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Protein-protein interactions prediction based on ensemble deep neural networks

机译:基于集成深度神经网络的蛋白质相互作用预测

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摘要

Protein–protein interactions (PPIs) are of vital importance to most biological processes. Plenty of PPIs have been identified by wet-lab experiments in the past decades, but there are still abundant uncovered PPIs. Furthermore, wet-lab experiments are expensive and limited by the adopted experimental protocols. Although various computational models have been proposed to automatically predict PPIs and provided reliable interactions for experimental verification, the problem is still far from being solved. Novel and competent models are still anticipated. In this study, a neural network based approach called EnsDNN (EnsembleDeepNeuralNetworks) is proposed to predict PPIs based on different representations of amino acid sequences. Particularly, EnsDNN separately uses auto covariance descriptor, local descriptor, and multi-scale continuous and discontinuous local descriptor, to represent and explore the pattern of interactions between sequentially distant and spatially close amino acid residues. It then trains deep neural networks (DNNs) with different configurations based on each descriptor. Next, EnsDNN integrates these DNNs into an ensemble predictor to leverage complimentary information of these descriptors and of DNNs, and to predict potential PPIs. EnsDNN achieves superior performance with accuracy of 95.29%, sensitivity of 95.12%, and precision of 95.45% on predicting PPIs ofSaccharomyces cerevisiae. Results on other five independent PPI datasets also demonstrate that EnsDNN gets better prediction performance than other related comparing methods.
机译:蛋白质间相互作用(PPI)对大多数生物过程至关重要。在过去的几十年中,通过湿实验室实验已经鉴定出大量的PPI,但仍有大量未发现的PPI。此外,湿实验室实验是昂贵的并且受采用的实验方案的限制。尽管已经提出了各种计算模型来自动预测PPI,并为实验验证提供了可靠的交互作用,但该问题仍然远远没有解决。新型和称职的模型仍在期待中。在这项研究中,提出了一种基于神经网络的方法,称为EnsDNN(EnsembleDeepNeuralNetworks),用于基于氨基酸序列的不同表示来预测PPI。特别是,EnsDNN分别使用自协方差描述符,局部描述符以及多尺度连续和不连续的局部描述符来表示和探索顺序相距较远且空间接近的氨基酸残基之间的相互作用模式。然后,它会基于每个描述符训练具有不同配置的深度神经网络(DNN)。接下来,EnsDNN将这些DNN集成到整体预测器中,以利用这些描述符和DNN的互补信息,并预测潜在的PPI。 EnsDNN在预测啤酒酵母的PPI方面具有卓越的性能,准确性为95.29%,灵敏度为95.12%和精度为95.45%。其他五个独立的PPI数据集的结果也表明,EnsDNN的预测性能优于其他相关比较方法。

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