Predicting the Conformational Variability of Abl Tyrosine Kinase using Molecular Dynamics Simulations and Markov State Models.
Yilin MengCen GaoDavid K ClawsonShane AtwellMarijane RussellMichal ViethBenoı T RouxPublished in: Journal of chemical theory and computation (2018)
Understanding protein conformational variability remains a challenge in drug discovery. The issue arises in protein kinases, whose multiple conformational states can affect the binding of small-molecule inhibitors. To overcome this challenge, we propose a comprehensive computational framework based on Markov state models (MSMs). Our framework integrates the information from explicit-solvent molecular dynamics simulations to accurately rank-order the accessible conformational variants of a target protein. We tested the methodology using Abl kinase with a reference and blind-test set. Only half of the Abl conformational variants discovered by our approach are present in the disclosed X-ray structures. The approach successfully identified a protein conformational state not previously observed in public structures but evident in a retrospective analysis of Lilly in-house structures: the X-ray structure of Abl with WHI-P154. Using a MSM-derived model, the free energy landscape and kinetic profile of Abl was analyzed in detail highlighting opportunities for targeting the unique metastable states.
Keyphrases
- molecular dynamics simulations
- tyrosine kinase
- epidermal growth factor receptor
- molecular docking
- small molecule
- high resolution
- protein protein
- drug discovery
- chronic myeloid leukemia
- molecular dynamics
- amino acid
- binding protein
- magnetic resonance imaging
- men who have sex with men
- gene expression
- hepatitis c virus
- dual energy
- transcription factor
- social media
- health information
- cancer therapy
- single cell