人工智能
机器学习
化学
数量结构-活动关系
药物发现
监督学习
分子描述符
深度学习
训练集
肽
计算生物学
图形
无监督学习
计算机科学
生物活性
支持向量机
实验数据
化学信息学
预测建模
鉴定(生物学)
人工神经网络
标记数据
作者
Xiaoran Wang,Yahong Tan,Yi Yang,Haipeng Yu,Jie Cheng,Zhengan Zhang,Chun Meng Song,Youming Zhang,Yizhen Yin
标识
DOI:10.1021/acs.jmedchem.5c03103
摘要
Macrocyclic peptides have gained attention as promising drug candidates due to their unique therapeutic properties. Advances in artificial intelligence have demonstrated the potential to facilitate the discovery and optimization of macrocyclic peptides. However, accurately predicting their biological activities in advance remains a significant challenge. In this study, we developed a multichannel predictive model that integrates molecular fingerprints, graph structural data, physicochemical characteristics, and ADMET properties. With the assistance of this model, we successfully identified macrocyclic peptides exhibiting potent inhibitory activity against neutrophil elastase and ADAM9. Validation was also performed on four independent peptide data sets. The results demonstrate a prediction accuracy of over 70% in unsupervised learning models and more than 90% with supervised learning models. This study provides a reliable multichannel machine learning model for predicting the bioactivity potential of macrocyclic peptides, demonstrating that the integration of a multichannel fusion strategy with machine learning can facilitate functional macrocyclic peptide screening.
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