Deep Learning Insights into Lanthanides Complexation Chemistry

Modern structure–property models are widely used in chemistry; however, in many cases, they are still a kind of a “black box” where there is no clear path from molecule structure to target property. Here we present an example of deep learning usage not only to build a model but also to determine key...

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Veröffentlicht in:Molecules (Basel, Switzerland) Switzerland), 2021-05, Vol.26 (11), p.3237
Hauptverfasser: Mitrofanov, Artem A., Matveev, Petr I., Yakubova, Kristina V., Korotcov, Alexandru, Sattarov, Boris, Tkachenko, Valery, Kalmykov, Stepan N.
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Sprache:eng
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Zusammenfassung:Modern structure–property models are widely used in chemistry; however, in many cases, they are still a kind of a “black box” where there is no clear path from molecule structure to target property. Here we present an example of deep learning usage not only to build a model but also to determine key structural fragments of ligands influencing metal complexation. We have a series of chemically similar lanthanide ions, and we have collected data on complexes’ stability, built models, predicting stability constants and decoded the models to obtain key fragments responsible for complexation efficiency. The results are in good correlation with the experimental ones, as well as modern theories of complexation. It was shown that the main influence on the constants had a mutual location of the binding centers.
ISSN:1420-3049
1420-3049
DOI:10.3390/molecules26113237