Simple few-state models reveal hidden complexity in protein folding

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Abstract

Markov state models constructed from molecular dynamics simulations have recently shown success at modeling protein folding kinetics. Here we introduce two methods, flux PCCA+ (FPCCA+) and sliding constraint rate estimation (SCRE), that allow accurate rate models from protein folding simulations.We apply these techniques to fourteen massive simulation datasets generated by Anton and Folding@home. Our protocol quantitatively identifies the suitability of describing each system using two-state kinetics and predicts experimentally detectable deviations from two-state behavior. An analysis of the villin headpiece and FiP35WWdomain detects multiple native substates that are consistent with experimental data. Applying the same protocol to GTT, NTL9, and protein G suggests that some beta containing proteins can form long-lived native-like states with small register shifts. Even the simplest protein systems show folding and functional dynamics involving three or more states.

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Beauchamp, K. A., McGibbon, R., Lin, Y. S., & Pande, V. S. (2012). Simple few-state models reveal hidden complexity in protein folding. Proceedings of the National Academy of Sciences of the United States of America, 109(44), 17807–17813. https://doi.org/10.1073/pnas.1201810109

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