Literature DB >> 29729378

Leveraging knowledge engineering and machine learning for microbial bio-manufacturing.

Tolutola Oyetunde1, Forrest Sheng Bao2, Jiung-Wen Chen1, Hector Garcia Martin3, Yinjie J Tang4.   

Abstract

Genome scale modeling (GSM) predicts the performance of microbial workhorses and helps identify beneficial gene targets. GSM integrated with intracellular flux dynamics, omics, and thermodynamics have shown remarkable progress in both elucidating complex cellular phenomena and computational strain design (CSD). Nonetheless, these models still show high uncertainty due to a poor understanding of innate pathway regulations, metabolic burdens, and other factors (such as stress tolerance and metabolite channeling). Besides, the engineered hosts may have genetic mutations or non-genetic variations in bioreactor conditions and thus CSD rarely foresees fermentation rate and titer. Metabolic models play important role in design-build-test-learn cycles for strain improvement, and machine learning (ML) may provide a viable complementary approach for driving strain design and deciphering cellular processes. In order to develop quality ML models, knowledge engineering leverages and standardizes the wealth of information in literature (e.g., genomic/phenomic data, synthetic biology strategies, and bioprocess variables). Data driven frameworks can offer new constraints for mechanistic models to describe cellular regulations, to design pathways, to search gene targets, and to estimate fermentation titer/rate/yield under specified growth conditions (e.g., mixing, nutrients, and O2). This review highlights the scope of information collections, database constructions, and machine learning techniques (such as deep learning and transfer learning), which may facilitate "Learn and Design" for strain development.
Copyright © 2018 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Deep learning; Design-build-test-learn; Genome scale modeling; Metabolic burdens

Mesh:

Year:  2018        PMID: 29729378     DOI: 10.1016/j.biotechadv.2018.04.008

Source DB:  PubMed          Journal:  Biotechnol Adv        ISSN: 0734-9750            Impact factor:   14.227


  7 in total

Review 1.  Common principles and best practices for engineering microbiomes.

Authors:  Christopher E Lawson; William R Harcombe; Roland Hatzenpichler; Stephen R Lindemann; Frank E Löffler; Michelle A O'Malley; Héctor García Martín; Brian F Pfleger; Lutgarde Raskin; Ophelia S Venturelli; David G Weissbrodt; Daniel R Noguera; Katherine D McMahon
Journal:  Nat Rev Microbiol       Date:  2019-09-23       Impact factor: 60.633

2.  Can enzyme proximity accelerate cascade reactions?

Authors:  Andrij Kuzmak; Sheiliza Carmali; Eric von Lieres; Alan J Russell; Svyatoslav Kondrat
Journal:  Sci Rep       Date:  2019-01-24       Impact factor: 4.379

3.  Pacing Electrocardiogram Detection With Memory-Based Autoencoder and Metric Learning.

Authors:  Zhaoyang Ge; Huiqing Cheng; Zhuang Tong; Lihong Yang; Bing Zhou; Zongmin Wang
Journal:  Front Physiol       Date:  2021-12-17       Impact factor: 4.566

Review 4.  A Review of Dynamic Modeling Approaches and Their Application in Computational Strain Optimization for Metabolic Engineering.

Authors:  Osvaldo D Kim; Miguel Rocha; Paulo Maia
Journal:  Front Microbiol       Date:  2018-07-31       Impact factor: 5.640

Review 5.  Towards a widespread adoption of metabolic modeling tools in biopharmaceutical industry: a process systems biology engineering perspective.

Authors:  Anne Richelle; Blandine David; Didier Demaegd; Marianne Dewerchin; Romain Kinet; Angelo Morreale; Rui Portela; Quentin Zune; Moritz von Stosch
Journal:  NPJ Syst Biol Appl       Date:  2020-03-13

6.  Identification of flux checkpoints in a metabolic pathway through white-box, grey-box and black-box modeling approaches.

Authors:  Ophélie Lo-Thong; Philippe Charton; Xavier F Cadet; Brigitte Grondin-Perez; Emma Saavedra; Cédric Damour; Frédéric Cadet
Journal:  Sci Rep       Date:  2020-08-10       Impact factor: 4.379

7.  Machine learning-assisted identification of bioindicators predicts medium-chain carboxylate production performance of an anaerobic mixed culture.

Authors:  Bin Liu; Heike Sträuber; João Saraiva; Hauke Harms; Sandra Godinho Silva; Jonas Coelho Kasmanas; Sabine Kleinsteuber; Ulisses Nunes da Rocha
Journal:  Microbiome       Date:  2022-03-25       Impact factor: 14.650

  7 in total

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