A framework for analytical characterization of monoclonal antibodies based on reactivity profiles in different tissues

Motivation: Monoclonal antibodies (mAbs) are among the most powerful and important tools in biology and medicine. MAb development is of great significance to many research and clinical applications. Therefore, objective mAb classification is essential for categorizing and comparing mAb panels based...

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Veröffentlicht in:Bioinformatics 2011-10, Vol.27 (19), p.2746-2753
Hauptverfasser: Rossin, Elizabeth, Lin, Tsung-I, Ho, Hsiu J., Mentzer, Steven J., Pyne, Saumyadipta
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container_end_page 2753
container_issue 19
container_start_page 2746
container_title Bioinformatics
container_volume 27
creator Rossin, Elizabeth
Lin, Tsung-I
Ho, Hsiu J.
Mentzer, Steven J.
Pyne, Saumyadipta
description Motivation: Monoclonal antibodies (mAbs) are among the most powerful and important tools in biology and medicine. MAb development is of great significance to many research and clinical applications. Therefore, objective mAb classification is essential for categorizing and comparing mAb panels based on their reactivity patterns in different cellular species. However, typical flow cytometric mAb profiles present unique modeling challenges with their non-Gaussian features and intersample variations. It makes accurate mAb classification difficult to do with the currently used kernel-based or hierarchical clustering techniques. Results: To address these challenges, in the present study we developed a formal two-step framework called mAbprofiler for systematic, parametric characterization of mAb profiles. Further, we measured the reactivity of hundreds of new antibodies in diverse tissues using flow cytometry, which we successfully classified using mAbprofiler. First, mAbprofiler fits a mAb's flow cytometric histogram with a finite mixture model of skew t distributions that is robust against non-Gaussian features, and constructs a precise, smooth and mathematically rigorous profile. Then it performs novel curve clustering of the fitted mAb profiles using a skew t mixture of non-linear regression model that can handle intersample variation. Thus, mAbprofiler provides a new framework for identifying robust mAb classes, all well defined by distinct parametric templates, which can be used for classifying new mAb samples. We validated our classification results both computationally and empirically using mAb profiles of known classification. Availability and Implementation: A demonstration code in R is available at the journal website. The R code implementing the full framework is available from the author website - http://amath.nchu.edu.tw/www/teacher/tilin/software Contact: saumyadipta_pyne@dfci.harvard.edu Supplementary Information: Supplementary data are available at Bioinformatics online.
doi_str_mv 10.1093/bioinformatics/btr468
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source Oxford Journals Open Access Collection
subjects Algorithms
Animals
Antibodies, Monoclonal - classification
Antibodies, Monoclonal - immunology
Antigen-Antibody Reactions - immunology
Bioinformatics
Biological and medical sciences
Cells - immunology
Classification
Cluster Analysis
Clustering
Flow Cytometry
Fundamental and applied biological sciences. Psychology
General aspects
Mathematical analysis
Mathematical models
Mathematics in biology. Statistical analysis. Models. Metrology. Data processing in biology (general aspects)
Mice
Models, Biological
Monoclonal antibodies
Non-Gaussian
Original Papers
Sheep
Software
Websites
title A framework for analytical characterization of monoclonal antibodies based on reactivity profiles in different tissues
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