Deep protein representations enable recombinant protein expression prediction.

Journal: Computational biology and chemistry
PMID:

Abstract

A crucial process in the production of industrial enzymes is recombinant gene expression, which aims to induce enzyme overexpression of the genes in a host microbe. Current approaches for securing overexpression rely on molecular tools such as adjusting the recombinant expression vector, adjusting cultivation conditions, or performing codon optimizations. However, such strategies are time-consuming, and an alternative strategy would be to select genes for better compatibility with the recombinant host. Several methods for predicting soluble expression are available; however, they are all optimized for the expression host Escherichia coli and do not consider the possibility of an expressed protein not being soluble. We show that these tools are not suited for predicting expression potential in the industrially important host Bacillus subtilis. Instead, we build a B. subtilis-specific machine learning model for expressibility prediction. Given millions of unlabelled proteins and a small labeled dataset, we can successfully train such a predictive model. The unlabeled proteins provide a performance boost relative to using amino acid frequencies of the labeled proteins as input. On average, we obtain a modest performance of 0.64 area-under-the-curve (AUC) and 0.2 Matthews correlation coefficient (MCC). However, we find that this is sufficient for the prioritization of expression candidates for high-throughput studies. Moreover, the predicted class probabilities are correlated with expression levels. A number of features related to protein expression, including base frequencies and solubility, are captured by the model.

Authors

  • Hannah-Marie Martiny
    Research Group for Genomic Epidemiology, National Food Institute, Technical University of Denmark, 2800 Kgs. Lyngby, Denmark. Electronic address: hanmar@food.dtu.dk.
  • Jose Juan Almagro Armenteros
    Novo Nordisk Foundation Center for Protein Research, Faculty of Health and Medical Sciences, University of Copenhagen, 2200 Copenhagen, Denmark.
  • Alexander Rosenberg Johansen
    Department of Applied Mathematics and Computer Science, Technical University of Denmark, Lyngby, Denmark.
  • Jesper Salomon
    Enzyme Research, Novozymes A/S, Krogshøjvej 36, 2880 Bagsværd, Denmark.
  • Henrik Nielsen
    Department of Bio and Health Informatics, Technical University of Denmark, 2800 Kgs. Lyngby, Denmark.