Multi-CGAN: Deep Generative Model-Based Multiproperty Antimicrobial Peptide Design

抗菌剂 抗菌肽 计算机科学 深度学习 人工智能 训练集 任务(项目管理) 机器学习 计算生物学 生成模型 生成语法 生物 生物化学 工程类 微生物学 系统工程
作者
Haoqing Yu,Ruheng Wang,Jianbo Qiao,Leyi Wei
出处
期刊:Journal of Chemical Information and Modeling [American Chemical Society]
卷期号:64 (1): 316-326 被引量:11
标识
DOI:10.1021/acs.jcim.3c01881
摘要

Antimicrobial peptides are peptides that are effective against bacteria and viruses, and the discovery of new antimicrobial peptides is of great importance to human life and health. Although the design of antimicrobial peptides using machine learning methods has achieved good results in recent years, it remains a challenge to learn and design novel antimicrobial peptides with multiple properties of interest from peptide data with certain property labels. To this end, we propose Multi-CGAN, a deep generative model-based architecture that can learn from single-attribute peptide data and generate antimicrobial peptide sequences with multiple attributes that we need, which may have a potentially wide range of uses in drug discovery. In particular, we verified that our Multi-CGAN generated peptides with the desired properties have good performance in terms of generation rate. Moreover, a comprehensive statistical analysis demonstrated that our generated peptides are diverse and have a low probability of being homologous to the training data. Interestingly, we found that the performance of many popular deep learning methods on the antimicrobial peptide prediction task can be improved by using Multi-CGAN to expand the data on the training set of the original task, indicating the high quality of our generated peptides and the robust ability of our method. In addition, we also investigated whether it is possible to directionally generate peptide sequences with specified properties by controlling the input noise sampling for our model.
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