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基于介电特性的细胞计量检测对肿瘤细胞类型的鉴别。

Discrimination of tumor cell type based on cytometric detection of dielectric properties.

机构信息

School of Mechanical Engineering, Jiangsu Key Laboratory for Design and Manufacture of Micro-Nano Biomedical Instruments, Southeast University, Nanjing, 211189, China.

School of Mechanical Engineering, Jiangsu Key Laboratory for Design and Manufacture of Micro-Nano Biomedical Instruments, Southeast University, Nanjing, 211189, China.

出版信息

Talanta. 2022 Aug 15;246:123524. doi: 10.1016/j.talanta.2022.123524. Epub 2022 May 3.

Abstract

In this paper, a microfluidic impedance cytometer (MIC) was employed to analyze the dielectric properties of human white blood cells (WBCs) and four tumor cell lines and realize the label-free identification of cell types. The impedance of cells was detected using an asymmetric serpentine microchannel based MIC under four different frequencies simultaneously. The asymmetric serpentine microchannel achieved the elasto-inertial focusing of cells into a single train, ensuring accurate impedance detection of cells. Various dielectric parameters (cell diameters, impedance amplitude |Z|, impedance phase shift ΦZ, and electric opacities |Z|/|Z|, ΦZ/ΦZ, Re(Z)/Re(Z), and Im(Z)/Im(Z)) were defined and used to analyze the dielectric properties of cells. The obtained dielectric parameters were used to train machine learning classification models for identifying cell types. Using all parameters proposed in this paper (cell diameter, opacity |Z|/|Z|, ΦZ/ΦZ, Re(Z)/Re(Z), and Im(Z)/Im(Z)) to train the classification model, the true positive rate (TPR) for the identification of WBCs, A549, MCF7, H226, and H460 cells were 99.6%, 96.2%, 99.1%, 97.6%, and 97.2%, respectively. Results showed that our MIC provided a promising method for label-free discrimination of circulating tumor cells in multiple primary cancers.

摘要

在本文中,我们使用微流控阻抗细胞仪 (MIC) 分析了人白细胞 (WBC) 和四种肿瘤细胞系的介电特性,并实现了对细胞类型的无标记识别。该 MIC 基于非对称蛇形微通道,在四个不同频率下同时检测细胞的阻抗。非对称蛇形微通道实现了细胞的弹流惯性聚焦成单列车,从而确保了细胞阻抗的准确检测。定义了各种介电参数(细胞直径、阻抗幅度 |Z|、阻抗相移 ΦZ 和电不透明度 |Z|/|Z|、ΦZ/ΦZ、Re(Z)/Re(Z) 和 Im(Z)/Im(Z)),用于分析细胞的介电特性。所得到的介电参数用于训练机器学习分类模型以识别细胞类型。使用本文提出的所有参数(细胞直径、不透明度 |Z|/|Z|、ΦZ/ΦZ、Re(Z)/Re(Z) 和 Im(Z)/Im(Z))训练分类模型,用于识别 WBC、A549、MCF7、H226 和 H460 细胞的真阳性率 (TPR) 分别为 99.6%、96.2%、99.1%、97.6%和 97.2%。结果表明,我们的 MIC 为无标记识别多种原发性癌症中的循环肿瘤细胞提供了一种有前景的方法。

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