Author:
Coppard Valerie,Szep Grisha,Georgieva Zoya,Howlett Sarah K.,Jarvis Lorna B.,Rainbow Daniel B.,Suchanek Ondrej,Needham Edward J.,Mousa Hani S.,Menon David K.,Feyertag Felix,Mahbubani Krishnaa T.,Saeb-Parsy Kourosh,Jones Joanne L.
Abstract
As the dimensionality, throughput and complexity of cytometry data increases, so does the demand for user-friendly, interactive analysis tools that leverage high-performance machine learning frameworks. Here we introduce FlowAtlas: an interactive web application that enables dimensionality reduction of cytometry data without down-sampling and that is compatible with datasets stained with non-identical panels. FlowAtlas bridges the user-friendly environment of FlowJo and computational tools in Julia developed by the scientific machine learning community, eliminating the need for coding and bioinformatics expertise. New population discovery and detection of rare populations in FlowAtlas is intuitive and rapid. We demonstrate the capabilities of FlowAtlas using a human multi-tissue, multi-donor immune cell dataset, highlighting key immunological findings. FlowAtlas is available at https://github.com/gszep/FlowAtlas.jl.git.