Meng Yan, Hahn James K
Yan Meng is with the Department of Computer Science, The George Washington University, Washington, DC 20052, USA.
James K. Hahn is with the Department of Computer Science, The George Washington University, Washington, DC 20052, USA.
IEEE EMBS Int Conf Biomed Health Inform. 2023 Oct;2023. doi: 10.1109/bhi58575.2023.10313510. Epub 2023 Nov 14.
Neonatal endotracheal intubation (ETI) is an intricate medical procedure that poses considerable challenges, demanding comprehensive training to effectively address potential complications in clinical practice. However, due to limited access to clinical opportunities, ETI training relies heavily on physical manikins to develop a certain level of competence before clinical exposure. Nonetheless, traditional training methods prove ineffective due to scarcity of expert instructors and the absence of internal situational awareness within the manikins, preventing thorough performance assessment for both trainees and instructors. To address this gap, there is a need to develop an automatic grading system that can assist trainees in performance assessment. In this paper, we proposed a multi-task Convolutional Neural Network (MTCNN) based model for assessing ETI proficiency, specifically targeting key performance features recommended by expert instructors. The model comprises three modules: an ETI simulation module that captures the ETI procedures performed on a standard neonatal task trainer manikin, an automatic grading module that extracts and grades the identified key performance features, and a data visualization module that presents the assessment results in a user-friendly manner. The experimental results demonstrated that the proposed automatic grading system achieved an average classification accuracy of 93.6%. This study established the successful integration of intuitive observed features with latent features derived from multivariate time series (MTS) data, coupled with multi-task deep learning techniques, for the automatic assessment of ETI performance.
CLINICAL RELEVANCE—: The proposed automatic grading system facilitates an enhanced neonatal endotracheal intubation training experience for neonatologists.
新生儿气管插管(ETI)是一项复杂的医疗程序,面临诸多挑战,需要全面培训以有效应对临床实践中的潜在并发症。然而,由于临床实践机会有限,ETI培训在很大程度上依赖实体模型,以便在临床实践之前培养一定水平的能力。尽管如此,由于专家教员稀缺以及模型缺乏内部情境感知,传统培训方法效果不佳,无法对学员和教员进行全面的表现评估。为弥补这一差距,需要开发一种能协助学员进行表现评估的自动评分系统。在本文中,我们提出了一种基于多任务卷积神经网络(MTCNN)的模型来评估ETI熟练程度,特别针对专家教员推荐的关键表现特征。该模型包括三个模块:一个ETI模拟模块,用于捕捉在标准新生儿任务训练模型上执行的ETI程序;一个自动评分模块,用于提取并对识别出的关键表现特征进行评分;一个数据可视化模块,以用户友好的方式呈现评估结果。实验结果表明,所提出的自动评分系统平均分类准确率达到93.6%。本研究成功地将直观观察特征与从多变量时间序列(MTS)数据中导出的潜在特征相结合,并运用多任务深度学习技术,实现了对ETI表现的自动评估。
所提出的自动评分系统为新生儿科医生提供了更好的新生儿气管插管培训体验。