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Real‐Time Stain‐Free Classification of Cancer Cells and Blood Cells Using Interferometric Phase Microscopy and Machine Learning

Noga Nissim, Matan Dudaie, Itay Barnea, Natan T. Shaked

2020Cytometry Part A86 citationsDOIOpen Access PDF

Abstract

We present a method for real-time visualization and automatic processing for detection and classification of untreated cancer cells in blood during stain-free imaging flow cytometry using digital holographic microscopy and machine learning in throughput of 15 cells per second. As a preliminary model for circulating tumor cells in the blood, following an initial label-free rapid enrichment stage based on the cell size, we applied our holographic imaging approach, providing the quantitative optical thickness profiles of the cells during flow. We automatically classified primary and metastatic colon cancer cells, where the two types of cancer cells were isolated from the same individual, as well as four types of blood cells. We used low-coherence off-axis interferometric phase microscopy and a microfluidic channel to image cells during flow quantitatively. The acquired images were processed and classified based on their morphology and quantitative phase features during the cell flow. We achieved high accuracy of 92.56% for distinguishing between the cells, enabling further automatic enrichment and cancer-cell grading from blood. © 2020 International Society for Advancement of Cytometry.

Topics & Concepts

StainCancer cellCirculating tumor cellDigital holographic microscopyFlow cytometryMicroscopyPathologyPhase imagingBlood flowBiomedical engineeringCancerComputer scienceArtificial intelligenceStainingMedicineBiologyMolecular biologyInternal medicineMetastasisDigital Holography and MicroscopyCell Image Analysis TechniquesMicrofluidic and Bio-sensing Technologies
Real‐Time Stain‐Free Classification of Cancer Cells and Blood Cells Using Interferometric Phase Microscopy and Machine Learning | Litcius