Arvanaghi Roghayyeh, Daneshvar Sabalan, Seyedarabi Hadi, Goshvarpour Atefeh
Department of Biomedical Engineering, Faculty of Advanced Medical Science, Tabriz University of Medical Sciences, Tabriz, Iran.
Department of Biomedical Engineering, Faculty of Advanced Medical Science, Tabriz University of Medical Sciences, Tabriz, Iran; Faculty of Electrical and Computer Engineering, University of Tabriz, Tabriz, Iran.
Comput Methods Programs Biomed. 2017 Nov;151:71-78. doi: 10.1016/j.cmpb.2017.08.013. Epub 2017 Aug 24.
Each of Electrocardiogram (ECG) and Atrial Blood Pressure (ABP) signals contain information of cardiac status. This information can be used for diagnosis and monitoring of diseases. The majority of previously proposed methods rely only on ECG signal to classify heart rhythms. In this paper, ECG and ABP were used to classify five different types of heart rhythms. To this end, two mentioned signals (ECG and ABP) have been fused.
These physiological signals have been used from MINIC physioNet database. ECG and ABP signals have been fused together on the basis of the proposed Discrete Wavelet Transformation fusion technique. Then, some frequency features were extracted from the fused signal. To classify the different types of cardiac arrhythmias, these features were given to a multi-layer perceptron neural network.
In this study, the best results for the proposed fusion algorithm were obtained. In this case, the accuracy rates of 96.6%, 96.9%, 95.6% and 93.9% were achieved for two, three, four and five classes, respectively. However, the maximum classification rate of 89% was obtained for two classes on the basis of ECG features.
It has been found that the higher accuracy rates were acquired by using the proposed fusion technique. The results confirmed the importance of fusing features from different physiological signals to gain more accurate assessments.
心电图(ECG)信号和心房血压(ABP)信号均包含心脏状态信息。该信息可用于疾病的诊断和监测。大多数先前提出的方法仅依靠心电图信号来对心律进行分类。本文利用心电图和心房血压信号对五种不同类型的心律进行分类。为此,将上述两种信号(心电图和心房血压)进行了融合。
这些生理信号取自MINIC生理网络数据库。基于所提出的离散小波变换融合技术,将心电图和心房血压信号融合在一起。然后,从融合信号中提取一些频率特征。为了对不同类型的心律失常进行分类,将这些特征输入到一个多层感知器神经网络中。
在本研究中,所提出的融合算法取得了最佳结果。在这种情况下,两类、三类、四类和五类的准确率分别达到了96.6%、96.9%、95.6%和93.9%。然而,基于心电图特征,两类的最大分类率为89%。
已发现使用所提出的融合技术可获得更高的准确率。结果证实了融合来自不同生理信号的特征以获得更准确评估的重要性。