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Neural networks for modeling gene-gene interactions in association studies

机译:用于关联研究中的基因-基因相互作用建模的神经网络

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摘要

BackgroundOur aim is to investigate the ability of neural networks to model different two-locus disease models. We conduct a simulation study to compare neural networks with two standard methods, namely logistic regression models and multifactor dimensionality reduction. One hundred data sets are generated for each of six two-locus disease models, which are considered in a low and in a high risk scenario. Two models represent independence, one is a multiplicative model, and three models are epistatic. For each data set, six neural networks (with up to five hidden neurons) and five logistic regression models (the null model, three main effect models, and the full model) with two different codings for the genotype information are fitted. Additionally, the multifactor dimensionality reduction approach is applied.
机译:背景我们的目的是研究神经网络对不同的两基因座疾病模型进行建模的能力。我们进行了仿真研究,将神经网络与两种标准方法进行比较,即逻辑回归模型和多因素降维。针对六个两座位疾病模型中的每个模型生成了一百个数据集,这些模型在低风险和高风险情况下都被考虑。有两种模型代表独立性,一种是乘法模型,三种是上位模型。对于每个数据集,拟合了具有两个不同基因型信息编码的六个神经网络(最多具有五个隐藏神经元)和五个逻辑回归模型(无效模型,三个主要效应模型和完整模型)。另外,应用了多维度降维方法。

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