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DNN-PPI: A LARGE-SCALE PREDICTION OF PROTEIN-PROTEIN INTERACTIONS BASED ON DEEP NEURAL NETWORKS

机译:DNN-PPI:基于深神经网络的蛋白质 - 蛋白质相互作用大规模预测

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摘要

Protein-protein interaction (PPI) is very important for various biological processes and has given rise to a series of prediction-computing methods. In spite of different computing methods in relation to PPI prediction, PPI network projects fail to perform on a large scale. Aiming at ensuring that PPI can be predicted effectively, we used a deep neural network (DNN) for the study of PPI prediction that is based on an amino acid sequence. We present a novel DNN-PPI model with an auto covariance (AC) descriptor and a conjoint triad (CT) descriptor for the prediction of PPI that is based only on the protein sequence information. The 10-fold cross-validation indicated that the best DNN-PPI model with CT achieved 97.65% accuracy, 98.96% recall and a 98.51% area under the curve (AUC). The model exhibits a prediction accuracy of 94.20-97.10% for other external datasets. All of these suggest the high validity of the proposed algorithm in relation to various species.
机译:蛋白质 - 蛋白质相互作用(PPI)对于各种生物过程非常重要,并且已经升高了一系列预测计算方法。 尽管与PPI预测有关的不同计算方法,PPI网络项目无法大规模执行。 旨在确保可以有效地预测PPI,我们使用了基于氨基酸序列的PPI预测的深度神经网络(DNN)。 我们提出了一种具有自动协方差(AC)描述符的新型DNN-PPI模型,以及用于仅基于蛋白质序列信息的PPI预测的联合三合会(CT)描述符。 10倍的交叉验证表明,具有CT的最佳DNN-PPI模型达到97.65%的精度,98.96%召回和曲线下的98.51%的区域(AUC)。 对于其他外部数据集,该模型的预测准确性为94.20-97.10%。 所有这些都表明了所提出的算法与各种物种的高有效性。

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