Department of Pharmaceutical Chemistry, College of Pharmacy, Taif University, Taif, Saudi Arabia.
Addiction and Neuroscience Research Unit, Health Science Campus, Taif University, Taif, Saudi Arabia.
Luminescence. 2024 Jun;39(6):e4803. doi: 10.1002/bio.4803.
Hypertension and hyperlipidemia are two common conditions that require effective management to reduce the risk of cardiovascular diseases. Among the medications commonly used for the treatment of these conditions, valsartan and pitavastatin have shown significant efficacy in lowering blood pressure and cholesterol levels, respectively. In this study, synchronous spectrofluorimetry coupled to chemometric analysis tools, specifically concentration residual augmented classical least squares (CRACLS) and spectral residual augmented classical least squares (SRACLS), was employed for the determination of valsartan and pitavastatin simultaneously. The developed models exhibited excellent predictive performance with relative root mean square error of prediction (RRMSEP) of 2.253 and 2.1381 for valsartan and pitavastatin, respectively. Hence, these models were successfully applied to the analysis of synthetic samples and commercial formulations as well as plasma samples with high accuracy and precision. Besides, the greenness and blueness profiles of the determined samples were also evaluated to assess their environmental impact and analytical practicability. The results demonstrated excellent greenness and blueness scores with AGREE score of 0.7 and BAGI score of 75 posing the proposed method as reliable and sensitive approach for the determination of valsartan and pitavastatin with potential applications in pharmaceutical quality control, bioanalytical studies, and therapeutic drug monitoring.
高血压和高血脂是两种常见的疾病,需要有效的管理来降低心血管疾病的风险。在用于治疗这些疾病的药物中,缬沙坦和匹伐他汀在降低血压和胆固醇水平方面分别显示出了显著的疗效。在这项研究中,同步荧光光谱法结合化学计量学分析工具,特别是浓度残差增强经典最小二乘法(CRACLS)和光谱残差增强经典最小二乘法(SRACLS),被用于同时测定缬沙坦和匹伐他汀。所开发的模型表现出优异的预测性能,缬沙坦和匹伐他汀的相对预测均方根误差(RRMSEP)分别为 2.253 和 2.1381。因此,这些模型成功地应用于合成样品、商业制剂以及高准确度和精密度的血浆样品的分析。此外,还评估了测定样品的绿色度和蓝色度轮廓,以评估它们的环境影响和分析实用性。结果表明,良好的绿色度和蓝色度评分,AGREE 评分为 0.7,BAGI 评分为 75,表明该方法可靠且灵敏,可用于缬沙坦和匹伐他汀的测定,具有在药物质量控制、生物分析研究和治疗药物监测中的潜在应用。