一种利用打鼾信号检测儿童睡眠呼吸暂停的高效深度模型

Zirui Liang, Yue Zhou, Lifeng Ding, Xiaying Chen
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引用次数: 0

摘要

阻塞性睡眠呼吸暂停低通气综合征(OSAHS)是一种对个人睡眠或健康有负面影响的高风险疾病。打鼾信号被广泛认为是检测睡眠呼吸暂停诊断OSAHS的可靠和实用的替代方法。以往的研究大多侧重于检测打鼾信号或对阻塞部位进行分类。本文考虑通过打鼾信号分类诊断儿童OSAHS。我们通过收集和标记病人和正常儿童的夜间录音来建立我们的数据集。该方法将卷积神经网络(CNN)与变压器编码器网络并行,从声学特征序列中提取时间和频率信息。在实验中,我们的方法对患者异常打鼾事件和正常儿童打鼾的分类准确率为95.96%,对正常打鼾、患者正常打鼾和患者异常打鼾的识别准确率为84.78%。这对于临床目的是可以接受的,并且表明它可以作为诊断儿童OSAHS的实用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient deep model for children sleep apnea detection using snoring signals
Obstructive sleep apnea-hypopnea syndrome(OSAHS) is a risky disorder that has negative effects on individuals’ sleep or health. Snoring signals are widely accepted as a reliable and practical alternative in detecting sleep apnea to diagnose OSAHS. Most of previous works paid attention to detecting snoring signals or classifying the places of obstruction. In this paper, diagnosis of OSAHS in children via snoring signals classification is taken into consideration. We build our dataset via gathering and labeling patients and normal children's nocturnal sound recordings. A convolutional neural network (CNN) in parallel with a Transformer encoder network is applied in our method to extract the temporal and frequency information from the acoustic feature sequences. In the experiment our method achieves an accuracy of 95.96% in classifying patients’ abnormal snoring events and the snoring from normal children and an accuracy of 84.78% in identifying normal snoring, patients’ normal snoring and patients’ abnormal snoring. This is acceptable for clinical purposes and indicates that it is competent to serve as a practical tool for diagnosis of OSAHS in children.
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