风险分析(工程)
危险废物
人类健康
生命周期评估
生化工程
可持续发展
工业生态学
计算机科学
生产(经济)
保证
产量(工程)
意外后果
可持续生产
可持续设计
工程类
生成语法
人工智能
环境影响评价
持续性
人类使用
工业生产
人命
铅(地质)
实证研究
管理科学
替代(逻辑)
制造工程
作者
Haobo Wang,Jingwen Chen,Wenjia Liu,Dailong Wang,Yuhang Song,Huixiao Hong,T. WANG,Paul T. Anastas,Julie B. Zimmerman
出处
期刊:Chemical Reviews
[American Chemical Society]
日期:2026-01-02
卷期号:126 (2): 841-894
被引量:4
标识
DOI:10.1021/acs.chemrev.5c00828
摘要
Industrial chemicals are characterized by their substantial production volumes, widespread applications, fugitive release into the environment, and the general lack of full awareness regarding their risks, carrying global unintended adverse effects on human and ecological health. In the ongoing pursuit of more sustainable and less hazardous industrial chemicals, a tremendous body of research has been developed. However, reliance on empirical molecular design based solely on human knowledge and expertise may not be adequate for avoiding regrettable substitution. Recent advances in generative machine learning (ML) technologies, and their applications in ML-assisted molecular design, possess immense promise to bring innovative solutions for green substitution of hazardous industrial chemicals. This review outlines the methodologies of ML-assisted molecular design and proposes design strategies for green alternative chemicals that possess both necessary functionalities and low environmental hazards throughout their life cycles. Additionally, case examples are provided to illustrate the methodologies and highlight areas that warrant further research, including the development of AI agents for both chemical risk management and green substitution. Applications of the methodologies can yield a sustainable and responsible way that both promotes the benefits of industrial chemicals and simultaneously minimizes their adverse impacts on humans and the environment.
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