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Showing 1–2 of 2 results
Advanced filters: Author: Félix Musil Clear advanced filters
  • The development of a universal protein coarse-grained model has been a long-standing challenge. A coarse-grained model with chemical transferability has now been developed by combining deep-learning methods with a large and diverse training set of all-atom protein simulations. The model can be used for extrapolative molecular dynamics on new sequences.

    • Nicholas E. Charron
    • Klara Bonneau
    • Cecilia Clementi
    ResearchOpen Access
    Nature Chemistry
    Volume: 17, P: 1284-1292
  • Solid-state nuclear magnetic resonance combined with quantum chemical shift predictions is limited by high computational cost. Here, the authors use machine learning based on local atomic environments to predict experimental chemical shifts in molecular solids with accuracy similar to density functional theory.

    • Federico M. Paruzzo
    • Albert Hofstetter
    • Lyndon Emsley
    ResearchOpen Access
    Nature Communications
    Volume: 9, P: 1-10