A Deep Learning Model for RNA-Protein Binding Preference Prediction Based on Hierarchical LSTM and Attention Network

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39

초록

Attention mechanism has the ability to find important information in the sequence. The regions of the RNA sequence that can bind to proteins are more important than those that cannot bind to proteins. Neither conventional methods nor deep learning-based methods, they are not good at learning this information. In this study, LSTM is used to extract the correlation features between different sites in RNA sequence. We also use attention mechanism to evaluate the importance of different sites in RNA sequence. We get the optimal combination of k-mer length, k-mer stride window, k-mer sentence length, k-mer sentence stride window, and optimization function through hyper-parm experiments. The results show that the performance of our method is better than other methods. We tested the effects of changes in k-mer vector length on model performance. We show model performance changes under various k-mer related parameter settings. Furthermore, we investigate the effect of attention mechanism and RNA structure data on model performance.

키워드

Supply chainsCloud computingDynamic schedulingTask analysisManufacturing systemsK-mer embeddingattention mechanismbidirectional LSTMRNA-protein binding preferenceGENE-EXPRESSIONNEURAL-NETWORKSMATRIX FACTORIZATIONCLASSIFICATIONOPTIMIZATIONMETHODOLOGYMECHANISMSPACKAGESHAPES
제목
A Deep Learning Model for RNA-Protein Binding Preference Prediction Based on Hierarchical LSTM and Attention Network
저자
Shen, ZhenZhang, QinhuHan, KyungsookHuang, De-Shuang
DOI
10.1109/TCBB.2020.3007544
발행일
2022-03
유형
Article
저널명
IEEE/ACM Transactions on Computational Biology and Bioinformatics
19
2
페이지
753 ~ 762