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Identifying proteins controlling key disease signaling pathways

机译:鉴定控制关键疾病信号通路的蛋白质

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Motivation: Several types of studies, including genome-wide association studies and RNA interference screens, strive to link genes to diseases. Although these approaches have had some success, genetic variants are often only present in a small subset of the population, and screens are noisy with low overlap between experiments in different labs. Neither provides a mechanistic model explaining how identified genes impact the disease of interest or the dynamics of the pathways those genes regulate. Such mechanistic models could be used to accurately predict downstream effects of knocking down pathway members and allow comprehensive exploration of the effects of targeting pairs or higher-order combinations of genes. Results: We developed methods to model the activation of signaling and dynamic regulatory networks involved in disease progression. Our model, SDREM, integrates static and time series data to link proteins and the pathways they regulate in these networks. SDREM uses prior information about proteins' likelihood of involvement in a disease (e.g. from screens) to improve the quality of the predicted signaling pathways. We used our algorithms to study the human immune response to H1N1 influenza infection. The resulting networks correctly identified many of the known pathways and transcriptional regulators of this disease. Furthermore, they accurately predict RNA interference effects and can be used to infer genetic interactions, greatly improving over other methods suggested for this task. Applying our method to the more pathogenic H5N1 influenza allowed us to identify several strain-specific targets of this infection.
机译:动机:几种研究,包括基因组关联研究和RNA干扰筛网,努力将基因链接到疾病。虽然这些方法已经成功,但遗传变异通常仅存在于群体的小群中,并且屏幕在不同实验室中的实验之间具有低重叠的噪声。既不提供机械模型,解释了所识别的基因如何影响感兴趣的疾病或途径的动力学调节。这种机械模型可用于准确地预测爆震途径成员的下游效果,并综合探索靶向对或高阶组合的基因的影响。结果:我们开发了模拟疾病进展中涉及的信令和动态监管网络激活的方法。我们的模型,SDREM将静态和时间序列数据集成到链接蛋白质和它们在这些网络中调节的路径。 SDREM使用有关蛋白质参与疾病(例如屏幕)的蛋白质的可能性的先前信息来改善预测信号通路的质量。我们利用算法研究人类免疫反应对H1N1流感感染。得到的网络正确鉴定了这种疾病的许多已知的途径和转录调节因子。此外,它们准确地预测RNA干扰效果,可用于推断遗传相互作用,大大改善了对此任务所建议的其他方法。将我们的方法应用于更致病的H5N1流感,使我们能够鉴定这种感染的几种菌株特异性靶标。

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