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A novel matrix of sequence descriptors for predicting protein-protein interactions from amino acid sequences

机译:从氨基酸序列预测蛋白质相互作用的新型序列描述符矩阵

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摘要

Protein-protein interactions (PPIs) play an important role in the life activities of organisms. With the availability of large amounts of protein sequence data, PPIs prediction methods have attracted increasing attention. A variety of protein sequence coding methods have emerged, but the training of these methods is particularly time consuming. To solve this issue, we have proposed a novel matrix sequence coding method. Based on deep neural network (DNN) and a novel matrix protein sequence descriptor, we constructed a protein interaction prediction model for predicting PPIs. When performed on human PPIs data, the method achieved an accuracy of 94.34%, a recall of 98.28%, an area under the curve (AUC) of 97.79% and a loss of 23.25%. A non-redundant dataset was used to evaluate this prediction model, and the prediction accuracy is 88.29%. These results indicate that the matrix of sequence (MOS) descriptor can enhance the predictive power of PPIs and reduce training time, which can be a useful complement for future proteomics research. The experimental code and experimental results can be found at .
机译:蛋白质-蛋白质相互作用(PPI)在生物的生命活动中起重要作用。随着大量蛋白质序列数据的可用性,PPI预测方法已引起越来越多的关注。已经出现了多种蛋白质序列编码方法,但是训练这些方法特别耗时。为了解决这个问题,我们提出了一种新颖的矩阵序列编码方法。基于深度神经网络(DNN)和新型的基质蛋白序列描述符,我们构建了预测PPI的蛋白相互作用预测模型。当对人类PPI数据执行时,该方法的准确度为94.34%,召回率为98.28%,曲线下面积(AUC)为97.79%,损失为23.25%。使用非冗余数据集评估此预测模型,预测准确性为88.29%。这些结果表明,序列矩阵(MOS)描述符可以增强PPI的预测能力并减少训练时间,这可能是将来蛋白质组学研究的有益补充。实验代码和实验结果可以在上找到。

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