首页> 外文会议>Annual genetic and evolutionary computation conference;GECCO-2010 >Initialization Parameter Sweep in ATHENA: Optimizing Neural Networks for Detecting Gene-Gene Interactions in the Presence of Small Main Effects
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Initialization Parameter Sweep in ATHENA: Optimizing Neural Networks for Detecting Gene-Gene Interactions in the Presence of Small Main Effects

机译:ATHENA中的初始化参数扫描:在存在小的主要影响的情况下优化用于检测基因-基因相互作用的神经网络

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Recent advances in genotyping technology have led to the generation of an enormous quantity of genetic data. Traditional methods of statistical analysis have proved insufficient in extracting all of the information about the genetic components of common, complex human diseases. A contributing factor to the problem of analysis is that amongst the small main effects of each single gene on disease susceptibility, there are non-linear, gene-gene interactions that can be difficult for traditional, parametric analyses to detect. In addition, exhaustively searching all multi-locus combinations has proved computationally impractical. Novel strategies for analysis have been developed to address these issues. The Analysis Tool for Heritable and Environmental Network Associations (ATHENA) is an analytical tool that incorporates grammatical evolution neural networks (GENN) to detect interactions among genetic factors. Initial parameters define how the evolutionary process will be implemented. This research addresses how different parameter settings affect detection of disease models involving interactions. In the current study, we iterate over multiple parameter values to determine which combinations appear optimal for detecting interactions in simulated data for multiple genetic models. Our results indicate that the factors that have the greatest influence on detection are: input variable encoding, population size, and parallel computation.
机译:基因分型技术的最新进展已导致产生大量的遗传数据。事实证明,传统的统计分析方法不足以提取有关常见的复杂人类疾病的遗传成分的所有信息。分析问题的一个重要因素是,在每个单个基因对疾病易感性的微小主要影响中,存在非线性的基因-基因相互作用,而传统的参数分析很难检测到这种相互作用。另外,穷举搜索所有多位置组合已被证明在计算上是不切实际的。已经开发出新颖的分析策略来解决这些问题。遗传和环境网络协会分析工具(ATHENA)是一种分析工具,它结合了语法进化神经网络(GENN)来检测遗传因素之间的相互作用。初始参数定义了如何实现进化过程。这项研究解决了不同的参数设置如何影响涉及相互作用的疾病模型的检测。在当前的研究中,我们遍历多个参数值,以确定哪些组合对于检测多个遗传模型的模拟数据中的相互作用似乎是最佳的。我们的结果表明,对检测影响最大的因素是:输入变量编码,总体大小和并行计算。

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