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Incorporating Deep Learning with Convolutional Neural Networks and Position Specific Scoring Matrices for Identifying Electron Transport Proteins

机译:利用卷积神经网络的深入学习和用于识别电子传输蛋白的定位特定评分矩阵

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摘要

In several years, deep learning is a modern machine learning technique using in a variety of fields with state-of-the-art performance. Therefore, utilization of deep learning to enhance performance is also an important solution for current bioinformatics field. In this study, we try to use deep learning via convolutional neural networks and position specific scoring matrices to identify electron transport proteins, which is an important molecular function in transmembrane proteins. Our deep learning method can approach a precise model for identifying of electron transport proteins with achieved sensitivity of 80.3%, specificity of 94.4%, and accuracy of 92.3%, with MCC of 0.71 for independent dataset. The proposed technique can serve as a powerful tool for identifying electron transport proteins and can help biologists understand the function of the electron transport proteins. Moreover, this study provides a basis for further research that can enrich a field of applying deep learning in bioinformatics. (C) 2017 Wiley Periodicals, Inc.
机译:在几年内,深度学习是一种现代化的机器学习技术,在各种领域采用最先进的性能。因此,利用深度学习以增强性能也是目前生物信息化场的重要解决方案。在这项研究中,我们尝试通过卷积神经网络和位置具体评分矩阵使用深度学习,以识别电子传输蛋白,这是跨膜蛋白中的重要分子功能。我们的深度学习方法可以接近鉴定电子传输蛋白质的精确模型,达到80.3%,特异性为94.4%,精度为92.3%,对于独立数据集,MCC为0.71。所提出的技术可以作为识别电子传输蛋白的强大工具,可以帮助生物学家理解电子传输蛋白的功能。此外,本研究为进一步研究提供了一种依据,其可以丰富在生物信息学中应用深度学习的领域。 (c)2017 Wiley期刊,Inc。

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