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Small sets of interacting proteins suggest functional linkage mechanisms via Bayesian analogical reasoning

机译:少量相互作用蛋白提示通过贝叶斯类比推理的功能性连接机制

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摘要

>Motivation: Proteins and protein complexes coordinate their activity to execute cellular functions. In a number of experimental settings, including synthetic genetic arrays, genetic perturbations and RNAi screens, scientists identify a small set of protein interactions of interest. A working hypothesis is often that these interactions are the observable phenotypes of some functional process, which is not directly observable. Confirmatory analysis requires finding other pairs of proteins whose interaction may be additional phenotypical evidence about the same functional process. Extant methods for finding additional protein interactions rely heavily on the information in the newly identified set of interactions. For instance, these methods leverage the attributes of the individual proteins directly, in a supervised setting, in order to find relevant protein pairs. A small set of protein interactions provides a small sample to train parameters of prediction methods, thus leading to low confidence.>Results: We develop RBSets, a computational approach to ranking protein interactions rooted in analogical reasoning; that is, the ability to learn and generalize relations between objects. Our approach is tailored to situations where the training set of protein interactions is small, and leverages the attributes of the individual proteins indirectly, in a Bayesian ranking setting that is perhaps closest to propensity scoring in mathematical psychology. We find that RBSets leads to good performance in identifying additional interactions starting from a small evidence set of interacting proteins, for which an underlying biological logic in terms of functional processes and signaling pathways can be established with some confidence. Our approach is scalable and can be applied to large databases with minimal computational overhead. Our results suggest that analogical reasoning within a Bayesian ranking problem is a promising new approach for real-time biological discovery.>Availability: Java code is available at: .>Contact: ; ;
机译:>动机:蛋白质和蛋白质复合物协调其活性以执行细胞功能。在包括合成遗传阵列,遗传扰动和RNAi筛选在内的许多实验设置中,科学家们识别出一小组感兴趣的蛋白质相互作用。一个有效的假设通常是,这些相互作用是某些功能过程的可观察表型,不能直接观察到。验证性分析需要找到其他蛋白质对,它们之间的相互作用可能是有关同一功能过程的其他表型证据。寻找额外蛋白质相互作用的现有方法在很大程度上依赖于新近鉴定的相互作用集中的信息。例如,这些方法在有监督的设置中直接利用单个蛋白质的属性,以找到相关的蛋白质对。一小组蛋白质相互作用提供了一个小的样本来训练预测方法的参数,从而导致较低的置信度。>结果:我们开发了RBSets,这是一种基于类比推理对蛋白质相互作用进行排名的计算方法;即学习和概括对象之间关系的能力。我们的方法是针对蛋白质相互作用的训练集较小且在贝叶斯排名设置中间接地利用单个蛋白质的属性的情况而量身定制的,而贝叶斯排名设置可能最接近数学心理学中的倾向评分。我们发现,RBSets可以从少量相互作用蛋白的证据开始,在识别其他相互作用方面表现出良好的性能,对于这些蛋白,可以以一定的信心建立起功能过程和信号传导途径方面的潜在生物学逻辑。我们的方法是可扩展的,可以以最小的计算开销应用于大型数据库。我们的结果表明,贝叶斯排名问题中的类比推理是一种有前途的实时生物学发现新方法。>可用性: Java代码可从以下网站获得:。>联系方式:; ;

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