University of Iowa , Department of Biochemistry , 51 Newton Road, 4-403 Bowen Science Building , Iowa City , Iowa 52242 , United States.
University of Iowa , Department of Biomedical Engineering , 103 South Capitol Street, 5601 Seamans Center for the Engineering Arts and Sciences , Iowa City , Iowa 52242 , United States.
J Chem Theory Comput. 2019 Aug 13;15(8):4602-4614. doi: 10.1021/acs.jctc.9b00147. Epub 2019 Jul 3.
Many biological processes are based on molecular recognition between highly charged molecules such as nucleic acids, inorganic ions, charged amino acids, etc. For such cases, it has been demonstrated that molecular simulations with fixed partial charges often fail to achieve experimental accuracy. Although incorporation of more advanced electrostatic models (such as multipoles, mutual polarization, etc.) can significantly improve simulation accuracy, it increases computational expense by a factor of 5-20×. Indirect free energy (IFE) methods can mitigate this cost by modeling intermediate states at fixed-charge resolution. For example, an efficient "reference" model such as a pairwise Amber, CHARMM, or OPLS-AA force field can be used to derive an initial estimate, followed by thermodynamic corrections to a more advanced "target" potential such as the polarizable AMOEBA model. Unfortunately, all currently described IFE methods encounter difficulties reweighting more than ∼50 atoms between resolutions due to extensive scaling of both the magnitude of the thermodynamic corrections and their statistical uncertainty. We present an approach called "simultaneous bookending" (SB) that is fundamentally different from existing IFE methods based on a tunable sampling approximation, which permits scaling to thousands of atoms. SB is demonstrated on the relative binding affinity of Mg/Ca to a set of metalloproteins with up to 2972 atoms, finding no statistically significant difference between direct AMOEBA results and those from correcting Amber to AMOEBA. The ability to change the resolution of thousands of atoms during reweighting suggests the approach may be applicable in the future to protein-protein binding affinities or nucleic acid thermodynamics.
许多生物过程都基于高度带电分子(如核酸、无机离子、带电氨基酸等)之间的分子识别。对于这种情况,已经证明固定部分电荷的分子模拟通常无法达到实验精度。尽管采用更先进的静电模型(如多极子、相互极化等)可以显著提高模拟精度,但这会使计算成本增加 5-20 倍。间接自由能(IFE)方法可以通过在固定电荷分辨率下模拟中间状态来减轻这种成本。例如,可以使用有效的“参考”模型(如成对的 Amber、CHARMM 或 OPLS-AA 力场)来进行初始估计,然后对更先进的“目标”势能(如可极化 AMOEBA 模型)进行热力学修正。不幸的是,由于热力学修正的幅度及其统计不确定性的广泛缩放,目前所有描述的 IFE 方法在分辨率之间重新加权超过约 50 个原子时都会遇到困难。我们提出了一种称为“同时加边”(SB)的方法,它与基于可调采样逼近的现有 IFE 方法有根本不同,允许扩展到数千个原子。SB 在一组含有多达 2972 个原子的金属蛋白酶的 Mg/Ca 相对结合亲和力上进行了验证,发现直接 AMOEBA 结果与从 Amber 修正到 AMOEBA 的结果之间没有统计学上的显著差异。在重新加权过程中能够改变数千个原子的分辨率表明,该方法将来可能适用于蛋白质-蛋白质结合亲和力或核酸热力学。