Best Features Selection for the Implementation of a Postural Sway Classification Methodology on a Wearable Node

Bruno Andò;Salvatore Baglio;Vincenzo Marletta;Valeria Finocchiaro;Valeria Dibilio;Giovanni Mostile;Mario Zappia;Marco Branciforte;Salvatore Curti
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引用次数: 2

Abstract

The possibility of identifying potential altered postural status in frail people, including patients with Parkinson Disease, represents an important clinical outcome in the management of frail elderly subjects, since this could lead to greater instability and, consequently, an increased risk of falling. Several solutions proposed in the literature for the monitoring of the postural behavior use infrastructure-dependent approaches or wearable devices, which do not allow to distinguish among different kinds of postural sways. In this article, a low-cost and effective wearable solution to classify four different classes of postural behaviors (Standing, Antero-Posterior, Medio-Lateral, and Unstable) is proposed. The solution exploits a sensor node, equipped by a triaxial accelerometer, and a dedicated algorithm implementing the classification task. Different quantities are proposed to assess performance of the proposed strategy, with particular regards to the system capability to correctly classify an unknown pattern, through the index Q%, and the reliability index, RI%. Results achieved across a wide dataset demonstrated the suitability of the methodology developed, with Q% =99.84% and around 70% of classifications, showing an RI% above 65%.
在可穿戴节点上实现姿势摇摆分类方法的最佳特征选择
识别包括帕金森病患者在内的体弱者潜在姿势状态改变的可能性,是管理体弱老年受试者的一个重要临床结果,因为这可能会导致更大的不稳定性,从而增加跌倒的风险。文献中提出的几种用于监测姿势行为的解决方案使用依赖于基础设施的方法或可穿戴设备,这些方法不允许区分不同类型的姿势摆动。本文提出了一种低成本、有效的可穿戴解决方案,用于对四类不同的姿势行为(站立、前后、中外侧和不稳定)进行分类。该解决方案利用了配备三轴加速度计的传感器节点和实现分类任务的专用算法。提出了不同的量来评估所提出的策略的性能,特别是通过指数Q%和可靠性指数RI%对未知模式进行正确分类的系统能力。在广泛的数据集上获得的结果证明了所开发方法的适用性,Q%=99.84%,约70%的分类显示RI%高于65%。
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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