Litcius/Paper detail

Towards a widespread adoption of metabolic modeling tools in biopharmaceutical industry: a process systems biology engineering perspective

Anne Richelle, Blandine David, Didier Demaegd, Marianne Dewerchin, Romain Kinet, Angelo Morreale, Rui M. C. Portela, Quentin Zune, Moritz von Stosch

2020npj Systems Biology and Applications29 citationsDOIOpen Access PDF

Abstract

In biotechnology, the emergence of high-throughput technologies challenges the interpretation of large datasets. One way to identify meaningful outcomes impacting process and product attributes from large datasets is using systems biology tools such as metabolic models. However, these tools are still not fully exploited for this purpose in industrial context due to gaps in our knowledge and technical limitations. In this paper, key aspects restraining the routine implementation of these tools are highlighted in three research fields: monitoring, network science and hybrid modeling. Advances in these fields could expand the current state of systems biology applications in biopharmaceutical industry to address existing challenges in bioprocess development and improvement.

Topics & Concepts

BiopharmaceuticalBioprocessProcess (computing)Context (archaeology)Computer scienceSystems biologyProduct (mathematics)Data scienceManagement scienceBiochemical engineeringRisk analysis (engineering)Systems engineeringBiotechnologyEngineeringBiologyComputational biologyBusinessMathematicsOperating systemGeometryChemical engineeringPaleontologyMicrobial Metabolic Engineering and BioproductionViral Infectious Diseases and Gene Expression in InsectsGene Regulatory Network Analysis