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Classification of biosensor time series using dynamic time warping: applications in screening cancer cells with characteristic biomarkers

机译:使用动态时间规整对生物传感器时间序列进行分类:在筛选具有特征性生物标志物的癌细胞中的应用

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摘要

The development of biosensors that produce time series data will facilitate improvements in biomedical diagnostics and in personalized medicine. The time series produced by these devices often contains characteristic features arising from biochemical interactions between the sample and the sensor. To use such characteristic features for determining sample class, similarity-based classifiers can be utilized. However, the construction of such classifiers is complicated by the variability in the time domains of such series that renders the traditional distance metrics such as Euclidean distance ineffective in distinguishing between biological variance and time domain variance. The dynamic time warping (DTW) algorithm is a sequence alignment algorithm that can be used to align two or more series to facilitate quantifying similarity. In this article, we evaluated the performance of DTW distance-based similarity classifiers for classifying time series that mimics electrical signals produced by nanotube biosensors. Simulation studies demonstrated the positive performance of such classifiers in discriminating between time series containing characteristic features that are obscured by noise in the intensity and time domains. We then applied a DTW distance-based k-nearest neighbors classifier to distinguish the presence/absence of mesenchymal biomarker in cancer cells in buffy coats in a blinded test. Using a train–test approach, we find that the classifier had high sensitivity (90.9%) and specificity (81.8%) in differentiating between EpCAM-positive MCF7 cells spiked in buffy coats and those in plain buffy coats.
机译:产生时间序列数据的生物传感器的发展将促进生物医学诊断和个性化医学的改进。这些设备产生的时间序列通常包含由样品和传感器之间的生化相互作用引起的特征。为了使用这种特征来确定样本类别,可以利用基于相似度的分类器。然而,此类分类器的构造由于此类序列的时域中的可变性而变得复杂,这使得诸如欧几里得距离的传统距离度量无法有效地区分生物学方差和时域方差。动态时间规整(DTW)算法是一种序列比对算法,可用于比对两个或多个序列以利于量化相似性。在本文中,我们评估了基于DTW距离的相似度分类器对模拟纳米管生物传感器产生的电信号的时间序列进行分类的性能。仿真研究证明了此类分类器在区分包含特征特征的时间序列方面的积极表现,这些特征特征被强度和时域中的噪声所遮盖。然后,我们在盲测中应用了DTW基于距离的K最近邻居分类器,以区分在血沉棕黄层的癌细胞中是否存在间充质生物标记。使用火车测试方法,我们发现该分类器在区分血沉棕黄层和普通血沉棕黄层的EpCAM阳性MCF7细胞方面具有很高的灵敏度(90.9%)和特异性(81.8%)。

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