Multi-Instance
Learning Approach to the Modeling of
Enantioselectivity of Conformationally Flexible Organic Catalysts
Posted on 2023-10-30 - 14:20
Computational design of chiral organic catalysts for
asymmetric
synthesis is a promising technology that can significantly reduce
the material and human resources required for the preparation of enantiopure
compounds. Herein, for the modeling of catalysts’ enantioselectivity,
we propose to use the multi-instance learning approach accounting
for multiple catalyst conformers and requiring neither conformer selection
nor their spatial alignment. A catalyst was represented by an ensemble
of conformers, each encoded by three-dimesinonal (3D) pmapper descriptors.
A catalyzed reactant transformation was converted into a single molecular
graph, a condensed graph of reaction, encoded by 2D fragment descriptors.
A whole chemical reaction was finally encoded by concatenated 3D catalyst
and 2D transformation descriptors. The performance of the proposed
method was demonstrated in the modeling of the enantioselectivity
of homogeneous and phase-transfer reactions and compared with the
state-of-the-art approaches.
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Zankov, Dmitry; Madzhidov, Timur; Polishchuk, Pavel; Sidorov, Pavel; Varnek, Alexandre (2023). Multi-Instance
Learning Approach to the Modeling of
Enantioselectivity of Conformationally Flexible Organic Catalysts. ACS Publications. Collection. https://doi.org/10.1021/acs.jcim.3c00393