2024
DOI: 10.26434/chemrxiv-2023-d0dqp-v3
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Graph Neural Networks for Identifying Protein-Reactive Compounds

Victor Hugo Cano Gil,
Christopher Rowley

Abstract: The identification of protein-reactive electrophilic compounds is critical to the design of new covalent modifier drugs, screening for toxic compounds, and the exclusion of reactive compounds from high throughput screening. In this work, we employ traditional and graph machine learning (ML) algorithms to classify molecules being reactive towards proteins or nonreactive. For training data, we built a new dataset, ProteinReactiveDB, composed primarily of covalent and noncovalent inhibitors from the DrugBank, Bin… Show more

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