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IMPROVING ANTIBODY AFFINITY USING LABORATORY DATA WITH LANGUAGE MODEL GUIDED DESIGN

View ORCID ProfileBen Krause, View ORCID ProfileSubu Subramanian, Tom Yuan, Marisa Yang, Aaron Sato, Nikhil Naik
doi: https://doi.org/10.1101/2023.09.13.557505
Ben Krause
1Salesforce AI Research, Palo Alto, CA, USA
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  • For correspondence: bkrause@salesforce.com
Subu Subramanian
3Department of Biochemistry, Vanderbilt University School of Medicine, Nashville, TN, USA
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Tom Yuan
2Twist Biopharma, Twist Bioscience, South San Francisco, CA, USA
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Marisa Yang
2Twist Biopharma, Twist Bioscience, South San Francisco, CA, USA
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Aaron Sato
2Twist Biopharma, Twist Bioscience, South San Francisco, CA, USA
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Nikhil Naik
1Salesforce AI Research, Palo Alto, CA, USA
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Abstract

Protein design requires searching exponentially large spaces of possible sequences to find candidates with desired properties. Language models (LMs) pretrained on universal protein datasets have shown potential to help make this search space tractable. However, LMs trained on natural sequences alone have limitations in designing proteins with novel functions, which is especially important for many pharmaceutical applications. In this work, we used a combination of methods to finetune pretrained LMs on laboratory data collected in an anti-CD40L antibody library campaign to develop an ensemble scoring function to model the fitness landscape and guide the design of new antibodies. Laboratory testing showed that the designed antibodies had improved affinity to CD40L. Notably, the designs improved the affinities of four antibodies, originally ranging from 1 nanomolar to 100 picomolar, all to below 25 picomolar, approaching the limit of detection. This work is a promising step towards realizing the potential of LMs to leverage laboratory data to develop improved treatments for diseases.

Competing Interest Statement

The authors have declared no competing interest.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted September 13, 2023.
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IMPROVING ANTIBODY AFFINITY USING LABORATORY DATA WITH LANGUAGE MODEL GUIDED DESIGN
Ben Krause, Subu Subramanian, Tom Yuan, Marisa Yang, Aaron Sato, Nikhil Naik
bioRxiv 2023.09.13.557505; doi: https://doi.org/10.1101/2023.09.13.557505
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IMPROVING ANTIBODY AFFINITY USING LABORATORY DATA WITH LANGUAGE MODEL GUIDED DESIGN
Ben Krause, Subu Subramanian, Tom Yuan, Marisa Yang, Aaron Sato, Nikhil Naik
bioRxiv 2023.09.13.557505; doi: https://doi.org/10.1101/2023.09.13.557505

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