Accounting for fast vs slow exchange in single molecule FRET experiments reveals hidden conformational states.
Justin J MillerUpasana L MallimadugulaMaxwell I ZimmermanMelissa D Stuchell-BreretonAndrea SorannoGregory R BowmanPublished in: bioRxiv : the preprint server for biology (2024)
Proteins are dynamic systems whose structural preferences determine their function. Unfortunately, building atomically detailed models of protein structural ensembles remains challenging, limiting our understanding of the relationships between sequence, structure, and function. Combining single molecule Förster resonance energy transfer (smFRET) experiments with molecular dynamics simulations could provide experimentally grounded, all-atom models of a protein's structural ensemble. However, agreement between the two techniques is often insufficient to achieve this goal. Here, we explore whether accounting for important experimental details like averaging across structures sampled during a given smFRET measurement is responsible for this apparent discrepancy. We present an approach to account for this time-averaging by leveraging the kinetic information available from Markov state models of a protein's dynamics. This allows us to accurately assess which timescales are averaged during an experiment. We find this approach significantly improves agreement between simulations and experiments in proteins with varying degrees of dynamics, including the well-ordered protein T4 lysozyme, the partially disordered protein apolipoprotein E (ApoE), and a disordered amyloid protein (Aβ40). We find evidence for hidden states that are not apparent in smFRET experiments because of time averaging with other structures, akin to states in fast exchange in NMR, and evaluate different force fields. Finally, we show how remaining discrepancies between computations and experiments can be used to guide additional simulations and build structural models for states that were previously unaccounted for. We expect our approach will enable combining simulations and experiments to understand the link between sequence, structure, and function in many settings.
Keyphrases
- single molecule
- energy transfer
- molecular dynamics simulations
- protein protein
- amino acid
- molecular dynamics
- living cells
- atomic force microscopy
- high resolution
- quantum dots
- magnetic resonance imaging
- metabolic syndrome
- adipose tissue
- computed tomography
- type diabetes
- deep learning
- magnetic resonance
- skeletal muscle
- health information
- cognitive decline
- mass spectrometry
- diffusion weighted imaging
- neural network
- high speed