生物分析
单克隆抗体
计算生物学
化学
体内
药物开发
药代动力学
分析物
加药
药品
药理学
抗体
计算机科学
纳米技术
组合化学
色谱法
生物
免疫学
生物技术
材料科学
作者
Jean W. Lee,Marian Kelley,Lindsay E. King,Jihong Yang,Hossein Salimi-Moosavi,Meina Tang,Jianfeng Lü,John Kamerud,Ago Ahene,Heather Myler,C. Milford Rogers
出处
期刊:Aaps Journal
[Springer Science+Business Media]
日期:2011-01-14
卷期号:13 (1): 99-110
被引量:265
标识
DOI:10.1208/s12248-011-9251-3
摘要
The predominant driver of bioanalysis in supporting drug development is the intended use of the data. Ligand-binding assays (LBA) are widely used for the analysis of protein biotherapeutics and target ligands (L) to support pharmacokinetics/pharmacodynamics (PK/PD) and safety assessments. For monoclonal antibody drugs (mAb), in particular, which non-covalently bind to L, multiple forms of mAb and L can exist in vivo, including free mAb, free L, and mono- and/or bivalent complexes of mAb and L. Given the complexity of the dynamic binding equilibrium occurring in the body after dosing and multiple sources of perturbation of the equilibrium during bioanalysis, it is clear that ex vivo quantification of the forms of interest (free, bound, or total mAb and L) may differ from the actual ones in vivo. LBA reagents and assay formats can be designed in principle to measure the total or free forms of mAb and L. However, confirmation of the forms being measured under the specified conditions can be technically challenging. The assay forms and issues must be clearly communicated and understood appropriately by all stakeholders as the program proceeds through the development process. This paper focuses on monoclonal antibody biotherapeutics and their circulatory L that are either secreted as soluble forms or shed from membrane receptors. It presents an investigation into the theoretical and practical considerations for total/free analyte assessment to increase awareness in the scientific community and offer bioanalytical approaches to provide appropriate PK/PD information required at specific phases of drug development.
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