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ATESA: An Automated Aimless Shooting Workflow.

Tucker BurginSamuel EllisHeather B Mayes
Published in: Journal of chemical theory and computation (2022)
Transition path sampling methods are powerful tools for studying the dynamics of rare events in molecular simulations. However, these methods are generally restricted to experts with the knowledge and resources to properly set up and analyze the often hundreds of thousands of simulations that constitute a complete study. Aimless Transition Ensemble Sampling and Analysis (ATESA) is a new open-source software program written in Python that automates a full transition path sampling workflow based on the aimless shooting algorithm, streamlining the process and reducing the barrier to use for researchers new to this approach. This introduction to ATESA includes a demonstration of a complete transition path sampling process flow for an example reaction, including finding an initial transition state, sampling with aimless shooting, building a reaction coordinate with inertial likelihood maximization, verifying that coordinate with committor analysis, and measuring the reaction energy profile with umbrella sampling. We also describe our implementation of a termination criterion for aimless shooting based on the Godambe information calculated during model building with likelihood maximization as well as a novel approach to constraining simulations to the desired rare event pathway during umbrella sampling.
Keyphrases
  • healthcare
  • molecular dynamics
  • primary care
  • machine learning
  • quality improvement
  • randomized controlled trial
  • systematic review
  • deep learning
  • monte carlo
  • meta analyses
  • convolutional neural network