Lu Liang-Hsuan, Chiang Shang-Lin, Wei Shun-Hwa, Lin Chueh-Ho, Sung Wen-Hsu
Department of Physical Therapy and Assistive Technology, National Yang-Ming University, Taipei, Taiwan, ROC.
Department of Physical Medicine and Rehabilitation, Tri-Service General Hospital, and Department of Physical Medicine and Rehabilitation, School of Medicine, National Defense Medical Center, Taipei, Taiwan, ROC.
Comput Methods Programs Biomed. 2017 Aug;147:11-17. doi: 10.1016/j.cmpb.2017.05.014. Epub 2017 Jun 12.
Being bedridden long-term can cause deterioration in patients' physiological function and performance, limiting daily activities and increasing the incidence of falls and other accidental injuries. Little research has been carried out in designing effective detecting systems to monitor the posture and status of bedridden patients and to provide accurate real-time feedback on posture. The purposes of this research were to develop a computer-aided system for real-time detection of physical activities in bed and to validate the system's validity and test-retest reliability in determining eight postures: motion leftward/rightward, turning over leftward/rightward, getting up leftward/rightward, and getting off the bed leftward/rightward.
The in-bed physical activity detecting system consists mainly of a clinical sickbed, signal amplifier, a data acquisition (DAQ) system, and operating software for computing and determining postural changes associated with four load cell sensing components. Thirty healthy subjects (15 males and 15 females, mean age = 27.8 ± 5.3 years) participated in the study. All subjects were asked to execute eight in-bed activities in a random order and to participate in an evaluation of the test-retest reliability of the results 14 days later. Spearman's rank correlation coefficient was used to compare the system's determinations of postural states with researchers' recordings of postural changes. The test-retest reliability of the system's ability to determine postures was analyzed using the interclass correlation coefficient ICC(3,1).
The system was found to exhibit high validity and accuracy (r = 0.928, p < 0.001; accuracy rate: 87.9%) in determining in-bed displacement, turning over, sitting up, and getting off the bed. The system was particularly accurate in detecting motion rightward (90%), turning over leftward (83%), sitting up leftward or rightward (87-93%), and getting off the bed (100%). The test-retest reliability ICC(3,1) value was 0.968 (p < 0.001).
The system developed in this study exhibits satisfactory validity and reliability in detecting changes in-bed body postures and can be beneficial in assisting caregivers and clinical nursing staff in detecting the in-bed physical activities of bedridden patients and in developing fall prevention warning systems.
长期卧床会导致患者生理功能和表现恶化,限制日常活动,并增加跌倒及其他意外伤害的发生率。在设计有效的检测系统以监测卧床患者的姿势和状态并提供准确的姿势实时反馈方面,相关研究较少。本研究的目的是开发一种用于实时检测床上身体活动的计算机辅助系统,并验证该系统在确定八种姿势(向左/向右移动、向左/向右转翻身、向左/向右侧坐起、向左/向右侧下床)时的有效性和重测信度。
床上身体活动检测系统主要由一张临床病床、信号放大器、数据采集(DAQ)系统以及用于计算和确定与四个称重传感器感应组件相关的姿势变化的操作软件组成。30名健康受试者(15名男性和15名女性,平均年龄=27.8±5.3岁)参与了本研究。要求所有受试者以随机顺序执行八项床上活动,并在14天后参与对结果重测信度的评估。采用Spearman等级相关系数将系统对姿势状态的判定与研究人员对姿势变化的记录进行比较。使用组内相关系数ICC(3,1)分析系统判定姿势能力的重测信度。
该系统在确定床上位移、翻身、坐起和下床方面表现出较高的有效性和准确性(r=0.928,p<0.001;准确率:87.9%)。该系统在检测向右移动(90%)、向左翻身(83%)、向左或向右侧坐起(87 - 93%)以及下床(100%)方面尤其准确。重测信度ICC(3,1)值为0.968(p<0.001)。
本研究开发的系统在检测床上身体姿势变化方面表现出令人满意的有效性和可靠性,有助于护理人员和临床护理人员检测卧床患者的床上身体活动,并有助于开发跌倒预防预警系统。