Recent Advances in Therapeutic Antibody Screening
Article
Published: May 31, 2023
|
Neeta Ratanghayra, MPharm

Freelance Medical Writer
Neeta Ratanghayra holds a Master’s degree in pharmacy. She currently works as a freelance medical writer specializing in developing content for the pharma, biotech and healthcare industries.
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Credit: iStock
Therapeutic antibodies have transformed medicine, offering new hope for treating cancer, autoimmune diseases and infectious conditions. While traditional screening methods have driven innovation, cutting-edge computational and AI-powered approaches are revolutionizing antibody discovery.
Continue reading this article to explore the latest screening technologies, their impact on drug discovery and how AI is reshaping the future of therapeutic antibody development.
Recent Advances in Therapeutic
Antibody Screening
Article Published: May 31, 2023
Neeta Ratanghayra, MPharm
Credit: iStock
In 1986, the first monoclonal antibody was approved by the United States Food
and Drug Administration (FDA), and all through these years, substantial progress
has been made in the field of therapeutic antibodies.
Advances in research and the use of computational strategies have enabled the
development of therapeutic antibodies with the desired properties and these
developments have made therapeutic antibodies one of the most rapidly growing
classes of new drugs.
This article explores the various screening technologies used in the development
of therapeutic antibodies and outlines the recent advances in this area.
Technologies for antibody screening
The screening process for therapeutic antibodies involves testing several potential
candidates (antibody libraries) to identify those that exhibit high binding affinity
and specificity to the target molecule. Screening of therapeutic antibodies has
traditionally been done using humanization, phage display or transgenic mice.
The generation of humanized antibodies by the complementary-determining
region (CDR) grafting technique is a popular technique that has accelerated the
approval of therapeutic monoclonal antibodies (mAbs). The humanization of
antibodies has enabled the use of a new class of biologics against life-threatening
diseases such as cancer and autoimmune diseases.
The phage display technique is a commonly used technique for the rapid
identification of peptides or antibody fragments that bind to several target
molecules. Due to its ability to present large libraries, phage display is widely used
in antibody screening.
Fully human mAbs can be developed using transgenic animals. This technique
involves genetic modification of transgenic mouse lines wherein human
immunoglobulin (Ig) genes are inserted to replace the endogenous Ig genes. After
immunization, these animals can synthesize diverse human mAbs of high affinity.
Aside from the above techniques, several cell-based screening technologies have
also emerged, such as mammalian cell display and yeast cell display. These
techniques involve the multi-copy display of antibodies or antibody fragments on a
cell surface in a functional form followed by high-throughput screening.
mRNA display is another screening technique that allows the selection of protein
libraries with much higher diversity.
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Rational design strategy for therapeutic antibody
development
Though useful, traditional methods for antibody development are cumbersome,
expensive and time-consuming. Also, they may not necessarily be able to produce
antibodies with the desired specificity, especially for difficult targets such as weakly
immunogenic epitopes.
The rational design strategy enables one to obtain antibodies targeting a specific
epitope and can be used to engineer proteins with better stability, binding affinity
and catalytic activity. “The rational design strategy for protein engineering is a
computational approach that involves designing and modifying protein structures
using information on the protein's molecular properties, structure and function,”
explains João Gonçalves, Full Professor at the Faculty of Pharmacy of the University
of Lisbon. “This strategy is based on the understanding of the relationship between
the protein's structure and function, as well as the underlying principles of protein
folding and stability.”
“The rational design approach begins with the identification of the protein's
structural and functional features, followed by the design and construction of
novel protein sequences that optimize these properties. The strategy involves
computational modeling techniques such as molecular dynamics simulations,
homology modeling and protein-ligand docking, among others,” says Gonçalves.
High-throughput selection of computational designs
Recent advances in computational methods have led to significant advances in
antibody design by providing better and faster results than traditional approaches.
Philip M. Kim, a professor in the Department of Molecular Genetics at the
University of Toronto, says, “Basically, if you're screening computational designs,
you're starting at a much better starting point, as each design has a decent chance
of binding the target. By contrast, for either combinatorial libraries (on phage or
yeast) or B-cell approaches, you're essentially screening it blindly, so any affinity to
your antigen will be serendipitous; this is usually counteracted by trying to screen
huge libraries.”
The probability with which any given computational design will bind its target
largely depends on the quality of the design approach taken. “In the past, we have
shown that even with classical approaches, screening relatively small libraries (tens
of thousands of variants in contrast to billions) yields binders. Now with modern
machine learning approaches, the quality of designs is improving rapidly and with
it, the number of variants that need to be screened is dropping,” says Kim.
Compared to the conventional screening strategies for therapeutic antibodies,
high-throughput selection of computational designs offers several advantages.
“There are multiple advantages, but a key one is that with design you can target
particular interfaces or conformations at will, so you have much more precision,”
Kim explains. “This also enables the targeting of difficult-to-hit antigens, such as Gprotein
coupled receptors (GPCRs) or other integral membrane proteins.
Moreover, since you can target anywhere, you can also use the design approach to
elucidate new biology by targeting multiple new, or even all, interfaces on a
particular antigen. Also, with computational design, we can ensure good
developability properties of all our antibodies from the get-go and can thus avoid
the outcome of getting binding antibodies whose properties preclude further
development or need multiple cycles to achieve both binding and good
developability.”
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Language models to accelerate the screening process of
therapeutic antibodies
The screening process for therapeutic antibodies can be time-consuming and
resource-intensive, but there are several ways in which language models could
potentially speed it up. Gonçalves enumerates the ways in which language models
can accelerate the screening process of therapeutic antibodies:
Predictive modeling: Language models can be trained on large datasets of
antibody structures and binding data to predict the binding affinity and
specificity of new candidates. This could potentially reduce the number of
candidates that need to be experimentally tested, as those with low predicted
affinity could be filtered out early in the process.
1.
Literature mining: Language models can be used to rapidly search through
large volumes of scientific literature to identify antibodies that have already
been characterized for a particular target. This could potentially save time by
identifying candidates that have already been tested, rather than starting
from scratch.
2.
Data analysis: Language models can help analyze the vast amounts of data
generated in the screening process, identifying patterns and correlations that
could help optimize the selection and design of new candidates.
3.
Automation: Language models can be used to automate certain aspects of
the screening process, such as the design of experiments or the analysis of
data, freeing up researchers to focus on other tasks.
4.
The need for a time- and cost-efficient approach
Screening and then characterizing antibodies to find promising drug candidates
can be a laborious and expensive process with several potentially useful
candidates left unstudied. However, advanced screening technology can help.
Computational approaches can be harnessed to discover specific and selective
antibodies and reduce the research efforts during the lead identification stage.
This time- and cost-efficient approach for screening therapeutic antibodies can
accelerate the delivery of life-saving medicines to patients and improve patient
outcomes.
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Meet the Author

Freelance Medical Writer
Neeta Ratanghayra holds a Master’s degree in pharmacy. She currently works as a freelance medical writer specializing in developing content for the pharma, biotech and healthcare industries.
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