Automatic identification of chemical moieties
Permanent link
https://hdl.handle.net/10037/31902Date
2023-08-30Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Lederer, Jonas; Gastegger, Michael; Schütt, Kristof T.; Kampffmeyer, Michael Christian; Müller, Klaus-Robert; Unke, Oliver T.Abstract
In recent years, the prediction of quantum mechanical observables with machine learning methods has become increasingly popular. Message-passing neural networks (MPNNs) solve this task by constructing atomic representations, from which the properties of interest are predicted. Here, we introduce a method to automatically identify chemical moieties (molecular building blocks) from such representations, enabling a variety of applications beyond property prediction, which otherwise rely on expert knowledge. The required representation can either be provided by a pretrained MPNN, or be learned from scratch using only structural information. Beyond the data-driven design of molecular fingerprints, the versatility of our approach is demonstrated by enabling the selection of representative entries in chemical databases, the automatic construction of coarse-grained force fields, as well as the identification of reaction coordinates.
Publisher
Royal Society of ChemistryCitation
Lederer, Gastegger, Schütt, Kampffmeyer, Müller, Unke. Automatic identification of chemical moieties. Physical Chemistry, Chemical Physics - PCCP. 2023;25(38):26370-26379Metadata
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