Climer Sharlee, Templeton Alan R, Zhang Weixiong
Department of Computer Science and Engineering, Washington University, St. Louis, Missouri, United States of America.
Department of Biology, Washington University, St. Louis, Missouri, United States of America; Department of Genetics, Washington University, St. Louis, Missouri, United States of America; Institute of Evolution, and Department of Evolutionary and Environmental Biology, University of Haifa, Haifa, Israel.
PLoS Comput Biol. 2014 Sep 18;10(9):e1003766. doi: 10.1371/journal.pcbi.1003766. eCollection 2014 Sep.
Hundreds of genetic markers have shown associations with various complex diseases, yet the "missing heritability" remains alarmingly elusive. Combinatorial interactions may account for a substantial portion of this missing heritability, but their discoveries have been impeded by computational complexity and genetic heterogeneity. We present BlocBuster, a novel systems-level approach that efficiently constructs genome-wide, allele-specific networks that accurately segregate homogenous combinations of genetic factors, tests the associations of these combinations with the given phenotype, and rigorously validates the results using a series of unbiased validation methods. BlocBuster employs a correlation measure that is customized for single nucleotide polymorphisms and returns a multi-faceted collection of values that captures genetic heterogeneity. We applied BlocBuster to analyze psoriasis, discovering a combinatorial pattern with an odds ratio of 3.64 and Bonferroni-corrected p-value of 5.01×10(-16). This pattern was replicated in independent data, reflecting robustness of the method. In addition to improving prediction of disease susceptibility and broadening our understanding of the pathogenesis underlying psoriasis, these results demonstrate BlocBuster's potential for discovering combinatorial genetic associations within heterogeneous genome-wide data, thereby transcending the limiting "small effects" produced by individual markers examined in isolation.
数百种遗传标记已显示出与各种复杂疾病的关联,但“缺失的遗传力”仍然令人担忧地难以捉摸。组合相互作用可能占了这一缺失遗传力的很大一部分,但其发现受到计算复杂性和遗传异质性的阻碍。我们提出了BlocBuster,这是一种新颖的系统级方法,可有效构建全基因组、等位基因特异性网络,准确分离遗传因素的同质组合,测试这些组合与给定表型的关联,并使用一系列无偏验证方法严格验证结果。BlocBuster采用了一种针对单核苷酸多态性定制的相关性度量,并返回一组多方面的值,以捕捉遗传异质性。我们应用BlocBuster分析银屑病,发现了一种组合模式,其优势比为3.64,经Bonferroni校正的p值为5.01×10(-16)。这种模式在独立数据中得到了复制,反映了该方法的稳健性。除了改善疾病易感性预测并拓宽我们对银屑病发病机制的理解外,这些结果还证明了BlocBuster在异质全基因组数据中发现组合遗传关联的潜力,从而超越了单独检查单个标记所产生的有限“微小效应”。