Kun Stevan, Ristić Borislav, Peura Robert A, Dunn Raymond M
Worcester Polytechnic Institute, Biomedical Engineering Department, 100 Institute Road, Worcester, MA 01609, USA.
IEEE Trans Biomed Eng. 2003 Dec;50(12):1352-9. doi: 10.1109/TBME.2003.819846.
The purpose of this paper is to present an algorithm developed for real-time estimation of skeletal muscle ischemia, based on parameters extracted from in vivo obtained electrical impedance spectra. A custom impedance spectrometer was used to acquire data sets: complex impedance spectra measured at 27 frequencies in the range of 100 Hz-1 MHz, and tissue pH. Twenty-nine in vivo animal studies on rabbit anterior tibialis muscle were performed to gather data on the behavior of tissue impedance during ischemia. An artificial neural network (ANN) was used to quantitatively describe the relationship between the parameters of complex tissue impedance spectra and tissue ischemia via pH. The ANN was trained on 1249, and tested on 946 ischemic tissue impedance data sets. A correlation of 94.5% and a standard deviation of 0.15 pH units was achieved between the ANN estimated pH and measured tissue pH values.
本文的目的是提出一种基于从体内获得的电阻抗谱中提取的参数来实时估计骨骼肌缺血的算法。使用定制的阻抗光谱仪采集数据集:在100 Hz - 1 MHz范围内的27个频率下测量的复阻抗谱以及组织pH值。对兔胫前肌进行了29项体内动物研究,以收集缺血期间组织阻抗行为的数据。使用人工神经网络(ANN)通过pH值定量描述复杂组织阻抗谱参数与组织缺血之间的关系。该人工神经网络在1249个数据集上进行训练,并在946个缺血组织阻抗数据集上进行测试。人工神经网络估计的pH值与测量的组织pH值之间的相关性达到94.5%,标准差为0.15个pH单位。