计算机科学
单克隆抗体
计算生物学
工作流程
高通量筛选
过程(计算)
药物发现
生化工程
组合化学
化学
抗体
生物
数据库
生物化学
免疫学
工程类
操作系统
作者
Marc Bailly,Carl Mieczkowski,Veronica Juan,Essam Metwally,Daniela M. Tomazela,Jeanne Baker,Makiko Uchida,Ester Kofman,Fahimeh Raoufi,Soha Motlagh,Yao Yu,Jihea Park,Smita Raghava,John P. Welsh,Michael Rauscher,G. Raghunathan,Mark Hsieh,Yi‐Ling Chen,Hang Thu Nguyen,Nhung Thi Nguyen
出处
期刊:mAbs
[Informa]
日期:2020-01-01
卷期号:12 (1): 1743053-1743053
被引量:197
标识
DOI:10.1080/19420862.2020.1743053
摘要
Monoclonal antibodies play an increasingly important role for the development of new drugs across multiple therapy areas. The term 'developability' encompasses the feasibility of molecules to successfully progress from discovery to development via evaluation of their physicochemical properties. These properties include the tendency for self-interaction and aggregation, thermal stability, colloidal stability, and optimization of their properties through sequence engineering. Selection of the best antibody molecule based on biological function, efficacy, safety, and developability allows for a streamlined and successful CMC phase. An efficient and practical high-throughput developability workflow (100 s-1,000 s of molecules) implemented during early antibody generation and screening is crucial to select the best lead candidates. This involves careful assessment of critical developability parameters, combined with binding affinity and biological properties evaluation using small amounts of purified material (<1 mg), as well as an efficient data management and database system. Herein, a panel of 152 various human or humanized monoclonal antibodies was analyzed in biophysical property assays. Correlations between assays for different sets of properties were established. We demonstrated in two case studies that physicochemical properties and key assay endpoints correlate with key downstream process parameters. The workflow allows the elimination of antibodies with suboptimal properties and a rank ordering of molecules for further evaluation early in the candidate selection process. This enables any further engineering for problematic sequence attributes without affecting program timelines.
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