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The growing demand for recombinant proteins has led to exploring new engineering strategies and the expansion of protein expression host cell lines. However, this endeavor is not for the faint of heart. Many variables must be considered during the development process, including verification and sequence analysis of the gene or protein of interest, codon optimization, vector construction and clone/host selection. When challenges arise, protein expression scientists must design new cloning schemes by altering the DNA or amino acid sequence, reassigning the codon to another, moving a gene for one vector to another, transfecting the vector to an alternative host, re-selecting the clone, re-characterizing the expressed protein or any of the above – a laborious, time consuming and expensive process. Cambridge Healthtech Institute's 6th Annual Cell Line and Systems Engineering conference features effective engineering strategies for recombinant protein expression and production that lead to functional protein products. Learn from seasoned, savvy researchers as they share their real-world experiences, applications, and results.

Recommended Short Course*
Monday, 13 November, 14:00 – 17:00
SC4: The Use and Optimization of Eukaryotic Expression Systems to Support Therapeutic Generation and Structural Biology
*Separate registration required. See short courses page for details. All short courses take place in-person only.

Tuesday, 14 November

Registration Open and Morning Coffee07:30

APPLYING DATA SCIENCE TO ENHANCE PROTEIN EXPRESSION

08:25

Chairperson's Opening Remarks

Nicola Burgess-Brown, PhD, Director of Enzymology and Protein Engineering, Exact Sciences Innovation

08:30

FEATURED PRESENTATION: Accuracy and Data Efficiency in Deep Learning Models of Protein Expression

Diego A. Oyarzun, PhD, Reader in Computational Biology, Informatics Forum, University of Edinburgh

Thanks to progress in rapid DNA synthesis and sequencing, deep learning has emerged as a promising approach to build sequence-to-expression models for strain optimization. But such models need large and costly training data that create steep entry barriers for many laboratories. Here we study the relation between accuracy and data efficiency in an atlas of machine learning models trained on datasets of varied size and sequence diversity. Our results provide guidelines for balancing cost and quality of training data, thus helping promote the wider adoption of deep learning in strain engineering.

09:00

Codon Language Models for Protein Engineering

Carlos Outeiral, PhD, Eric and Wendy Schmidt AI in Science Research Fellow, Department of Statistics, University of Oxford

Protein representations from language models have yielded state-of-the-art performance across many tasks in computational protein engineering. In recent years, progress has focused on parameter count, with recent models' capacities surpassing the size of the very datasets they were trained on. Here, we propose an alternative direction. We show that large language models trained on codons, instead of amino acid sequences, provide high-quality representations that outperform comparable state-of-the-art models across. These results suggest that, in addition to commonly studied scale and complexity, the information content of biological data provides an orthogonal direction to improve the power of machine learning in biology.

09:30

Automated Model Based Optimisation of Difficult-to-Express Protein Processes in a Robotic Facility

Peter Neubauer, PhD, Lab Head, Bioprocess Engineering, TU Berlin

The KIWI-biolab enables efficient recombinant bioprocess development and optimization on a robotic platform with fully automatic orchestration of parallel bioreactor systems of different scales, analytical instruments and a mobile laboratory robot. Based on FAIR data principles it allows self-controlled parallel fed-batch cultivations, integrated sample analysis and mathematical model-based parameter calibration and CQA optimisation. The power of the platform is demonstrated by industrially relevant recombinant processes including Fabs, elastins and hydrogenase.

10:00 Improving Production of Biologics Using Data Science

Claes Gustafsson, Ph.D, CCO & Co-Founder, ATUM

Therapeutic biologics, including antibodies, enzymes, mRNA and more are manufactured from biological systems. The COVID pandemic provided strong incentive to the industry to speed up the manufacturing process and bring drugs to the market faster.  This presentation will illustrate how transposons, machine learning and a systematically varied data is utilized to design and optimize biological sequences that has enabled >20 IND filings

Grand Opening Coffee Break in the Exhibit Hall with Poster Viewing10:30

11:15

Using Machine Learning to Predict Protein Expression

Lovisa Holmberg Schiavone, PhD, Director, Discovery Biology, Discovery Sciences, R&D, AstraZeneca

We have developed and implemented a machine learning model to predict protein expression. The model was coupled to an in silico screening procedure that systematically designs and assesses thousands of constructs in a high-throughput manner. We will share our plans to improve the model by (1) streamlining internal data registration, (2) considering yield values instead of classes, (3) incorporating protein sequence embeddings based on AI language models, and (4) leveraging external datasets. Limited availability of training data is a key blocker, so we are exploring sharing data via a pre-competitive consortium in collaboration with EMBL-EBI and other academic and industry partners.

