iEnhancer-DCSA: identifying enhancers via dual-scale convolution and spatial attention

Author:

Wang Wenjun,Wu Qingyao,Li Chunshan

Abstract

Abstract Background Due to the dynamic nature of enhancers, identifying enhancers and their strength are major bioinformatics challenges. With the development of deep learning, several models have facilitated enhancers detection in recent years. However, existing studies either neglect different length motifs information or treat the features at all spatial locations equally. How to effectively use multi-scale motifs information while ignoring irrelevant information is a question worthy of serious consideration. In this paper, we propose an accurate and stable predictor iEnhancer-DCSA, mainly composed of dual-scale fusion and spatial attention, automatically extracting features of different length motifs and selectively focusing on the important features. Results Our experimental results demonstrate that iEnhancer-DCSA is remarkably superior to existing state-of-the-art methods on the test dataset. Especially, the accuracy and MCC of enhancer identification are improved by 3.45% and 9.41%, respectively. Meanwhile, the accuracy and MCC of enhancer classification are improved by 7.65% and 18.1%, respectively. Furthermore, we conduct ablation studies to demonstrate the effectiveness of dual-scale fusion and spatial attention. Conclusions iEnhancer-DCSA will be a valuable computational tool in identifying and classifying enhancers, especially for those not included in the training dataset.

Funder

National Natural Science Foundation of China

Tip-top Scientific and Technical Innovative Youth Talents of Guangdong Special Support Program

2022 Tencent Wechat Rhino-Bird Focused Research Program

Major Key Project of PCL

Publisher

Springer Science and Business Media LLC

Subject

Genetics,Biotechnology

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