Laboratory of Analytical and Bio-Analytical Chemistry, Graduate Division of Pharmaceutical Sciences, University of Shizuoka, 52-1 Yada, Shizuoka, Suruga-Ku, Shizuoka 422-8526, Japan; Analytical and Quality Evaluation Research Laboratories, Daiichi Sankyo Co., Ltd., 1-12-1 Shinomiya, Hiratsuka, Kanagawa 254-0014, Japan.
Laboratory of Analytical and Bio-Analytical Chemistry, Graduate Division of Pharmaceutical Sciences, University of Shizuoka, 52-1 Yada, Shizuoka, Suruga-Ku, Shizuoka 422-8526, Japan.
J Pharm Biomed Anal. 2017 Nov 30;146:251-260. doi: 10.1016/j.jpba.2017.08.047. Epub 2017 Sep 1.
A novel computer-assisted methodology for the simultaneous optimization of aqueous pH and binary organic eluent composition through a broad range of analytical conditions of reversed-phase ultra high-performance liquid chromatography is proposed. Two of nonlinear prediction models were employed to fit into the retention time (tR) on a linear gradient elution with a predefined slope. One model was derived from Bernoulli-type probability distribution to predict the value of tR against the pH value of the aqueous eluent. This sigmoid-shaped model was successfully fitted for tR value shift in the presence of three levels of organic eluent compositions (volumetric mixing of acetonitrile/methanol ratios 1:0, 1:1, and 0:1). The resultant pH versus tR value models were subsequently combined into grid form by quadratic multiple regression models based on the solubility parameter theory and their binary organic composition axes. The predicted tR values afforded from grid models were highly accurate for 13 different acidic non-steroidal anti-inflammatory drugs [root mean square error (RMSE) ≤0.030] and 16 basic histamine H1-receptor blockers (RMSE ≤0.067) in a pH ranging from 2.5 to 9.0 and an acetonitrile/methanol volumetric mixing ratio ranging from 1:0 to 0:1. Each compatibility score was defined as the indicator of the peak separation. Scores were calculated for all combinations of aqueous pH values and binary organic compositions via the predicted tR values. A colored map generated from the calculated scores was greatly effective in determining optimal combinations of both mobile phase conditions. By employing this predictive data, all analytes in both acidic and basic sample mixtures were finally separated at their respective optimized conditions.
提出了一种新颖的计算机辅助方法,可通过反相超高效液相色谱的广泛分析条件同时优化水相 pH 值和二元有机洗脱剂组成。采用了两种非线性预测模型来拟合具有预定斜率的线性梯度洗脱中的保留时间 (tR)。一种模型源自伯努利型概率分布,用于预测 tR 值相对于水相洗脱液 pH 值的值。该模型成功拟合了在三种有机洗脱剂组成水平(乙腈/甲醇体积比 1:0、1:1 和 0:1 的混合)存在下 tR 值的偏移。随后,根据溶解度参数理论及其二元有机组成轴,将得到的 pH 与 tR 值模型组合成网格形式的二次多项回归模型。网格模型预测的 tR 值对于 13 种不同的酸性非甾体抗炎药(均方根误差 (RMSE)≤0.030)和 16 种碱性组胺 H1 受体阻滞剂(RMSE≤0.067)非常准确,pH 值范围为 2.5 至 9.0,乙腈/甲醇体积混合比范围为 1:0 至 0:1。每个兼容性得分为峰分离的指示符。通过预测的 tR 值计算所有水相 pH 值和二元有机组成的组合的得分。从计算得分生成的彩色地图在确定两个流动相条件的最佳组合方面非常有效。通过使用该预测数据,最终在各自的优化条件下分离了酸性和碱性样品混合物中的所有分析物。