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A Two-Ended Data-Driven Accelerated Sampling Method for Exploring the Transition Pathways between Two Known States of Protein

机译:一种用于探索两种已知蛋白质态之间的过渡途径的两端数据驱动加速方法

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Conformational transitions of protein between different states are often associated with their biological functions. These dynamic processes, however, are usually not easy to be well characterized by experimental measurements, mainly because of inadequate temporal and spatial resolution. Meantime, sampling of configuration space with molecular dynamics (MD) simulations is still a challenge. Here we proposed a robust two-ended data-driven accelerated (teDA2) conformational sampling method, which drives the structural change in an adaptively updated feature space without introducing a bias potential. teDA2 was applied to explore adenylate kinase (ADK), a model with well characterized “open” and “closed” states. A single conformational transition event of ADK could be achieved within only a few or tens of nanoseconds sampled with teDA2. By analyzing hundreds of transition events, we reproduced different mechanisms and the associated pathways for domain motion of ADK reported in the literature. The multiroute characteristic of ADK was confirmed by the fact that some metastable states identified with teDA2 resemble available crystal structures determined at different conditions. This feature was further validated with Markov state modeling with independent MD simulations. Therefore, our work provides strong evidence for the conformational plasticity of protein, which is mainly due to the inherent degree of flexibility. As a reliable and efficient enhanced sampling protocol, teDA2 could be used to study the dynamics between functional states of various biomolecular machines.
机译:不同状态之间的蛋白质的构象转变通常与其生物学功能相关。然而,这些动态过程通常不容易通过实验测量表征,主要是由于时间和空间分辨率不足。同时,具有分子动力学(MD)模拟的配置空间的采样仍然是一个挑战。在这里,我们提出了一种坚固的两个结束数据驱动加速(TEDA2)构象采样方法,其在不引入偏置电位的情况下驱动自适应更新的特征空间中的结构变化。促使TEDA2探索腺苷酸激酶(ADK),一种具有很好的“开放”和“封闭”状态的模型。 ADK的单个构象过渡事件可以在仅与TEDA2采样的几十多个纳秒内实现。通过分析数百个过渡事件,我们再现不同的机制和文献中ADK的域运动的相关机制和相关途径。 ADK的多途集特征是通过在不同条件下确定的特定晶体结构鉴定的一些亚稳态状态的事实证实了ADK的特征。使用独立MD模拟,使用马尔可夫状态建模进一步验证了此功能。因此,我们的作品为蛋白质的构象可塑性提供了强有力的证据,这主要是由于固有的灵活性程度。作为可靠且有效的增强抽样协议,TEDA2可用于研究各种生物分子机的功能状态之间的动态。

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