Machine learning approaches for analyzing and enhancing molecular dynamics simulations.

Journal: Current opinion in structural biology
Published Date:

Abstract

Molecular dynamics (MD) has become a powerful tool for studying biophysical systems, due to increasing computational power and availability of software. Although MD has made many contributions to better understanding these complex biophysical systems, there remain methodological difficulties to be surmounted. First, how to make the deluge of data generated in running even a microsecond long MD simulation human comprehensible. Second, how to efficiently sample the underlying free energy surface and kinetics. In this short perspective, we summarize machine learning based ideas that are solving both of these limitations, with a focus on their key theoretical underpinnings and remaining challenges.

Authors

  • Yihang Wang
    Biophysics Program and Institute for Physical Science and Technology, University of Maryland, College Park, MD, 20742, USA.
  • João Marcelo Lamim Ribeiro
    Department of Chemistry and Biochemistry and Institute for Physical Science and Technology , University of Maryland , Maryland , College Park 20742 , United States.
  • Pratyush Tiwary
    University of Maryland at College Park: University of Maryland, Chemistry and Biochemistry, UNITED STATES OF AMERICA.