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A Bayesian Active Learning Experimental Design for Inferring Signaling Networks

机译:一种推断信令网络的贝叶斯主动学习实验设计

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摘要

Machine learning methods for learning network structure are applied to quantitative proteomics experiments and reverse-engineer intracellular signal transduction networks. They provide insight into the rewiring of signaling within the context of a disease or a phenotype. To learn the causal patterns of influence between proteins in the network, the methods require experiments that include targeted interventions that fix the activity of specific proteins. However, the interventions are costly and add experimental complexity. We describe an active learning strategy for selecting optimal interventions. Our approach takes as inputs pathway databases and historic data sets, expresses them in form of prior probability distributions on network structures, and selects interventions that maximize their expected contribution to structure learning. Evaluations on simulated and real data show that the strategy reduces the detection error of validated edges as compared with an unguided choice of interventions and avoids redundant interventions, thereby increasing the effectiveness of the experiment.
机译:用于学习网络结构的机器学习方法应用于定量蛋白质组学实验和逆向工程师细胞内信号转导网络。它们在疾病或表型的背景下提供了对信号传导的重新启动的洞察力。为了了解网络中蛋白质之间的影响的因果模式,该方法需要实验,包括固定特定蛋白质活性的靶向干预措施。然而,干预措施昂贵并增加了实验复杂性。我们描述了选择最佳干预的积极学习策略。我们的方法用作输入途径数据库和历史数据集,以网络结构的现有概率分布形式表示,并选择最大化其对结构学习的预期贡献的干预措施。对模拟和实际数据的评估表明,与干预措施的无导选项相比,该策略减少了验证边缘的检测误差,避免了冗余干预措施,从而提高了实验的有效性。

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