IgDesign: In vitro validated antibody design against multiple therapeutic antigens using inverse fol...
IgDesign: In vitro validated antibody design against multiple therapeutic antigens using inverse folding
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Author / Creator
Shanehsazzadeh, Amir , Alverio, Julian , Kasun, George , Levine, Simon , Calman, Ido , Khan, Jibran A , Chung, Chelsea , Diaz, Nicolas , Luton, Breanna K , Tarter, Ysis , Mccloskey, Cailen , Bateman, Katherine B , Carter, Hayley , Chapman, Dalton , Consbruck, Rebecca , Jaeger, Alec , Kohnert, Christa , Kopec-Belliveau, Gaelin , Sutton, John M , Guo, Zheyuan , Canales, Gustavo , Ejan, Kai , Marsh, Emily , Ruelos, Alyssa , Ripley, Rylee , Stoddard, Brooke , Caguiat, Rodante , Chapman, Kyra , Saunders, Matthew , Sharp, Jared , Douglas Ganini Da Silva , Feltner, Audree , Ripley, Jake , Bryant, Megan E , Castillo, Danni , Meier, Joshua , Stegmann, Christian M , Moran, Katherine , Lemke, Christine , Abdulhaqq, Shaheed , Klug, Lillian R and Bachas, Sharrol
Publisher
Cold Spring Harbor: Cold Spring Harbor Laboratory Press
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Language
English
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Publisher
Cold Spring Harbor: Cold Spring Harbor Laboratory Press
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Scope and Contents
Contents
Deep learning approaches have demonstrated the ability to design protein sequences given backbone structures [1, 2, 3, 4, 5]. While these approaches have been applied in silico to designing antibody complementarity-determining regions (CDRs), they have yet to be validated in vitro for designing antibody binders, which is the true measure of success for antibody design. Here we describe IgDesign, a deep learning method for antibody CDR design, and demonstrate its robustness with successful binder design for 8 therapeutic antigens. The model is tasked with designing heavy chain CDR3 (HCDR3) or all three heavy chain CDRs (HCDR123) using native backbone structures of antibody-antigen complexes, along with the antigen and antibody framework (FWR) sequences as context. For each of the 8 antigens, we design 100 HCDR3s and 100 HCDR123s, scaffold them into the native antibody's variable region, and screen them for binding against the antigen using surface plasmon resonance (SPR). As a baseline, we screen 100 HCDR3s taken from the model's training set and paired with the native HCDR1 and HCDR2. We observe that both HCDR3 design and HCDR123 design outperform this HCDR3-only baseline. IgDesign is the first experimentally validated antibody inverse folding model. It can design antibody binders to multiple therapeutic antigens with high success rates and, in some cases, improved affinities over clinically validated reference antibodies. Antibody inverse folding has applications to both de novo antibody design and lead optimization, making IgDesign a valuable tool for accelerating drug development and enabling therapeutic design. The data generated in this study serve as a useful benchmark of diverse antibody-antigen interactions. We use this data to benchmark self-consistency RMSD (scRMSD), using ABodyBuilder2 [6], ABodyBuilder3 [7], and ESMFold [8], as a metric for assessing binding. We open source the code for IgDesign and the SPR datasets.Competing Interest StatementThe authors are current or former employees, contractors, interns, or executives of Absci Corporation and may hold shares in Absci Corporation.Footnotes* Open sourcing data and code. Analysis of self-consistency RMSD (scRMSD) as a metric for predicting binding.* https://github.com/AbSciBio/igdesign/tree/main...
Alternative Titles
Full title
IgDesign: In vitro validated antibody design against multiple therapeutic antigens using inverse folding
Authors, Artists and Contributors
Author / Creator
Alverio, Julian
Kasun, George
Levine, Simon
Calman, Ido
Khan, Jibran A
Chung, Chelsea
Diaz, Nicolas
Luton, Breanna K
Tarter, Ysis
Mccloskey, Cailen
Bateman, Katherine B
Carter, Hayley
Chapman, Dalton
Consbruck, Rebecca
Jaeger, Alec
Kohnert, Christa
Kopec-Belliveau, Gaelin
Sutton, John M
Guo, Zheyuan
Canales, Gustavo
Ejan, Kai
Marsh, Emily
Ruelos, Alyssa
Ripley, Rylee
Stoddard, Brooke
Caguiat, Rodante
Chapman, Kyra
Saunders, Matthew
Sharp, Jared
Douglas Ganini Da Silva
Feltner, Audree
Ripley, Jake
Bryant, Megan E
Castillo, Danni
Meier, Joshua
Stegmann, Christian M
Moran, Katherine
Lemke, Christine
Abdulhaqq, Shaheed
Klug, Lillian R
Bachas, Sharrol
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Primary Identifiers
Record Identifier
TN_cdi_proquest_journals_2899736757
Permalink
https://devfeature-collection.sl.nsw.gov.au/record/TN_cdi_proquest_journals_2899736757
Other Identifiers
E-ISSN
2692-8205
DOI
10.1101/2023.12.08.570889
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https://www.proquest.com/docview/2899736757?pq-origsite=primo&accountid=13902