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使用时间序列特征对受污染的细胞培养物进行分类。

Classifying contaminated cell cultures using time series features.

作者信息

Tupper Laura L, Keese Charles R, Matteson David S

机构信息

Mount Holyoke College, South Hadley, MA, USA.

Applied BioPhysics Inc., Troy, NY, USA.

出版信息

J Appl Stat. 2023 Aug 22;51(6):1210-1226. doi: 10.1080/02664763.2023.2248413. eCollection 2024.

Abstract

We examine the use of time series data, derived from Electric Cell-substrate Impedance Sensing (ECIS), to differentiate between standard mammalian cell cultures and those infected with a mycoplasma organism. With the goal of easy visualization and interpretation, we perform low-dimensional feature-based classification, extracting application-relevant features from the ECIS time courses. We can achieve very high classification accuracy using only two features, which depend on the cell line under examination. Initial results also show the existence of experimental variation between plates and suggest types of features that may prove more robust to such variation. Our paper is the first to perform a broad examination of ECIS time course features in the context of detecting contamination; to combine different types of features to achieve classification accuracy while preserving interpretability; and to describe and suggest possibilities for ameliorating plate-to-plate variation.

摘要

我们研究了源自细胞-基质阻抗传感(ECIS)的时间序列数据,以区分标准哺乳动物细胞培养物和感染支原体的细胞培养物。为了便于可视化和解释,我们进行了基于低维特征的分类,从ECIS时间进程中提取与应用相关的特征。仅使用两个取决于所检测细胞系的特征,我们就能实现非常高的分类准确率。初步结果还表明不同平板之间存在实验差异,并提出了可能对这种差异更具鲁棒性的特征类型。我们的论文首次在检测污染的背景下对ECIS时间进程特征进行了广泛研究;首次将不同类型的特征结合起来以实现分类准确率同时保持可解释性;并首次描述并提出了改善平板间差异的可能性。

相似文献

1
Classifying contaminated cell cultures using time series features.使用时间序列特征对受污染的细胞培养物进行分类。
J Appl Stat. 2023 Aug 22;51(6):1210-1226. doi: 10.1080/02664763.2023.2248413. eCollection 2024.

本文引用的文献

9
Electrical impedance measurements predict cellular transformation.
Cell Biol Int. 2009 Mar;33(3):429-33. doi: 10.1016/j.cellbi.2009.01.013. Epub 2009 Jan 27.

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