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Pattern to Knowledge: Deep Knowledge-Directed Machine Learning for Residue-Residue Interaction Prediction

机译:知识模式:基于深度知识的机器学习用于残基-残基相互作用预测

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摘要

Residue-residue close contact (R2R-C) data procured from three-dimensional protein-protein interaction (PPI) experiments is currently used for predicting residue-residue interaction (R2R-I) in PPI. However, due to complex physiochemical environments, R2R-I incidences, facilitated by multiple factors, are usually entangled in the source environment and masked in the acquired data. Here we present a novel method, P2K (Pattern to Knowledge), to disentangle R2R-I patterns and render much succinct discriminative information expressed in different specific R2R-I statistical/functional spaces. Since such knowledge is not visible in the data acquired, we refer to it as deep knowledge. Leveraging the deep knowledge discovered to construct machine learning models for sequence-based R2R-I prediction, without trial-and-error combination of the features over external knowledge of sequences, our R2R-I predictor was validated for its effectiveness under stringent leave-one-complex-out-alone cross-validation in a benchmark dataset, and was surprisingly demonstrated to perform better than an existing sequence-based R2R-I predictor by 28% (p: 1.9E-08). P2K is accessible via our web server on .
机译:从三维蛋白质-蛋白质相互作用(PPI)实验获得的残基-残基紧密接触(R2R-C)数据目前用于预测PPI中的残基-残基相互作用(R2R-1)。但是,由于复杂的物理化学环境,在多种因素的共同作用下,R2R-1发生率通常在源环境中纠缠在一起,并在获取的数据中被掩盖。在这里,我们提出了一种新颖的方法,即P2K(知识模式),以解开R2R-1模式并呈现在不同的特定R2R-1统计/功能空间中表达的许多简洁的判别信息。由于此类知识在获取的数据中不可见,因此我们将其称为深度知识。利用发现的丰富知识为基于序列的R2R-I预测构建机器学习模型,而无需对序列的外部知识进行特征的反复试验,我们的R2R-I预测器在严格的假一罚下就得到了验证-在基准数据集中进行单独的外部交叉验证,并令人惊讶地证明其性能比现有的基于序列的R2R-I预测值好28%(p:1.9E-08)。可通过上的Web服务器访问P2K。

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