studies. These tests become less optimal if the joint effect cannot be approximated adequately by the additive model. The tree-structure model is an attractive alternative, as it is more apt to capture non-additive effects. However, the tree model is used most commonly for prediction and seldom for hypothesis testing, mainly because of the computational burden associated with the resampling-based procedure required for estimating the significance level.>Results: We designed a fast algorithm for building the tree-structure model and proposed a robust TREe-based Association Test (TREAT) that incorporates an adaptive model selection procedure to identify the optimal tree model representing the joint effect. We applied TREAT as a multilocus association test on >20 000 genes/regions in a study of esophageal squamous cell carcinoma (ESCC) and detected a highly significant novel association between the gene CDKN2B and ESCC (). We also demonstrated, through simulation studies, the power advantage of TREAT over other commonly used tests.>Availability and implementation: The package TREAT is freely available for download at , implemented in C++ and R and supported on 64-bit Linux and 64-bit MS Windows.>Contact:  >Supplementary information:  are available at Bioinformatics online.
机译:>动机:在病例对照研究中,从逻辑回归模型衍生的多元检验被广泛用于评估多种预测因子对疾病结局的联合作用。如果不能通过加性模型充分近似关节效应,则这些测试的最佳性就会降低。树结构模型是一种有吸引力的替代方法,因为它更易于捕获非累加效应。但是,树模型最常用于预测,而很少用于假设检验,这主要是因为与计算重要性水平所需的基于重采样的过程相关的计算负担。>结果:我们设计了一种快速的方法一种用于构建树结构模型的算法,并提出了基于鲁棒的基于TREe的关联测试(TREAT),该测试结合了自适应模型选择过程以识别表示联合效果的最佳树模型。在一项食管鳞状细胞癌(ESCC)的研究中,我们将TREAT作为2000多个基因/区域的多基因座关联测试,并检测到CDKN2B基因与ESCC之间的新型显着关联。通过仿真研究,我们还展示了TREAT相对于其他常用测试的强大优势。>可用性和实现:TR TREAT软件包可从以下位置免费下载:,C ++和R中实现并在64-位Linux和64位MS Windows。>联系方式: >补充信息:可在Bioinformatics在线获得。

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