Rush Alzheimer's Disease Center, Chicago, Illinois.
Department of Neurological Sciences, Chicago, Illinois.
J Gerontol A Biol Sci Med Sci. 2020 May 22;75(6):1176-1183. doi: 10.1093/gerona/glz160.
Gait speed is a robust nonspecific predictor of health outcomes. We examined if combinations of gait speed and other mobility metrics are associated with specific health outcomes.
A sensor (triaxial accelerometer and gyroscope) placed on the lower back, measured mobility in the homes of 1,249 older adults (77% female; 80.0, SD = 7.72 years). Twelve gait scores were extracted from five performances, including (a) walking, (b) transition from sit to stand, (c) transition from stand to sit, (d) turning, and (e) standing posture. Using separate Cox proportional hazards models, we examined which metrics were associated with time to mortality, incident activities of daily living disability, mobility disability, mild cognitive impairment, and Alzheimer's disease dementia. We used a single integrated analytic framework to determine which gait scores survived to predict each outcome.
During 3.6 years of follow-up, 10 of the 12 gait scores predicted one or more of the five health outcomes. In further analyses, different combinations of 2-3 gait scores survived backward elimination and were associated with the five outcomes. Sway was one of the three scores that predicted activities of daily living disability but was not included in the final models for other outcomes. Gait speed was included along with other metrics in the final models predicting mortality and activities of daily living disability but not for other outcomes.
When analyzing multiple mobility metrics together, different combinations of mobility metrics are related to specific adverse health outcomes. Digital technology enhances our understanding of impaired mobility and may provide mobility biomarkers that predict distinct health outcomes.
步态速度是健康结果的一个强有力的非特异性预测指标。我们研究了步态速度和其他移动性指标的组合是否与特定的健康结果相关。
一个位于下背部的传感器(三轴加速度计和陀螺仪),测量了 1249 名老年人(77%为女性;80.0,SD=7.72 岁)家中的移动能力。从五个动作中提取了 12 个步态得分,包括(a)行走,(b)从坐姿到站立的转换,(c)从站立到坐姿的转换,(d)转弯,和(e)站立姿势。使用单独的 Cox 比例风险模型,我们研究了哪些指标与死亡率、新发日常生活活动障碍、移动障碍、轻度认知障碍和阿尔茨海默病痴呆的时间相关。我们使用单一的综合分析框架来确定哪些步态得分可以预测每个结果。
在 3.6 年的随访期间,12 个步态得分中的 10 个预测了 5 个健康结果中的一个或多个。在进一步的分析中,2-3 个步态得分的不同组合通过向后淘汰幸存下来,并与 5 个结果相关。摇摆是预测日常生活活动障碍的三个得分之一,但未包含在其他结果的最终模型中。步态速度与其他指标一起包含在预测死亡率和日常生活活动障碍的最终模型中,但不包括其他结果。
当一起分析多个移动性指标时,不同的移动性指标组合与特定的不良健康结果相关。数字技术增强了我们对受损移动性的理解,并可能提供预测不同健康结果的移动性生物标志物。