Literature DB >> 33634086

Multiomics Data Collection, Visualization, and Utilization for Guiding Metabolic Engineering.

Somtirtha Roy1,2, Tijana Radivojevic1,2,3, Mark Forrer2,3,4, Jose Manuel Marti1,2,3, Vamshi Jonnalagadda1,2, Tyler Backman1,3, William Morrell2,3,4, Hector Plahar1,2, Joonhoon Kim3,5, Nathan Hillson1,2,3, Hector Garcia Martin1,2,3,6.   

Abstract

Biology has changed radically in the past two decades, growing from a purely descriptive science into also a design science. The availability of tools that enable the precise modification of cells, as well as the ability to collect large amounts of multimodal data, open the possibility of sophisticated bioengineering to produce fuels, specialty and commodity chemicals, materials, and other renewable bioproducts. However, despite new tools and exponentially increasing data volumes, synthetic biology cannot yet fulfill its true potential due to our inability to predict the behavior of biological systems. Here, we showcase a set of computational tools that, combined, provide the ability to store, visualize, and leverage multiomics data to predict the outcome of bioengineering efforts. We show how to upload, visualize, and output multiomics data, as well as strain information, into online repositories for several isoprenol-producing strain designs. We then use these data to train machine learning algorithms that recommend new strain designs that are correctly predicted to improve isoprenol production by 23%. This demonstration is done by using synthetic data, as provided by a novel library, that can produce credible multiomics data for testing algorithms and computational tools. In short, this paper provides a step-by-step tutorial to leverage these computational tools to improve production in bioengineered strains.
Copyright © 2021 Roy, Radivojevic, Forrer, Marti, Jonnalagadda, Backman, Morrell, Plahar, Kim, Hillson and Garcia Martin.

Entities:  

Keywords:  biofuels; flux analysis; machine learning; metabolic engineering; multiomics analysis; synthetic biology

Year:  2021        PMID: 33634086      PMCID: PMC7902046          DOI: 10.3389/fbioe.2021.612893

Source DB:  PubMed          Journal:  Front Bioeng Biotechnol        ISSN: 2296-4185


  32 in total

1.  Opportunities at the Intersection of Synthetic Biology, Machine Learning, and Automation.

Authors:  Pablo Carbonell; Tijana Radivojevic; Héctor García Martín
Journal:  ACS Synth Biol       Date:  2019-07-19       Impact factor: 5.110

Review 2.  Constraining the metabolic genotype-phenotype relationship using a phylogeny of in silico methods.

Authors:  Nathan E Lewis; Harish Nagarajan; Bernhard O Palsson
Journal:  Nat Rev Microbiol       Date:  2012-02-27       Impact factor: 60.633

Review 3.  Cell-free synthetic biology: thinking outside the cell.

Authors:  C Eric Hodgman; Michael C Jewett
Journal:  Metab Eng       Date:  2011-09-18       Impact factor: 9.783

Review 4.  Semi-synthetic artemisinin: a model for the use of synthetic biology in pharmaceutical development.

Authors:  Chris J Paddon; Jay D Keasling
Journal:  Nat Rev Microbiol       Date:  2014-04-01       Impact factor: 60.633

Review 5.  The impact of synthetic biology for future agriculture and nutrition.

Authors:  Marc-Sven Roell; Matias D Zurbriggen
Journal:  Curr Opin Biotechnol       Date:  2019-12-05       Impact factor: 9.740

Review 6.  Natural products as biofuels and bio-based chemicals: fatty acids and isoprenoids.

Authors:  Harry R Beller; Taek Soon Lee; Leonard Katz
Journal:  Nat Prod Rep       Date:  2015-09-23       Impact factor: 13.423

Review 7.  Analytics for Metabolic Engineering.

Authors:  Christopher J Petzold; Leanne Jade G Chan; Melissa Nhan; Paul D Adams
Journal:  Front Bioeng Biotechnol       Date:  2015-09-07

8.  Protocols.io: Virtual Communities for Protocol Development and Discussion.

Authors:  Leonid Teytelman; Alexei Stoliartchouk; Lori Kindler; Bonnie L Hurwitz
Journal:  PLoS Biol       Date:  2016-08-22       Impact factor: 8.029

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