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Using Deep Learning with Position Specific Scoring Matrices to Identify Efflux Proteins in Membrane and Transport Proteins

机译:利用位置具体评分矩阵的深度学习,以识别膜和运输蛋白质中的出水蛋白

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In several years, deep learning is a new area of machine learning field, which is the motivation of developing machine learning near to artificial intelligent. The neural networks belongs to deep learning are progressively important ideas in a variety of fields with great performance. Accordingly, utilization of deep learning in bioinformatics to enhance performance is very important. Convolutional neural networks is a network of deep learning which is claimed to be the best model to solve the problem of object recognition and detection utilizing GPU computing. In this study, we try to use CNN to identify efflux proteins in membrane and transport proteins, which is a famous problem in bioinformatics field. We construct the CNN from PSSM profiles with CUDA and Keras package based on Theano backend. Finally this approach achieved a significant improvement after we compare with the previous paper on efflux proteins. The proposed method can serve as an effective tool for identifying efflux proteins and can help biologists understand the functions of the efflux proteins. Moreover this study provides a basis for further research that can enrich a field of applying deep learning in bioinformatics.
机译:几年来,深度学习是一个新的机器学习领域领域,这是开发机器学习的动机靠近人工智能。神经网络属于深度学习,在各种领域都具有卓越的性能。因此,利用生物信息学中的深度学习以提高性能非常重要。卷积神经网络是一种深度学习网络,其被声称是解决对象识别问题和利用GPU计算的检测问题的最佳模型。在这项研究中,我们尝试使用CNN识别膜和转运蛋白中的流出蛋白,这是生物信息学领域的着名问题。我们使用基于Theano后端的CUDA和KERAS包来构建来自PSSM简介的CNN。最后,在与先前的纸张上与外排蛋白相比,这种方法实现了显着的改善。该方法可以作为鉴定流出蛋白的有效工具,可以帮助生物学家理解流出蛋白的功能。此外,本研究为进一步研究提供了一种基础,可以丰富在生物信息学中应用深度学习的领域。

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