作者
Dominik Lemm, Guido Falk von Rudorff, O Anatole von Lilienfeld
发表日期
2024
期刊
Digital Discovery
卷号
3
期号
1
页码范围
136-144
出版商
Royal Society of Chemistry
简介
Despite its fundamental importance and widespread use for assessing reaction success in organic chemistry, deducing chemical structures from nuclear magnetic resonance (NMR) measurements has remained largely manual and time consuming. To keep up with the accelerated pace of automated synthesis in self driving laboratory settings, robust computational algorithms are needed to rapidly perform structure elucidations. We analyse the effectiveness of solving the NMR spectra matching task encountered in this inverse structure elucidation problem by systematically constraining the chemical search space, and correspondingly reducing the ambiguity of the matching task. Numerical evidence collected for the twenty most common stoichiometries in the QM9-NMR database indicate systematic trends of more permissible machine learning prediction errors in constrained search spaces. Results suggest that …
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D Lemm, GF von Rudorff, OA von Lilienfeld - Digital Discovery, 2024