Literature DB >> 28613103

Quantification of IgG monoclonal antibody clearance in tissues.

Miro J Eigenmann1, Ludivine Fronton1, Hans Peter Grimm1, Michael B Otteneder1, Ben-Fillippo Krippendorff1.   

Abstract

Monoclonal antibodies are an important therapeutic entity, and knowledge of antibody pharmacokinetics has steadily increased over the years. Despite this effort, little is known about the extent of IgG antibody degradation in different tissues of the body. While studies have been published identifying sites of degradation with the use of residualizing and non-residualizing radiolabels, quantitative tissue clearances have not yet been derived. Here, we show that in physiologically-based pharmacokinetic (PBPK) models we can combine mouse data of Indium-111 and Iodine-125 labeled antibodies with prior physiologic knowledge to determine tissue-specific intrinsic clearances. Unspecific total tissue clearance (mL/day) in the mouse was estimated to be: liver = 4.75; brain = 0.02; gut = 0.40; heart = 0.07; kidney = 0.97; lung = 0.20; muscle = 3.02; skin = 3.89; spleen = 0.45; rest of body = 2.16. The highest catabolic activity (per g tissue) was in spleen for an FcRn wild-type antibody, but shifts to the liver for an antibody with reduced FcRn affinity. In the model developed, this shift can be explained by the liver having a greater FcRn-mediated protection capacity than the spleen. The quantification of tissue intrinsic clearances and FcRn salvage capacity increases our understanding of quantitative processes that drive the therapeutic responses of antibodies. This knowledge is critical, for instance to estimate the non-specific cellular uptake and degradation of antibodies used for targeted delivery of payloads.

Entities:  

Keywords:  FcRn; IgG; Intrinsic tissue clearance; Monoclonal antibodies; PBPK model; biodistribution; clearance; label retention; pharmacokinetics

Year:  2017        PMID: 28613103      PMCID: PMC5540074          DOI: 10.1080/19420862.2017.1337619

Source DB:  PubMed          Journal:  MAbs        ISSN: 1942-0862            Impact factor:   5.857


  36 in total

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5.  Abnormally short serum half-lives of IgG in beta 2-microglobulin-deficient mice.

Authors:  V Ghetie; J G Hubbard; J K Kim; M F Tsen; Y Lee; E S Ward
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Authors:  O W Press; D Shan; J Howell-Clark; J Eary; F R Appelbaum; D Matthews; D J King; A M Haines; P Hamann; L Hinman; D Shochat; I D Bernstein
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Authors:  Victor Yip; Enzo Palma; Devin B Tesar; Eduardo E Mundo; Daniela Bumbaca; Elizabeth K Torres; Noe A Reyes; Ben Q Shen; Paul J Fielder; Saileta Prabhu; Leslie A Khawli; C Andrew Boswell
Journal:  MAbs       Date:  2014-02-26       Impact factor: 5.857

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2.  Interstitial IgG antibody pharmacokinetics assessed by combined in vivo- and physiologically-based pharmacokinetic modelling approaches.

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4.  Quantification of Neonatal Fc Receptor and Beta-2 Microglobulin in Human Liver Tissues by Ultraperformance Liquid Chromatography-Multiple Reaction Monitoring-based Targeted Quantitative Proteomics for Applications in Biotherapeutic Physiologically-based Pharmacokinetic Models.

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5.  Computer-assembled cross-species/cross-modalities two-pore physiologically based pharmacokinetic model for biologics in mice and rats.

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Review 7.  Physiologically-based modeling of monoclonal antibody pharmacokinetics in drug discovery and development.

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9.  Model-Based Assessment of the Contribution of Monocytes and Macrophages to the Pharmacokinetics of Monoclonal Antibodies.

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10.  Whole-Body Pharmacokinetics of Antibody in Mice Determined using Enzyme-Linked Immunosorbent Assay and Derivation of Tissue Interstitial Concentrations.

Authors:  Hsuan-Ping Chang; Se Jin Kim; Dhaval K Shah
Journal:  J Pharm Sci       Date:  2020-06-02       Impact factor: 3.534

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