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Toward point-of-care assessment of patient response: a portable tool for rapidly assessing cancer drug efficacy using multifrequency impedance cytometry and supervised machine learning

机译:迈向患者响应的护理点评估:使用多频性阻抗细胞术和监督机器学习快速评估癌症药物疗效的便携式工具

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We present a novel method to rapidly assess drug efficacy in targeted cancer therapy, where antineoplastic agents are conjugated to antibodies targeting surface markers on tumor cells. We have fabricated and characterized a device capable of rapidly assessing tumor cell sensitivity to drugs using multifrequency impedance spectroscopy in combination with supervised machine learning for enhanced classification accuracy. Currently commercially available devices for the automated analysis of cell viability are based on staining, which fundamentally limits the subsequent characterization of these cells as well as downstream molecular analysis. Our approach requires as little as 20L of volume and avoids staining allowing for further downstream molecular analysis. To the best of our knowledge, this manuscript presents the first comprehensive attempt to using high-dimensional data and supervised machine learning, particularly phase change spectra obtained from multi-frequency impedance cytometry as features for the support vector machine classifier, to assess viability of cells without staining or labelling.
机译:我们提出了一种快速评估靶向癌症治疗中药物功效的新方法,其中抗肿瘤剂与靶标志物上的抗体缀合物靶标志物。我们已经制造并表征了一种能够快速评估肿瘤细胞对药物的敏感性,使用多频阻抗光谱与监督机器学习结合以提高分类准确性。目前可商购的用于自动分析细胞活力的装置基于染色,从而乎地限制了这些细胞的后续表征以及下游分子分析。我们的方法需要几乎没有20卷的体积,避免染色允许进一步下游分子分析。据我们所知,本手稿介绍了使用高维数据和监督机器学习的第一综合尝试,特别是从多频阻抗细胞术中获得的相变谱作为支持向量机分类器的特征,以评估细胞的存活率没有染色或标记。

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