首页> 外文期刊>Stroke: A Journal of Cerebral Circulation >Improved automated detection of embolic signals using a novel frequency filtering approach.
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Improved automated detection of embolic signals using a novel frequency filtering approach.

机译:使用新颖的频率滤波方法,改进了对栓塞信号的自动检测。

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BACKGROUND AND PURPOSE: Asymptomatic embolic signal detection with the use of Doppler ultrasound has a number of potential clinical applications. However, its more widespread clinical use is severely limited by the lack of a reliable automated detection system. Design of such a system depends on accurate characterization of the unique features of embolic signals, which allow their differentiation from artifact and background Doppler speckle. We used a processing system with high temporal resolution to describe these features. We then used this information to design a new automated detection system. METHODS: We used a signal processing approach based on multiple overlapping band-pass filters to characterize 100 consecutive embolic signals from patients with carotid artery disease as well as both episodes of artifact resulting from probe tapping and facial movement and episodes of Doppler speckle. We then designed an automated detection system based both on these embolic signal characteristics and on the fact that embolic signals have maximum intensity over a narrow frequency range. This system was tested in real time on stored 5-second segments of data. RESULTS: The value of peak velocity at maximal intensity discriminated best between embolic signals and artifact and allowed differentiation with 100% sensitivity and specificity. Relative intensity increase, intensity volume, area under volume, average rise rate, and average fall rate appeared to discriminate best between embolic signals and Doppler speckle. For the majority of embolic signals, the intensity increase was spread over a narrow frequency or velocity range. The automated system we developed detected 296 of 325 carotid stenosis embolic signals from a new data set (sensitivity, 91.1%). All 200 episodes of artifact from a new data set were differentiated from embolic signals. Only 2 of 100 episodes of speckle were misidentified as embolic signals. CONCLUSIONS: Using a novel system for automated detection, which utilizes the fact that embolic signals have maximum intensity over a narrow frequency range, we have achieved detection with a high sensitivity and high specificity. These results are considerably better than those previously reported. We tested this initial system on short 5-second segments of data played in real time. This approach now needs to be developed for use in a true online system to determine whether it has sufficient sensitivity and specificity for clinical use.
机译:背景和目的:使用多普勒超声进行无症状栓塞信号检测具有许多潜在的临床应用。然而,由于缺乏可靠的自动检测系统,其更广泛的临床应用受到严重限制。这种系统的设计取决于对栓塞信号独特特征的准确表征,从而使它们与伪像和背景多普勒斑点相区别。我们使用具有高时间分辨率的处理系统来描述这些功能。然后,我们使用此信息来设计新的自动检测系统。方法:我们使用基于多个重叠带通滤波器的信号处理方法来表征来自颈动脉疾病患者的100个连续栓塞信号以及因探头敲击和面部移动以及多普勒斑点事件引起的伪影事件。然后,我们基于这些栓塞信号特征以及栓塞信号在狭窄的频率范围内具有最大强度这一事实,设计了一个自动检测系统。该系统已对存储的5秒数据段进行了实时测试。结果:最大强度下的峰值速度值在栓塞信号和伪影之间最佳地区分,并以100%的灵敏度和特异性进行区分。相对强度增加,强度量,容积下面积,平均上升率和平均下降率似乎在栓塞信号和多普勒斑点之间最佳地区分。对于大多数栓塞信号,强度增加分布在狭窄的频率或速度范围内。我们开发的自动化系统从一个新的数据集中检测了325个颈动脉狭窄栓塞信号中的296个(灵敏度为91.1%)。来自新数据集的所有200次人工制品发作均与栓塞信号区分开来。在100次散斑中,只有2次被误认为是栓塞信号。结论:使用新颖的系统进行自动检测,利用了栓塞信号在狭窄频率范围内具有最大强度的事实,我们实现了高灵敏度和高特异性的检测。这些结果比以前报道的要好得多。我们在5秒的实时实时数据段上测试了此初始系统。现在需要开发此方法以在真正的在线系统中使用,以确定它是否对临床使用具有足够的敏感性和特异性。

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