11:45

KEYNOTE PRESENTATION: Approaches to High-Throughput Expression and Machine Learning at GSK

Kate J. Smith, PhD, Director, UK Protein & Cell Sciences, GSK

Rapid generation of quality reagents is essential for successful drug discovery. Minimizing reagent design-make-test cycles decreases cost and increases probability of success.  At GSK we have developed high-throughput mammalian and E. coli expression systems. We are using our high-throughput expression pipelines to screen constructs for optimal expression to generate protein and cellular reagents. We are using machine learning and design approaches to inform construct design and increase the success of our reagents for a range of applications. This presentation will introduce our high-throughput expression systems, our approaches to organizing our data and our design approaches.

12:15 Quantitative Synthetic Biology to Advance Biologics Production

Mark Stockdale, Strategic Alliance Director, Asimov

Here we present the Asimov CHO Edge platform, which builds on the current state of the art for CLD by integrating expanded genetic tools with data driven models. Incorporating a GS knock-out CHO host, a hyperactive transposase, a library of >2000 characterized genetic elements, and advanced computational tools, the CHO Edge platform empowers researchers to explore the vector design space and achieve greater expression efficiency and quality.

Session Break12:45

12:55 LUNCHEON PRESENTATION I:Efficient Therapeutic Development Using The Pfenex Expression Technology® Platform

Jeff Allen, SVP Process and Analytical Development, Analytical, Primrose Bio

The Pfenex Expression Technology® is a commercially validated P. fluorescens based platform used for recombinant protein production. Case studies are discussed demonstrating how the Pfenex toolbox of genetic elements and host strains enabled rapid exploration of expression strategies for challenging protein scaffolds, including proteins engineered for site-specific chemical modification to enable the development of products such as antibody drug conjugates for use as human therapeutics.

13:25 LUNCHEON PRESENTATION II:Leveraging the BioXp Platform for Automated Plasmid Construction at Acies Bio

Aleksander J. Kruis, Head of Metabolic Engineering, R&D, Acies Bio

Strain design and optimization requires testing and expressing large numbers of genes, however assembling large numbers of these constructs is a laborious and time-consuming bottleneck. Join Acies Bio, to learn how they have successfully addressed this challenge by leveraging Telesis Bio’s BioXp® automated synthetic biology workstation to enable rapid overnight synthesis of enzyme homologs, synthesis of expression cassettes, and parallel construction of CRISPR target plasmids.

Session Break13:55

ENGINEERING AND DEVELOPING HOST CELL LINES

14:05

Chairperson's Remarks

Bjørn Voldborg, MSc, Head, National Biologics Facility, DTU Bioengineering, Technical University of Denmark

14:10

Directed Evolution of Bovine Enterokinase from Inclusion Body to Soluble Protein Expression

Paul Dalby, PhD, Professor, Department of Biochemical Engineering; Co-Director, Future Targeted Healthcare Manufacturing Hub, University College London

Bovine enterokinase light chain is used for affinity-tag removal. Expression in E. coli leads to insoluble inclusion bodies. Directed evolution yielded 321 unique variants, with up to >11,000-fold increased soluble expression, mainly due to stability. Codon optimisation improved expression at 37°C. However, non-optimised codons and expression at 30°C gave the highest activities. Partial least squares analysis revealed that soluble variants tended to combine stabilising mutations outside the active site.

