Rahman Mohammed, Dannatt Hugh R W, Blundell Charles D, Hughes Leslie P, Blade Helen, Carson Jake, Tatman Ben P, Johnston Steven T, Brown Steven P
Department of Physics, University of Warwick, Coventry CV4 7AL, U.K.
Department of Chemistry, University of Warwick, Coventry CV4 7AL, U.K.
J Phys Chem A. 2024 Mar 14;128(10):1793-1816. doi: 10.1021/acs.jpca.3c07732. Epub 2024 Mar 1.
The Δδ regression approach of Blade et al. [ 2020, 124(43), 8959-8977] for accurately discriminating between solid forms using a combination of experimental solution- and solid-state NMR data with density functional theory (DFT) calculation is here extended to molecules with multiple conformational degrees of freedom, using furosemide polymorphs as an exemplar. As before, the differences in measured H and C chemical shifts between solution-state NMR and solid-state magic-angle spinning (MAS) NMR (Δδ) are compared to those determined by gauge-including projector augmented wave (GIPAW) calculations (Δδ) by regression analysis and a -test, allowing the correct furosemide polymorph to be precisely identified. Monte Carlo random sampling is used to calculate solution-state NMR chemical shifts, reducing computation times by avoiding the need to systematically sample the multidimensional conformational landscape that furosemide occupies in solution. The solvent conditions should be chosen to match the molecule's charge state between the solution and solid states. The Δδ regression approach indicates whether or not correlations between Δδ and Δδ are statistically significant; the approach is differently sensitive to the popular root mean squared error (RMSE) method, being shown to exhibit a much greater dynamic range. An alternative method for estimating solution-state NMR chemical shifts by approximating the measured solution-state dynamic 3D behavior with an ensemble of 54 furosemide crystal structures (polymorphs and cocrystals) from the Cambridge Structural Database (CSD) was also successful in this case, suggesting new avenues for this method that may overcome its current dependency on the prior determination of solution dynamic 3D structures.
Blade等人[2020, 124(43), 8959 - 8977]采用实验溶液态和固态核磁共振数据与密度泛函理论(DFT)计算相结合的方法准确区分固体形态的Δδ回归方法,在此扩展到具有多个构象自由度的分子,以速尿多晶型物为例。和以前一样,通过回归分析和t检验,将溶液态核磁共振和固态魔角旋转(MAS)核磁共振测量的H和C化学位移差异(Δδ)与通过含规范投影增强波(GIPAW)计算确定的差异(Δδ)进行比较,从而精确识别正确的速尿多晶型物。采用蒙特卡罗随机抽样计算溶液态核磁共振化学位移,通过避免系统地对速尿在溶液中占据的多维构象空间进行抽样,减少了计算时间。应选择溶剂条件以匹配分子在溶液态和固态之间的电荷状态。Δδ回归方法表明Δδ和Δδ之间的相关性是否具有统计学意义;该方法对常用的均方根误差(RMSE)方法的敏感度不同,显示出更大的动态范围。在这种情况下,另一种通过用剑桥结构数据库(CSD)中的54个速尿晶体结构(多晶型物和共晶体)集合近似测量的溶液态动态3D行为来估计溶液态核磁共振化学位移的方法也取得了成功,这为该方法开辟了新途径,可能克服其目前对溶液动态3D结构先验测定的依赖。