Multi-Scale Capsule Network for Predicting DNA-Protein Binding Sites

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14
Citations

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15

초록

Discovering DNA-protein binding sites, also known as motif discovery, is the foundation for further analysis of transcription factors (TFs). Deep learning algorithms such as convolutional neural networks (CNN) have been introduced to motif discovery task and have achieved state-of-art performance. However, due to the limitations of CNN, motif discovery methods based on CNN do not take full advantage of large-scale sequencing data generated by high-throughput sequencing technology. Hence, in this paper we propose multi-scale capsule network architecture (MSC) integrating multi-scale CNN, a variant of CNN able to extract motif features of different lengths, and capsule network, a novel type of artificial neural network architecture aimed at improving CNN. The proposed method is tested on real ChIP-seq datasets and the experimental results show a considerable improvement compared with two well-tested deep learning-based sequence model, DeepBind and Deepsea.

키워드

DNAMachine learningComputational modelingFeature extractionKernelConvolutionBioinformaticsMulti-scalecapsule networktranscription factorsbinding specificityNEURAL-NETWORKSTRANSCRIPTIONOPTIMIZATIONMETHODOLOGYEXPRESSIONVARIANTS
제목
Multi-Scale Capsule Network for Predicting DNA-Protein Binding Sites
저자
Zhang, QinhuYu, WenboHan, KyungsookNandi, Asoke K.Huang, De-Shuang
DOI
10.1109/TCBB.2020.3025579
발행일
2021-09-01
유형
Article; Proceedings Paper
저널명
IEEE/ACM Transactions on Computational Biology and Bioinformatics
18
5
페이지
1793 ~ 1800