Kazemi Pezhman, Khalid Mohammad Hassan, Pérez Gago Ana, Kleinebudde Peter, Jachowicz Renata, Szlęk Jakub, Mendyk Aleksander
Department of Pharmaceutical Technology and Biopharmaceutics, Faculty of Pharmacy, Jagiellonian University Medical College, Krakow, Poland.
Institute of Pharmaceutics and Biopharmaceutics, Heinrich-Heine-University, Düsseldorf, Germany.
Drug Des Devel Ther. 2017 Jan 18;11:241-251. doi: 10.2147/DDDT.S124670. eCollection 2017.
Dry granulation using roll compaction is a typical unit operation for producing solid dosage forms in the pharmaceutical industry. Dry granulation is commonly used if the powder mixture is sensitive to heat and moisture and has poor flow properties. The output of roll compaction is compacted ribbons that exhibit different properties based on the adjusted process parameters. These ribbons are then milled into granules and finally compressed into tablets. The properties of the ribbons directly affect the granule size distribution (GSD) and the quality of final products; thus, it is imperative to study the effect of roll compaction process parameters on GSD. The understanding of how the roll compactor process parameters and material properties interact with each other will allow accurate control of the process, leading to the implementation of quality by design practices. Computational intelligence (CI) methods have a great potential for being used within the scope of quality by design approach. The main objective of this study was to show how the computational intelligence techniques can be useful to predict the GSD by using different process conditions of roll compaction and material properties. Different techniques such as multiple linear regression, artificial neural networks, random forest, Cubist and k-nearest neighbors algorithm assisted by sevenfold cross-validation were used to present generalized models for the prediction of GSD based on roll compaction process setting and material properties. The normalized root-mean-squared error and the coefficient of determination () were used for model assessment. The best fit was obtained by Cubist model (normalized root-mean-squared error =3.22%, =0.95). Based on the results, it was confirmed that the material properties (true density) followed by compaction force have the most significant effect on GSD.
采用滚压法进行干法制粒是制药行业生产固体剂型的典型单元操作。如果粉末混合物对热和水分敏感且流动性差,则通常采用干法制粒。滚压法的输出产物是压实的条带,其性质根据调整后的工艺参数而有所不同。然后将这些条带研磨成颗粒,最后压制成片剂。条带的性质直接影响颗粒尺寸分布(GSD)和最终产品的质量;因此,研究滚压工艺参数对GSD的影响至关重要。了解滚压机工艺参数与材料特性如何相互作用,将有助于精确控制该工艺,从而实现设计质量理念的实施。计算智能(CI)方法在设计质量方法范围内具有很大的应用潜力。本研究的主要目的是展示计算智能技术如何通过使用滚压的不同工艺条件和材料特性来预测GSD。使用了多种技术,如多元线性回归、人工神经网络、随机森林、Cubist算法和k近邻算法,并辅以七重交叉验证,以建立基于滚压工艺设置和材料特性预测GSD的通用模型。使用归一化均方根误差和决定系数()对模型进行评估。Cubist模型获得了最佳拟合效果(归一化均方根误差=3.22%,=0.95)。根据结果证实,材料特性(真密度)其次是压制力对GSD影响最为显著。