Laboratory of Biomolecular Interactions and Transport, Department of Gene Expression, Institute of Molecular Biology and Biotechnology, Faculty of Biology, Adam Mickiewicz University, Uniwersytetu Poznanskiego 6, Poznan 61-614, Poland.
International Institute of Molecular and Cell Biology in Warsaw, Ks Trojdena 4, Warsaw 02-109, Poland.
J Chem Inf Model. 2024 Aug 26;64(16):6623-6635. doi: 10.1021/acs.jcim.4c00966. Epub 2024 Aug 15.
Tunnels are structural conduits in biomolecules responsible for transporting chemical compounds and solvent molecules from the active site. They have been shown to be present in a wide variety of enzymes across all functional and structural classes. However, the study of such pathways is experimentally challenging, because they are typically transient. Computational methods, such as molecular dynamics (MD) simulations, have been successfully proposed to explore tunnels. Conventional MD (cMD) provides structural details to characterize tunnels but suffers from sampling limitations to capture rare tunnel openings on longer time scales. Therefore, in this study, we explored the potential of Gaussian accelerated MD (GaMD) simulations to improve the exploration of complex tunnel networks in enzymes. We used the haloalkane dehalogenase LinB and its two variants with engineered transport pathways, which are not only well-known for their application potential but have also been extensively studied experimentally and computationally regarding their tunnel networks and their importance in multistep catalytic reactions. Our study demonstrates that GaMD efficiently improves tunnel sampling and allows the identification of all known tunnels for LinB and its two mutants. Furthermore, the improved sampling provided insight into a previously unknown transient side tunnel (ST). The extensive conformational landscape explored by GaMD simulations allowed us to investigate in detail the mechanism of ST opening. We determined variant-specific dynamic properties of ST opening, which were previously inaccessible due to limited sampling of cMD. Our comprehensive analysis supports multiple indicators of the functional relevance of the ST, emphasizing its potential significance beyond structural considerations. In conclusion, our research proves that the GaMD method can overcome the sampling limitations of cMD for the effective study of tunnels in enzymes, providing further means for identifying rare tunnels in enzymes with the potential for drug development, precision medicine, and rational protein engineering.
隧道是生物分子中的结构管道,负责将化学化合物和溶剂分子从活性部位运输出来。它们已经被证明存在于各种功能和结构类别中的广泛的酶中。然而,由于这些途径通常是瞬态的,因此对其进行研究具有实验挑战性。计算方法,如分子动力学(MD)模拟,已成功被提出用于探索隧道。传统的 MD(cMD)提供了结构细节来表征隧道,但在捕捉较长时间尺度上罕见的隧道开口方面存在采样限制。因此,在这项研究中,我们探索了高斯加速 MD(GaMD)模拟在探索酶中复杂隧道网络方面的潜力。我们使用了 haloalkane dehalogenase LinB 及其具有工程化运输途径的两种变体,这些变体不仅因其应用潜力而众所周知,而且在隧道网络及其在多步催化反应中的重要性方面也已经得到了广泛的实验和计算研究。我们的研究表明,GaMD 有效地提高了隧道采样效率,并允许识别 LinB 及其两个突变体的所有已知隧道。此外,改进的采样提供了对以前未知的瞬态侧隧道(ST)的深入了解。GaMD 模拟探索的广泛构象景观使我们能够详细研究 ST 开口的机制。我们确定了 ST 开口的变体特异性动态特性,这是由于 cMD 的采样有限而以前无法获得的。我们的综合分析支持了 ST 功能相关性的多个指标,强调了其在结构考虑之外的潜在意义。总之,我们的研究证明了 GaMD 方法可以克服 cMD 在有效研究酶中隧道方面的采样限制,为识别具有药物开发、精准医学和合理蛋白质工程潜力的酶中的罕见隧道提供了进一步的手段。