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Bootstrap 统计学及其在崩解和溶解数据分析中的应用。

Bootstrap Statistics and Its Application in Disintegration and Dissolution Data Analysis.

机构信息

Department of Pharmaceutics, National Institute of Pharmaceutical Education and Research (NIPER)-Kolkata, Kolkata, West Bengal 700054, India.

Department of Pharmaceutics, NIPER-Guwahati, Kamrup, Assam 781101, India.

出版信息

Mol Pharm. 2023 Aug 7;20(8):3791-3803. doi: 10.1021/acs.molpharmaceut.3c00222. Epub 2023 Jul 17.

Abstract

Disintegration time (DT) and rate of drug dissolution in different media are among the most widely studied crucial parameters for various types of drug products. In the ever-evolving landscape of generic formulation development, dissolution comparison of reference and test products is the major reliable in vitro method of establishing product similarity. This is one of the most widely accepted methods of proving pharma equivalency between two drug products. A well-studied match between the disintegration and dissolution profile of the test and reference formulations can ensure in vitro product similarity. Various statistical approaches have been employed to establish product performance similarity; among them, the similarity factor () calculation based approach is the most widely accepted and explored method to date. However, the statistics fail to predict the similarity of batches with unit-to-unit variability. Bootstrap statistical analysis of dissolution data between the test and reference products was introduced to overcome the problems associated with batches with unit variability. Bootstrap can also be applied to extract statistically significant results by treating a series of data from different batches, which can further help to understand the trend. The current review depicts different case study based approaches to show the applications of bootstrap statistics in disintegration and dissolution similarity evaluation for both conventional and additively manufactured solid dosage forms. It is concluded that bootstrap statistics can be a very promising and reliable data analytical tool for establishing in vitro product similarity for both conventional and additively manufactured formulations with a high level of intraunit variability.

摘要

崩解时间(DT)和不同介质中药物溶出率是各种类型药物产品中研究最广泛的关键参数之一。在仿制药制剂开发不断发展的过程中,参比制剂和试验制剂的溶出度比较是建立产品相似性的主要可靠的体外方法。这是证明两种药物产品具有药学等效性的最广泛接受的方法之一。试验和参比制剂的崩解和溶出曲线之间经过充分研究的匹配可以确保体外产品的相似性。已经采用了各种统计方法来建立产品性能相似性;其中,基于相似因子(f2)计算的方法是迄今为止最广泛接受和探索的方法。然而,统计学方法无法预测具有单元间可变性的批次的相似性。为了克服具有单元可变性的批次相关问题,引入了试验和参比产品之间的溶出数据的 bootstrap 统计分析。Bootstrap 还可以通过处理来自不同批次的一系列数据来应用于提取具有统计学意义的结果,这可以进一步帮助了解趋势。本综述描述了基于不同案例研究的方法,展示了 bootstrap 统计在崩解和溶出相似性评估中的应用,适用于常规和添加剂制造的固体制剂。结论是,bootstrap 统计可以成为一种非常有前途和可靠的数据分析工具,用于建立具有高度单元内可变性的常规和添加剂制造制剂的体外产品相似性。

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