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ATHENA: A knowledge-based hybrid backpropagation-grammatical evolution neural network algorithm for discovering epistasis among quantitative trait Loci

机译:雅典娜:基于知识的混合反向传播-语法进化神经网络算法,用于发现数量性状基因座中的上位基因

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Background Growing interest and burgeoning technology for discovering genetic mechanisms that influence disease processes have ushered in a flood of genetic association studies over the last decade, yet little heritability in highly studied complex traits has been explained by genetic variation. Non-additive gene-gene interactions, which are not often explored, are thought to be one source of this "missing" heritability. Methods Stochastic methods employing evolutionary algorithms have demonstrated promise in being able to detect and model gene-gene and gene-environment interactions that influence human traits. Here we demonstrate modifications to a neural network algorithm in ATHENA (the Analysis Tool for Heritable and Environmental Network Associations) resulting in clear performance improvements for discovering gene-gene interactions that influence human traits. We employed an alternative tree-based crossover, backpropagation for locally fitting neural network weights, and incorporation of domain knowledge obtainable from publicly accessible biological databases for initializing the search for gene-gene interactions. We tested these modifications in silico using simulated datasets. Results We show that the alternative tree-based crossover modification resulted in a modest increase in the sensitivity of the ATHENA algorithm for discovering gene-gene interactions. The performance increase was highly statistically significant when backpropagation was used to locally fit NN weights. We also demonstrate that using domain knowledge to initialize the search for gene-gene interactions results in a large performance increase, especially when the search space is larger than the search coverage. Conclusions We show that a hybrid optimization procedure, alternative crossover strategies, and incorporation of domain knowledge from publicly available biological databases can result in marked increases in sensitivity and performance of the ATHENA algorithm for detecting and modelling gene-gene interactions that influence a complex human trait.
机译:背景技术在过去的十年中,人们越来越关注发现影响疾病过程的遗传机制的新兴技术,这引起了人们对遗传协会研究的大量涌入,然而,遗传变异却无法解释高度研究的复杂性状的遗传力。人们通常不探索的非加性基因-基因相互作用被认为是这种“缺失”遗传力的来源之一。方法采用进化算法的随机方法在能够检测和建模影响人类特征的基因-基因和基因-环境相互作用方面显示出了希望。在这里,我们演示了对ATHENA(可遗传和环境网络协会分析工具)中的神经网络算法的修改,从而为发现影响人类特征的基因与基因之间的相互作用带来了明显的性能提升。我们采用了另一种基于树的交叉,反向传播来局部拟合神经网络权重,并结合了可从可公开访问的生物学数据库中获得的领域知识来初始化对基因-基因相互作用的搜索。我们使用模拟数据集在计算机上测试了这些修改。结果我们表明,基于树的替代交叉修饰导致ATHENA算法发现基因与基因相互作用的敏感性适度增加。当使用反向传播局部拟合NN权重时,性能的提高在统计学上非常显着。我们还证明,使用领域知识来初始化对基因-基因相互作用的搜索会大大提高性能,特别是当搜索空间大于搜索覆盖范围时。结论我们表明,混合优化程序,替代性交叉策略以及从可公开获得的生物学数据库中整合领域知识可导致检测和建模影响复杂人类特征的基因-基因相互作用的ATHENA算法的敏感性和性能显着提高。 。

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