Analytical Chemistry Department, Faculty of Pharmacy, Cairo University, Kasr El Aini st., 11562 Cairo, Egypt.
Analytical Chemistry Department, Faculty of Pharmacy, Cairo University, Kasr El Aini st., 11562 Cairo, Egypt.
Spectrochim Acta A Mol Biomol Spectrosc. 2018 Dec 5;205:376-380. doi: 10.1016/j.saa.2018.07.046. Epub 2018 Jul 17.
Traditional Partial Least Squares (PLS) and Advanced Artificial Neural Network (ANN) models were applied for the quantitative determination of paracetamol (PAR) and chlorzoxazone (CZX) together with their process-related impurities namely; 4-aminophenol (AP), 4‑chloroacetanilide (AC), 4‑nitrophenol (NP), 4‑chlorophenol (CP) and 2‑amino-4-chlorophenol (ACP). Both models were applied first to full spectrum data then the results were compared to those obtained after wavelength selection using Genetic Algorithm (GA). A 5-level 7-factor experimental design was used giving rise to 25 mixtures containing different proportions of the seven compounds. The calibration set was composed of 15 mixtures while 9 mixtures were used in the validation set to test the predictive ability of the suggested models. The four models PLS, ANN, GA-PLS and GA-ANN were successfully applied for the determination of PAR and CZX in their pure and pharmaceutical dosage form. One way ANOVA was carried out between the developed methods and the official ones for PAR and CZX and no significant difference was found. The four models can be easily applied for the determination of the selected drugs in quality control laboratories lacking expensive HPLC instruments.
传统的偏最小二乘法(PLS)和先进的人工神经网络(ANN)模型被应用于对扑热息痛(PAR)和氯唑沙宗(CZX)及其相关工艺杂质(即 4-氨基酚(AP)、4-氯乙酰胺(AC)、4-硝基苯酚(NP)、4-氯苯酚(CP)和 2-氨基-4-氯苯酚(ACP))的定量测定。两种模型都首先应用于全谱数据,然后将结果与使用遗传算法(GA)进行波长选择后获得的结果进行比较。采用 5 水平 7 因素实验设计,得到了包含 7 种化合物不同比例的 25 种混合物。校准集由 15 种混合物组成,验证集由 9 种混合物组成,用于测试所建议模型的预测能力。PLS、ANN、GA-PLS 和 GA-ANN 四种模型成功地应用于 PAR 和 CZX 的纯品和药物制剂的测定。对 PAR 和 CZX 进行了开发方法与官方方法之间的单因素方差分析,未发现显著差异。这四种模型可以很容易地应用于缺乏昂贵 HPLC 仪器的质量控制实验室中对选定药物的测定。