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Adaptive denoising and multiscale detection of the V wave in brainstem auditory evoked potentials.

机译:脑干听觉诱发电位中V波的自适应降噪和多尺度检测。

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This paper describes a wavelet-transform-based system for the V wave identification in brainstem auditory evoked potentials (BAEP). The system combines signal denoising and rule-based localization modules. The signal denoising module has the potential of effective noise reduction after signal averaging. It analyses adaptively the evolution of the wavelet transform maxima across scales. The singularities of the signal create wavelet maxima with different properties from those of the induced noise. A non-linear filtering process implemented with a neural network extracts out the noise-induced maxima. The filtered wavelet details are subsequently analysed by the rule-based localization module for the automatic identification of the V wave. In the first phase, it implements a set of statistical observations as well as heuristic criteria used by human experts in order to classify the IV-V complex. At the second phase, using a multiscale focusing algorithm, the IV and V waves are positioned on the BAEP signal. Our experiments revealed that the system provides accurate results even for signals exhibiting unclear IV-V complexes.
机译:本文介绍了一种基于小波变换的脑干听觉诱发电位(BAEP)V波识别系统。该系统结合了信号降噪和基于规则的定位模块。信号降噪模块具有在信号平均后有效降低噪声的潜力。它自适应地分析了跨尺度的小波变换最大值的演变。信号的奇异性会产生具有与感应噪声不同的属性的小波最大值。用神经网络实现的非线性滤波过程会提取出噪声引起的最大值。随后,基于规则的定位模块将对滤波后的小波细节进行分析,以自动识别V波。在第一阶段,它执行了一组统计观察以及人类专家用来对IV-V复合物进行分类的启发式标准。在第二阶段,使用多尺度聚焦算法,将IV波和V波定位在BAEP信号上。我们的实验表明,即使对于显示不清楚的IV-V复合物的信号,该系统也能提供准确的结果。

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