TY - JOUR
T1 - Improved Alchemical Free Energy Calculations with Optimized Smoothstep Softcore Potentials
AU - Lee, Tai Sung
AU - Lin, Zhixiong
AU - Allen, Bryce K.
AU - Lin, Charles
AU - Radak, Brian K.
AU - Tao, Yujun
AU - Tsai, Hsu Chun
AU - Sherman, Woody
AU - York, Darrin M.
N1 - Funding Information:
The authors are grateful for the financial support provided by the National Institutes of Health (no. GM107485 to DMY). Computational resources were provided by the Office of Advanced Research Computing (OARC) at Rutgers, The State University of New Jersey, the National Institutes of Health under grant no. S10OD012346, the Blue Waters sustained-petascale computing project (NSF OCI 07-25070, PRAC OCI-1515572), and by the Extreme Science and Engineering Discovery Environment (XSEDE), which is supported by National Science Foundation grant number no. ACI-1548562. This work used the XSEDE resource COMET and COMET GPU at SDSC through allocation TG-CHE190067. We gratefully acknowledge the support of the NVIDIA Corporation with the donation of several Pascal, Volta, and Turing GPUs and the GPU-time of a GPU-cluster where the reported benchmark results were performed.
Funding Information:
The authors are grateful for the financial support provided by the National Institutes of Health (no. GM107485 to DMY). Computational resources were provided by the Office of Advanced Research Computing (OARC) at Rutgers, The State University of New Jersey, the National Institutes of Health under grant no. S10OD012346, the Blue Waters sustained-petascale computing project (NSF OCI 07-25070, PRAC OCI-1515572), and by the Extreme Science and Engineering Discovery Environment (XSEDE), which is supported by National Science Foundation grant number no. ACI-1548562. (98) This work used the XSEDE resource COMET and COMET GPU at SDSC through allocation TG-CHE190067. We gratefully acknowledge the support of the NVIDIA Corporation with the donation of several Pascal, Volta, and Turing GPUs and the GPU-time of a GPU-cluster where the reported benchmark results were performed.
Publisher Copyright:
Copyright © 2020 American Chemical Society.
PY - 2020/9/8
Y1 - 2020/9/8
N2 - Progress in the development of GPU-accelerated free energy simulation software has enabled practical applications on complex biological systems and fueled efforts to develop more accurate and robust predictive methods. In particular, this work re-examines concerted (a.k.a., one-step or unified) alchemical transformations commonly used in the prediction of hydration and relative binding free energies (RBFEs). We first classify several known challenges in these calculations into three categories: endpoint catastrophes, particle collapse, and large gradient-jumps. While endpoint catastrophes have long been addressed using softcore potentials, the remaining two problems occur much more sporadically and can result in either numerical instability (i.e., complete failure of a simulation) or inconsistent estimation (i.e., stochastic convergence to an incorrect result). The particle collapse problem stems from an imbalance in short-range electrostatic and repulsive interactions and can, in principle, be solved by appropriately balancing the respective softcore parameters. However, the large gradient-jump problem itself arises from the sensitivity of the free energy to large values of the softcore parameters, as might be used in trying to solve the particle collapse issue. Often, no satisfactory compromise exists with the existing softcore potential form. As a framework for solving these problems, we developed a new family of smoothstep softcore (SSC) potentials motivated by an analysis of the derivatives along the alchemical path. The smoothstep polynomials generalize the monomial functions that are used in most implementations and provide an additional path-dependent smoothing parameter. The effectiveness of this approach is demonstrated on simple yet pathological cases that illustrate the three problems outlined. With appropriate parameter selection, we find that a second-order SSC(2) potential does at least as well as the conventional approach and provides vast improvement in terms of consistency across all cases. Last, we compare the concerted SSC(2) approach against the gold-standard stepwise (a.k.a., decoupled or multistep) scheme over a large set of RBFE calculations as might be encountered in drug discovery.
AB - Progress in the development of GPU-accelerated free energy simulation software has enabled practical applications on complex biological systems and fueled efforts to develop more accurate and robust predictive methods. In particular, this work re-examines concerted (a.k.a., one-step or unified) alchemical transformations commonly used in the prediction of hydration and relative binding free energies (RBFEs). We first classify several known challenges in these calculations into three categories: endpoint catastrophes, particle collapse, and large gradient-jumps. While endpoint catastrophes have long been addressed using softcore potentials, the remaining two problems occur much more sporadically and can result in either numerical instability (i.e., complete failure of a simulation) or inconsistent estimation (i.e., stochastic convergence to an incorrect result). The particle collapse problem stems from an imbalance in short-range electrostatic and repulsive interactions and can, in principle, be solved by appropriately balancing the respective softcore parameters. However, the large gradient-jump problem itself arises from the sensitivity of the free energy to large values of the softcore parameters, as might be used in trying to solve the particle collapse issue. Often, no satisfactory compromise exists with the existing softcore potential form. As a framework for solving these problems, we developed a new family of smoothstep softcore (SSC) potentials motivated by an analysis of the derivatives along the alchemical path. The smoothstep polynomials generalize the monomial functions that are used in most implementations and provide an additional path-dependent smoothing parameter. The effectiveness of this approach is demonstrated on simple yet pathological cases that illustrate the three problems outlined. With appropriate parameter selection, we find that a second-order SSC(2) potential does at least as well as the conventional approach and provides vast improvement in terms of consistency across all cases. Last, we compare the concerted SSC(2) approach against the gold-standard stepwise (a.k.a., decoupled or multistep) scheme over a large set of RBFE calculations as might be encountered in drug discovery.
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U2 - 10.1021/acs.jctc.0c00237
DO - 10.1021/acs.jctc.0c00237
M3 - Article
C2 - 32672455
AN - SCOPUS:85090510299
SN - 1549-9618
VL - 16
SP - 5512
EP - 5525
JO - Journal of Chemical Theory and Computation
JF - Journal of Chemical Theory and Computation
IS - 9
ER -