TY - JOUR A1 - Hoang, Yen A1 - Gryzik, Stefanie A1 - Hoppe, Ines A1 - Rybak, Alexander A1 - Schädlich, Martin A1 - Kadner, Isabelle A1 - Walther, Dirk A1 - Vera, Julio A1 - Radbruch, Andreas A1 - Groth, Detlef A1 - Baumgart, Sabine A1 - Baumgrass, Ria T1 - PRI: Re-analysis of a public mass cytometry dataset reveals patterns of effective tumor treatments T2 - Frontiers in immunology N2 - Recently, mass cytometry has enabled quantification of up to 50 parameters for millions of cells per sample. It remains a challenge to analyze such high-dimensional data to exploit the richness of the inherent information, even though many valuable new analysis tools have already been developed. We propose a novel algorithm "pattern recognition of immune cells (PRI)" to tackle these high-dimensional protein combinations in the data. PRI is a tool for the analysis and visualization of cytometry data based on a three or more-parametric binning approach, feature engineering of bin properties of multivariate cell data, and a pseudo-multiparametric visualization. Using a publicly available mass cytometry dataset, we proved that reproducible feature engineering and intuitive understanding of the generated bin plots are helpful hallmarks for re-analysis with PRI. In the CD4(+)T cell population analyzed, PRI revealed two bin-plot patterns (CD90/CD44/CD86 and CD90/CD44/CD27) and 20 bin plot features for threshold-independent classification of mice concerning ineffective and effective tumor treatment. In addition, PRI mapped cell subsets regarding co-expression of the proliferation marker Ki67 with two major transcription factors and further delineated a specific Th1 cell subset. All these results demonstrate the added insights that can be obtained using the non-cluster-based tool PRI for re-analyses of high-dimensional cytometric data. KW - multi-parametric analysis KW - re-analysis KW - combinatorial protein KW - expression KW - high-dimensional cytometry data KW - mass cytometry data KW - pattern perception Y1 - 2022 UR - https://publishup.uni-potsdam.de/frontdoor/index/index/docId/64232 SN - 1664-3224 VL - 13 PB - Frontiers Media CY - Lausanne ER -