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Development of in silico models to predict viscosity and mouse clearance using a comprehensive analytical data set collected on 83 scaffold-consistent monoclonal antibodies

Authors :
Marissa Mock
Alex W. Jacobitz
Christopher James Langmead
Athena Sudom
Daniel Yoo
Sara C. Humphreys
Mai Alday
Larysa Alekseychyk
Nicolas Angell
Vivian Bi
Hannah Catterall
Chen-Chun Chen
Hui-Ting Chou
Kip P. Conner
Kevin D. Cook
Ana R. Correia
Andrew Dykstra
Sudipa Ghimire-Rijal
Kevin Graham
Peter Grandsard
Joon Huh
John O. Hui
Mani Jain
Victoria Jann
Lei Jia
Sheree Johnstone
Neelam Khanal
Carl Kolvenbach
Linda Narhi
Rupa Padaki
Emma M. Pelegri-O’Day
Wei Qi
Vladimir Razinkov
Austin J. Rice
Richard Smith
Christopher Spahr
Jennitte Stevens
Yax Sun
Veena A. Thomas
Sarah van Driesche
Robert Vernon
Victoria Wagner
Kenneth W. Walker
Yangjie Wei
Dwight Winters
Melissa Yang
Iain D. G. Campuzano
Source :
mAbs, Vol 15, Iss 1 (2023)
Publication Year :
2023
Publisher :
Taylor & Francis Group, 2023.

Abstract

ABSTRACTBiologic drug discovery pipelines are designed to deliver protein therapeutics that have exquisite functional potency and selectivity while also manifesting biophysical characteristics suitable for manufacturing, storage, and convenient administration to patients. The ability to use computational methods to predict biophysical properties from protein sequence, potentially in combination with high throughput assays, could decrease timelines and increase the success rates for therapeutic developability engineering by eliminating lengthy and expensive cycles of recombinant protein production and testing. To support development of high-quality predictive models for antibody developability, we designed a sequence-diverse panel of 83 effector functionless IgG1 antibodies displaying a range of biophysical properties, produced and formulated each protein under standard platform conditions, and collected a comprehensive package of analytical data, including in vitro assays and in vivo mouse pharmacokinetics. We used this robust training data set to build machine learning classifier models that can predict complex protein behavior from these data and features derived from predicted and/or experimental structures. Our models predict with 87% accuracy whether viscosity at 150 mg/mL is above or below a threshold of 15 centipoise (cP) and with 75% accuracy whether the area under the plasma drug concentration–time curve (AUC0–672 h) in normal mouse is above or below a threshold of 3.9 × 106 h x ng/mL.

Details

Language :
English
ISSN :
19420862 and 19420870
Volume :
15
Issue :
1
Database :
Directory of Open Access Journals
Journal :
mAbs
Publication Type :
Academic Journal
Accession number :
edsdoj.7e86c82a6684b888888da7d561e8891
Document Type :
article
Full Text :
https://doi.org/10.1080/19420862.2023.2256745