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Combining biological networks to predict genetic interactions.

机译:结合生物网络来预测遗传相互作用。

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摘要

Genetic interactions define overlapping functions and compensatory pathways. In particular, synthetic sick or lethal (SSL) genetic interactions are important for understanding how an organism tolerates random mutation, i.e., genetic robustness. Comprehensive identification of SSL relationships remains far from complete in any organism, because mapping these networks is highly labor intensive. The ability to predict SSL interactions, however, could efficiently guide further SSL discovery. Toward this end, we predicted pairs of SSL genes in Saccharomyces cerevisiae by using probabilistic decision trees to integrate multiple types of data, including localization, mRNA expression, physical interaction, protein function, and characteristics of network topology. Experimental evidence demonstrated the reliability of this strategy, which, when extended to human SSL interactions, may prove valuable in discovering drug targets for cancer therapy and in identifying genes responsible for multigenic diseases.
机译:遗传相互作用定义了重叠的功能和补偿途径。尤其是,合成病态或致命性(SSL)遗传相互作用对于理解生物体如何耐受随机突变(即遗传稳健性)非常重要。 SSL关联的全面识别在任何生物中都还远远不够,因为映射这些网络需要大量的劳动。但是,预测SSL交互的能力可以有效地指导进一步的SSL发现。为此,我们通过使用概率决策树整合多种类型的数据,包括定位,mRNA表达,物理相互作用,蛋白质功能和网络拓扑特征,来预测酿酒酵母中的SSL基因对。实验证据证明了该策略的可靠性,该策略在扩展到人类SSL相互作用时,可能对于发现用于癌症治疗的药物靶标以及鉴定导致多基因疾病的基因具有重要意义。

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