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Frequency Analysis of Capnogram Signals to Differentiate Asthmatic and Non-asthmatic Conditions Using Radial Basis Function Neural Networks

机译:利用径向基函数神经网络对二氧化碳图信号进行频率分析以区分哮喘和非哮喘病

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In this paper, the method of differentiating asthmatic and non-asthmatic patients using the frequency analysis of capnogram signals is presented. Previously, manual study on capnogram signal has been conducted by several researchers. All past researches showed significant correlation between capnogram signals and asthmatic patients. However all of them are just manual study conducted through the conventional time domain method. In this study, the power spectral density (PSD) of capnogram signals is estimated by using Fast Fourier Transform (FFT) and Autoregressive (AR) modelling. The results show the non-asthmatic capnograms have one component in their PSD estimation, in contrast to asthmatic capnograms that have two components. Furthermore, there is a significant difference between the magnitude of the first component for both asthmatic and non-asthmatic capnograms. The effectiveness and performance of manipulating the characteristics of the first frequency component, mainly its magnitude and bandwidth, to differentiate between asthmatic and non-asthmatic conditions by means of receiver operating characteristic (ROC) curve analysis and radial basis function (RBF) neural network were shown. The output of this network is an integer prognostic index from 1 to 10 (depends on the severity of asthma) with an average good detection rate of 95.65% and an error rate of 4.34%. This developed algorithm is aspired to provide a fast and low-cost diagnostic system to help healthcare professional involved in respiratory care as it would be possible to monitor severity of asthma automatically and instantaneously.
机译:本文提出了利用二氧化碳图信号频率分析区分哮喘和非哮喘患者的方法。以前,几位研究人员对二氧化碳图信号进行了手动研究。过去的所有研究表明,二氧化碳图信号与哮喘患者之间存在显着相关性。但是,所有这些只是通过常规时域方法进行的手动研究。在这项研究中,通过使用快速傅里叶变换(FFT)和自回归(AR)建模来估算二氧化碳图信号的功率谱密度(PSD)。结果表明,与哮喘的二氧化碳图相比,非哮喘的二氧化碳图在其PSD估计中只有一个成分。此外,哮喘和非哮喘二氧化碳描记图的第一分量的大小之间存在显着差异。通过接收器工作特征(ROC)曲线分析和径向基函数(RBF)神经网络来操纵第一频率成分的特征(主要是其幅度和带宽)以区分哮喘和非哮喘病的有效性和性能是:如图所示。该网络的输出是1到10的整数预后指数(取决于哮喘的严重程度),平均良好检测率为95.65%,错误率为4.34%。此开发的算法旨在提供一种快速且低成本的诊断系统,以帮助参与呼吸道护理的医疗保健专业人员,因为它可以自动,即时地监测哮喘的严重程度。

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