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Use of multivariable autoregressive model for detection of abnormalities in cardiac patients

机译:多变量自回归模型用于检测心脏病患者异常

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A multivariate autoregressive (MAR) model capable of determining the dynamic interactions between the electrocardiogram (ECG), the arterial blood pressure (ABP) and respiratory signals is presented. The model is able to quantify the cross-interactions among the signals. The use of the MAR model is then demonstrated using signals obtained from the MIT-BIH database for a case with respiratory failure due to cardiac problem. MAR spectral analysis is carried out to find the correlation between two signals, (viz., ECG and ABP, ECG and Respiration). It is found that a high coherence exists in the low frequency (LF) band. The coherence analysis is then applied to a few test cases of normal and abnormal signals. An index, called coherence index, is proposed for the assessment of abnormal condition in cardiac patients. Based on the limited testing, it is observed that the coherent index is lower for abnormal signals than for the normal signals and hence the method can be helpful in the detection of abnormality of cardiac patients. A continuous variation of coherence index for a long record of data has been obtained and the plot shows significant changes as the condition of the patient deteriorates in the ICU.
机译:提供了一种能够确定心电图(ECG),动脉血压(ABP)和呼吸信号之间的动态相互作用的多变量自回归(MAR)模型。该模型能够量化信号之间的交叉相互作用。然后使用从MIT-BIH数据库获得的信号来证明MS模型的使用,以便由于心脏问题而具有呼吸失败的情况。进行MAR光谱分析,以找到两个信号之间的相关性(Viz,ECG和ABP,ECG和呼吸)。发现低频(LF)带存在高相干性。然后将相干性分析应用于少数正常和异常信号的测试用例。提出了一种称为相干指数的指数,用于评估心脏患者的异常情况。基于有限的测试,观察到,对于异常信号而言,相干指数比正常信号更低,因此该方法可以有助于检测心脏患者的异常。已经获得了长期记录的相干指数的连续变化,并且该图显示出在ICU中患者的状况恶化的显着变化。

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