Publication | Open Access
A Contact-Imaging Based Microfluidic Cytometer with Machine-Learning for Single-Frame Super-Resolution Processing
68
Citations
28
References
2014
Year
EngineeringMicroscopySingle-frame Super-resolution ProcessingOrgan-on-a-chipBiomedical EngineeringSuper-resolution MicroscopySuper-resolution ImagingMicrofluidicsBiophysicsNovel Imaging MethodConventional Flow CytometerBiomedical AnalysisMedical Image ComputingCell BiologySuper-resolution ProcessingMicroscope Image ProcessingMicrofabricationBioimage AnalysisBiomedical ImagingLab-on-a-chipMedicineCell Detection
Lensless microfluidic imaging with super-resolution processing has become a promising solution to miniaturize the conventional flow cytometer for point-of-care applications. The previous multi-frame super-resolution processing system can improve resolution but has limited cell flow rate and hence low throughput when capturing multiple subpixel-shifted cell images. This paper introduces a single-frame super-resolution processing with on-line machine-learning for contact images of cells. A corresponding contact-imaging based microfluidic cytometer prototype is demonstrated for cell recognition and counting. Compared with commercial flow cytometer, less than 8% error is observed for absolute number of microbeads; and 0.10 coefficient of variation is observed for cell-ratio of mixed RBC and HepG2 cells in solution.
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