Department of Chemical Engineering and Biotechnology, University of Cambridge, Philippa Fawcett Drive, CB3 0AS, Cambridge, UK.
GSK Ware Research and Development, Harris's Lane, Ware SG12 0DP, UK.
Int J Pharm. 2024 Dec 25;667(Pt A):124852. doi: 10.1016/j.ijpharm.2024.124852. Epub 2024 Oct 28.
Roller compaction is a crucial unit operation in pharmaceutical manufacturing, with its ribbon porosity widely recognised as a critical quality attribute. Terahertz spectroscopy has emerged as a fast and non-destructive technique to measure porosity in pharmaceutical products. From a sensing perspective, the irregular shape and uneven surface of fragmented ribbon pieces can affect the accuracy and precision of the measurements, particularly for techniques that probe only a small sampling volume. It is known that the porosity is not uniform within the ribbon structure, with variations expected across the width of the ribbon and in the microstructure corresponding to its surface texture. However, typical pharmaceutical analysis methods, such as envelope density, only report an average bulk porosity, are slow to operate and limited in accuracy. To address this challenge, we developed and trained convolutional neural network models using THz spectra as input to classify four types of topography typically encountered in ribbons: ridge, valley, flat plane and edge points. The classifiers achieved 91% validation accuracy in both identifying outliers and differentiating between ribbons of smooth and knurled surfaces. For the more challenging task of distinguishing between the ridges and valleys of knurled surfaces, an 81% testing accuracy was achieved. Once each measurement is paired with its topography, resolving the density distribution within the sample is possible. This data can be combined to arrive at an average bulk porosity value compatible with conventional pharmaceutical analysis.
辊压是制药生产中的一个关键单元操作,其带状物孔隙率被广泛认为是一个关键的质量属性。太赫兹光谱学已经成为一种快速、非破坏性的测量制药产品孔隙率的技术。从传感的角度来看,破碎的带状物的不规则形状和不均匀表面会影响测量的准确性和精度,特别是对于仅探测小采样体积的技术而言。众所周知,在带状物结构内的孔隙率并不均匀,预计在带状物的宽度上以及与其表面纹理相对应的微观结构中会有变化。然而,典型的制药分析方法,如包封密度,仅报告平均体相孔隙率,操作缓慢且准确性有限。为了解决这个挑战,我们开发并训练了卷积神经网络模型,使用太赫兹光谱作为输入,以分类通常在带状物中遇到的四种形貌:脊、谷、平面和边缘点。分类器在识别离群值和区分光滑和滚花表面的带状物方面达到了 91%的验证准确性。对于更具挑战性的区分滚花表面的脊和谷的任务,达到了 81%的测试准确性。一旦对每个测量值进行了与其形貌的配对,就可以确定样品内的密度分布。可以结合这些数据得出与传统制药分析兼容的平均体相孔隙率值。