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基于声音识别的心肺复苏培训系统的开发。

A Development of a Sound Recognition-Based Cardiopulmonary Resuscitation Training System.

机构信息

Department of Biomedical EngineeringSeoul National University College of Medicine Jongno Seoul 03080 South Korea.

Biomedical Research InstituteSeoul National University Hospital Jongno Seoul 03080 South Korea.

出版信息

IEEE J Transl Eng Health Med. 2024 Jul 29;12:550-557. doi: 10.1109/JTEHM.2024.3433448. eCollection 2024.

Abstract

The objective of this study was to develop a sound recognition-based cardiopulmonary resuscitation (CPR) training system that is accessible, cost-effective, easy-to-maintain and provides accurate CPR feedback. Beep-CPR, a novel device with accordion squeakers that emit high-pitched sounds during compression, was developed. The sounds emitted by Beep-CPR were recorded using a smartphone, segmented into 2-second audio fragments, and then transformed into spectrograms. A total of 6,065 spectrograms were generated from approximately 40 minutes of audio data, which were then randomly split into training, validation, and test datasets. Each spectrogram was matched with the depth, rate, and release velocity of the compression measured at the same time interval by the ZOLL X Series monitor/defibrillator. Deep learning models utilizing spectrograms as input were trained using transfer learning based on EfficientNet to predict the depth (Depth model), rate (Rate model), and release velocity (Recoil model) of compressions. Results: The mean absolute error (MAE) for the Depth model was 0.30 cm (95% confidence interval [CI]: 0.27-0.33). The MAE of the Rate model was 3.6/min (95% CI: 3.2-3.9). For the Recoil model, the MAE was 2.3 cm/s (95% CI: 2.1-2.5). External validation of the models demonstrated acceptable performance across multiple conditions, including the utilization of a newly-manufactured device, a fatigued device, and evaluation in an environment with altered spatial dimensions. We have developed a novel sound recognition-based CPR training system, that accurately measures compression quality during training. Significance: Beep-CPR is a cost-effective and easy-to-maintain solution that can improve the efficacy of CPR training by facilitating decentralized at-home training with performance feedback.

摘要

本研究旨在开发一种基于声音识别的心肺复苏(CPR)培训系统,该系统具有成本效益、易于维护且能提供准确的 CPR 反馈。我们开发了一种新型设备 Beep-CPR,它由手风琴式哨子组成,在按压时会发出高音调的声音。使用智能手机记录 Beep-CPR 发出的声音,将其分割成 2 秒的音频片段,然后将其转换为声谱图。从大约 40 分钟的音频数据中生成了总共 6065 个声谱图,然后将其随机分为训练集、验证集和测试集。每个声谱图都与同一时间间隔内 ZOLL X 系列监护除颤器测量的按压深度、速率和释放速度相匹配。基于 EfficientNet 的迁移学习对使用声谱图作为输入的深度学习模型进行训练,以预测按压的深度(Depth 模型)、速率(Rate 模型)和释放速度(Recoil 模型)。结果:Depth 模型的平均绝对误差(MAE)为 0.30cm(95%置信区间[CI]:0.27-0.33)。Rate 模型的 MAE 为 3.6/min(95%CI:3.2-3.9)。对于 Recoil 模型,MAE 为 2.3cm/s(95%CI:2.1-2.5)。模型的外部验证表明,在包括使用新制造设备、疲劳设备以及在改变空间尺寸的环境中的评估在内的多种条件下,均具有良好的性能。我们开发了一种新型的基于声音识别的 CPR 培训系统,可在培训过程中准确测量按压质量。意义:Beep-CPR 是一种具有成本效益且易于维护的解决方案,通过促进带有性能反馈的分散式家庭培训,可提高 CPR 培训的效果。

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