非均匀采样阶跃响应阻抗谱重建算法。

Q3 Biochemistry, Genetics and Molecular Biology
Y Zaikou, C Gansauge, D Echtermeyer, U Pliquett
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引用次数: 0

摘要

快速、可靠的生物屏障测量在许多实际应用中越来越重要。在这项工作中,我们通过处理被测生物系统的阶跃响应,采用了一种时域测量方法。为了在保留所有相关信息的同时减少数据量和计算时间,对阶跃响应进行非均匀采样。因此,快速傅里叶变换不能直接用于频谱计算,需要非常规的数据处理算法将测量数据转换到频域。本文给出了相应的计算方法。他们被分成两组。第一组面向用一组固有函数计算被测阶跃响应的局部近似值,并通过分析傅里叶变换计算其频谱,从而产生一种相对通用的估计阻抗谱的方法。在这种情况下,选择适合已知的被测信号的先验性质的近似函数是非常重要的。第二组方法依赖于直接在时域中对重要信号参数的评估。在这种情况下,我们以底层模型的形式使用关于度量对象的先验信息。然后将模型拟合到实测数据中,提取参数值。所有考虑的数据处理步骤的实际方面,优点和缺点被揭示时,将它们应用于测量与真实的生物对象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Algorithms for Reconstruction of Impedance Spectra from Non-uniformly Sampled Step Responses.

Algorithms for Reconstruction of Impedance Spectra from Non-uniformly Sampled Step Responses.

Algorithms for Reconstruction of Impedance Spectra from Non-uniformly Sampled Step Responses.

Algorithms for Reconstruction of Impedance Spectra from Non-uniformly Sampled Step Responses.

Fast and reliable bioimpedimetric measurements are of growing importance in many practical applications. In this work we used a measurement method in time domain by processing the step response of the biological system under test. In order to decrease the data volume and computation time while retaining all relevant information the step response is sampled non-uniformly. Consequently, fast Fourier transform cannot be directly used for spectrum calculation and non-conventional data processing algorithms for transforming measured data into the frequency domain are required. In this paper we present corresponding computational methods. They are split into two groups. The first group is oriented on calculating the local approximation of the measured step response with a set of proper functions and calculating its spectrum via analytical Fourier transform, thus yielding a relatively versatile approach for estimating the impedance spectrum. In this case, the choice of approximating functions that suit known a priori properties of the measured signals are of great importance. A second group of methods relies on the evaluation of important signal parameters directly in the time domain. In this case we use a priori information about the measurement object in the form of an underlying model. After that the model is fitted to the measured data and thus, parameter values are extracted. Practical aspects, advantages and drawbacks of all considered data processing steps are revealed when applying them to the measurements made with real biological objects.

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来源期刊
Journal of Electrical Bioimpedance
Journal of Electrical Bioimpedance Engineering-Biomedical Engineering
CiteScore
3.00
自引率
0.00%
发文量
8
审稿时长
17 weeks
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