Institute of Physical Chemistry, Karlsruhe Institute of Technology, 76131 Karlsruhe, Germany.
Bredesen Center for Interdisciplinary Research and Graduate Education, University of Tennessee, Knoxville, Tennessee 37996, United States.
J Chem Theory Comput. 2022 Feb 8;18(2):1213-1226. doi: 10.1021/acs.jctc.1c00811. Epub 2022 Jan 3.
Semiempirical methods like density functional tight-binding (DFTB) allow extensive phase space sampling, making it possible to generate free energy surfaces of complex reactions in condensed-phase environments. Such a high efficiency often comes at the cost of reduced accuracy, which may be improved by developing a specific reaction parametrization (SRP) for the particular molecular system. Thiol-disulfide exchange is a nucleophilic substitution reaction that occurs in a large class of proteins. Its proper description requires a high-level ab initio method, while DFT-GAA and hybrid functionals were shown to be inadequate, and so is DFTB due to its DFT-GGA descent. We develop an SRP for thiol-disulfide exchange based on an artificial neural network (ANN) implementation in the DFTB+ software and compare its performance to that of a standard SRP approach applied to DFTB. As an application, we use both new DFTB-SRP as components of a QM/MM scheme to investigate thiol-disulfide exchange in two molecular complexes: a solvated model system and a blood protein. Demonstrating the strengths of the methodology, highly accurate free energy surfaces are generated at a low cost, as the augmentation of DFTB with an ANN only adds a small computational overhead.
半经验方法,如密度泛函紧束缚(DFTB),允许广泛的相空间采样,从而有可能在凝聚相环境中生成复杂反应的自由能表面。这种高效率通常是以降低准确性为代价的,可以通过为特定的分子系统开发特定的反应参数化(SRP)来提高准确性。硫醇-二硫交换是一种亲核取代反应,发生在一大类蛋白质中。其正确描述需要高级的从头算方法,而 DFT-GAA 和混合泛函被证明是不够的,DFTB 也是如此,因为它是 DFT-GGA 的下降。我们基于 DFTB+软件中的人工神经网络(ANN)实现,为硫醇-二硫交换开发了一个 SRP,并将其性能与应用于 DFTB 的标准 SRP 方法进行了比较。作为应用,我们使用新的 DFTB-SRP 作为 QM/MM 方案的组件来研究两个分子复合物中的硫醇-二硫交换:一个溶剂化模型系统和一个血液蛋白。该方法的优势在于,以较低的成本生成了高度准确的自由能表面,因为 DFTB 与 ANN 的结合只增加了很小的计算开销。