Systems Metabolic Engineering Meets Machine Learning: A New Era for Data‐Driven Metabolic Engineering

The recent increase in high‐throughput capacity of ‘omics datasets combined with advances and interest in machine learning (ML) have created great opportunities for systems metabolic engineering. In this regard, data‐driven modeling methods have become increasingly valuable to metabolic strain desig...

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Veröffentlicht in:Biotechnology journal 2019-09, Vol.14 (9), p.e1800416-n/a
Hauptverfasser: Presnell, Kristin V., Alper, Hal S.
Format: Artikel
Sprache:eng
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Zusammenfassung:The recent increase in high‐throughput capacity of ‘omics datasets combined with advances and interest in machine learning (ML) have created great opportunities for systems metabolic engineering. In this regard, data‐driven modeling methods have become increasingly valuable to metabolic strain design. In this review, the nature of ‘omics is discussed and a broad introduction to the ML algorithms combining these datasets into predictive models of metabolism and metabolic rewiring is provided. Next, this review highlights recent work in the literature that utilizes such data‐driven methods to inform various metabolic engineering efforts for different classes of application including product maximization, understanding and profiling phenotypes, de novo metabolic pathway design, and creation of robust system‐scale models for biotechnology. Overall, this review aims to highlight the potential and promise of using ML algorithms with metabolic engineering and systems biology related datasets. Recent increases in high‐throughput capacity of ‘omics datasets and advances in machine learning (ML) have created new opportunities for systems metabolic engineering. In this review, a broad introduction to ‘omics datasets and the ML algorithms combining these datasets into predictive metabolic models is provided. Next, recent works utilizing these data‐driven methods to inform metabolic engineering efforts are highlighted.
ISSN:1860-6768
1860-7314
DOI:10.1002/biot.201800416