Posture study for self-training system of patient transfer

Zhifeng Huang, A. Nagata, M. Kanai-Pak, J. Maeda, Y. Kitajima, Mitsuhiro Nakamura, Kyouko Aida, N. Kuwahara, T. Ogata, J. Ota
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引用次数: 6

Abstract

Sufficient training with feedback was important for nursing students to learn the techniques. In view of this, we studied the method for measuring and evaluating the performance of nursing students in order to develop a self-training system. Focusing on the training of transferring a patient from a bed to a wheelchair, we defined seven evaluation items related with the postures. In addition, evaluation indexes of each item were determined. Then, we established a prototype system based on two Kinect range cameras. Using the system, first, we recognized the body parts and joints through the color of the markers attached on the bodies. After that, the body joints' spatial locations and body parts' inclination angles were measured via the combination of color and depth information in order to calculate the indexes. We applied Bayes minimum error decision to classify nursing students' performance of each items as correct or incorrect. Ten inexperienced nursing students and five experienced nurses were asked to transfer patient from a bed to a wheelchair at least twice. Every time the patient was transferred, the nursing teacher evaluated the trainee's performance. In addition, proposed system measured and recorded the data. The significant difference between correct and incorrect performance of each item was observed through the determined indexes (P<0.01). Accuracy of performance classification was examined by the leave one-out cross-validation. The average of accuracy was up to 80%. These results suggested that the defined index was effective and the proposed classification approach could classify the performance of the nursing students as almost the same as the nursing teacher did.
病人转运自我训练系统的姿势研究
有反馈的充分培训对护理专业学生学习技术非常重要。有鉴于此,我们研究了测量和评估护生表现的方法,以开发一套自我培训系统。我们以将病人从床上转移到轮椅上的训练为重点,定义了与姿势相关的七个评价项目。此外,还确定了每个项目的评价指标。然后,我们建立了一个基于两个 Kinect 范围摄像机的原型系统。使用该系统,我们首先通过附着在身体上的标记的颜色识别身体部位和关节。然后,通过颜色和深度信息的组合测量身体关节的空间位置和身体部位的倾斜角度,从而计算出指数。我们采用贝叶斯最小误差判定法将护生对每个项目的表现分为正确和错误。我们要求 10 名经验不足的护理专业学生和 5 名经验丰富的护士至少两次将病人从床上转移到轮椅上。每次转移病人时,护理教师都会对学员的表现进行评估。此外,拟议的系统还测量并记录了数据。通过确定的指标,观察到每个项目的正确和错误表现之间存在明显差异(P<0.01)。成绩分类的准确性通过 "留一弃一 "交叉验证进行检验。平均准确率高达 80%。这些结果表明,所确定的指标是有效的,所提出的分类方法可以将护生的表现分类为与护师几乎相同的表现。
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