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A regression framework incorporating quantitative and negative interaction data improves quantitative prediction of PDZ domain-peptide interaction from primary sequence

机译:结合定量和负向相互作用数据的回归框架改进了从一级序列对PDZ域-肽相互作用的定量预测

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Motivation: Predicting protein interactions involving peptide recognition domains is essential for understanding the many important biological processes they mediate. It is important to consider the binding strength of these interactions to help us construct more biologically relevant protein interaction networks that consider cellular context and competition between potential binders.Results: We developed a novel regression framework that considers both positive (quantitative) and negative (qualitative) interaction data available for mouse PDZ domains to quantitatively predict interactions between PDZ domains, a large peptide recognition domain family, and their peptide ligands using primary sequence information. First, we show that it is possible to learn from existing quantitative and negative interaction data to infer the relative binding strength of interactions involving previously unseen PDZ domains and/or peptides given their primary sequence. Performance was measured using cross-validated hold out testing and testing with previously unseen PDZ domain-peptide interactions. Second, we find that incorporating negative data improves quantitative interaction prediction. Third, we show that sequence similarity is an important prediction performance determinant, which suggests that experimentally collecting additional quantitative interaction data for underrepresented PDZ domain subfamilies will improve prediction.
机译:动机:预测涉及肽识别域的蛋白质相互作用对于理解它们介导的许多重要生物学过程至关重要。重要的是要考虑这些相互作用的结合强度,以帮助我们构建更生物学相关的蛋白质相互作用网络,从而考虑细胞环境和潜在结合物之间的竞争。结果:我们开发了一种新颖的回归框架,既考虑了阳性(定量)又考虑了阴性(定性) )可用于小鼠PDZ域的相互作用数据,可使用一级序列信息定量预测PDZ域,大型肽识别域家族及其肽配体之间的相互作用。首先,我们表明有可能从现有的定量和负向相互作用数据中学习,以推断涉及先前未知的PDZ域和/或给定其一级序列的肽的相互作用的相对结合强度。使用交叉验证的保留测试和以前未见过的PDZ域-肽相互作用的测试来测量性能。其次,我们发现合并负面数据可以改善定量相互作用的预测。第三,我们表明序列相似性是重要的预测性能决定因素,这表明通过实验收集不足的PDZ域亚家族的其他定量相互作用数据将改善预测。

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