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A pillar-based microfluidic chip for T-cells and B-cells isolation and detection with machine learning algorithm

机译:基于柱的基于T细胞和B细胞的微流控芯片的机器学习算法分离和检测

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Absolute counting of total leukocytes and specific subset (such as T-cells and B-cells) within small amounts of whole blood is difficult due to the lack of techniques that enables separation of leukocytes from limited volume of whole blood. In this study, a microfluidic chip equipped with a size controlled micropillar array for highly separation of T-cells and B-cells from sub-microliter of whole blood was studied. Based on the difference in size and deformability, leukocytes were separated from other blood cells by micropillar arrays. However, the variability of cells in size, morphology and color intensity along with the spectrum crosstalk between fluorescence dyes make cell detection among pillars extremely difficult. In this paper, an support vector machine supervised machine learning classifier based on both Histogram of Oriented Gradients (HOG) and color distribution features was proposed to distinguish T-cells and B-cells fast and robustly. HOG features were utilized to detect cells from background and noise; color distribution features were employed to alleviate the effect of fluorescence spectrum crosstalk. Experiment showed we achieved average detection accuracy of 94% for detecting T-cells and B-cells from the background. Furthermore, we also got 96% accuracy with cross validation to detect T-cells from B-cells. Both theoretical analysis and experiments demonstrated the proposed method and system has high performance in T-cells and B-cells counting. And our microfluidic cell counting system has great potential as a tool for point-of-care leukocyte analysis system.
机译:由于缺乏使白细胞与有限体积的全血分离的技术,很难对少量全血中的总白细胞和特定子集(例如T细胞和B细胞)进行绝对计数。在这项研究中,研究了一种微流控芯片,该芯片配备了尺寸受控的微柱阵列,可从亚微升全血中高度分离T细胞和B细胞。根据大小和可变形性的差异,通过微柱阵列将白细胞与其他血细胞分离。然而,细胞大小,形态和颜色强度的可变性以及荧光染料之间的光谱串扰使得在支柱之间检测细胞极为困难。本文提出了一种基于定向直方图(HOG)和颜色分布特征的支持向量机监督的机器学习分类器,以快速,鲁棒地区分T细胞和B细胞。 HOG功能用于检测背景和噪声中的细胞;使用颜色分布特征来减轻荧光光谱串扰的影响。实验表明,从背景中检测T细胞和B细胞的平均检测准确度达到94%。此外,通过交叉验证从B细胞中检测T细胞,我们还获得了96%的准确性。理论分析和实验均表明,该方法和系统在T细胞和B细胞计数方面具有较高的性能。而且我们的微流体细胞计数系统作为即时白细胞分析系统的工具具有巨大的潜力。

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