Robustness in Biomolecular Simulations: Addressing Challenges in Data Generation, Analysis, and Curation

23 January 2025, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

Computational simulations of biomolecules provide a wealth of information about the thermodynamic landscape of biologically important systems, kinetics of important cellular processes, and the biophysical basis of life. Despite the ubiquity of molecular simulations in biophysical literature, major challenges persist for new practitioners entering the field, and even for experienced computational scientists, in maintaining and distributing their simulation outcomes. Here, we summarize critical obstacles encountered when performing biomolecular simulations and provide best practices for performing simulations that are robust and reproducible, hypothesis-driven, and promote improved reproducibility and accessibility using reliable tools and databases.

Keywords

MD simulations
Biomolecules
Data Curation

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