Linking time-series of single-molecule experiments with molecular dynamics simulations by machine learning.
Yasuhiro MatsunagaYuji SugitaPublished in: eLife (2018)
Single-molecule experiments and molecular dynamics (MD) simulations are indispensable tools for investigating protein conformational dynamics. The former provide time-series data, such as donor-acceptor distances, whereas the latter give atomistic information, although this information is often biased by model parameters. Here, we devise a machine-learning method to combine the complementary information from the two approaches and construct a consistent model of conformational dynamics. It is applied to the folding dynamics of the formin-binding protein WW domain. MD simulations over 400 μs led to an initial Markov state model (MSM), which was then "refined" using single-molecule Förster resonance energy transfer (FRET) data through hidden Markov modeling. The refined or data-assimilated MSM reproduces the FRET data and features hairpin one in the transition-state ensemble, consistent with mutation experiments. The folding pathway in the data-assimilated MSM suggests interplay between hydrophobic contacts and turn formation. Our method provides a general framework for investigating conformational transitions in other proteins.
Keyphrases
- single molecule
- molecular dynamics
- energy transfer
- molecular dynamics simulations
- living cells
- machine learning
- big data
- atomic force microscopy
- electronic health record
- men who have sex with men
- binding protein
- density functional theory
- quantum dots
- health information
- molecular docking
- human immunodeficiency virus
- hepatitis c virus
- fluorescent probe
- high speed
- sensitive detection
- amino acid