Integration of Heterogeneous Experimental Data Improves Global Map of Human Protein Complexes.

Jose Lugo-Martinez, Ziv Bar-Joseph, Jörn Dengjel, Robert F Murphy
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引用次数: 1

Abstract

Protein complexes play a significant role in the core functionality of cells. These complexes are typically identified by detecting densely connected subgraphs in protein-protein interaction (PPI) networks. Recently, multiple large-scale mass spectrometry-based experiments have significantly increased the availability of PPI data in order to further expand the set of known complexes. However, high-throughput experimental data generally are incomplete, show limited agreement between experiments, and show frequent false positive interactions. There is a need for computational approaches that can address these limitations in order to improve the coverage and accuracy of human protein complexes. Here, we present a new method that integrates data from multiple heterogeneous experiments and sources in order to increase the reliability and coverage of predicted protein complexes. We first fused the heterogeneous data into a feature matrix and trained classifiers to score pairwise protein interactions. We next used graph based methods to combine pairwise interactions into predicted protein complexes. Our approach improves the accuracy and coverage of protein pairwise interactions, accurately identifies known complexes, and suggests both novel additions to known complexes and entirely new complexes. Our results suggest that integration of heterogeneous experimental data helps improve the reliability and coverage of diverse high-throughput mass-spectrometry experiments, leading to an improved global map of human protein complexes.

Abstract Image

Abstract Image

Abstract Image

异质实验数据的整合改进了人类蛋白质复合物的全球图谱。
蛋白质复合物在细胞的核心功能中起着重要的作用。这些复合物通常通过检测蛋白质-蛋白质相互作用(PPI)网络中的紧密连接子图来识别。最近,多个基于质谱的大规模实验显著增加了PPI数据的可用性,以进一步扩大已知配合物的集合。然而,高通量实验数据通常是不完整的,实验之间的一致性有限,并且经常出现假阳性相互作用。为了提高人类蛋白质复合物的覆盖范围和准确性,需要能够解决这些限制的计算方法。在这里,我们提出了一种新的方法,该方法集成了来自多个异构实验和来源的数据,以提高预测蛋白质复合物的可靠性和覆盖率。我们首先将异构数据融合到一个特征矩阵中,并训练分类器对成对的蛋白质相互作用进行评分。接下来,我们使用基于图的方法将成对相互作用组合到预测的蛋白质复合物中。我们的方法提高了蛋白质成对相互作用的准确性和覆盖率,准确地识别了已知的复合物,并提出了已知复合物的新添加物和全新的复合物。我们的研究结果表明,整合异质实验数据有助于提高各种高通量质谱实验的可靠性和覆盖率,从而改进人类蛋白质复合物的全球图谱。
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