De Bisshop Jill, Klinken Stefan
Department of Pharmaceutics, Ghent University, Ghent, Belgium.
Institute of Pharmaceutics and Biopharmaceutics, Heinrich Heine University, Duesseldorf, Germany.
Int J Pharm. 2023 Oct 15;645:123280. doi: 10.1016/j.ijpharm.2023.123280. Epub 2023 Jul 28.
This publication's objective was to predict the tensile strength of tablets using an analysis of process data comprising compression pressure, sampling timestamps, and punch positions. A recurrent neuronal network, specifically designed with Long Short-Term Memory layers, was utilized to accommodate the time-series characteristics of the data. A dataset from 344 tablet compression cycles was employed for model training, after which the model demonstrated a predictive ability with a coefficient of determination of 0.954 on test data from 804 tableting cycles. The foundational database incorporated data from both pure substances and mixtures consisting of up to four components compressed at various compression pressures and with three different tablet masses. Interestingly, the prediction errors did not exhibit any significant correlation with specific materials, mixtures, maximum compression pressures, or tablet weights. With the aid of the model, it was possible to calculate the entire tabletability profile of twelve substances from just a single compression process each. Models of this nature bear promising potential for future application in the research and development of formulations as well as in production processes to predict tensile strength.
本出版物的目的是通过分析包括压缩压力、采样时间戳和冲头位置在内的过程数据来预测片剂的拉伸强度。利用专门设计有长短期记忆层的循环神经网络来适应数据的时间序列特征。使用来自344个片剂压缩周期的数据集进行模型训练,之后该模型在来自804个压片周期的测试数据上表现出预测能力,决定系数为0.954。基础数据库纳入了纯物质和由多达四种成分组成的混合物的数据,这些成分在不同压缩压力下压缩,并具有三种不同的片剂质量。有趣的是,预测误差与特定材料、混合物、最大压缩压力或片剂重量均无显著相关性。借助该模型,仅通过每个物质的单个压缩过程就可以计算出十二种物质的整个可压性曲线。这种性质的模型在制剂研发和生产过程中预测拉伸强度的未来应用中具有广阔的潜力。