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Predictability of Genetic Interactions from Functional Gene Modules

机译:功能基因模块的遗传相互作用的可预测性。

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摘要

Characterizing genetic interactions is crucial to understanding cellular and organismal response to gene-level perturbations. Such knowledge can inform the selection of candidate disease therapy targets, yet experimentally determining whether genes interact is technically nontrivial and time-consuming. High-fidelity prediction of different classes of genetic interactions in multiple organisms would substantially alleviate this experimental burden. Under the hypothesis that functionally related genes tend to share common genetic interaction partners, we evaluate a computational approach to predict genetic interactions in Homo sapiens, Drosophila melanogaster, and Saccharomyces cerevisiae. By leveraging knowledge of functional relationships between genes, we cross-validate predictions on known genetic interactions and observe high predictive power of multiple classes of genetic interactions in all three organisms. Additionally, our method suggests high-confidence candidate interaction pairs that can be directly experimentally tested. A web application is provided for users to query genes for predicted novel genetic interaction partners. Finally, by subsampling the known yeast genetic interaction network, we found that novel genetic interactions are predictable even when knowledge of currently known interactions is minimal.
机译:表征遗传相互作用对于理解细胞和有机体对基因水平扰动的反应至关重要。这样的知识可以为候选疾病治疗靶标的选择提供信息,但通过实验确定基因是否相互作用在技术上并不重要且耗时。对多种生物中不同类别的遗传相互作用的高保真预测将大大减轻这一实验负担。在功能相关基因倾向于共享共同的遗传相互作用伙伴的假设下,我们评估了预测智人,果蝇和啤酒酵母中遗传相互作用的计算方法。通过利用基因之间功能关系的知识,我们对已知遗传相互作用的预测进行交叉验证,并在所有三种生物中观察到多种类别的遗传相互作用的高预测能力。此外,我们的方法建议可以直接进行实验测试的高可信度候选交互对。提供了一个网络应用程序,供用户查询预测的新型遗传相互作用伙伴的基因。最后,通过对已知酵母遗传相互作用网络进行二次采样,我们发现,即使当前已知相互作用的知识很少,新的遗传相互作用也是可以预测的。

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