Multivariate analysis approach for correlations between material properties and tablet tensile strength of microcrystalline cellulose.

Zheng-gen Liao, Nan Zhang, Guowei Zhao, Jing Zhang, Xinli Liang, S. Zhong, G. Wang, Xu-long Chen
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引用次数: 10

Abstract

In this study we applied statistical multivariate analysis techniques to establish correlations between material properties and tablet tensile strength (TS) of microcrystalline cellulose (MCC) with different types and manufacturers. There were sixteen MCC samples included in this analysis described by 22 material parameters. For data analysis, principal component analysis (PCA) was used to model and evaluate the various relationships between the material properties and TS. Furthermore, partial least squares regression (PLS) analysis was performed to quantify the relationships between the material properties and TS and to predict the most influential MCC parameters contributing to the compactibility. The results showed that the moisture content, hygroscopicity and crystallinity did not exhibit significant impact on TS. The turgidity, maximum water uptake, degree of polymerization and molecular weight presented a strong positive influence on TS, while the density property, bulk and tap density, exhibited an obvious negative impact. The present work demonstrated that multivariate data analysis techniques (PCA and PLS) are useful for interpreting complex relations between 22 material properties and the tabletting properties of MCC. Furthermore, the method can be used for material classification.
微晶纤维素材料性能与片剂抗拉强度相关性的多变量分析方法。
本研究采用统计多元分析技术,建立了不同类型和生产厂家微晶纤维素(MCC)的材料性能与片剂抗拉强度(TS)之间的相关性。该分析包含16个MCC样品,由22个材料参数描述。在数据分析方面,采用主成分分析(PCA)对材料性能与TS之间的各种关系进行建模和评估,并采用偏最小二乘回归(PLS)分析来量化材料性能与TS之间的关系,并预测对相容性影响最大的MCC参数。结果表明:含水率、吸湿性和结晶度对TS无显著影响,膨松度、最大吸水率、聚合度和分子量对TS有较强的正向影响,而密度、体积和丝锥密度对TS有明显的负向影响。本研究表明,多元数据分析技术(PCA和PLS)可用于解释22种材料性能与MCC压片性能之间的复杂关系。此外,该方法还可用于材料分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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