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吞咽和呼吸声音的自动分类。

Automated classification of swallowing and breadth sounds.

作者信息

Aboofazeli Mohammad, Moussavi Zahra

机构信息

Department of Electrical and Computer Engineering, University of Manitoba, Winnipeg, MB, Canada.

出版信息

Conf Proc IEEE Eng Med Biol Soc. 2004;2004:3816-9. doi: 10.1109/IEMBS.2004.1404069.

Abstract

The goal of this study was to develop an automated and objective method to separate swallowing sounds from breath sounds. Swallowing sound detection can be utilized as part of a system for swallowing mechanism assessment and diagnosis of swallowing dysfunction (dysphagia) by acoustical means. In this study, an algorithm based on multilayer feed forward neural networks is proposed for decomposition of tracheal sound into swallowing and respiratory segments. Among many features examined, root-mean-square of the signal, the average power of the signal over 150-450 Hz and waveform fractal dimension were selected features applied to the neural network as inputs. Findings from previous studies about temporal and durational patterns of swallowing and respiration were used in a smart algorithm for further identification of the swallow and breath segments. The proposed method was applied to 18 tracheal sound recordings of 7 healthy subjects (ages 13-30 years, 4 males). The results were validated manually by visual inspection using airflow measurement and spectrogram of the sounds and auditory means. The algorithm was able to detect 91.7% of swallows correctly. The average of missed swallows and average of false detection were 8.3% and 9.5%, respectively. With additional preprocessing and post processing, the proposed method may be used for automated extraction of swallowing sounds from breath sounds in healthy and dysphagic individuals.

摘要

本研究的目的是开发一种自动且客观的方法,用于将吞咽声音与呼吸声音分离。吞咽声音检测可作为通过声学手段评估吞咽机制和诊断吞咽功能障碍(吞咽困难)系统的一部分。在本研究中,提出了一种基于多层前馈神经网络的算法,用于将气管声音分解为吞咽和呼吸部分。在众多检测的特征中,信号的均方根、150 - 450 Hz范围内信号的平均功率以及波形分形维数被选为应用于神经网络的输入特征。先前关于吞咽和呼吸的时间及持续模式的研究结果被用于一种智能算法,以进一步识别吞咽和呼吸部分。所提出的方法应用于7名健康受试者(年龄13 - 30岁,4名男性)的18份气管声音记录。通过使用气流测量以及声音的频谱图和听觉手段进行目视检查,手动验证了结果。该算法能够正确检测出91.7%的吞咽。漏检吞咽的平均值和误检的平均值分别为8.3%和9.5%。通过额外的预处理和后处理,所提出的方法可用于从健康个体和吞咽困难个体的呼吸声音中自动提取吞咽声音。

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