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Highland games: A benchmarking exercise in predicting biophysical and drug properties of monoclonal antibodies from amino acid sequences

Authors :
Rushd Khalaf
Neil Mody
Bruno F. Marques
Steven M. Cramer
Christopher D. Afdahl
Richard C. Willson
Jennifer M. Pollard
Eike Zimmermann
Jan Griesbach
Divya Chandra
Charles A. Haynes
Kannan Sankar
Ujwal Patil
Jonathan Coffman
Hasan Mohammad
Joelle Khouri
Minni Aswath
Jasper C. Lin
Lars Pampel
Alexander Hanke
Siddharth Parimal
David J. Roush
Francis Insaidoo
Saeed Izadi
Raquel Orozco
Soundara Soundararajan
Nihal Tugcu
Gisela Ferreira
Tingting Cui
John P. Welsh
Jainik Panchal
Ambrose Williams
Stefan Hepbildikler
Xuan Hong
Julie Robinson
Marco A. Blanco
John E. Schiel
Jared A. Delmar
Benjamin T. Walters
Source :
Biotechnology and Bioengineering. 117:2100-2115
Publication Year :
2020
Publisher :
Wiley, 2020.

Abstract

Biopharmaceutical product and process development do not yet take advantage of predictive computational modeling to nearly the degree seen in industries based on smaller molecules. To assess and advance progress in this area, spirited coopetition (mutually beneficial collaboration between competitors) was successfully used to motivate industrial scientists to develop, share, and compare data and methods which would normally have remained confidential. The first "Highland Games" competition was held in conjunction with the October 2018 Recovery of Biological Products Conference in Ashville, NC, with the goal of benchmarking and assessment of the ability to predict development-related properties of six antibodies from their amino acid sequences alone. Predictions included purification-influencing properties such as isoelectric point and protein A elution pH, and biophysical properties such as stability and viscosity at very high concentrations. Essential contributions were made by a large variety of individuals, including companies which consented to provide antibody amino acid sequences and test materials, volunteers who undertook the preparation and experimental characterization of these materials, and prediction teams who attempted to predict antibody properties from sequence alone. Best practices were identified and shared, and areas in which the community excels at making predictions were identified, as well as areas presenting opportunities for considerable improvement. Predictions of isoelectric point and protein A elution pH were especially good with all-prediction average errors of 0.2 and 1.6 pH unit, respectively, while predictions of some other properties were notably less good. This manuscript presents the events, methods, and results of the competition, and can serve as a tutorial and as a reference for in-house benchmarking by others. Organizations vary in their policies concerning disclosure of methods, but most managements were very cooperative with the Highland Games exercise, and considerable insight into common and best practices is available from the contributed methods. The accumulated data set will serve as a benchmarking tool for further development of in silico prediction tools.

Details

ISSN :
10970290 and 00063592
Volume :
117
Database :
OpenAIRE
Journal :
Biotechnology and Bioengineering
Accession number :
edsair.doi.dedup.....2691f1fe3ec2b1fe3233cd79e9f3b84d
Full Text :
https://doi.org/10.1002/bit.27349