Debottlenecking cytochrome P450-dependent metabolic pathways for the biosynthesis of commercial natural products

Covering: 2016 to the end of 2024This highlight article aims to provide a perspective on the challenges that novel biotechnological processes face in the biomanufacturing of natural products (NPs) whose biosynthesis pathways rely on cytochrome P450 monooxygenases. This enzyme superfamily is one of t...

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Veröffentlicht in:Natural product reports 2024-11
Hauptverfasser: Germann, Susanne M, Holtz, Maxence, Jensen, Michael Krogh, Acevedo-Rocha, Carlos G
Format: Artikel
Sprache:eng
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Zusammenfassung:Covering: 2016 to the end of 2024This highlight article aims to provide a perspective on the challenges that novel biotechnological processes face in the biomanufacturing of natural products (NPs) whose biosynthesis pathways rely on cytochrome P450 monooxygenases. This enzyme superfamily is one of the most versatile in the biosynthesis of a plethora of NPs finding use across the food, nutrition, medicine, chemical and cosmetics industries. These enzymes often exhibit excellent regio- and stereoselectivity, but they can suffer from low activity and instability, which are serious issues impairing the development of high performing bioprocesses. We start with a brief introduction to industrial biotechnology and the importance of looking for alternative means for producing NPs independently from unsustainable fossil fuels or plant extractions. We then discuss the challenges and implemented solutions during the development of commercial NP processes focusing on the P450-dependent steps primarily in yeast cell factories. Our main focus is to highlight the challenges often encountered when utilizing P450-dependent NP pathways, and how protein engineering can be used for debottlenecking them. Finally, we briefly touch upon the importance of artificial intelligence and machine learning for guiding engineering efforts.
ISSN:0265-0568
1460-4752
1460-4752
DOI:10.1039/D4NP00027G