On sound-based interpretation of neonatal EEG

Sergi Gomez, Mark E. O'Sullivan, E. Popovici, S. Mathieson, G. Boylan, A. Temko
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引用次数: 7

Abstract

Significant training is required to visually interpret neonatal EEG signals. This study explores alternative sound-based methods for EEG interpretation which are designed to allow for intuitive and quick differentiation between healthy background activity and abnormal activity such as seizures. A novel method based on frequency and amplitude modulation (FM/AM) is presented. The algorithm is tuned to facilitate the audio domain perception of rhythmic activity which is specific to neonatal seizures. The method is compared with the previously developed phase vocoder algorithm for different time compressing factors. A survey is conducted amongst a cohort of non-EEG experts to quantitatively and qualitatively examine the performance of sound-based methods in comparison with the visual interpretation. It is shown that both sonification methods perform similarly well, with a smaller inter-observer variability in comparison with visual. A post-survey analysis of results is performed by examining the sensitivity of the ear to frequency evolution in audio.
新生儿脑电图的声音解释
新生儿脑电图信号的视觉解读需要大量的训练。本研究探索了另一种基于声音的脑电图解释方法,旨在直观、快速地区分健康背景活动和异常活动(如癫痫发作)。提出了一种基于调频调幅(FM/AM)的新方法。该算法被调整为促进节律性活动的音频域感知,这是特定于新生儿癫痫发作。针对不同的时间压缩因素,将该方法与已有的相位声码算法进行了比较。在一组非脑电图专家中进行了一项调查,以定量和定性地检查基于声音的方法与视觉解释的性能。结果表明,两种超声方法的表现相似,与视觉相比,具有较小的观察者间可变性。通过检查耳朵对音频中频率演变的敏感性,对结果进行了调查后分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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