Department of Medicinal Chemistry, Institute of Pharmacy, Martin-Luther-University of Halle-Wittenberg, 06120 Halle, Saale, Germany.
J Chem Inf Model. 2024 Jun 10;64(11):4553-4569. doi: 10.1021/acs.jcim.4c00298. Epub 2024 May 21.
Cosolvent molecular dynamics (MD) simulations have proven to be powerful in silico tools to predict hotspots for binding regions on protein surfaces. In the current study, the method was adapted and applied to two Tudor domain-containing proteins, namely Spindlin1 (SPIN1) and survival motor neuron protein (SMN). Tudor domains are characterized by so-called aromatic cages that recognize methylated lysine residues of protein targets. In the study, the conformational transitions from closed to open aromatic cage conformations were investigated by performing MD simulations with cosolvents using six different probe molecules. It is shown that a trajectory clustering approach in combination with volume and atomic distance tracking allows a reasonable discrimination between open and closed aromatic cage conformations and the docking of inhibitors yields very good reproducibility with crystal structures. Cosolvent MDs are suitable to capture the flexibility of aromatic cages and thus represent a promising tool for the optimization of inhibitors.
助溶剂分子动力学(MD)模拟已被证明是预测蛋白质表面结合区域热点的强大计算工具。在当前的研究中,该方法经过了调整,并应用于两个含有 Tudor 结构域的蛋白质,即 Spindlin1(SPIN1)和生存运动神经元蛋白(SMN)。Tudor 结构域的特征是所谓的芳香笼,它可以识别蛋白质靶标的甲基化赖氨酸残基。在研究中,通过使用六种不同的探针分子进行 MD 模拟,研究了从封闭到开放芳香笼构象的构象转变。结果表明,轨迹聚类方法与体积和原子距离跟踪相结合,可以合理地区分开放和封闭的芳香笼构象,并且抑制剂的对接与晶体结构具有非常好的重现性。助溶剂 MD 适用于捕获芳香笼的灵活性,因此代表了优化抑制剂的有前途的工具。