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Impact of conformation and intramolecular interactions on vibrational circular dichroism spectra identified with machine learning.

Tom VermeyenAna V CunhaPatrick BultinckWouter A Herrebout
Published in: Communications chemistry (2023)
Vibrational Circular Dichroism (VCD) spectra often differ strongly from one conformer to another, even within the same absolute configuration of a molecule. Simulated molecular VCD spectra typically require expensive quantum chemical calculations for all conformers to generate a Boltzmann averaged total spectrum. This paper reports whether machine learning (ML) can partly replace these quantum chemical calculations by capturing the intricate connection between a conformer geometry and its VCD spectrum. Three hypotheses concerning the added value of ML are tested. First, it is shown that for a single stereoisomer, ML can predict the VCD spectrum of a conformer from solely the conformer geometry. Second, it is found that the ML approach results in important time savings. Third, the ML model produced is unfortunately hardly transferable from one stereoisomer to another.
Keyphrases
  • density functional theory
  • molecular dynamics
  • machine learning
  • molecular dynamics simulations
  • energy transfer
  • artificial intelligence
  • monte carlo
  • big data