[en] "Giving the cells exactly what they need, when they need it" is the core idea behind the proposed bioprocess control strategy: operating bioprocess based on the physiological behavior of the microbial population rather than exclusive monitoring of environmental parameters. We are envisioning to achieve this through the use of
Disciplines :
Biotechnology
Author, co-author :
Kinet, Romain ; Université de Liège - ULiège > Agronomie, Bio-ingénierie et Chimie (AgroBioChem) > Bio-industries ; GSK, Rixensart, Belgium
Richelle, Anne; GSK, Rixensart, Belgium
Colle, |; GSK, Rixensart, Belgium
Didier Demaegd, |; GSK, Rixensart, Belgium
Moritz Von Stosch, |; GSK, Rixensart, Belgium
Sanders, |; GSK, Rixensart, Belgium
Sehrt, Hannah ; Université de Liège - ULiège > Département GxABT > Microbial technologies
Delvigne, Frank ; Université de Liège - ULiège > TERRA Research Centre > Microbial technologies
Goffin, |; Molecular and Cellular Biology, University of Brussels, Brussels, Belgium
Von Stosch, Moritz
Oerlikon, Datahow
Language :
English
Title :
Giving the cells what they need when they need it: Biosensor-based feeding control
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