Coarsened mixtures of hierarchical skew normal kernels for flow cytometry analyses
Shai Gorsky, Cliburn Chan, Li Ma

TL;DR
This paper presents a Bayesian nonparametric hierarchical model with skew normal kernels and a coarsening strategy for effective calibration and classification of multi-sample flow cytometry data, addressing batch effects and biological variability.
Contribution
It introduces a novel unified Bayesian approach combining calibration and cell classification using nonparametric mixtures, hierarchical skew normal kernels, and coarsening for robustness.
Findings
Effective in simulated data for cell classification and calibration
Successfully applied to real multi-sample FCM datasets
Improves robustness to model deviations like heavy tails
Abstract
Flow cytometry (FCM) is the standard multi-parameter assay for measuring single cell phenotype and functionality. It is commonly used for quantifying the relative frequencies of cell subsets in blood and disaggregated tissues. A typical analysis of FCM data involves cell classification---that is, the identification of cell subgroups in the sample---and comparisons of the cell subgroups across samples or conditions. While modern experiments often necessitate the collection and processing of samples in multiple batches, analysis of FCM data across batches is challenging because differences across samples may occur due to either true biological variation or technical reasons such as antibody lot effects or instrument optics across batches. Thus a critical step in comparative analyses of multi-sample FCM data---yet missing in existing automated methods for analyzing such data---is…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Bayesian Methods and Mixture Models · Gene expression and cancer classification
