Literature DB >> 28961999

Prediction of delayed retention of antibodies in hydrophobic interaction chromatography from sequence using machine learning.

Tushar Jain1, Todd Boland1, Asparouh Lilov2, Irina Burnina2, Michael Brown2, Yingda Xu2, Maximiliano Vásquez1.   

Abstract

MOTIVATION: The hydrophobicity of a monoclonal antibody is an important biophysical property relevant for its developability into a therapeutic. In addition to characterizing heterogeneity, Hydrophobic Interaction Chromatography (HIC) is an assay that is often used to quantify the hydrophobicity of an antibody to assess downstream risks. Earlier studies have shown that retention times in this assay can be correlated to amino-acid or atomic propensities weighted by the surface areas obtained from protein 3-dimensional structures. The goal of this study is to develop models to enable prediction of delayed HIC retention times directly from sequence.
RESULTS: We utilize the randomforest machine learning approach to estimate the surface exposure of amino-acid side-chains in the variable region directly from the antibody sequence. We obtain mean-absolute errors of 4.6% for the prediction of surface exposure. Using experimental HIC data along with the estimated surface areas, we derive an amino-acid propensity scale that enables prediction of antibodies likely to have delayed retention times in the assay. We achieve a cross-validation Area Under Curve of 0.85 for the Receiver Operating Characteristic curve of our model. The low computational expense and high accuracy of this approach enables real-time assessment of hydrophobic character to enable prioritization of antibodies during the discovery process and rational engineering to reduce hydrophobic liabilities.
AVAILABILITY AND IMPLEMENTATION: Structure data, aligned sequences, experimental data and prediction scores for test-cases, and R scripts used in this work are provided as part of the Supplementary Material. CONTACT: tushar.jain@adimab.com. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
© The Author (2017). Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oup.com

Entities:  

Mesh:

Substances:

Year:  2017        PMID: 28961999     DOI: 10.1093/bioinformatics/btx519

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  18 in total

Review 1.  How repertoire data are changing antibody science.

Authors:  Claire Marks; Charlotte M Deane
Journal:  J Biol Chem       Date:  2020-05-14       Impact factor: 5.157

2.  Physicochemical Rules for Identifying Monoclonal Antibodies with Drug-like Specificity.

Authors:  Yulei Zhang; Lina Wu; Priyanka Gupta; Alec A Desai; Matthew D Smith; Lilia A Rabia; Seth D Ludwig; Peter M Tessier
Journal:  Mol Pharm       Date:  2020-06-11       Impact factor: 4.939

3.  Alterations of the Gut Microbiome in Recurrent Malignant Gliomas Patients Received Bevacizumab and Temozolomide Combination Treatment and Temozolomide Monotherapy.

Authors:  Junwei Zhu; Jun Su
Journal:  Indian J Microbiol       Date:  2021-07-03       Impact factor: 2.461

Review 4.  Current advances in biopharmaceutical informatics: guidelines, impact and challenges in the computational developability assessment of antibody therapeutics.

Authors:  Rahul Khetan; Robin Curtis; Charlotte M Deane; Johannes Thorling Hadsund; Uddipan Kar; Konrad Krawczyk; Daisuke Kuroda; Sarah A Robinson; Pietro Sormanni; Kouhei Tsumoto; Jim Warwicker; Andrew C R Martin
Journal:  MAbs       Date:  2022 Jan-Dec       Impact factor: 5.857

5.  Assessment of Therapeutic Antibody Developability by Combinations of In Vitro and In Silico Methods.

Authors:  Adriana-Michelle Wolf Pérez; Nikolai Lorenzen; Michele Vendruscolo; Pietro Sormanni
Journal:  Methods Mol Biol       Date:  2022

6.  Predicting antibody binders and generating synthetic antibodies using deep learning.

Authors:  Yoong Wearn Lim; Adam S Adler; David S Johnson
Journal:  MAbs       Date:  2022 Jan-Dec       Impact factor: 6.440

7.  SSH: A Tool for Predicting Hydrophobic Interaction of Monoclonal Antibodies Using Sequences.

Authors:  Anthony Mackitz Dzisoo; Juanjuan Kang; Pengcheng Yao; Benjamin Klugah-Brown; Birga Anteneh Mengesha; Jian Huang
Journal:  Biomed Res Int       Date:  2020-06-02       Impact factor: 3.411

8.  Biochemical patterns of antibody polyreactivity revealed through a bioinformatics-based analysis of CDR loops.

Authors:  Christopher T Boughter; Marta T Borowska; Jenna J Guthmiller; Albert Bendelac; Patrick C Wilson; Benoit Roux; Erin J Adams
Journal:  Elife       Date:  2020-11-10       Impact factor: 8.140

9.  Predicting Antibody Developability Profiles Through Early Stage Discovery Screening.

Authors:  Marc Bailly; Carl Mieczkowski; Veronica Juan; Essam Metwally; Daniela Tomazela; Jeanne Baker; Makiko Uchida; Ester Kofman; Fahimeh Raoufi; Soha Motlagh; Yao Yu; Jihea Park; Smita Raghava; John Welsh; Michael Rauscher; Gopalan Raghunathan; Mark Hsieh; Yi-Ling Chen; Hang Thu Nguyen; Nhung Nguyen; Dan Cipriano; Laurence Fayadat-Dilman
Journal:  MAbs       Date:  2020 Jan-Dec       Impact factor: 5.857

10.  Charge and hydrophobicity are key features in sequence-trained machine learning models for predicting the biophysical properties of clinical-stage antibodies.

Authors:  Max Hebditch; Jim Warwicker
Journal:  PeerJ       Date:  2019-12-18       Impact factor: 2.984

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.