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A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development
Antibodies, Volume: 8, Issue: 1, Start page: 7
Swansea University Authors: Gareth Healey , Deya Gonzalez , Steve Conlan
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DOI (Published version): 10.3390/antib8010007
Abstract
Antibodies, antibody-like molecules, and therapeutics incorporating antibodies as a targeting moiety, such as antibody-drug conjugates, offer significant potential for the development of highly efficacious drugs against a wide range of disorders. Despite some success, truly harnessing the superior t...
Published in: | Antibodies |
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ISSN: | 2073-4468 |
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2019
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URI: | https://cronfa.swan.ac.uk/Record/cronfa48095 |
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2020-06-16T15:56:33.4241010 v2 48095 2019-01-08 A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development 5926519f89187489cfd5e1478aa188b1 0000-0001-9531-1220 Gareth Healey Gareth Healey true false bafdf635eb81280304eedf4b18e65d4e 0000-0002-1838-6752 Deya Gonzalez Deya Gonzalez true false 0bb6bd247e32fb4249de62c0013b51cb 0000-0002-2562-3461 Steve Conlan Steve Conlan true false 2019-01-08 PMSC Antibodies, antibody-like molecules, and therapeutics incorporating antibodies as a targeting moiety, such as antibody-drug conjugates, offer significant potential for the development of highly efficacious drugs against a wide range of disorders. Despite some success, truly harnessing the superior targeting properties of these molecules requires a platform from which to effectively identify the best candidates for drug development. To streamline the development of antibody-drug conjugates targeting gynecological cancers within our laboratory, we incorporated surface plasmon resonance analysis (Biacore™ T200) into our development toolkit. Antibodies, selected based on positive ELISA screens as suitable for development as antibody-drug conjugates, were evaluated using surface plasmon resonance to determine a wide range of characteristics including specificity, kinetics/affinity, the effect of linker binding, the impact of the drug to antibody ratio, and the effect of endosomal pH on antibody-antigen binding. Analysis revealed important kinetics data and information regarding the effect of conjugation and endosomal pH on our antibody candidates that correlated with cell toxicity and antibody internalization data. As well as explaining observations from cell-based assays regarding antibody-drug conjugate efficacies, these data also provide important information regarding intelligent antibody selection and antibody-drug conjugate design. This study demonstrates the application of surface plasmon resonance technology as a platform, where detailed information can be obtained, supporting the requirements for rapid and high-throughput screening that will enable enhanced antibody-drug conjugate development. Journal Article Antibodies 8 1 7 2073-4468 7 1 2019 2019-01-07 10.3390/antib8010007 COLLEGE NANME Medicine COLLEGE CODE PMSC Swansea University 2020-06-16T15:56:33.4241010 2019-01-08T21:09:42.0977622 Gareth Healey 0000-0001-9531-1220 1 Asa Frostell 2 Tim Fagge 3 Deya Gonzalez 0000-0002-1838-6752 4 R. Conlan 5 Steve Conlan 0000-0002-2562-3461 6 0048095-18012019133043.pdf 48095.pdf 2019-01-18T13:30:43.0400000 Output 3428493 application/pdf Version of Record true 2019-01-17T00:00:00.0000000 Released under the terms of a Creative Commons Attribution License (CC-BY). true eng |
title |
A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development |
spellingShingle |
A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development Gareth Healey Deya Gonzalez Steve Conlan |
title_short |
A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development |
title_full |
A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development |
title_fullStr |
A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development |
title_full_unstemmed |
A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development |
title_sort |
A RAGE-Targeted Antibody-Drug Conjugate: Surface Plasmon Resonance as a Platform for Accelerating Effective ADC Design and Development |
author_id_str_mv |
5926519f89187489cfd5e1478aa188b1 bafdf635eb81280304eedf4b18e65d4e 0bb6bd247e32fb4249de62c0013b51cb |
author_id_fullname_str_mv |
5926519f89187489cfd5e1478aa188b1_***_Gareth Healey bafdf635eb81280304eedf4b18e65d4e_***_Deya Gonzalez 0bb6bd247e32fb4249de62c0013b51cb_***_Steve Conlan |
author |
Gareth Healey Deya Gonzalez Steve Conlan |
author2 |
Gareth Healey Asa Frostell Tim Fagge Deya Gonzalez R. Conlan Steve Conlan |
format |
Journal article |
container_title |
Antibodies |
container_volume |
8 |
container_issue |
1 |
container_start_page |
7 |
publishDate |
2019 |
institution |
Swansea University |
issn |
2073-4468 |
doi_str_mv |
10.3390/antib8010007 |
document_store_str |
1 |
active_str |
0 |
description |
Antibodies, antibody-like molecules, and therapeutics incorporating antibodies as a targeting moiety, such as antibody-drug conjugates, offer significant potential for the development of highly efficacious drugs against a wide range of disorders. Despite some success, truly harnessing the superior targeting properties of these molecules requires a platform from which to effectively identify the best candidates for drug development. To streamline the development of antibody-drug conjugates targeting gynecological cancers within our laboratory, we incorporated surface plasmon resonance analysis (Biacore™ T200) into our development toolkit. Antibodies, selected based on positive ELISA screens as suitable for development as antibody-drug conjugates, were evaluated using surface plasmon resonance to determine a wide range of characteristics including specificity, kinetics/affinity, the effect of linker binding, the impact of the drug to antibody ratio, and the effect of endosomal pH on antibody-antigen binding. Analysis revealed important kinetics data and information regarding the effect of conjugation and endosomal pH on our antibody candidates that correlated with cell toxicity and antibody internalization data. As well as explaining observations from cell-based assays regarding antibody-drug conjugate efficacies, these data also provide important information regarding intelligent antibody selection and antibody-drug conjugate design. This study demonstrates the application of surface plasmon resonance technology as a platform, where detailed information can be obtained, supporting the requirements for rapid and high-throughput screening that will enable enhanced antibody-drug conjugate development. |
published_date |
2019-01-07T03:58:23Z |
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1763752965761400832 |
score |
11.036837 |