首页> 外文会议>International conference on parallel problem solving from nature;PPSN XI >Incorporating Domain Knowledge into Evolutionary Computing for Discovering Gene-Gene Interaction
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Incorporating Domain Knowledge into Evolutionary Computing for Discovering Gene-Gene Interaction

机译:将领域知识纳入进化计算中以发现基因与基因的相互作用

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Understanding the genetic underpinnings of common heritable human traits has enormous public health benefits with implications for risk prediction, development of novel drugs, and personalized medicine. Many complex human traits are highly heritable, yet little of the variability in such traits can be accounted for by examining single DNA variants at a time. Seldom explored non-additive gene-gene interactions are thought to be one source of this "missing" heritability. Approaches that can account for this complexity are more aptly suited to find combinations of genetic and environmental exposures that can lead to disease. Stochastic methods employing evolutionary algorithms have demonstrated promise in being able to detect and model gene-gene interactions that influence human traits, yet the search space is nearly infinite because of the vast number of variables collected in contemporary human genetics studies. In this work we assess the performance and feasibility of sensible initialization of an evolutionary algorithm using domain knowledge.
机译:了解常见遗传性状的遗传基础具有巨大的公共卫生益处,对风险预测,新药开发和个性化药物具有影响。许多复杂的人类性状具有很高的遗传性,但一次检查单个DNA变异体却不能解释这些性状的变异性。很少探索的非加性基因-基因相互作用被认为是这种“缺失”遗传力的来源之一。可以解释这种复杂性的方法更适合发现可能导致疾病的遗传和环境暴露的组合。使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-基因相互作用方面显示出了希望,但是由于当代人类遗传学研究中收集了大量变量,因此搜索空间几乎是无限的。在这项工作中,我们使用领域知识评估了进化算法合理初始化的性能和可行性。

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