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A weakly supervised deep learning approach for label-free imaging flow-cytometry-based blood diagnostics

Corin F. Otesteanu, Martina Ugrinic, Gregor Holzner, Yun‐Tsan Chang, Christina Fassnacht, Emmanuella Guenova, Stavros Stavrakis, Andrew J. deMello, Manfred Claassen

2021Cell Reports Methods29 citationsDOIOpen Access PDF

Abstract

The application of machine learning approaches to imaging flow cytometry (IFC) data has the potential to transform the diagnosis of hematological diseases. However, the need for manually labeled single-cell images for machine learning model training has severely limited its clinical application. To address this, we present iCellCnn, a weakly supervised deep learning approach for label-free IFC-based blood diagnostics. We demonstrate the capability of iCellCnn to achieve diagnosis of Sézary syndrome (SS) from patient samples on the basis of bright-field IFC images of T cells obtained after fluorescence-activated cell sorting of human peripheral blood mononuclear cell specimens. With a sample size of four healthy donors and five SS patients, iCellCnn achieved a 100% classification accuracy. As iCellCnn is not restricted to the diagnosis of SS, we expect such weakly supervised approaches to tap the diagnostic potential of IFC by providing automatic data-driven diagnosis of diseases with so-far unknown morphological manifestations.

Topics & Concepts

Artificial intelligenceFlow cytometryComputer scienceDeep learningPattern recognition (psychology)CytometrySortingMachine learningCell sortingSupervised learningMedicineImmunologyArtificial neural networkProgramming languageCutaneous lymphoproliferative disorders researchMycobacterium research and diagnosisSingle-cell and spatial transcriptomics
A weakly supervised deep learning approach for label-free imaging flow-cytometry-based blood diagnostics | Litcius