Martínez-Ramírez Alicia, Martinikorena Ion, Gómez Marisol, Lecumberri Pablo, Millor Nora, Rodríguez-Mañas Leocadio, García García Francisco José, Izquierdo Mikel
Mathematics Department, Public University of Navarra, Campus de Arrosadía, 31006, Pamplona, Navarra, Spain.
Division of Geriatric Medicine, University Hospital of Getafe, Madrid, Spain.
J Neuroeng Rehabil. 2015 May 24;12:48. doi: 10.1186/s12984-015-0040-6.
Physical frailty has become the center of attention of basic, clinical and demographic research due to its incidence level and gravity of adverse outcomes with age. Frailty syndrome is estimated to affect 20 % of the population older than 75 years. Thus, one of the greatest current challenges in this field is to identify parameters that can discriminate between vulnerable and robust subjects. Gait analysis has been widely used to predict frailty. The aim of the present study was to investigate whether a collection of parameters extracted from the trunk acceleration signals could provide additional accurate information about frailty syndrome.
A total of 718 subjects from an elderly population (319 males, 399 females; age: 75.4 ± 6.1 years, mass: 71.8 ± 12.4 kg, height: 158 ± 6 cm) volunteered to participate in this study. The subjects completed a 3-m walk test at their own gait velocity. Kinematic data were acquired from a tri-axial inertial orientation tracker.
The spatio-temporal and frequency parameters measured in this study with an inertial sensor are related to gait disorders and showed significant differences among groups (frail, pre-frail and robust). A selection of those parameters improves frailty classification obtained to gait velocity, compared to classification model based on gait velocity solely.
Gait parameters simultaneously used with gait velocity are able to provide useful information for a more accurate frailty classification. Moreover, this technique could improve the early detection of pre-frail status, allowing clinicians to perform measurements outside of a laboratory environment with the potential to prescribe a treatment for reversing their physical decline.
由于身体虚弱的发生率及其随年龄增长产生不良后果的严重性,它已成为基础、临床和人口统计学研究的关注焦点。据估计,虚弱综合征影响着20%的75岁以上人群。因此,该领域当前最大的挑战之一是确定能够区分脆弱个体和强健个体的参数。步态分析已被广泛用于预测身体虚弱。本研究的目的是调查从躯干加速度信号中提取的一组参数是否能提供关于虚弱综合征的额外准确信息。
共有718名老年受试者(319名男性,399名女性;年龄:75.4±6.1岁,体重:71.8±12.4千克,身高:158±6厘米)自愿参与本研究。受试者以自己的步态速度完成3米步行测试。运动学数据由一个三轴惯性定向追踪器采集。
本研究中使用惯性传感器测量的时空参数和频率参数与步态障碍有关,并且在不同组(虚弱、衰弱前期和强健)之间存在显著差异。与仅基于步态速度的分类模型相比,选择这些参数可改善基于步态速度的虚弱分类。
与步态速度同时使用的步态参数能够为更准确的虚弱分类提供有用信息。此外,这项技术可以改善衰弱前期状态的早期检测,使临床医生能够在实验室环境之外进行测量,有可能开出逆转身体衰退的治疗方案。