DeepACP: A Novel Computational Approach for Accurate Identification of Anticancer Peptides by Deep Learning Algorithm

Molecular Therapy - Nucleic Acids - Tập 22 - Trang 862-870 - 2020
Lezheng Yu1, Runyu Jing2, Fengjuan Liu3, Jiesi Luo4, Yizhou Li2
1School of Chemistry and Materials Science, Guizhou Education University, Guiyang 550018, China
2College of Cybersecurity, Sichuan University, Chengdu 610065, China
3School of Geography and Resources, Guizhou Education University, Guiyang 550018, China
4Department of Pharmacology, School of Pharmacy, Southwest Medical University, Luzhou 646000, Sichuan, China

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