回顾性分析
模板
计算机科学
人工智能
合成生物学
生化工程
计算生物学
工程类
生物
化学
程序设计语言
全合成
有机化学
作者
Tao Zeng,Zhehao Jin,Shuangjia Zheng,Tao Yu,Ruibo Wu
出处
期刊:JACS Au
[American Chemical Society]
日期:2024-07-03
卷期号:4 (7): 2492-2502
被引量:2
标识
DOI:10.1021/jacsau.4c00228
摘要
Illuminating synthetic pathways is essential for producing valuable chemicals, such as bioactive molecules. Chemical and biological syntheses are crucial, and their integration often leads to more efficient and sustainable pathways. Despite the rapid development of retrosynthesis models, few of them consider both chemical and biological syntheses, hindering the pathway design for high-value chemicals. Here, we propose BioNavi by innovating multitask learning and reaction templates into the deep learning-driven model to design hybrid synthesis pathways in a more interpretable manner. BioNavi outperforms existing approaches on different data sets, achieving a 75% hit rate in replicating reported biosynthetic pathways and displaying superior ability in designing hybrid synthesis pathways. Additional case studies further illustrate the potential application of BioNavi in a de novo pathway design. The enhanced web server (http://biopathnavi.qmclab.com/bionavi/) simplifies input operations and implements step-by-step exploration according to user experience. We show that BioNavi is a handy navigator for designing synthetic pathways for various chemicals.
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