N Politis Stavros, Colombo Paolo, Colombo Gaia, M Rekkas Dimitrios
a Department of Pharmaceutical Technology, Faculty of Pharmacy , National and Kapodistrian University of Athens , Athens , Greece.
b Department of Pharmacy , University of Parma , Parma , Italy.
Drug Dev Ind Pharm. 2017 Jun;43(6):889-901. doi: 10.1080/03639045.2017.1291672. Epub 2017 Feb 23.
At the beginning of the twentieth century, Sir Ronald Fisher introduced the concept of applying statistical analysis during the planning stages of research rather than at the end of experimentation. When statistical thinking is applied from the design phase, it enables to build quality into the product, by adopting Deming's profound knowledge approach, comprising system thinking, variation understanding, theory of knowledge, and psychology. The pharmaceutical industry was late in adopting these paradigms, compared to other sectors. It heavily focused on blockbuster drugs, while formulation development was mainly performed by One Factor At a Time (OFAT) studies, rather than implementing Quality by Design (QbD) and modern engineering-based manufacturing methodologies. Among various mathematical modeling approaches, Design of Experiments (DoE) is extensively used for the implementation of QbD in both research and industrial settings. In QbD, product and process understanding is the key enabler of assuring quality in the final product. Knowledge is achieved by establishing models correlating the inputs with the outputs of the process. The mathematical relationships of the Critical Process Parameters (CPPs) and Material Attributes (CMAs) with the Critical Quality Attributes (CQAs) define the design space. Consequently, process understanding is well assured and rationally leads to a final product meeting the Quality Target Product Profile (QTPP). This review illustrates the principles of quality theory through the work of major contributors, the evolution of the QbD approach and the statistical toolset for its implementation. As such, DoE is presented in detail since it represents the first choice for rational pharmaceutical development.
二十世纪初,罗纳德·费希尔爵士提出了在研究规划阶段而非实验结束时应用统计分析的概念。当从设计阶段就应用统计思维时,通过采用戴明的渊博知识方法,包括系统思维、变异理解、知识理论和心理学,能够将质量构建到产品中。与其他行业相比,制药行业在采用这些范式方面较为滞后。它严重侧重于重磅炸弹药物,而制剂开发主要通过一次一个因素(OFAT)研究进行,而非实施质量源于设计(QbD)和基于现代工程的制造方法。在各种数学建模方法中,实验设计(DoE)在研究和工业环境中广泛用于实施QbD。在QbD中,产品和工艺理解是确保最终产品质量的关键因素。通过建立将过程输入与输出相关联的模型来获取知识。关键过程参数(CPPs)和关键物料属性(CMAs)与关键质量属性(CQAs)的数学关系定义了设计空间。因此,工艺理解得到充分保证,并合理地导致最终产品符合质量目标产品概况(QTPP)。本综述通过主要贡献者的工作、QbD方法的演变及其实施的统计工具集来说明质量理论的原理。因此,详细介绍了DoE,因为它是合理药物开发的首选。