The design of compounds that can discriminate between closely related target proteins remains a central challenge in drug discovery. Specific therapeutics targeting the highly conserved myosin motor family are urgently needed as mutations in at least six of its members cause numerous diseases. Allosteric modulators, like the myosin-II inhibitor blebbistatin, are a promising means to achieve specificity. However, it remains unclear why blebbistatin inhibits myosin-II motors with different potencies given that it binds at a highly conserved pocket that is always closed in blebbistatin-free experimental structures. We hypothesized that the probability of pocket opening is an important determinant of the potency of compounds like blebbistatin. To test this hypothesis, we used Markov state models (MSMs) built from over 2 ms of aggregate molecular dynamics simulations with explicit solvent. We find that blebbistatin's binding pocket readily opens in simulations of blebbistatin-sensitive myosin isoforms. Comparing these conformational ensembles reveals that the probability of pocket opening correctly identifies which isoforms are most sensitive to blebbistatin inhibition and that docking against MSMs quantitatively predicts blebbistatin binding affinities (R(2)=0.82). In a blind prediction for an isoform (Myh7b) whose blebbistatin sensitivity was unknown, we find good agreement between predicted and measured IC50s (0.67 μM vs. 0.36 μM). Therefore, we expect this framework to be useful for the development of novel specific drugs across numerous protein targets.
Drug specificity and affinity are encoded in the probability of cryptic pocket opening in myosin motor domains.
药物特异性和亲和力编码在肌球蛋白运动结构域中隐蔽口袋开放的概率中
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作者:Meller Artur, Lotthammer Jeffrey M, Smith Louis G, Novak Borna, Lee Lindsey A, Kuhn Catherine C, Greenberg Lina, Leinwand Leslie A, Greenberg Michael J, Bowman Gregory R
| 期刊: | Elife | 影响因子: | 6.400 |
| 时间: | 2023 | 起止号: | 2023 Jan 27; 12:e83602 |
| doi: | 10.7554/eLife.83602 | 研究方向: | 其它 |
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