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Game theoretic centrality: a novel approach to prioritize disease candidate genes by combining biological networks with the Shapley value

机译:游戏理论中心:通过将生物网络与福利价值相结合优先考虑疾病候选基因的新方法

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Complex human health conditions with etiological heterogeneity like Autism Spectrum Disorder (ASD) often pose a challenge for traditional genome-wide association study approaches in defining a clear genotype to phenotype model. Coalitional game theory (CGT) is an exciting method that can consider the combinatorial effect of groups of variants working in concert to produce a phenotype. CGT has been applied to associate likely-gene-disrupting variants encoded from whole genome sequence data to ASD; however, this previous approach cannot take into account for prior biological knowledge. Here we extend CGT to incorporate a priori knowledge from biological networks through a game theoretic centrality measure based on Shapley value to rank genes by their relevance–the individual gene’s synergistic influence in a gene-to-gene interaction network. Game theoretic centrality extends the notion of Shapley value to the evaluation of a gene’s contribution to the overall connectivity of its corresponding node in a biological network. We implemented and applied game theoretic centrality to rank genes on whole genomes from 756 multiplex autism families. Top ranking genes with the highest game theoretic centrality in both the weighted and unweighted approaches were enriched for pathways previously associated with autism, including pathways of the immune system. Four of the selected genes HLA-A, HLA-B, HLA-G, and HLA-DRB1–have also been implicated in ASD and further support the link between ASD and the human leukocyte antigen complex. Game theoretic centrality can prioritize influential, disease-associated genes within biological networks, and assist in the decoding of polygenic associations to complex disorders like autism.
机译:复杂的人类健康状况与自闭症谱系障碍(ASD)等病因异质性(ASD)往往对传统基因组关联研究方法造成挑战,在定义明确基因型到表型模型中的方法。合动博弈论(CGT)是一种令人兴奋的方法,可以考虑与音乐会一起工作的变体组的组合效果产生表型。 CGT已被应用于从整个基因组序列数据编码到ASD的可递送的可能基因破坏变体;但是,此前的方法不能考虑到先前的生物学知识。在这里,我们将CGT扩展到通过基于福素价值的游戏理论为中心度量来纳入生物网络的先验知识,以通过其相关性对基因进行排名 - 基因对基因相互作用网络中的个体基因的协同影响。游戏理论中心地位将福素值的概念扩展到基因对生物网络中对应节点的整体连接的贡献的评估。我们实施并应用了游戏理论居民,以756多重自闭症家族的全基因组排名基因。热量和未加权方法中游戏理论中心的最高排名基因富集以前与自闭症相关的途径,包括免疫系统的途径。四种所选基因HLA-A,HLA-B,HLA-G和HLA-DRB1-也涉及ASD并进一步支持ASD和人白细胞抗原复合物之间的联系。游戏理论中心是可以优先考虑生物网络中的有影响力,疾病相关基因,并有助于将多种基因关联的解码解码为自闭症等复杂的疾病。

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