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Dive into the research topics where Jason Swails is active.

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Featured researches published by Jason Swails.


Journal of Chemical Theory and Computation | 2016

CHARMM-GUI Input Generator for NAMD, Gromacs, Amber, Openmm, and CHARMM/OpenMM Simulations using the CHARMM36 Additive Force Field

Jumin Lee; Xi Cheng; Jason Swails; Min Sun Yeom; Peter Eastman; Justin A. Lemkul; Shuai Wei; Joshua Buckner; Jong Cheol Jeong; Yifei Qi; Sunhwan Jo; Vijay S. Pande; David A. Case; Charles L. Brooks; Alexander D. MacKerell; Jeffery B. Klauda; Wonpil Im

Proper treatment of nonbonded interactions is essential for the accuracy of molecular dynamics (MD) simulations, especially in studies of lipid bilayers. The use of the CHARMM36 force field (C36 FF) in different MD simulation programs can result in disagreements with published simulations performed with CHARMM due to differences in the protocols used to treat the long-range and 1-4 nonbonded interactions. In this study, we systematically test the use of the C36 lipid FF in NAMD, GROMACS, AMBER, OpenMM, and CHARMM/OpenMM. A wide range of Lennard-Jones (LJ) cutoff schemes and integrator algorithms were tested to find the optimal simulation protocol to best match bilayer properties of six lipids with varying acyl chain saturation and head groups. MD simulations of a 1,2-dipalmitoyl-sn-phosphatidylcholine (DPPC) bilayer were used to obtain the optimal protocol for each program. MD simulations with all programs were found to reasonably match the DPPC bilayer properties (surface area per lipid, chain order parameters, and area compressibility modulus) obtained using the standard protocol used in CHARMM as well as from experiments. The optimal simulation protocol was then applied to the other five lipid simulations and resulted in excellent agreement between results from most simulation programs as well as with experimental data. AMBER compared least favorably with the expected membrane properties, which appears to be due to its use of the hard-truncation in the LJ potential versus a force-based switching function used to smooth the LJ potential as it approaches the cutoff distance. The optimal simulation protocol for each program has been implemented in CHARMM-GUI. This protocol is expected to be applicable to the remainder of the additive C36 FF including the proteins, nucleic acids, carbohydrates, and small molecules.


Biophysical Journal | 2015

MDTraj: A Modern Open Library for the Analysis of Molecular Dynamics Trajectories

Robert T. McGibbon; Kyle A. Beauchamp; Matthew P. Harrigan; Christoph Klein; Jason Swails; Carlos X. Hernández; Christian R. Schwantes; Lee-Ping Wang; Thomas J. Lane; Vijay S. Pande

As molecular dynamics (MD) simulations continue to evolve into powerful computational tools for studying complex biomolecular systems, the necessity of flexible and easy-to-use software tools for the analysis of these simulations is growing. We have developed MDTraj, a modern, lightweight, and fast software package for analyzing MD simulations. MDTraj reads and writes trajectory data in a wide variety of commonly used formats. It provides a large number of trajectory analysis capabilities including minimal root-mean-square-deviation calculations, secondary structure assignment, and the extraction of common order parameters. The package has a strong focus on interoperability with the wider scientific Python ecosystem, bridging the gap between MD data and the rapidly growing collection of industry-standard statistical analysis and visualization tools in Python. MDTraj is a powerful and user-friendly software package that simplifies the analysis of MD data and connects these datasets with the modern interactive data science software ecosystem in Python.


PLOS Computational Biology | 2017

OpenMM 7: Rapid development of high performance algorithms for molecular dynamics

Peter Eastman; Jason Swails; John D. Chodera; Robert T. McGibbon; Yutong Zhao; Kyle A. Beauchamp; Lee-Ping Wang; Andrew C. Simmonett; Matthew P. Harrigan; Chaya Stern; Rafal P. Wiewiora; Bernard R. Brooks; Vijay S. Pande

OpenMM is a molecular dynamics simulation toolkit with a unique focus on extensibility. It allows users to easily add new features, including forces with novel functional forms, new integration algorithms, and new simulation protocols. Those features automatically work on all supported hardware types (including both CPUs and GPUs) and perform well on all of them. In many cases they require minimal coding, just a mathematical description of the desired function. They also require no modification to OpenMM itself and can be distributed independently of OpenMM. This makes it an ideal tool for researchers developing new simulation methods, and also allows those new methods to be immediately available to the larger community.


Journal of Physical Chemistry B | 2016

Advanced Potential Energy Surfaces for Molecular Simulation

Alex Albaugh; Henry A. Boateng; Richard T. Bradshaw; Omar Demerdash; Jacek Dziedzic; Yuezhi Mao; Daniel T. Margul; Jason Swails; Qiao Zeng; David A. Case; Peter Eastman; Lee-Ping Wang; Jonathan W. Essex; Martin Head-Gordon; Vijay S. Pande; Jay W. Ponder; Yihan Shao; Chris-Kriton Skylaris; Ilian T. Todorov; Mark E. Tuckerman; Teresa Head-Gordon

Advanced potential energy surfaces are defined as theoretical models that explicitly include many-body effects that transcend the standard fixed-charge, pairwise-additive paradigm typically used in molecular simulation. However, several factors relating to their software implementation have precluded their widespread use in condensed-phase simulations: the computational cost of the theoretical models, a paucity of approximate models and algorithmic improvements that can ameliorate their cost, underdeveloped interfaces and limited dissemination in computational code bases that are widely used in the computational chemistry community, and software implementations that have not kept pace with modern high-performance computing (HPC) architectures, such as multicore CPUs and modern graphics processing units (GPUs). In this Feature Article we review recent progress made in these areas, including well-defined polarization approximations and new multipole electrostatic formulations, novel methods for solving the mutual polarization equations and increasing the MD time step, combining linear-scaling electronic structure methods with new QM/MM methods that account for mutual polarization between the two regions, and the greatly improved software deployment of these models and methods onto GPU and CPU hardware platforms. We have now approached an era where multipole-based polarizable force fields can be routinely used to obtain computational results comparable to state-of-the-art density functional theory while reaching sampling statistics that are acceptable when compared to that obtained from simpler fixed partial charge force fields.


