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Folding a small protein using harmonic linear discriminant analysis.

Dan Mendels1, Giovannimaria Piccini1, Z Faidon Brotzakis1

  • 1Department of Chemistry and Applied Biosciences, ETH Zurich, c/o USI Campus, Via Giuseppe Buffi 13, CH-6900 Lugano, Ticino, Switzerland.

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Harmonic Linear Discriminant Analysis systematically constructs collective variables for enhanced sampling simulations. This method efficiently captures the essential physics of complex processes like protein folding.

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Area of Science:

  • Computational Chemistry
  • Biophysics
  • Molecular Dynamics

Background:

  • Many scientific processes involve long time scales, limiting standard simulation techniques.
  • Enhanced sampling methods, particularly those using collective variables, are crucial for studying these processes.
  • Designing effective collective variables is a significant challenge in applying these methods.

Purpose of the Study:

  • To introduce and evaluate Harmonic Linear Discriminant Analysis (HLDA) for systematic collective variable construction.
  • To assess the efficiency of HLDA in capturing the essential physics of molecular processes.
  • To apply HLDA to the complex problem of chignolin folding in water.

Main Methods:

  • Developed Harmonic Linear Discriminant Analysis (HLDA) to construct collective variables from descriptors.
  • Utilized short, unbiased molecular dynamics simulations to gather input data for HLDA.
  • Applied the constructed collective variable in metadynamics simulations, combined with parallel tempering for convergence.
  • Investigated the impact of different descriptor sets on collective variable performance.

Main Results:

  • The one-dimensional collective variable derived from HLDA revealed key physics of chignolin folding prior to biased simulations.
  • HLDA-based metadynamics simulations successfully captured the folding and unfolding of chignolin.
  • Combined metadynamics and parallel tempering yielded converged simulation results.
  • The performance of the collective variable was examined with varying descriptor sets.

Conclusions:

  • HLDA provides a systematic and efficient approach to constructing collective variables for enhanced sampling.
  • The method successfully captures the underlying physics of complex molecular processes like protein folding.
  • HLDA is a valuable tool for advancing molecular simulations of long-timescale phenomena.