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Log-linear model-based multifactor dimensionality reduction method to detect gene-gene interactions

机译:基于对数线性模型的多因素降维方法

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Motivation: The identification and characterization of susceptibility genes that influence the risk of common and complex diseases remains a statistical and computational challenge in genetic association studies. This is partly because the effect of any single genetic variant for a common and complex disease may be dependent on other genetic variants (gene-gene interaction) and environmental factors (gene-environment interaction). To address this problem, the multifactor dimensionality reduction (MDR) method has been proposed by Ritchie et al. to detect gene-gene interactions or gene-environment interactions. The MDR method identifies polymorphism combinations associated with the common and complex multifactorial diseases by collapsing high-dimensional genetic factors into a single dimension. That is, the MDR method classifies the combination of multilocus genotypes into high-risk and low-risk groups based on a comparison of the ratios of the numbers of cases and controls. When a high-order interaction model is considered with multi-dimensional factors, however, there may be many sparse or empty cells in the contingency tables. The MDR method cannot classify an empty cell as high risk or low risk and leaves it as undetermined. Results: In this article, we propose the log-linear model-based multifactor dimensionality reduction (LM MDR) method to improve the MDR in classifying sparse or empty cells. The LM MDR method estimates frequencies for empty cells from a parsimonious log-linear model so that they can be assigned to high-and low-risk groups. In addition, LM MDR includes MDR as a special case when the saturated log-linear model is fitted. Simulation studies show that the LM MDR method has greater power and smaller error rates than the MDR method. The LM MDR method is also compared with the MDR method using as an example sporadic Alzheimer's disease.
机译:动机:影响遗传病和复杂疾病风险的易感基因的鉴定和表征在遗传关联研究中仍然是统计和计算上的挑战。部分原因是,任何单一遗传变异对常见和复杂疾病的影响都可能取决于其他遗传变异(基因与基因的相互作用)和环境因素(基因与环境的相互作用)。为了解决这个问题,Ritchie等人提出了多因素降维(MDR)方法。检测基因-基因相互作用或基因-环境相互作用。 MDR方法通过将高维遗传因子折叠为一维来识别与常见和复杂多因素疾病相关的多态性组合。也就是说,MDR方法基于病例和对照的数量比的比较,将多基因座基因型的组合分为高风险和低风险组。但是,当考虑具有多维因素的高阶交互模型时,列联表中可能有许多稀疏或空单元格。 MDR方法无法将空单元格分类为高风险或低风险,而将其确定为不确定。结果:在本文中,我们提出了基于对数线性模型的多因素降维(LM MDR)方法,以改进对稀疏或空细胞进行分类的MDR。 LM MDR方法根据简约对数线性模型估算空单元的频率,以便可以将它们分配给高风险和低风险组。另外,当拟合饱和对数线性模型时,LM MDR包括MDR作为特殊情况。仿真研究表明,与MDR方法相比,LM MDR方法具有更高的功耗和更小的错误率。 LM MDR方法也与MDR方法进行了比较,以偶发性阿尔茨海默氏病为例。

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