Interdisciplinary Consortium on Advanced Motion Performance (iCAMP), Michael E. DeBakey Department of Surgery, Baylor College of Medicine, Houston, TX 77030, USA.
Circulation Concepts Inc., Houston, TX 77030, USA.
Sensors (Basel). 2018 Jun 1;18(6):1763. doi: 10.3390/s18061763.
Frailty assessment is dependent on the availability of trained personnel and it is currently limited to clinic and supervised setting. The growing aging population has made it necessary to find phenotypes of frailty that can be measured in an unsupervised setting for translational application in continuous, remote, and in-place monitoring during daily living activity, such as walking. We analyzed gait performance of 161 older adults using a shin-worn inertial sensor to investigate the feasibility of developing a foot-worn sensor to assess frailty. Sensor-derived gait parameters were extracted and modeled to distinguish different frailty stages, including non-frail, pre-frail, and frail, as determined by Fried Criteria. An artificial neural network model was implemented to evaluate the accuracy of an algorithm using a proposed set of gait parameters in predicting frailty stages. Changes in discriminating power was compared between sensor data extracted from the left and right shin sensor. The aim was to investigate the feasibility of developing a foot-worn sensor to assess frailty. The results yielded a highly accurate model in predicting frailty stages, irrespective of sensor location. The independent predictors of frailty stages were propulsion duration and acceleration, heel-off and toe-off speed, mid stance and mid swing speed, and speed norm. The proposed model enables discriminating different frailty stages with area under curve ranging between 83.2⁻95.8%. Furthermore, results from the neural network suggest the potential of developing a single-shin worn sensor that would be ideal for unsupervised application and footwear integration for continuous monitoring during walking.
虚弱评估依赖于训练有素的人员的可用性,目前仅限于诊所和监督环境。不断增长的老龄化人口使得有必要寻找可以在无人监督的环境中测量的虚弱表型,以便在日常生活活动(如行走)中进行连续、远程和原地的监测中进行转化应用。我们使用腿上佩戴的惯性传感器分析了 161 名老年人的步态表现,以研究开发一种可用于评估虚弱的脚穿传感器的可行性。提取并建模了传感器衍生的步态参数,以区分不同的虚弱阶段,包括非虚弱、虚弱前期和虚弱,如 Fried 标准所确定的。实施了人工神经网络模型,以评估使用拟议的一组步态参数的算法在预测虚弱阶段中的准确性。比较了来自左、右腿传感器数据的区分能力变化。目的是研究开发一种可用于评估虚弱的脚穿传感器的可行性。结果产生了一个高度准确的模型,可预测虚弱阶段,而与传感器位置无关。虚弱阶段的独立预测因子是推进持续时间和加速度、脚跟离地和脚趾离地速度、中间站立和中间摆动速度以及速度规范。该模型可以通过曲线下面积在 83.2⁻95.8%之间来区分不同的虚弱阶段。此外,神经网络的结果表明,开发单腿佩戴传感器具有潜力,该传感器非常适合无人监督的应用,并且可用于在行走过程中进行连续监测时整合鞋类。