ChatGPT Chemistry Assistant for Text Mining and the Prediction of MOF Synthesis

工作流程 自动汇总 计算机科学 解析 统一 过程(计算) 自动化 文档 数据科学 化学 人工智能 情报检索 数据库 程序设计语言 工程类 机械工程
作者
Zhiling Zheng,Oufan Zhang,Christian Borgs,Jennifer Chayes,Omar M. Yaghi
出处
期刊:Journal of the American Chemical Society [American Chemical Society]
卷期号:145 (32): 18048-18062 被引量:411
标识
DOI:10.1021/jacs.3c05819
摘要

We use prompt engineering to guide ChatGPT in the automation of text mining of metal-organic framework (MOF) synthesis conditions from diverse formats and styles of the scientific literature. This effectively mitigates ChatGPT's tendency to hallucinate information, an issue that previously made the use of large language models (LLMs) in scientific fields challenging. Our approach involves the development of a workflow implementing three different processes for text mining, programmed by ChatGPT itself. All of them enable parsing, searching, filtering, classification, summarization, and data unification with different trade-offs among labor, speed, and accuracy. We deploy this system to extract 26 257 distinct synthesis parameters pertaining to approximately 800 MOFs sourced from peer-reviewed research articles. This process incorporates our ChemPrompt Engineering strategy to instruct ChatGPT in text mining, resulting in impressive precision, recall, and F1 scores of 90-99%. Furthermore, with the data set built by text mining, we constructed a machine-learning model with over 87% accuracy in predicting MOF experimental crystallization outcomes and preliminarily identifying important factors in MOF crystallization. We also developed a reliable data-grounded MOF chatbot to answer questions about chemical reactions and synthesis procedures. Given that the process of using ChatGPT reliably mines and tabulates diverse MOF synthesis information in a unified format while using only narrative language requiring no coding expertise, we anticipate that our ChatGPT Chemistry Assistant will be very useful across various other chemistry subdisciplines.
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