14:40

A Next-Generation pET System for Bacterial Protein Production

Morten Nørholm, PhD, Research Group Leader, Novo Nordisk Foundation Center for Biosustainability, Technical University of Denmark

The pET plasmids constitute the most popular protein production system. Using synthetic experimental evolution, we have improved the performance of several of the pET genetic modules and bacterial strains. In addition, we have developed an extremely simple method for making recombinant DNA. The approach and the genetic modules will be combined into a next-generation pET system.

15:10

Novel Strategies for Protein Production Using Pichia pastoris

Claudia Rinnofner, PhD, Founder & CEO, myBIOS GmbH

Recombinant protein production allows us to create smart materials and catalysts. Our mission is to find solutions to produce proteins, enzymes and metabolites using the yeast Pichia pastoris, which is an efficient alternative for recombinant production combining the simplicity of bacterial expression systems with some essential features of higher eukaryotic hosts. We can build on over 15 years of experience in toolbox development and gene expression using Pichia pastoris to overcome hurdles in recombinant production. We adopt available technology to our needs and evaluate innovative new strategies for the expression of our proteins and enzymes.

15:40 The Future of Microbiology: Sustainable Alternatives for Food & Beverage

Carola Mancini, European Field Applications Scientist, BioPharma, Molecular Devices

The landscape of the food and beverage industry is undergoing a transformative shift, driven by the dual imperatives of sustainability and innovation. This presentation paints the picture of a customer's innovative leap, harnessing the power of microalgae metabolism. Our showcase will also spotlight the QPix Microbial Colony Picker, an instrumental player in forging ahead with sustainable alternatives for industries far and wide.

15:55 Picodroplets for Cell Line Engineering: a Novel Automation Approach

Richard Hammond, MA MEng., CTO, Sphere Fluidics Limited

The development process for cell lines is complex and laborious, with increasing expectations for supporting in-process data.  We will show how microfluidic-enabled picodroplets deliver integrated, user-friendly, automated workflows where millions of individual cells are assessed daily, and the best single cells selected - in an environment that maintains high cell viability and outgrowth.  We will introduce Cyto-Mine®, a platform that enables a step-change in speed and scale of working.

Refreshment Break in the Exhibit Hall with Poster Viewing16:10

17:00

Genome-Wide Virus-Free CRISPR Screening Platform for Identifying Novel Engineering Targets in Mammalian Cells

Jae Seong Lee, PhD, Associate Professor, Applied Chemistry & Biological Engineering, Ajou University

Mammalian cells are the preferred host cells for therapeutic protein production and have been engineered to contain desired attributes for increased protein production. To identify novel engineering targets, laborious and time-consuming empirical approaches have been attempted. Here, I present a genome-wide CRISPR-Cas9 screening platform for CHO and HEK293 cells using a virus-free, recombinase-mediated, cassette exchange-based gRNA integration method to identify novel targets for high productivity and culture-stress resistance.

17:30

The Potential of Emerging Sub-Omics Technologies for CHO Cell Engineering

Christoph Keysberg, PhD, Research Assistant, Biberach University

In recombinant protein production with CHO cells, bottlenecks in productivity or product purity issues require a particular cellular or clonal mechanism to be analyzed. Emerging analytical techniques allow ever more detailed insights into cellular processes involved in protein expression or cultivation performance. Thus, we performed targeted studies on CHO sub-OMICs, including the miRNome, cell surfaceome, as well as secreted HCPs and extracellular vesicles, to address specific issues of biopharmaceutical production.

18:00

Getting the Most Out of Your Cells: Refining the Process for Higher Protein Yields

Jose Luis Corchero-Nieto, PhD, Senior Scientist, Nanobiotechnology Group, CIBER-BBN & University Autonoma de Barcelona

In the last years, we have been dealing with the production of different recombinant proteins in human cells, by means of PEI-based transfection and further transient gene expression. We have been constantly pursuing the improvement of the process, in terms of higher expression levels. We have explored different parameters and conditions (some of them already published for other recombinant proteins), and we have implemented in our process those changes that improved protein yield. In our talk, we will detail such continuous process, and show where we started, and where we are now.

Welcome Reception in the Exhibit Hall with Poster Viewing18:30

Close of Cell Line and Systems Engineering Conference19:30