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Explainable chemical artificial intelligence from accurate machine learning of real-space chemical descriptors.
Gallegos, Miguel; Vassilev-Galindo, Valentin; Poltavsky, Igor; Martín Pendás, Ángel; Tkatchenko, Alexandre.
Afiliación
  • Gallegos M; Department of Analytical and Physical Chemistry, University of Oviedo, E-33006, Oviedo, Spain.
  • Vassilev-Galindo V; IMDEA Materials Institute, C/Eric Kandel 2, 28906, Getafe, Madrid, Spain.
  • Poltavsky I; Department of Physics and Materials Science, University of Luxembourg, L-1511, Luxembourg City, Luxembourg.
  • Martín Pendás Á; Department of Analytical and Physical Chemistry, University of Oviedo, E-33006, Oviedo, Spain. ampendas@uniovi.es.
  • Tkatchenko A; Department of Physics and Materials Science, University of Luxembourg, L-1511, Luxembourg City, Luxembourg. alexandre.tkatchenko@uni.lu.
Nat Commun ; 15(1): 4345, 2024 May 21.
Article en En | MEDLINE | ID: mdl-38773090
ABSTRACT
Machine-learned computational chemistry has led to a paradoxical situation in which molecular properties can be accurately predicted, but they are difficult to interpret. Explainable AI (XAI) tools can be used to analyze complex models, but they are highly dependent on the AI technique and the origin of the reference data. Alternatively, interpretable real-space tools can be employed directly, but they are often expensive to compute. To address this dilemma between explainability and accuracy, we developed SchNet4AIM, a SchNet-based architecture capable of dealing with local one-body (atomic) and two-body (interatomic) descriptors. The performance of SchNet4AIM is tested by predicting a wide collection of real-space quantities ranging from atomic charges and delocalization indices to pairwise interaction energies. The accuracy and speed of SchNet4AIM breaks the bottleneck that has prevented the use of real-space chemical descriptors in complex systems. We show that the group delocalization indices, arising from our physically rigorous atomistic predictions, provide reliable indicators of supramolecular binding events, thus contributing to the development of Explainable Chemical Artificial Intelligence (XCAI) models.

Texto completo: 1 Base de datos: MEDLINE Idioma: En Revista: Nat Commun / Nature communications Asunto de la revista: BIOLOGIA / CIENCIA Año: 2024 Tipo del documento: Article

Texto completo: 1 Base de datos: MEDLINE Idioma: En Revista: Nat Commun / Nature communications Asunto de la revista: BIOLOGIA / CIENCIA Año: 2024 Tipo del documento: Article