Skin Health Research Group, School of Health Sciences, Faculty of Environmental and Life Sciences, University of Southampton, SO17 1BJ, United Kingdom.
Skin Health Research Group, School of Health Sciences, Faculty of Environmental and Life Sciences, University of Southampton, SO17 1BJ, United Kingdom.
Clin Biomech (Bristol). 2020 Dec;80:105181. doi: 10.1016/j.clinbiomech.2020.105181. Epub 2020 Sep 20.
Pressure mapping technology has been adapted to monitor over prolonged periods to evaluate pressure ulcer risk in individuals during extended lying postures. However, temporal pressure distribution signals are not currently used to identify posture or mobility. The present study was designed to examine the potential of an automated approach for the detection of a range of static lying postures and corresponding transitions between postures.
Healthy subjects (n = 19) adopted a range of sagittal and lateral lying postures. Parameters reflecting both the interactions at the support surface and body movements were continuously monitored. Subsequently, the derivative of each signal was examined to identify transitions between postures. Three machine learning algorithms, namely Naïve-Bayes, k-Nearest Neighbors and Support Vector Machine classifiers, were assessed to predict a range of static postures, established with a training model (n = 9) and validated with new input from test data (n = 10).
Results showed that the derivative signals provided a means to detect transitions between postures, with actimetry providing the most distinct signal perturbations. The accuracy in predicting the range of postures from new test data ranged between 82%-100%, 70%-98% and 69%-100% for Naïve-Bayes, k-Nearest Neighbors and Support Vector Machine classifiers, respectively.
The present study demonstrated that detection of both static postures and their corresponding transitions was achieved by combining machine learning algorithms with robust parameters from two monitoring systems. This approach has the potential to provide reliable indicators of posture and mobility, to support personalised pressure ulcer prevention strategies.
压力测绘技术已被应用于长时间监测,以评估个体在长时间卧床姿势下的压疮风险。然而,目前的压力分布信号尚未用于识别姿势或活动。本研究旨在检验一种自动化方法在检测一系列静态卧床姿势和相应姿势转换方面的潜力。
健康受试者(n=19)采取了一系列矢状面和侧面卧床姿势。连续监测反映支撑面相互作用和身体运动的参数。随后,检查每个信号的导数以识别姿势之间的转换。评估了三种机器学习算法,即朴素贝叶斯、k 最近邻和支持向量机分类器,以预测一系列静态姿势,使用训练模型(n=9)建立并使用新的测试数据进行验证(n=10)。
结果表明,导数信号提供了一种检测姿势转换的方法,而动作计提供了最明显的信号干扰。从新的测试数据预测一系列姿势的准确率在朴素贝叶斯、k 最近邻和支持向量机分类器之间分别为 82%-100%、70%-98%和 69%-100%。
本研究表明,通过将机器学习算法与来自两个监测系统的稳健参数相结合,可以实现对静态姿势及其相应转换的检测。这种方法有可能提供可靠的姿势和活动指标,以支持个性化的压疮预防策略。