蛋白质功能预测:结合统计特征和深度学习

Deepa Kumari, Ashish Ranjan, A. Deepak
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引用次数: 1

摘要

基于蛋白质序列对蛋白质进行功能注释,以减少可用蛋白质与已知功能注释之间的差距是一项具有挑战性的任务。这需要将蛋白质序列转换为特征向量,以便使用机器学习算法从计算角度进行有效分析。然而,由于来自同一家族的蛋白质序列具有很高的多样性,因此这种转化是一项艰巨的任务。大多数现有的序列特征在注释具有大量功能类的蛋白质时表现较低。本文将三个序列特征与深度学习技术相结合,以获得更好的性能。评价分数与深度CNN相结合效果更好。与PseAAC + DNN相比,PseAAC + CNN的f1评分提高了9.5%。AAID + CNN和SGT + CNN对应的数字分别为+3.22%和+2.33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Protein Function Prediction: Combining Statistical Features with Deep Learning
Functional annotation of proteins to reduce gap between the available proteins and their known functional annotations based on protein sequences is a challenging task. This requires transformation of protein sequences into feature vectors for efficient analysis from computational perspective using machine learning algorithms. However, such transformation is difficult task due to high diversity among the protein sequences from the same family. Most existing sequence features performed low when annotating proteins with large number of functional classes. In this paper, three sequence features are combined with deep learning techniques for better performance. Evaluation scores show better results when combined with deep CNN. F1-score for PseAAC + CNN improves by a factor of +9.5% compared to PseAAC + DNN. The corresponding number for AAID + CNN and SGT + CNN is +3.22% and +2.33% respectively.
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