Spitaleri Andrea, Decherchi Sergio, Cavalli Andrea, Rocchia Walter
CONCEPT Lab , Istituto Italiano di Tecnologia , via Morego, 30 , I-16163 Genoa , Italy.
BiKi Technologies srl , Via XX Settembre 33/10 , 16121 Genoa , Italy.
J Chem Theory Comput. 2018 Mar 13;14(3):1727-1736. doi: 10.1021/acs.jctc.7b01088. Epub 2018 Feb 9.
Engineering chemical entities to modify how pharmaceutical targets function, as it is done in drug design, requires a good understanding of molecular recognition and binding. In this context, the limitations of statically describing bimolecular recognition, as done in docking/scoring, call for insightful and efficient dynamical investigations. On the experimental side, the characterization of dynamical binding processes is still in its infancy. Thus, computer simulations, particularly molecular dynamics (MD), are compelled to play a prominent role, allowing a deeper comprehension of the binding process and its causes and thus a more informed compound selection, making more significant the computational contribution to drug discovery (Carlson, H. A. Curr. Opin. Chem. Biol. 2002, 6, 447-452). Unfortunately, MD-based approaches cannot yet describe complex events without incurring prohibitive time and computational costs. Here, we present a new method for fully and dynamically simulating drug-target-complex formations, tested against a real world and pharmaceutically relevant benchmark set. The method, based on an adaptive, electrostatics-inspired bias, envisions a campaign of trivially parallel short MD simulations and a strategy to identify a near native binding pose from the sampled configurations. At an affordable computational cost, this method provided predictions of good accuracy also when the starting protein conformation was different from that of the crystal complex, a known hurdle for traditional molecular docking (Lexa, K. W.; Carlson, H. A. Q. Rev. Biophys. 2012, 45, 301-343). Moreover, along the observed binding routes, it identified some key features also found by much more computationally expensive plain-MD simulations. Overall, this methodology represents significant progress in the description of binding phenomena.
正如药物设计中所做的那样,通过工程化化学实体来改变药物靶点的功能,需要对分子识别和结合有深入的理解。在这种情况下,对接/评分中对双分子识别进行静态描述的局限性,需要进行有洞察力和高效的动力学研究。在实验方面,动态结合过程的表征仍处于起步阶段。因此,计算机模拟,特别是分子动力学(MD),被迫发挥重要作用,它能让我们更深入地理解结合过程及其原因,从而更明智地选择化合物,使计算在药物发现中的贡献更显著(卡尔森,H. A. 《化学生物学当前观点》2002年,6卷,447 - 452页)。不幸的是,基于MD的方法在不产生高昂时间和计算成本的情况下,还无法描述复杂事件。在此,我们提出一种全新的方法,用于全面动态地模拟药物 - 靶点复合物的形成,并针对一个真实且与药学相关的基准集进行了测试。该方法基于一种自适应的、受静电启发的偏差,设想了一系列简单并行的短MD模拟以及从采样构型中识别接近天然结合构象的策略。以可承受的计算成本,该方法在起始蛋白质构象与晶体复合物不同时(这是传统分子对接的一个已知障碍),也能提供具有良好准确性的预测(莱克萨,K. W.;卡尔森,H. A. 《生物物理学季刊评论》2012年,45卷,301 - 343页)。此外,沿着观察到的结合路径,它还识别出了一些关键特征,这些特征在计算成本高得多的普通MD模拟中也能找到。总体而言,这种方法在结合现象的描述方面取得了重大进展。