2024
DOI: 10.1021/acs.jcim.4c01524
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ConfRank: Improving GFN-FF Conformer Ranking with Pairwise Training

Christian Hölzer,
Rick Oerder,
Stefan Grimme
et al.

Abstract: Conformer ranking is a crucial task for drug discovery, with methods for generating conformers often based on molecular (meta)dynamics or sophisticated sampling techniques. These methods are constrained by the underlying force computation regarding runtime and energy ranking accuracy, limiting their effectiveness for large-scale screening applications. To address these ranking limitations, we introduce ConfRank, a machine learning-based approach that enhances conformer ranking using pairwise training. We demon… Show more

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