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Data-Analytics Modeling of Electrical Impedance Measurements for Cell Culture Monitoring

机译:用于细胞培养监测的电阻抗测量数据分析模型

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摘要

High-throughput data analysis challenges in laboratory automation and lab-on-a-chip devices’ applications are continuously increasing. In cell culture monitoring, specifically, the electrical cell-substrate impedance sensing technique (ECIS), has been extensively used for a wide variety of applications. One of the main drawbacks of ECIS is the need for implementing complex electrical models to decode the electrical performance of the full system composed by the electrodes, medium, and cells. In this work we present a new approach for the analysis of data and the prediction of a specific biological parameter, the fill-factor of a cell culture, based on a polynomial regression, data-analytic model. The method was successfully applied to a specific ECIS circuit and two different cell cultures, N2A (a mouse neuroblastoma cell line) and myoblasts. The data-analytic modeling approach can be used in the decoding of electrical impedance measurements of different cell lines, provided a representative volume of data from the cell culture growth is available, sorting out the difficulties traditionally found in the implementation of electrical models. This can be of particular importance for the design of control algorithms for cell cultures in tissue engineering protocols, and labs-on-a-chip and wearable devices applications.
机译:实验室自动化和芯片实验室设备应用中的高通量数据分析挑战不断增加。具体地,在细胞培养监测中,电-细胞-基板阻抗感测技术(ECIS)已被广泛用于多种应用。 ECIS的主要缺点之一是需要实现复杂的电气模型来解码由电极,介质和电池组成的整个系统的电气性能。在这项工作中,我们基于多项式回归,数据分析模型,提出了一种用于数据分析和预测特定生物学参数(细胞培养物的填充因子)的新方法。该方法已成功应用于特定的ECIS回路和两种不同的细胞培养物N2A(小鼠神经母细胞瘤细胞系)和成肌细胞。数据分析建模方法可用于对不同细胞系的电阻抗测量值进行解码,条件是可以从细胞培养物中获得代表性的数据量,以解决传统上在电模型实现中发现的困难。这对于组织工程协议中的细胞培养控制算法的设计,以及芯片实验室和可穿戴设备的应用尤其重要。

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