School of Integrated Circuits, Shandong University, Jinan, China.
Institute of Biomedical Engineering, School of Control Science and Engineering, Shandong University, Jinan, China.
Cytometry A. 2024 Sep;105(9):666-676. doi: 10.1002/cyto.a.24890. Epub 2024 Aug 5.
Imaging flow cytometry, which combines the advantages of flow cytometry and microscopy, has emerged as a powerful tool for cell analysis in various biomedical fields such as cancer detection. In this study, we develop multiplex imaging flow cytometry (mIFC) by employing a spatial wavelength division multiplexing technique. Our mIFC can simultaneously obtain brightfield and multi-color fluorescence images of individual cells in flow, which are excited by a metal halide lamp and measured by a single detector. Statistical analysis results of multiplex imaging experiments with resolution test lens, magnification test lens, and fluorescent microspheres validate the operation of the mIFC with good imaging channel consistency and micron-scale differentiation capabilities. A deep learning method is designed for multiplex image processing that consists of three deep learning networks (U-net, very deep super resolution, and visual geometry group 19). It is demonstrated that the cluster of differentiation 24 (CD24) imaging channel is more sensitive than the brightfield, nucleus, or cancer antigen 125 (CA125) imaging channel in classifying the three types of ovarian cell lines (IOSE80 normal cell, A2780, and OVCAR3 cancer cells). An average accuracy rate of 97.1% is achieved for the classification of these three types of cells by deep learning analysis when all four imaging channels are considered. Our single-detector mIFC is promising for the development of future imaging flow cytometers and for the automatic single-cell analysis with deep learning in various biomedical fields.
成像流式细胞术结合了流式细胞术和显微镜的优点,已成为癌症检测等各种生物医学领域细胞分析的有力工具。在这项研究中,我们采用空间波长分复用技术开发了多路成像流式细胞术(mIFC)。我们的 mIFC 可以在流动中同时获得单个细胞的明场和多色荧光图像,这些图像由金属卤化物灯激发,并由单个探测器测量。通过分辨率测试透镜、放大测试透镜和荧光微球进行的多路成像实验的统计分析结果验证了 mIFC 的操作具有良好的成像通道一致性和微米级区分能力。设计了一种用于多路图像处理的深度学习方法,该方法由三个深度学习网络(U-net、深度超分辨率和视觉几何组 19)组成。结果表明,在区分三种卵巢细胞系(IOSE80 正常细胞、A2780 和 OVCAR3 癌细胞)时,CD24 成像通道比明场、细胞核或 CA125 成像通道更敏感。当考虑所有四个成像通道时,深度学习分析对这三种细胞的分类平均准确率达到 97.1%。我们的单探测器 mIFC 有望用于未来成像流式细胞仪的开发,以及各种生物医学领域中基于深度学习的自动单细胞分析。