Free energy calculations play a crucial role in simulating chemical processes, enzymatic reactions, and drug design. However, assessing the reliability and convergence of these calculations remains a challenge. This study focuses on single-step free-energy calculations using thermodynamic perturbation. It explores how the sample distributions influence the estimated results and evaluates the reliability of various convergence criteria, including Kofke's bias measure Π and the standard deviation of the energy difference Δ, . The findings reveal that for Gaussian distributions, there is a straightforward relationship between Π and , free energies can be accurately approximated using a second-order cumulant expansion, and reliable results are attainable for up to 25 kcal mol. However, interpreting non-Gaussian distributions is more complex. If the distribution is skewed towards more positive values than a Gaussian, converging the free energy becomes easier, rendering standard convergence criteria overly stringent. Conversely, distributions that are skewed towards more negative values than a Gaussian present greater challenges in achieving convergence, making standard criteria unreliable. We propose a practical approach to assess the convergence of estimated free energies.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11168088 | PMC |
http://dx.doi.org/10.1039/d4sc00140k | DOI Listing |
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