Journal of Biomolecular NMR | 2015

AFNMR: automated fragmentation quantum mechanical calculation of NMR chemical shifts for biomolecules

Jason Swails; Tong Zhu; Xiao He; David A. Case

We evaluate the performance of the automated fragmentation quantum mechanics/molecular mechanics approach (AF-QM/MM) on the calculation of protein and nucleic acid NMR chemical shifts. The AF-QM/MM approach models solvent effects implicitly through a set of surface charges computed using the Poisson–Boltzmann equation, and it can also be combined with an explicit solvent model through the placement of water molecules in the first solvation shell around the solute; the latter substantially improves the accuracy of chemical shift prediction of protons involved in hydrogen bonding with solvent. We also compare the performance of AF-QM/MM on proteins and nucleic acids with two leading empirical chemical shift prediction programs SHIFTS and SHIFTX2. Although the empirical programs outperform AF-QM/MM in predicting chemical shifts, the differences are in some cases small, and the latter can be applied to chemical shifts on biomolecules which are outside the training set employed by the empirical programs, such as structures containing ligands, metal centers, and non-standard residues. The AF-QM/MM described here is implemented in version 5 of the SHIFTS software, and is fully automated, so that only a structure in PDB format is required as input.


Journal of the American Chemical Society | 2018

A Coupled Ionization-Conformational Equilibrium Is Required To Understand the Properties of Ionizable Residues in the Hydrophobic Interior of Staphylococcal Nuclease

Jinfeng Liu; Jason Swails; John Z. H. Zhang; Xiao He; Adrian E. Roitberg

Ionizable residues in the interior of proteins play essential roles, especially in biological energy transduction, but are relatively rare and seem incompatible with the complex and polar environment. We perform a comprehensive study of the internal ionizable residues on 21 variants of staphylococcal nuclease with internal Lys, Glu, or Asp residues. Using pH replica exchange molecular dynamics simulations, we find that, in most cases, the pKa values of these internal ionizable residues are shifted significantly from their values in solution. Our calculated results are in excellent agreement with the experimental observations of the Garcia-Moreno group. We show that the interpretation of the experimental pKa values requires the study of not only protonation changes but also conformational changes. The coupling between the protonation and conformational equilibria suggests a mechanism for efficient pH-sensing and regulation in proteins. This study provides new physical insights into how internal ionizable residues behave in the hydrophobic interior of proteins.


Journal of Computer-aided Molecular Design | 2017

Erratum to: Lessons learned from comparing molecular dynamics engines on the SAMPL5 dataset

Michael R. Shirts; Christoph Klein; Jason Swails; Jian Yin; Michael K. Gilson; David L. Mobley; David A. Case; Ellen D. Zhong

Author(s): Shirts, Michael R; Klein, Christoph; Swails, Jason M; Yin, Jian; Gilson, Michael K; Mobley, David L; Case, David A; Zhong, Ellen D


Journal of Computer-aided Molecular Design | 2017

Lessons learned from comparing molecular dynamics engines on the SAMPL5 dataset

Michael R. Shirts; Christoph Klein; Jason Swails; Jian Yin; Michael K. Gilson; David L. Mobley; David A. Case; Ellen D. Zhong


Archive | 2017

Mdtraj/Mdtraj: Mdtraj 1.9

Robert T. McGibbon; Matthew P. Harrigan; Kyle A. Beauchamp; Christoph Klein; Jason Swails; Carlos X. Hernández; Peastman; Martin K. Scherer; Christian R. Schwantes; Pfrstg; Lee-Ping; Tim Moore; Connor Brinton; John D. Chodera; Thomas J. Lane; Teng Lin; Msultan; Joshua L. Adelman; Raviramanathan; Nate Stanley; Toon Verstraelen; Chaya Stern; Gkiss; Hai Nguyen; Matt Thompson; Guillermo Pérez-Hernández; Yutong Zhao; Rafal P. Wiewiora; Justin R. Porter; Andrea Zonca


Archive | 2016

mdtraj: MDTraj 1.6

Robert T. McGibbon; fabian-paul; gkiss; Matthew P. Harrigan; pfrstg; Thomas J. Lane; Anton Goloborodko; John D. Chodera; Lee-Ping; Jason Swails; Joshua L. Adelman; Hai Nguyen; Burning-Daylight; Tim Moore; Quang H; raviramanathan; Yutong Zhao; Christian R. Schwantes; Thomas Peulen; Andrea Zonca; Carlos X. Hernández; Ondrej Marsalek; ChayaSt; Teng Lin; Martin K. Scherer; Rafal P. Wiewiora; Kyle A. Beauchamp; Christoph Klein; msultan

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Kyle A. Beauchamp

Memorial Sloan Kettering Cancer Center

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Thomas J. Lane

SLAC National Accelerator Laboratory

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