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A Large-scale Reaction Dataset of Mechanistic Pathways of Organic Reactions

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Journal Sci Data
Specialty Science
Date 2024 Aug 10
PMID 39127730
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Abstract

Understanding organic reaction mechanisms is crucial for interpreting the formation of products at the atomic and electronic level, but still remains as a domain of knowledgeable experts. The lack of a large-scale dataset with chemically reasonable mechanistic sequences also hinders the development of reliable machine learning models to predict organic reactions based on mechanisms as human chemists do. Here, we present a high-quality and the first large-scale reaction dataset, denoted as mech-USPTO-31K, with chemically reasonable arrow-pushing diagrams validated by synthetic chemists, encompassing a wide spectrum of polar organic reaction mechanisms. We envision this dataset curated by applying a simple and flexible method that automatically generates reaction mechanisms using autonomously extracted reaction templates and expert-coded mechanistic templates to become an invaluable tool to develop future reaction outcome prediction models and discover new reactions.

Citing Articles

A large-scale reaction dataset of mechanistic pathways of organic reactions.

Chen S, Babazade R, Kim T, Han S, Jung Y Sci Data. 2024; 11(1):863.

PMID: 39127730 PMC: 11316731. DOI: 10.1038/s41597-024-03709-y.

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