2022 Annual Meeting
(82e) In silico Modeling of Roller Compaction Processes for Scale-up and Tech Transfer: One Step Closer to Digital Twins
Authors
Elcin Icten Gencer - Presenter, Amgen Inc
Pablo A. Rolandi, Amgen Inc.
Fabrice Schlegel, Amgen Inc
Fernando Alvarez-Nunez, Amgen
John Chung, Amgen
Mina Hamedi Rad, Amgen
Shruti Gour, Amgen
Saloni Daftardar, Amgen
Duc Nguyen, Amgen
David Perez-Aguilar, Amgen
Dongying Shen, Amgen
Ananya Chowdhury, Process Systems Enterprise
Rajarshi Sengupta, University of California Santa Barbara
Killian Ryan, Amgen Inc.
Dry granulation via roller compaction is a key unit operation in the manufacture of immediate release tablets. One of the challenges for late-stage development is identifying optimal roller compaction processing parameters for scale up through numerous Design of Experiment (DoE) studies, which require manufacturing time, drug substance and analysis. In this work, a first-principles in silico model available in gPROMS was extended to guide selection of key DoE studies and reduce the number of large-scale runs needed to identify optimal processing parameters. The prediction accuracy of this model was demonstrated for the scale up of the roller-compaction process at a commercial manufacturing site, with prediction errors within a few percent. This case study demonstrates the possibility of using this âVirtualPactorâ model as a tool to reduce the number of experiments required to configure commercial roller-compaction process parameters. Instead of carrying out trial-and-error experiments to define the inputs for a large-scale roller compactor, product teams can carry out a DoE study on a small-scale roller compactor, use the data from the study to calibrate the VirtualPactor model, and use the calibrated model to find the inputs for the large-scale compactor that satisfy the output specifications. This model is developed into a web application for use by domain experts in an effort to democratize access to advanced modeling techniques and enable Quality by Design during process scale-up and tech transfer.