posted on 2023-07-24, 22:43authored byPamela O’Neill, Rajesh K. Mistry, Adam J. Brown, David C. James
Expression of recombinant proteins in mammalian cell
factories
relies on synthetic assemblies of genetic parts to optimally control
flux through the product biosynthetic pathway. In comparison to other
genetic part-types, there is a relative paucity of characterized signal
peptide components, particularly for mammalian cell contexts. In this
study, we describe a toolkit of signal peptide elements, created using
bioinformatics-led and synthetic design approaches, that can be utilized
to enhance production of biopharmaceutical proteins in Chinese hamster
ovary cell factories. We demonstrate, for the first time in a mammalian
cell context, that machine learning can be used to predict how discrete
signal peptide elements will perform when utilized to drive endoplasmic
reticulum (ER) translocation of specific single chain protein products.
For more complex molecular formats, such as multichain monoclonal
antibodies, we describe how a combination of in silico and targeted
design rule-based in vitro testing can be employed to rapidly identify
product-specific signal peptide solutions from minimal screening spaces.
The utility of this technology is validated by deriving vector designs
that increase product titers ≥1.8×, compared to standard
industry systems, for a range of products, including a difficult-to-express
monoclonal antibody. The availability of a vastly expanded toolbox
of characterized signal peptide parts, combined with streamlined in
silico/in vitro testing processes, will permit efficient expression
vector re-design to maximize titers of both simple and complex protein
products.