Determining clinically relevant features in cytometry data using persistent homology
Soham Mukherjee, Darren Wethington, Tamal K. Dey, Jayajit Das

TL;DR
This paper introduces a topological data analysis method using persistent homology to identify subtle structural differences in cytometry data, revealing novel biological insights in COVID-19 patient T cells.
Contribution
The study applies persistent homology to cytometry data, uncovering structural differences linked to COVID-19 that are not detectable by traditional gating methods.
Findings
Identified significant downregulation of T-bet and Eomes in COVID-19 patients.
Detected topological features distinguishing COVID-19 patients from healthy controls.
Demonstrated the method's applicability to various cytometry datasets.
Abstract
Cytometry experiments yield high-dimensional point cloud data that is difficult to interpret manually. Boolean gating techniques coupled with comparisons of relative abundances of cellular subsets is the current standard for cytometry data analysis. However, this approach is unable to capture more subtle topological features hidden in data, especially if those features are further masked by data transforms or significant batch effects or donor-to-donor variations in clinical data. Analysis of publicly available cytometry data describing non-na\"ive CD8+ T cells in COVID-19 patients and healthy controls shows that systematic structural differences exist between single cell protein expressions in COVID-19 patients and healthy controls. We identify proteins of interest by a decision-tree based classifier, sample points randomly and compute persistence diagrams from these sampled points.…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Immune responses and vaccinations · Topological and Geometric Data Analysis
