2023 AIChE Annual Meeting
(649d) Development of a Digital Twin for the End-to-End Continuous Manufacturing of the Cancer Drug Lomustine
Authors
Several enhancements have been introduced into the PharmaPy framework to facilitate the creation of the digital twin for this process. First, an extended multiple-curve resolution (MCR) framework has been incorporated in PharmaPy. This enables estimation of the kinetic parameters and their uncertainty regions for first-principles reaction models using full spectral data, and for crystallization models, by integrating both spectroscopic and crystal size measurements within the MCR framework. Furthermore, new unit operation models have also been added to PharmaPy, including traditional continuous distillation models to describe solvent switch operations (frequently encountered in pharmaceutical manufacturing), and novel models like three-phase settling, which describes transfer of API crystals to a biocompatible liquid carrier that is immiscible with the process stream containing the product in crystal form. A previously developed neural network model is used for simulating the operation of the DoD printer (Sundarkumar et al., 2022b). The resulting hybrid digital twin is then used to build a probabilistic design space that maps the likelihood of on-spec drug products and feasible operation for a variety of process operating conditions and scales. This design space can be used to identify suitable manufacturing conditions for different production scales and dosage strengths, thus, enhancing operational flexibility.
References
Arden, N. S., Fisher, A. C., Tyner, K., Yu, L. X., Lee, S. L., & Kopcha, M. (2021). Industry 4.0 for pharmaceutical manufacturing: Preparing for the smart factories of the future. In International Journal of Pharmaceutics (Vol. 602). https://doi.org/10.1016/j.ijpharm.2021.120554
Casas-Orozco, D., Laky, D., Wang, V., Abdi, M., Feng, X., Wood, E., Laird, C., Reklaitis, G. V., & Nagy, Z. K. (2021). PharmaPy: An object-oriented tool for the development of hybrid pharmaceutical flowsheets. Computers and Chemical Engineering, 153. https://doi.org/10.1016/j.compchemeng.2021.107408
Chen, Y., Yang, O., Sampat, C., Bhalode, P., Ramachandran, R., & Ierapetritou, M. (2020). Digital twins in pharmaceutical and biopharmaceutical manufacturing: A literature review. In Processes (Vol. 8, Issue 9). https://doi.org/10.3390/pr8091088
Laky, D. J., Casas-Orozco, D., Destro, F., Barolo, M., Reklaitis, G. V., & Nagy, Z. K. (2022). Integrated Synthesis, Crystallization, Filtration, and Drying of Active Pharmaceutical Ingredients: A Model-Based Digital Design Framework for Process Optimization and Control (pp. 253â287). https://doi.org/10.1007/978-3-030-90924-6_10
Laky, D. J., Casas-Orozco, D., Laird, C. D., Reklaitis, G. V., & Nagy, Z. K. (2022). SimulationâOptimization Framework for the Digital Design of Pharmaceutical Processes Using Pyomo and PharmaPy. Industrial & Engineering Chemistry Research. https://doi.org/10.1021/acs.iecr.2c01636
Sundarkumar, V., Nagy, Z. K., & Reklaitis, G. V. (2022a). Small-Scale Continuous Drug Product Manufacturing using Dropwise Additive Manufacturing and Three Phase Settling for Integration with Upstream Drug Substance Production. Journal of Pharmaceutical Sciences. https://doi.org/10.1016/j.xphs.2022.03.009
Sundarkumar, V., Nagy, Z. K., & Reklaitis, G. V. (2022b). Machine learning enabled integrated formulation and process design framework for a pharmaceutical 3D printing platform. AIChE Journal. https://doi.org/10.1002/aic.17990