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首页> 外文期刊>Journal of medical systems >Development of a Hand Motion-based Assessment System for Endotracheal Intubation Training
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Development of a Hand Motion-based Assessment System for Endotracheal Intubation Training

机译:基于动作的气管插管培训的评估系统的开发

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摘要

Endotracheal intubation (ETI) is a procedure to manage and secure an unconscious patient's airway. It is one of the most critical skills in emergency or intensive care. Regular training and practice are required for medical providers to maintain proficiency. Currently, ETI training is assessed by human supervisors who may make inconsistent assessments. This study aims at developing an automated assessment system that analyzes ETI skills and classifies a trainee into an experienced or a novice immediately after training. To make the system more available and affordable, we investigate the feasibility of utilizing only hand motion features as determining factors of ETI proficiency. To this end, we extract 18 features from hand motion in time and frequency domains, and also 12 force features for comparison. Subsequently, feature selection algorithms are applied to identify an ideal feature set for developing classification models. Experimental results show that an artificial neural network (ANN) classifier with five hand motion features selected by a correlation-based algorithm achieves the highest accuracy of 91.17% while an ANN with five force features has only 80.06%. This study corroborates that a simple assessment system based on a small number of hand motion features can be effective in assisting ETI training.
机译:气管内插管(ETI)是一种管理和保护昏迷患者气道的程序。这是急诊或重症监护中最关键的技能之一。医疗提供者需要定期培训和实践,以保持熟练程度。目前,ETI培训由人力主管进行评估,他们可能会做出不一致的评估。本研究旨在开发一个自动评估系统,分析ETI技能,并在培训后立即将学员分为经验丰富的学员和新手。为了使该系统更可用且价格合理,我们研究了仅利用手部运动特征作为ETI熟练程度决定因素的可行性。为此,我们从时域和频域中提取了18个手部运动特征,还提取了12个力特征进行比较。随后,应用特征选择算法来识别用于开发分类模型的理想特征集。实验结果表明,采用基于相关性的算法选择具有五个手部运动特征的人工神经网络分类器的最高准确率为91.17%,而具有五个力特征的人工神经网络分类器的准确率仅为80.06%。本研究证实,基于少量手部运动特征的简单评估系统可以有效地辅助ETI训练。

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