| Literature DB >> 32865594 |
Thomas Scheper1, Sascha Beutel2, Nina McGuinness2, Stefanie Heiden3, Marco Oldiges4,5, Frank Lammers6, Kenneth F Reardon7.
Abstract
The production of pharmaceuticals, industrial chemicals, and food ingredients from biotechnological processes is a vast and rapidly growing industry. While advances in synthetic biology and metabolic engineering have made it possible to produce thousands of new molecules from cells, few of these molecules have reached the market. The traditional methods of strain and bioprocess development that transform laboratory results to industrial processes are slow and use computers and networks only for data acquisition and storage. Digitalization, machine learning (ML), and artificial intelligence (AI) methods are transforming many fields - how can they be applied to bioprocessing to overcome current bottlenecks? What are the challenges, especially for regulatory issues, in the production of biopharmaceuticals? This chapter begins with a discussion of the current challenges for strain and bioprocess development and then considers how digitalization can be used to approach these tasks in completely new ways. Finally, regulatory considerations are addressed, with the goal of incorporating these issues from the outset as new digitalization methods are created.Keywords: Digital twins; Digitalization; FDA; QbD; Regulatory considerations
Year: 2021 PMID: 32865594 DOI: 10.1007/10_2020_139
Source DB: PubMed Journal: Adv Biochem Eng Biotechnol ISSN: 0724-6145 Impact factor: 2.635