Welten Institute, Research Centre for Learning, Teaching and Technology Open University of the Netherlands, Valkenburgerweg, 177 6401 AT Heerlen, The Netherlands.
DIPF - Leibniz Institute for Research and Information in Education, Rostocker Straße 6, 60323 Frankfurt, Germany.
Sensors (Basel). 2019 Jul 13;19(14):3099. doi: 10.3390/s19143099.
This study investigated to what extent multimodal data can be used to detect mistakes during Cardiopulmonary Resuscitation (CPR) training. We complemented the Laerdal QCPR ResusciAnne manikin with the Multimodal Tutor for CPR, a multi-sensor system consisting of a Microsoft Kinect for tracking body position and a Myo armband for collecting electromyogram information. We collected multimodal data from 11 medical students, each of them performing two sessions of two-minute chest compressions (CCs). We gathered in total 5254 CCs that were all labelled according to five performance indicators, corresponding to common CPR training mistakes. Three out of five indicators, CC rate, CC depth and CC release, were assessed automatically by the ReusciAnne manikin. The remaining two, related to arms and body position, were annotated manually by the research team. We trained five neural networks for classifying each of the five indicators. The results of the experiment show that multimodal data can provide accurate mistake detection as compared to the ResusciAnne manikin baseline. We also show that the Multimodal Tutor for CPR can detect additional CPR training mistakes such as the correct use of arms and body weight. Thus far, these mistakes were identified only by human instructors. Finally, to investigate user feedback in the future implementations of the Multimodal Tutor for CPR, we conducted a questionnaire to collect valuable feedback aspects of CPR training.
本研究旨在探讨多模态数据在多大程度上可以用于检测心肺复苏(CPR)培训中的错误。我们在 Laerdal QCPR ResusciAnne 模拟人上补充了多模态导师用于 CPR,这是一个由 Microsoft Kinect 用于跟踪身体位置和 Myo 臂带用于收集肌电图信息的多传感器系统。我们从 11 名医学生收集了多模态数据,他们每个人进行了两次两分钟的胸部按压(CC)。我们总共收集了 5254 次 CC,这些 CC 根据五个性能指标进行了标记,对应于常见的 CPR 培训错误。五个指标中的三个,CC 率、CC 深度和 CC 释放,由 ReusciAnne 模拟人自动评估。剩下的两个,与手臂和身体位置有关,由研究团队手动注释。我们训练了五个神经网络来分类这五个指标中的每一个。实验结果表明,与 ResusciAnne 模拟人基线相比,多模态数据可以提供更准确的错误检测。我们还表明,Multimodal Tutor for CPR 可以检测到其他 CPR 培训错误,例如手臂和体重的正确使用。到目前为止,这些错误只能由人类指导员识别。最后,为了在未来的 Multimodal Tutor for CPR 实现中调查用户反馈,我们进行了一项问卷调查,以收集有关 CPR 培训的有价值的反馈方面。