Literature DB >> 31035759

An Automated Biomodel Selection System (BMSS) for Gene Circuit Designs.

Jing Wui Yeoh1,2, Kai Boon Ivan Ng1, Ai Ying Teh1,2, JingYun Zhang1,2, Wai Kit David Chee1,2, Chueh Loo Poh1,2.   

Abstract

Constructing a complex functional gene circuit composed of different modular biological parts to achieve the desired performance remains challenging without a proper understanding of how the individual module behaves. To address this, mathematical models serve as an important tool toward better interpretation by quantifying the performance of the overall gene circuit, providing insights, and guiding the experimental designs. As different gene circuits might require exclusively different mathematical representations in the form of ordinary differential equations to capture their transient dynamic behaviors, a recurring challenge in model development is the selection of the appropriate model. Here, we developed an automated biomodel selection system (BMSS) which includes a library of pre-established models with intuitive or unintuitive features derived from a vast array of expression profiles. Selection of models is built upon the Akaike information criteria (AIC). We tested the automated platform using characterization data of routinely used inducible systems, constitutive expression systems, and several different logic gate systems (NOT, AND, and OR gates). The BMSS achieved a good agreement for all the different characterization data sets and managed to select the most appropriate model accordingly. To enable exchange and reproducibility of gene circuit design models, the BMSS platform also generates Synthetic Biology Open Language (SBOL)-compliant gene circuit diagrams and Systems Biology Markup Language (SBML) output files. All aspects of the algorithm were programmed in a modular manner to ease the efforts on model extensions or customizations by users. Taken together, the BMSS which is implemented in Python supports users in deriving the best mathematical model candidate in a fast, efficient, and automated way using part/circuit characterization data.

Keywords:  automation; characterization data; computational tool; genetic circuit modeling; model fitting; model selection

Mesh:

Year:  2019        PMID: 31035759     DOI: 10.1021/acssynbio.8b00523

Source DB:  PubMed          Journal:  ACS Synth Biol        ISSN: 2161-5063            Impact factor:   5.110


  5 in total

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3.  Automated design of synthetic microbial communities.

Authors:  Behzad D Karkaria; Alex J H Fedorec; Chris P Barnes
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5.  Machine Learning Guided Batched Design of a Bacterial Ribosome Binding Site.

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  5 in total

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