In all-atom (AA) molecular dynamics (MD) simulations,
the rugged
energy profile of the force field makes it challenging to reproduce
spontaneous structural changes in biomolecules within a reasonable
calculation time. Existing coarse-grained (CG) models, in which the
energy profile is set to a global minimum around the initial structure,
are unsuitable to explore the structural dynamics between metastable
states far away from the initial structure without any bias. In this
study, we developed a new hybrid potential composed of an artificial
intelligence (AI) potential and minimal CG potential related to the
statistical bond length and excluded volume interactions to accelerate
the transition dynamics while maintaining the protein character. The
AI potential is trained by energy matching using a diverse structural
ensemble sampled via multicanonical (Mc) MD simulation and the corresponding
AA force field energy, profile of which is smoothed by energy minimization.
By
applying the new methodology to chignolin and TrpCage, we showed that
the AI potential can predict the AA energy with significantly high
accuracy, as indicated by a correlation coefficient (R-value) between the true and predicted energies exceeding 0.89. In
addition, we successfully demonstrated that CGMD simulation based
on the smoothed hybrid potential can significantly enhance the transition
dynamics between various metastable states while preserving protein
properties compared to those obtained with conventional CGMD and AAMD.