Back to Search Start Over

Machine Learning Enables Accurate Prediction of Asparagine Deamidation Probability and Rate

Authors :
Jared A. Delmar
Jihong Wang
Seo Woo Choi
Jason A. Martins
John P. Mikhail
Source :
Molecular Therapy: Methods & Clinical Development, Vol 15, Iss , Pp 264-274 (2019)
Publication Year :
2019
Publisher :
Elsevier, 2019.

Abstract

The spontaneous conversion of asparagine residues to aspartic acid or iso-aspartic acid, via deamidation, is a major pathway of protein degradation and is often seriously disruptive to biological systems. Deamidation has been shown to negatively affect both in vitro stability and in vivo biological function of diverse classes of proteins. During protein therapeutics development, deamidation liabilities that are overlooked necessitate expensive and time-consuming remediation strategies, sometimes leading to termination of the project. In this paper, we apply machine learning to a large (n = 776) liquid chromatography-tandem mass spectrometry (LC-MS/MS) dataset of monoclonal antibody peptides to create computational models for the post-translational modification asparagine deamidation, using the random decision forest method. We show that our categorical model predicts antibody deamidation with nearly 5% increased accuracy and 0.2 MCC over the best currently available models. Surprisingly, our model also paces or outperforms advanced and conventional models on an independent non-antibody dataset. In addition to deamidation probability, we are able to accurately predict deamidation rate (R2 = 0.963 and Q2 = 0.822), a capability with no peer in current models. This method should enable significant improvement in protein candidate selection, especially in biopharmaceutical development, and can be applied with similar accuracy to enzymes, monoclonal antibodies, next-generation formats, vaccine component antigens, and gene therapy vectors such as adeno-associated virus. Keywords: deamidation, machine learning, prediction, developability, stability, drug development, therapeutic protein, antibody, mab, IgG

Details

Language :
English
ISSN :
23290501
Volume :
15
Issue :
264-274
Database :
Directory of Open Access Journals
Journal :
Molecular Therapy: Methods & Clinical Development
Publication Type :
Academic Journal
Accession number :
edsdoj.f4b8ebb8822a443da291d52a10b7495d
Document Type :
article
Full Text :
https://doi.org/10.1016/j.omtm.2019.09.008