XtalPi Inc. (Shenzhen Jingtai Technology Co., Ltd.), Floor 4, No. 9, Hualian Industrial Zone, Dalang Street, Longhua District, Shenzhen 518100, China.
XtalPi Inc, 245 Main Street, Cambridge, Massachusetts 02142, United States.
J Phys Chem Lett. 2020 Oct 15;11(20):8832-8838. doi: 10.1021/acs.jpclett.0c02371. Epub 2020 Oct 2.
One of the most popular strategies of the optimization of drug properties in the pharmaceutical industry appears to be a solid form changing into a cocrystalline form. A number of virtual screening approaches have been previously developed to allow a selection of the most promising cocrystal formers (coformers) for an experimental follow-up. A significant drawback of those methods is related to the lack of accounting for the crystallinity contribution to cocrystal formation. To address this issue, we propose in this study two virtual coformer screening approaches based on a modern cloud-computing crystal structure prediction (CSP) technology at a dispersion-corrected density functional theory (DFT-D) level. The CSP-based methods were for the first time validated on challenging cases of indomethacin and paracetamol cocrystallization, for which the previously developed approaches provided poor predictions. The calculations demonstrated a dramatic improvement of the virtual coformer screening performance relative to the other methods. It is demonstrated that the crystallinity contribution to the formation of paracetamol and indomethacin cocrystals is a dominant one and, therefore, should not be ignored in the virtual screening calculations. Our results encourage a broad utilization of the proposed CSP-based technology in the pharmaceutical industry as the only virtual coformer screening method that directly accounts for the crystallinity contribution.
在制药行业中,优化药物性质的最流行策略之一似乎是将固体形式转变为共晶形式。之前已经开发了许多虚拟筛选方法,以允许选择最有前途的共晶形成剂(共晶形成剂)进行实验跟进。这些方法的一个显著缺点与缺乏对结晶度对共晶形成的贡献的考虑有关。为了解决这个问题,我们在这项研究中提出了两种基于现代云计算晶体结构预测(CSP)技术的虚拟共晶形成剂筛选方法,该技术基于色散校正密度泛函理论(DFT-D)水平。基于 CSP 的方法首次在挑战性的吲哚美辛和对乙酰氨基酚共晶化案例中得到验证,对于这些案例,以前开发的方法提供了较差的预测。计算结果表明,与其他方法相比,虚拟共晶形成剂筛选性能有了显著提高。结果表明,结晶度对乙酰氨基酚和吲哚美辛共晶形成的贡献是主要的,因此在虚拟筛选计算中不应忽略。我们的结果鼓励在制药行业中广泛利用所提出的基于 CSP 的技术,因为它是唯一直接考虑结晶度贡献的虚拟共晶形成剂筛选方法。