用多变量分析方法解决制药过程监测中的分析挑战:在过程理解、控制和改进中的应用

IF 0.8 4区 化学 Q4 SPECTROSCOPY Spectroscopy Pub Date : 2023-03-01 DOI:10.56530/spectroscopy.op4571n3
Faten Farouk, R. Hathout, Ehab F Elkady
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引用次数: 0

摘要

多变量分析(Multivariate analysis, MVA)是指为处理涉及多个变量的情况而开发的统计工具的分类。MVA对于数据解释和提取有意义的数据是必不可少的,特别是从快速采集仪器和光谱成像技术中。本文综述了MVA在药品生产和控制中的应用趋势。比较了药物分析中最常用的MVA模型。MVA解决分析挑战的潜力,如克服矩阵效应,从动态矩阵中提取可靠数据,将数据聚类到有意义的组,从分析响应中去除噪声,解决光谱重叠,以及提供多组分的同时分析,通过实例进行了解决。描述了MVA功能的工业应用,特别强调过程分析技术(PAT)以及MVA如何帮助过程理解和控制。提出了一种根据现有数据和所需信息选择MVA模型的方案。
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Resolving Analytical Challenges in Pharmaceutical Process Monitoring Using Multivariate Analysis Methods: Applications in Process Understanding, Control, and Improvement
Multivariate analysis (MVA) refers to an assortment of statistical tools developed to handle situations in which more than one variable is involved. MVA is indispensable for data interpretation and for extraction of meaningful data, especially from fast acquisition instruments and spectral imaging techniques. This article reviews trends in the application of MVA to pharmaceutical manufacturing and control. The MVA models most commonly used in drug analysis are compared. The potential of MVA to resolve analytical challenges, such as overcoming matrix effects, extracting reliable data from dynamic matrices, clustering data into meaningful groups, removing noise from analytical response, resolving spectral overlaps, and providing simultaneous analysis of multiple components, are tackled with examples. Industrial applications of MVA capabilities are described, with special emphasis on process analytical technology (PAT) and how MVA can aid in process understanding and control. A scheme for selecting an MVA model according to the available data and the required information is proposed.
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来源期刊
Spectroscopy
Spectroscopy 物理-光谱学
CiteScore
1.10
自引率
0.00%
发文量
0
审稿时长
3 months
期刊介绍: Spectroscopy welcomes manuscripts that describe techniques and applications of all forms of spectroscopy and that are of immediate interest to users in industry, academia, and government.
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