A micro emboli vs non-emboli classification system based on the directional dual tree rational dilation wavelet transform

Gorkem Serbes, Betul Erdogdu Sakar, N. Aydin
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引用次数: 2

Abstract

Transcranial Doppler (TCD) is a widely used, non-invasive, rapid and reproducible monitoring method for observing the condition of middle cerebral artery. Micro embolic signals, which appear in various clinical scenarios such as; carotid stenosis, aortic arch plaques, atrial fibrillation, myocardial infarction, patent foramen ovale and valvular stenosis, can be detected by the analysis of TCD signals. Discrete wavelet transform based methods were frequently used in literature for micro embolic signal detection. However, in all the previously used complex/non-complex discrete wavelet transform based methods, low Q-factor wavelets were employed for feature extraction. Low Q-factor wavelets have been successfully used for processing piecewise smooth signals but for the embolic signals, a discrete wavelet transform with better frequency resolution is needed. Therefore in this study, a novel Directional Dual Tree Rational Dilation Wavelet Transform (DDT-RADWT), in which the Q-factor of the analysis and synthesis filters can be adjusted due to the properties of signal of interest, is used as the feature extractor. DDT-RADWT is applied to a dataset consisting of 130 micro embolic signals and 130 non-embolic signals (65 artifacts and 65 Doppler speckles) and the obtained coefficients are used as features. In the proposed method, in order to utilize from the different frequency characteristics of micro embolic, artifact and Doppler speckle signals, the DDT-RADWT is applied with high Q-factor filters. The extracted coefficients are given to k-NN and SVM classifiers with the aim of discriminating two classes of micro embolic signals and non-embolic signals. The results show that higher general accuracy and micro embolic signal detection accuracies are obtained with high Q-factor wavelet analysis.
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基于定向对偶树有理扩张小波变换的微栓子与非栓子分类系统
经颅多普勒(Transcranial Doppler, TCD)是一种应用广泛、无创、快速、可重复的观察大脑中动脉状态的监测方法。微栓塞信号,出现在各种临床情况,如;颈动脉狭窄、主动脉弓斑块、心房颤动、心肌梗死、卵圆孔未闭、瓣膜狭窄等均可通过TCD信号分析检测。基于离散小波变换的微栓子信号检测方法在文献中应用较多。然而,在之前使用的基于复/非复离散小波变换的方法中,低q因子小波被用于特征提取。低q因子小波已成功地用于处理分段平滑信号,但对于栓塞信号,需要具有更好频率分辨率的离散小波变换。因此,本研究采用一种新型的定向对偶树有理扩张小波变换(DDT-RADWT)作为特征提取器,该小波变换可以根据感兴趣信号的性质调整分析和合成滤波器的q因子。将DDT-RADWT应用于由130个微栓塞信号和130个非栓塞信号(65个伪影和65个多普勒斑点)组成的数据集,并将得到的系数作为特征。在该方法中,为了充分利用微栓子、伪影和多普勒散斑信号的不同频率特性,将DDT-RADWT应用于高q因子滤波器。将提取的系数分别交给k-NN和SVM分类器,用于区分两类微栓塞信号和非栓塞信号。结果表明,采用高q因子小波分析可获得较高的一般精度和微栓塞信号检测精度。
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