Fostered by novel analytical techniques, digitalization, and automation, modern bioprocess development provides large amounts of heterogeneous experimental data, containing valuable process information. In this context, data-driven methods like machine learning (ML) approaches have great potential to rationally explore large design spaces while exploiting experimental facilities most efficiently. Herein we demonstrate how ML methods have been applied so far in bioprocess development, especially in strain engineering and selection, bioprocess optimization, scale-up, monitoring, and control of bioprocesses. For each topic, we will highlight successful application cases, current challenges, and point out domains that can potentially benefit fr...
In 1982, the FDA approved the first recombinant therapeutic protein, and since then, the biopharmace...
The field of synthetic biology aims to make the design of biological systems predictable, shrinking ...
In the era of sustainable development, the use of cell factories to produce various compounds by fer...
Fostered by novel analytical techniques, digitalization, and automation, modern bioprocess developme...
Fostered by novel analytical techniques, digitalization and automation, modern bioprocess developmen...
Genome scale modeling (GSM) predicts the performance of microbial workhorses and helps identify bene...
The last twenty years of seminal microbiome research has uncovered microbiota’s intrinsic relationsh...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
Machine learning provides researchers a unique opportunity to make metabolic engineering more predic...
Machine learning (ML) has emerged as a significant tool in the field of biorefinery, offering the ca...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
In bioprocess development, the need for optimization is to achieve improvements in the productivity ...
Knowledge mining from synthetic biology journal articles for machine learning (ML) applications is a...
Optimisation of tissue engineering (TE) processes requires models that can identify relationships be...
In 1982, the FDA approved the first recombinant therapeutic protein, and since then, the biopharmace...
The field of synthetic biology aims to make the design of biological systems predictable, shrinking ...
In the era of sustainable development, the use of cell factories to produce various compounds by fer...
Fostered by novel analytical techniques, digitalization, and automation, modern bioprocess developme...
Fostered by novel analytical techniques, digitalization and automation, modern bioprocess developmen...
Genome scale modeling (GSM) predicts the performance of microbial workhorses and helps identify bene...
The last twenty years of seminal microbiome research has uncovered microbiota’s intrinsic relationsh...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
Machine learning provides researchers a unique opportunity to make metabolic engineering more predic...
Machine learning (ML) has emerged as a significant tool in the field of biorefinery, offering the ca...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
In bioprocess development, the need for optimization is to achieve improvements in the productivity ...
Knowledge mining from synthetic biology journal articles for machine learning (ML) applications is a...
Optimisation of tissue engineering (TE) processes requires models that can identify relationships be...
In 1982, the FDA approved the first recombinant therapeutic protein, and since then, the biopharmace...
The field of synthetic biology aims to make the design of biological systems predictable, shrinking ...
In the era of sustainable development, the use of cell factories to produce various compounds by fer...