微流控芯片
计算机科学
流式细胞术
显微镜
图像处理
微流控
炸薯条
显微镜
计算机视觉
荧光显微镜
流量(数学)
实验室晶片
生物医学工程
图像(数学)
材料科学
纳米技术
生物
光学
分子生物学
医学
荧光
物理
机械
电信
作者
Young Jin Heo,Donghyeon Lee,Jun-Su Kang,Keondo Lee,Wan Kyun Chung
标识
DOI:10.1038/s41598-017-11534-0
摘要
Imaging flow cytometry (IFC) is an emerging technology that acquires single-cell images at high-throughput for analysis of a cell population. Rich information that comes from high sensitivity and spatial resolution of a single-cell microscopic image is beneficial for single-cell analysis in various biological applications. In this paper, we present a fast image-processing pipeline (R-MOD: Real-time Moving Object Detector) based on deep learning for high-throughput microscopy-based label-free IFC in a microfluidic chip. The R-MOD pipeline acquires all single-cell images of cells in flow, and identifies the acquired images as a real-time process with minimum hardware that consists of a microscope and a high-speed camera. Experiments show that R-MOD has the fast and reliable accuracy (500 fps and 93.3% mAP), and is expected to be used as a powerful tool for biomedical and clinical applications.
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