Multibatch Cytometry Data Integration for Optimal Immunophenotyping
Author(s) -
Masato Ogishi,
Rui Yang,
Conor Gruber,
Peng Zhang,
Simon J. Pelham,
András N. Spaan,
Jérémie Rosain,
Marwa Chbihi,
Ji Eun Han,
V. Koneti Rao,
Leena Kainulainen,
Jacinta Bustamante,
Bertrand Boisson,
Dusan Bogunovic,
Stéphanie BoissonDupuis,
JeanLaurent Casanova
Publication year - 2020
Publication title -
the journal of immunology
Language(s) - Uncategorized
Resource type - Journals
eISSN - 1550-6606
pISSN - 0022-1767
DOI - 10.4049/jimmunol.2000854
Subject(s) - immunophenotyping , computer science , cytometry , flow cytometry , computational biology , biology , immunology
High-dimensional cytometry is a powerful technique for deciphering the immunopathological factors common to multiple individuals. However, rational comparisons of multiple batches of experiments performed on different occasions or at different sites are challenging because of batch effects. In this study, we describe the integration of multibatch cytometry datasets (iMUBAC), a flexible, scalable, and robust computational framework for unsupervised cell-type identification across multiple batches of high-dimensional cytometry datasets, even without technical replicates. After overlaying cells from multiple healthy controls across batches, iMUBAC learns batch-specific cell-type classification boundaries and identifies aberrant immunophenotypes in patient samples from multiple batches in a unified manner. We illustrate unbiased and streamlined immunophenotyping using both public and in-house mass cytometry and spectral flow cytometry datasets. The method is available as the R package iMUBAC (https://github.com/casanova-lab/iMUBAC).
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