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首页> 外文期刊>Audiology & neuro-otology >Automated analysis of the auditory brainstem response using derivative estimation wavelets.
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Automated analysis of the auditory brainstem response using derivative estimation wavelets.

机译:使用导数估计小波自动分析听觉脑干反应。

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摘要

In this paper, we describe an algorithm that automatically detects and labels peaks I-VII of the normal, suprathreshold auditory brainstem response (ABR). The algorithm proceeds in three stages, with the option of a fourth: (1) all candidate peaks and troughs in the ABR waveform are identified using zero crossings of the first derivative, (2) peaks I-VII are identified from these candidate peaks based on their latency and morphology, (3) if required, peaks II and IV are identified as points of inflection using zero crossings of the second derivative and (4) interpeak troughs are identified before peak latencies and amplitudes are measured. The performance of the algorithm was estimated on a set of 240 normal ABR waveforms recorded using a stimulus intensity of 90 dBnHL. When compared to an expert audiologist, the algorithm correctly identified the major ABR peaks (I, III and V) in 96-98% of the waveforms and the minor ABR peaks (II, IV, VI and VII) in 45-83% of waveforms. Whilst peak II was correctly identified in only 83% and peak IV in 77% of waveforms, it was shown that 5% of the peak II identifications and 31% of the peak IV identifications came as a direct result of allowing these peaks to be found as points of inflection.
机译:在本文中,我们描述了一种算法,该算法可自动检测并标记正常,超阈听觉脑干反应(ABR)的峰I-VII。该算法分三个阶段进行,并选择第四个阶段:(1)使用一阶导数的零交叉来识别ABR波形中的所有候选峰和谷,(2)从这些候选峰中确定峰I-VII根据其潜伏期和形态,(3)如果需要,使用二阶导数的零交叉将峰II和IV识别为拐点,并(4)在测量峰潜伏期和幅度之前识别峰间谷值。该算法的性能是根据一组使用90 dBnHL的刺激强度记录的240个正常ABR波形估算的。与专业听觉专家相比,该算法正确地识别了96-98%的波形中的主要ABR峰(I,III和V),以及45-83%的波形中的次要ABR峰(II,IV,VI和VII)。波形。虽然仅在83%的波形中正确识别了II峰,在77%的波形中正确识别了IV峰,但表明5%的II峰识别峰和31%的IV峰识别峰是允许发现这些峰的直接结果作为拐点。

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