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Probabilistic Paths for Protein Complex Inference

机译:蛋白质复合物推断的概率路径

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摘要

Understanding how individual proteins are organized into complexes and pathways is a significant current challenge. We introduce new algorithms to infer protein complexes by combining seed proteins with a confidence-weighted network. Two new stochastic methods use averaging over a probabilistic ensemble of networks, and the new deterministic method provides a deterministic ranking of prospective complex members. We compare the performance of these algorithms with three existing algorithms. We test algorithm performance using three weighted graphs: a na?ve Bayes estimate of the probability of a direct and stable protein-protein interaction; a logistic regression estimate of the probability of a direct or indirect interaction; and a decision tree estimate of whether two proteins exist within a common protein complex. The best-performing algorithms in these trials are the new stochastic methods. The deterministic algorithm is significantly faster, whereas the stochastic algorithms are less sensitive to the weighting scheme.
机译:了解单个蛋白质如何组织成复合物和途径是当前的重大挑战。我们引入了新算法,通过将种子蛋白质与置信度加权网络相结合来推断蛋白质复合物。两种新的随机方法使用网络概率集合的平均,新的确定性方法提供了预期复杂成员的确定性排名。我们将这些算法与三种现有算法的性能进行比较。我们使用三个加权图来测试算法性能:朴素的贝叶斯估计,直接和稳定的蛋白质-蛋白质相互作用的概率;对直接或间接相互作用的可能性进行逻辑回归估计;以及决策树估计常见蛋白质复合物中是否存在两种蛋白质。这些试验中表现最佳的算法是新的随机方法。确定性算法明显更快,而随机算法对加权方案则较不敏感。

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