Identifying the best window size, lead time and sensor combination for classification of injurious versus non-injurious patient transfer from bed to wheelchair.

IF 1.4 4区 医学 Q3 ORTHOPEDICS
Kitaek Lim, Seyoung Lee, Woochol Joseph Choi
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引用次数: 0

Abstract

BackgroundPatient transfers are frequent occupational tasks of caregivers, often leading to lower back injuries. While early detection of injurious moments during patient transfers is helpful to lower the risk of such injuries, it remains a critical challenge.ObjectiveWe developed a classification model for injurious and non-injurious patient transfers using a support vector machine (SVM) with inertial measurement unit (IMU) sensor data of caregivers.MethodsSixteen young adults simulated one-person patient transfers from bed to wheelchair. During trials, the kinematics and kinetics of transfer movements were recorded with a motion capture system, IMU sensor, and force plate. A simple kinematic model was used to determine compressive forces at L5/S1, which were then used to define injurious transfers. For classification, features were extracted from the IMU sensor data to be used in SVM with different window sizes and lead times. Since characteristics of the compressive forces have been documented in our companion paper, we focus on the classification model in this paper.ResultsClassification models were able to differentiate injurious versus non-injurious transfers with accuracy in the range from 84.9-100%. The performance depended on the window size, lead time, and the number and location of IMU sensors. The recommended combination for clinical use would be a window size of 0.2 s, lead time of 0.3 s, and two sensors at both thighs.ConclusionsOur study presents high-performance risk detection models during patient transfers, informing the development of the application to help address musculoskeletal injuries in caregivers.

确定最佳窗口大小、准备时间和传感器组合,以便对病人从床上转移到轮椅的伤害性和非伤害性进行分类。
背景病人转运是护理人员经常要做的工作,常常会导致腰部受伤。我们利用支持向量机(SVM)和护理人员的惯性测量单元(IMU)传感器数据,建立了一个伤害性和非伤害性患者转运分类模型。方法 16 名年轻成年人模拟了单人从床上到轮椅的患者转运。在试验过程中,使用动作捕捉系统、IMU 传感器和测力板记录了转移动作的运动学和动力学。使用一个简单的运动学模型来确定 L5/S1 的压缩力,然后用它来定义损伤性转移。为了进行分类,从 IMU 传感器数据中提取了一些特征,以便在 SVM 中使用不同的窗口大小和提前时间。由于压缩力的特征已在我们的配套论文中进行了记录,因此我们在本文中将重点放在分类模型上。结果分类模型能够区分损伤性和非损伤性转移,准确率在 84.9%-100% 之间。其性能取决于窗口大小、准备时间以及 IMU 传感器的数量和位置。建议临床使用的组合是窗口大小为 0.2 秒,准备时间为 0.3 秒,两个传感器位于两条大腿上。结论我们的研究提出了病人转运过程中的高性能风险检测模型,为应用程序的开发提供了信息,有助于解决护理人员的肌肉骨骼损伤问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.70
自引率
0.00%
发文量
194
审稿时长
6 months
期刊介绍: The Journal of Back and Musculoskeletal Rehabilitation is a journal whose main focus is to present relevant information about the interdisciplinary approach to musculoskeletal rehabilitation for clinicians who treat patients with back and musculoskeletal pain complaints. It will provide readers with both 1) a general fund of knowledge on the assessment and management of specific problems and 2) new information considered to be state-of-the-art in the field. The intended audience is multidisciplinary as well as multi-specialty. In each issue clinicians can find information which they can use in their patient setting the very next day.
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