4.7 Article

EPSOL: sequence-based protein solubility prediction using multidimensional embedding

Journal

BIOINFORMATICS
Volume 37, Issue 23, Pages 4314-4320

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btab463

Keywords

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Funding

  1. National Key Research and Development Program of China [2018YFC0910403]
  2. National Natural Science Foundation of China [62072353, 61672406, 61532014]

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This article introduces a novel deep learning architecture named EPSOL for predicting protein solubility in an E.coli expression system, which achieves high accuracy and reliability in predicting the solubility of new recombinant proteins.
Motivation: The heterologous expression of recombinant protein requires host cells, such as Escherichiacoli, and the solubility of protein greatly affects the protein yield. A novel and highly accurate solubility predictor that concurrently improves the production yield and minimizes production cost, and that forecasts protein solubility in an E.coli expression system before the actual experimental work is highly sought. Results: In this article, EPSOL, a novel deep learning architecture for the prediction of protein solubility in an E.coli expression system, which automatically obtains comprehensive protein feature representations using multidimensional embedding, is presented. EPSOL outperformed all existing sequence-based solubility predictors and achieved 0.79 in accuracy and 0.58 in Matthew's correlation coefficient. The higher performance of EPSOL permits large-scale screening for sequence variants with enhanced manufacturability and predicts the solubility of new recombinant proteins in an E.coli expression system with greater reliability.

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