2014
DOI: 10.1186/1471-2105-15-134
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A review of machine learning methods to predict the solubility of overexpressed recombinant proteins in Escherichia coli

Abstract: BackgroundOver the last 20 years in biotechnology, the production of recombinant proteins has been a crucial bioprocess in both biopharmaceutical and research arena in terms of human health, scientific impact and economic volume. Although logical strategies of genetic engineering have been established, protein overexpression is still an art. In particular, heterologous expression is often hindered by low level of production and frequent fail due to opaque reasons. The problem is accentuated because there is no… Show more

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Cited by 51 publications
(38 citation statements)
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“…56 As well as the engineering of novel bacterial systems, development of new bioinformatic software has enabled anticipation of potential expression issues, a critical example of which is protein solubility upon overexpression. 57 An ideal goal, in terms of metabolic engineering, would be the ability to modify prokaryotic hosts, conferring on them eukaryotic-like characteristics. In 2002, Wacker et al, 58 demonstrated that the N-linked glycosylation process, identified in Campylobacter jejuni, can be transferred into E. coli.…”
Section: Bacteria: Between Evolution and Revolutionmentioning
confidence: 99%
“…56 As well as the engineering of novel bacterial systems, development of new bioinformatic software has enabled anticipation of potential expression issues, a critical example of which is protein solubility upon overexpression. 57 An ideal goal, in terms of metabolic engineering, would be the ability to modify prokaryotic hosts, conferring on them eukaryotic-like characteristics. In 2002, Wacker et al, 58 demonstrated that the N-linked glycosylation process, identified in Campylobacter jejuni, can be transferred into E. coli.…”
Section: Bacteria: Between Evolution and Revolutionmentioning
confidence: 99%
“…There had been a few attempts, mostly using machine learning techniques, to predict whether a given recombinant protein will be expressed based merely on its sequence [11]. The work of Christendat et al [5] was the first attempt to predict the expression of protein as part of their analysis.…”
Section: Recombinant Prmentioning
confidence: 99%
“…Machine learning has been applied to predicting various protein properties, including solubility [20,21], trafficking to the periplasm [22], crystallization propensity [23], and function [24]. Generally, these models are trained using large data sets composed of literature data from varied sources with little to no standardization of the experimental conditions, and trained using many protein classes (i.e.…”
Section: Introductionmentioning
confidence: 99%