Application of machine learning assisted multi-variate UV spectrophotometric models augmented by kennard stone clustering algorithm for quantifying recently approved nasal spray combination of mometasone and olopatadine along with two genotoxic impurities: comprehensive sustainability assessment

IF 4.3 2区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Ahmed Emad F. Abbas, Mohammed Gamal, Ibrahim A. Naguib, Michael K. Halim, Basmat Amal M. Said, Mohammed M. Ghoneim, Mohmeed M. A. Mansour, Yomna A. Salem
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引用次数: 0

Abstract

The recent approval of the nasal spray combination of mometasone (MOM) and olopatadine (OLO) presents a significant analytical challenge, as only a single reported method exists for its determination, deviating from eco-friendly practices. This study addresses this critical gap by pioneering the application of machine learning techniques to develop robust UV spectrophotometric approach for the simultaneous quantification of MOM and OLO, along with two genotoxic impurities: 4-dimethylamino pyridine (DAP) and methyl para-toluene sulfonate (MTS). By simultaneously determining these highly concerning genotoxic impurities and active pharmaceutical ingredients, this method underscores its paramount significance in upholding rigorous pharmaceutical quality standards and safeguarding patient safety. Applying the multilevel-multifactor experimental design, the calibration set was meticulously chosen at five different concentrations, yielding 25 calibration mixtures with central levels of 4, 46.5, 2.5, and 3 µg/mL for MOM, OLA, MTS, and DAP, respectively. The key innovation lies in the strategic implementation of the Kennard-Stone Clustering Algorithm to create a robust validation set of thirteen mixtures, resolving the limitations of reported chemometric methods’ random data splitting. This approach ensures unbiased evaluation across the full concentration space, improving the method’s reliability and sustainability. The robustness of this approach was rigorously tested using five distinct chemometric models: principal component regression, classical least squares, partial least squares, genetic algorithm-partial least squares, and multivariate curve resolution-alternating least squares, demonstrating its broad applicability across diverse modeling techniques. All models successfully determined all components with excellent recovery, low bias-corrected prediction, and adequate limits of detection. The Greenness Index Spider Charts and the Green Solvents Selection Tool were used to choose environmentally conscious solvents. A comprehensive sustainability assessment employed six state-of-the-art tools, including the national environmental method index, complementary green analytical procedure index, analytical greenness metric, blue applicability grade index, carbon footprint analysis, and the red-green-blue 12 metrics. Favorable results across all metrics affirmed the method’s eco-friendliness, real-world applicability, and cost-effectiveness, supporting sustainable development goals in pharmaceutical quality control processes.

应用kennard stone聚类算法增强的机器学习辅助多变量紫外分光光度模型对最近批准的莫米松和奥洛他定联合鼻喷雾剂以及两种基因毒性杂质进行量化:综合可持续性评估
最近批准的莫米松(MOM)和奥洛他定(OLO)联合鼻喷雾剂提出了一个重大的分析挑战,因为只有一种报告方法存在于其测定中,偏离了环保实践。本研究通过开创性地应用机器学习技术来开发强大的紫外分光光度法来同时定量MOM和OLO,以及两种遗传毒性杂质:4-二甲氨基吡啶(DAP)和甲基对甲苯磺酸(MTS),从而解决了这一关键空白。通过同时检测这些高度关注的遗传毒性杂质和活性药物成分,该方法强调了其在坚持严格的药品质量标准和保障患者安全方面的重要意义。采用多水平多因素实验设计,在5种不同浓度下精心选择校准集,得到25种校准混合物,MOM、OLA、MTS和DAP的中心水平分别为4、46.5、2.5和3µg/mL。关键创新在于战略性地实施Kennard-Stone聚类算法,以创建13种混合物的鲁棒验证集,解决了现有化学计量学方法随机数据分裂的局限性。这种方法确保了整个浓缩空间的公正评估,提高了方法的可靠性和可持续性。使用五种不同的化学计量模型对该方法的稳健性进行了严格测试:主成分回归、经典最小二乘、偏最小二乘、遗传算法-偏最小二乘和多元曲线分辨率-交替最小二乘,证明了其在各种建模技术中的广泛适用性。所有模型都成功地确定了所有成分,具有出色的回收率,低偏差校正预测和足够的检测限。使用绿色指数蜘蛛图和绿色溶剂选择工具来选择环保溶剂。综合可持续性评估采用了六种最先进的工具,包括国家环境方法指数、互补绿色分析程序指数、分析绿色度指标、蓝色适用性等级指数、碳足迹分析和红绿蓝12指标。所有指标的良好结果证实了该方法的生态友好性、现实适用性和成本效益,支持了药品质量控制过程的可持续发展目标。
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来源期刊
BMC Chemistry
BMC Chemistry Chemistry-General Chemistry
CiteScore
5.30
自引率
2.20%
发文量
92
审稿时长
27 weeks
期刊介绍: BMC Chemistry, formerly known as Chemistry Central Journal, is now part of the BMC series journals family. Chemistry Central Journal has served the chemistry community as a trusted open access resource for more than 10 years – and we are delighted to announce the next step on its journey. In January 2019 the journal has been renamed BMC Chemistry and now strengthens the BMC series footprint in the physical sciences by publishing quality articles and by pushing the boundaries of open chemistry.
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