{"title":"新生儿气管插管的智能增强现实培训框架。","authors":"Shang Zhao, Xiao Xiao, Qiyue Wang, Xiaoke Zhang, Wei Li, Lamia Soghier, James Hahn","doi":"10.1109/ismar50242.2020.00097","DOIUrl":null,"url":null,"abstract":"<p><p>Neonatal Endotracheal Intubation (ETI) is a critical resuscitation skill that requires tremendous practice of trainees before clinical exposure. However, current manikin-based training regimen is ineffective in providing satisfactory real-time procedural guidance for accurate assessment due to the lack of see-through visualization within the manikin. The training efficiency is further reduced by the limited availability of expert instructors, which inevitably results in a long learning curve for trainees. To this end, we propose an intelligent Augmented Reality (AR) training framework that provides trainees with a complete visualization of the ETI procedure for real-time guidance and assessment. 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引用次数: 0
摘要
新生儿气管插管(ETI)是一项关键的复苏技能,需要受训者在临床接触前进行大量练习。然而,由于人体模型内缺乏透视,目前基于人体模型的培训方案无法为准确评估提供令人满意的实时程序指导。而专家指导员的有限性又进一步降低了培训效率,这不可避免地导致受训者学习曲线过长。为此,我们提出了一种智能增强现实(AR)培训框架,为受训者提供完整的 ETI 过程可视化,以便进行实时指导和评估。具体来说,所提出的框架能够捕捉喉镜和人体模型的运动,并将三维透视可视化渲染到头戴式显示器(HMD)上。此外,还开发了一个基于注意力的卷积神经网络(CNN)模型,用于从捕捉到的运动中自动评估 ETI 性能,并识别对性能评估有重大贡献的运动区域。最后,通过彩色编码的运动轨迹对需要更多练习的高亮区域进行分类,以 ETI 评分标准提供可解释结果的增强型用户友好反馈。我们的机器学习模型的分类准确率为 84.6%。
An Intelligent Augmented Reality Training Framework for Neonatal Endotracheal Intubation.
Neonatal Endotracheal Intubation (ETI) is a critical resuscitation skill that requires tremendous practice of trainees before clinical exposure. However, current manikin-based training regimen is ineffective in providing satisfactory real-time procedural guidance for accurate assessment due to the lack of see-through visualization within the manikin. The training efficiency is further reduced by the limited availability of expert instructors, which inevitably results in a long learning curve for trainees. To this end, we propose an intelligent Augmented Reality (AR) training framework that provides trainees with a complete visualization of the ETI procedure for real-time guidance and assessment. Specifically, the proposed framework is capable of capturing the motions of the laryngoscope and the manikin and offer 3D see-through visualization rendered to the head-mounted display (HMD). Furthermore, an attention-based Convolutional Neural Network (CNN) model is developed to automatically assess the ETI performance from the captured motions as well as identify regions of motions that significantly contribute to the performance evaluation. Lastly, augmented user-friendly feedback is delivered with interpretable results with the ETI scoring rubric through the color-coded motion trajectory that classifies highlighted regions that need more practice. The classification accuracy of our machine learning model is 84.6%.