片剂连续生产多阶段过程的全厂范围建模框架

IF 2.7 4区 医学 Q2 PHARMACOLOGY & PHARMACY
Motaz Deebes, Mahdi Mahfouf, Chalak Omar, Syed Islam, Ben Morgan
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引用次数: 0

摘要

连续制造可以被视为制药行业的一个有希望的转变,提供诸如降低成本和提高产品质量等好处。然而,连续片剂生产的多阶段性质要求对工艺参数、材料属性和最终产品质量之间的复杂相互作用有更深入的了解。本研究旨在通过开发一种新颖的、数据驱动的建模框架来解决这一挑战,以预测关键的质量属性,包括颗粒尺寸分布、水分含量和片剂抗拉强度,这些属性贯穿中试规模连续片剂生产线的各个加工阶段。采用时序建模方法,结合随机森林和梯度增强机对每个处理阶段进行建模。这些模型被依次训练并相互关联,以全面捕获过程-物质相互作用,包括造粒、干燥、碾磨和压片阶段。为了管理阶段之间的误差传播,采用高斯混合模型进行误差表征和不确定性降低。结果表明,该框架捕捉到了加工参数与质量属性之间的非线性相互作用。GMMs的纳入对量化每个过程模型中的不确定性有影响,导致使用综合随机森林模型对片剂抗拉强度的最终估计\( R^2 \)值为0.90。该框架通过集成机器学习模型和不确定性感知策略,在连续制造过程建模的预测性能方面表现出相当大的改进。该预测工具旨在通过系统的设计空间探索和对制药连续生产过程的理解来支持设计质量(QbD)概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Plant Wide Modelling Framework For The Multistage Processes of The Continuous Manufacturing of Pharmaceutical Tablets

Continuous manufacturing can be seen as a promising shift in the pharmaceutical industry, offering benefits such as reduced costs and improved product quality. However, the multistage nature of continuous tablet manufacturing demands a deeper understanding of the complex interactions between process parameters, material attributes, and final product quality. This study aims to address this challenge by developing a novel, data-driven modelling framework to predict key critical quality attributes, including particle size distribution, moisture content, and tablet tensile strength across the processing stages of a pilot-scale continuous tablet manufacturing line. A sequential modelling approach was employed, integrating Random Forest and Gradient Boosting Machines to model each processing stage. These models were sequentially trained and interlinked to holistically capture process–material interactions across granulation, drying, milling, and tabletting stages. To manage error propagation between stages, Gaussian Mixture Models were incorporated for error characterisation and uncertainty reduction. The results showed that the proposed framework captured the non-linear interactions between processing parameters and the quality attributes. The incorporation of GMMs was influential in quantifying uncertainty within each process model, resulting in a final estimation of tablet tensile strength with an \( R^2 \) value of 0.90 using the integrated Random Forest model. This framework demonstrated considerable improvement in the predictive performance of the continuous manufacturing processes modelling through the integration of machine learning models and an uncertainty-aware strategy. The predictive tool is intended to support the Quality by Design (QbD) concept through systematic design space exploration and process understanding of the pharmaceutical continuous manufacturing.

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来源期刊
Journal of Pharmaceutical Innovation
Journal of Pharmaceutical Innovation PHARMACOLOGY & PHARMACY-
CiteScore
3.70
自引率
3.80%
发文量
90
审稿时长
>12 weeks
期刊介绍: The Journal of Pharmaceutical Innovation (JPI), is an international, multidisciplinary peer-reviewed scientific journal dedicated to publishing high quality papers emphasizing innovative research and applied technologies within the pharmaceutical and biotechnology industries. JPI''s goal is to be the premier communication vehicle for the critical body of knowledge that is needed for scientific evolution and technical innovation, from R&D to market. Topics will fall under the following categories: Materials science, Product design, Process design, optimization, automation and control, Facilities; Information management, Regulatory policy and strategy, Supply chain developments , Education and professional development, Journal of Pharmaceutical Innovation publishes four issues a year.
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