匹配(统计)
图像(数学)
核磁共振谱数据库
人工智能
计算机科学
模式识别(心理学)
谱线
化学
生物系统
数学
物理
统计
生物
天文
作者
ZiJing Tian,Yan Dai,Feng Hu,Zihao Shen,HongLing Xu,Hongwen Zhang,JinHang Xu,Yuting Hu,Yanyan Diao,Honglin Li
标识
DOI:10.1021/acs.jcim.4c00522
摘要
In the synthetic laboratory, researchers typically rely on nuclear magnetic resonance (NMR) spectra to elucidate structures of synthesized products and confirm whether they match the desired target compounds. As chemical synthesis technology evolves toward intelligence and continuity, efficient computer-assisted structure elucidation (CASE) techniques are required to replace time-consuming manual analysis and provide the necessary speed. However, current CASE methods typically aim to derive precise chemical structures from spectroscopic data, yet they suffer from drawbacks such as low accuracy, high computational cost, and reliance on chemical libraries. In meticulously designed chemical synthesis reactions, researchers prioritize confirming the attainment of the target product based on NMR spectra, rather than focusing on identifying the specific product obtained. For this purpose, we innovatively developed a binary classification model, termed as MatCS, to directly predict the relationship between NMR spectra image (including
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