Data-driven discovery of cardiolipin-selective small molecules by computational active learning

Open Access
Authors
  • B. Mohr
  • K. Shmilovich
  • I.S. Kleinwächter
  • D. Schneider
Publication date 28-04-2022
Journal Chemical Science
Volume | Issue number 13 | 16
Pages (from-to) 4498-4511
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
  • Faculty of Science (FNWI) - Van 't Hoff Institute for Molecular Sciences (HIMS)
Abstract

Subtle variations in the lipid composition of mitochondrial membranes can have a profound impact on mitochondrial function. The inner mitochondrial membrane contains the phospholipid cardiolipin, which has been demonstrated to act as a biomarker for a number of diverse pathologies. Small molecule dyes capable of selectively partitioning into cardiolipin membranes enable visualization and quantification of the cardiolipin content. Here we present a data-driven approach that combines a deep learning-enabled active learning workflow with coarse-grained molecular dynamics simulations and alchemical free energy calculations to discover small organic compounds able to selectively permeate cardiolipin-containing membranes. By employing transferable coarse-grained models we efficiently navigate the all-atom design space corresponding to small organic molecules with molecular weight less than ≈500 Da. After direct simulation of only 0.42% of our coarse-grained search space we identify molecules with considerably increased levels of cardiolipin selectivity compared to a widely used cardiolipin probe 10-N-nonyl acridine orange. Our accumulated simulation data enables us to derive interpretable design rules linking coarse-grained structure to cardiolipin selectivity. The findings are corroborated by fluorescence anisotropy measurements of two compounds conforming to our defined design rules. Our findings highlight the potential of coarse-grained representations and multiscale modelling for materials discovery and design.

Document type Article
Note With supplementary information.
Language English
Related dataset Supporting data for: "Data-driven discovery of cardiolipin-selective small molecules by computational active learning"
Published at https://doi.org/10.1039/d2sc00116k
Other links https://www.scopus.com/pages/publications/85128169662
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d2sc00116k (Final published version)
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