中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Prediction of protein self-interactions using stacked long short-term memory from protein sequences information

文献类型:期刊论文

作者Wang, YB (Wang, Yan-Bin)[ 1,2 ]; You, ZH (You, Zhu-Hong)[ 1 ]; Li, X (Li, Xiao)[ 1 ]; Jiang, TH (Jiang, Tong-Hai)[ 1 ]; Cheng, L (Cheng, Li)[ 1 ]; Chen, ZH (Chen, Zhan-Heng)[ 1,2 ]
刊名BMC SYSTEMS BIOLOGY
出版日期2018
卷号12期号:增刊: 8页码:1-9
关键词Self-interacting proteins Stacked long short-term memory Deep learning Dropout
ISSN号1752-0509
DOI10.1186/s12918-018-0647-x
英文摘要

BackgroundSelf-interacting Proteins (SIPs) plays a critical role in a series of life function in most living cells. Researches on SIPs are important part of molecular biology. Although numerous SIPs data be provided, traditional experimental methods are labor-intensive, time-consuming and costly and can only yield limited results in real-world needs. Hence,it's urgent to develop an efficient computational SIPs prediction method to fill the gap. Deep learning technologies have proven to produce subversive performance improvements in many areas, but the effectiveness of deep learning methods for SIPs prediction has not been verified.ResultsWe developed a deep learning model for predicting SIPs by constructing a Stacked Long Short-Term Memory (SLSTM) neural network that contains dropout. We extracted features from protein sequences using a novel feature extraction scheme that combined Zernike Moments (ZMs) with Position Specific Weight Matrix (PSWM). The capability of the proposed approach was assessed on S.erevisiae and Human SIPs datasets. The result indicates that the approach based on deep learning can effectively resist data skew and achieve good accuracies of 95.69 and 97.88%, respectively. To demonstrate the progressiveness of deep learning, we compared the results of the SLSTM-based method and the celebrated Support Vector Machine (SVM) method and several other well-known methods on the same datasets.ConclusionThe results show that our method is overall superior to any of the other existing state-of-the-art techniques. As far as we know, this study first applies deep learning method to predict SIPs, and practical experimental results reveal its potential in SIPs identification.

WOS记录号WOS:000454240500006
源URL[http://ir.xjipc.cas.cn/handle/365002/7265]  
专题新疆理化技术研究所_多语种信息技术研究室
通讯作者You, ZH (You, Zhu-Hong)[ 1 ]
作者单位1.Univ Chinese Acad Sci, Beijing 100049, Peoples R China
2.Chinese Acad Sci, Xinjiang Tech Inst Phys & Chem, Urumqi 830011, Peoples R China
推荐引用方式
GB/T 7714
Wang, YB ,You, ZH ,Li, X ,et al. Prediction of protein self-interactions using stacked long short-term memory from protein sequences information[J]. BMC SYSTEMS BIOLOGY,2018,12(增刊: 8):1-9.
APA Wang, YB ,You, ZH ,Li, X ,Jiang, TH ,Cheng, L ,&Chen, ZH .(2018).Prediction of protein self-interactions using stacked long short-term memory from protein sequences information.BMC SYSTEMS BIOLOGY,12(增刊: 8),1-9.
MLA Wang, YB ,et al."Prediction of protein self-interactions using stacked long short-term memory from protein sequences information".BMC SYSTEMS BIOLOGY 12.增刊: 8(2018):1-9.

入库方式: OAI收割

来源:新疆理化技术研究所

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