Muddu Shashank Venkat, Kotamarthy Lalith, Ramachandran Rohit
Department of Chemical and Biochemical Engineering, Rutgers-The State University of New Jersey, Piscataway, NJ 08854, USA.
Pharmaceutics. 2021 Mar 16;13(3):393. doi: 10.3390/pharmaceutics13030393.
This work is concerned with the semi-mechanistic prediction of residence time metrics using historical data from mono-component twin screw wet granulation processes. From the data, several key parameters such as powder throughput rate, shafts rotation speed, liquid binder feed ratio, number of kneading elements in the shafts and the stagger angle between the kneading elements were identified and physical factors were developed to translate those varying parameters into expressions affecting the key intermediate phenomena in the equipment, holdup, flow and mixing. The developed relations were then tested across datasets to evaluate the performance of the model, applying a k-fold optimization technique. The semi-mechanistic predictions were evaluated both qualitatively through the main effects plots and quantitatively through the parity plots and correlations between the tuning constants across datasets. The root mean square error (RMSE) was used as a metric to compare the degree of goodness of fit for different datasets using the developed semi-mechanistic relations. In summary this paper presents a new approach at estimating both the residence time metrics in twin screw wet granulation, mean residence time (MRT) and variance through semi-mechanistic relations, the validity of which have been tested for different datasets.
本研究旨在利用单组分双螺杆湿法制粒过程的历史数据,对半机械法预测停留时间指标进行研究。从这些数据中,确定了几个关键参数,如粉末 throughput rate、轴转速、液体粘合剂进料比、轴上捏合元件的数量以及捏合元件之间的交错角,并开发了物理因素,将这些变化的参数转化为影响设备中关键中间现象(滞留量、流动和混合)的表达式。然后,应用k折优化技术,在多个数据集上对所建立的关系进行测试,以评估模型的性能。通过主效应图对半机械法预测进行定性评估,通过奇偶图以及不同数据集之间调整常数的相关性进行定量评估。使用均方根误差(RMSE)作为衡量指标,通过所建立的半机械法关系比较不同数据集的拟合优度。总之,本文提出了一种新方法,通过半机械法关系估算双螺杆湿法制粒中的停留时间指标,即平均停留时间(MRT)和方差,并且已针对不同数据集对其有效性进行了测试。