Punt Michiel, Bruijn Sjoerd M, van Schooten Kimberley S, Pijnappels Mirjam, van de Port Ingrid G, Wittink Harriet, van Dieën Jaap H
Research group Lifestyle and Health, Utrecht University of Applied Sciences, Bolognalaan 101, Utrecht, 3584 JW, The Netherlands.
Move Research Institute Amsterdam, Department of Human Movement Sciences, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands.
J Neuroeng Rehabil. 2016 Jul 27;13(1):67. doi: 10.1186/s12984-016-0176-z.
Falls in stroke survivors can lead to serious injuries and medical costs. Fall risk in older adults can be predicted based on gait characteristics measured in daily life. Given the different gait patterns that stroke survivors exhibit it is unclear whether a similar fall-prediction model could be used in this group. Therefore the main purpose of this study was to examine whether fall-prediction models that have been used in older adults can also be used in a population of stroke survivors, or if modifications are needed, either in the cut-off values of such models, or in the gait characteristics of interest.
This study investigated gait characteristics by assessing accelerations of the lower back measured during seven consecutive days in 31 non fall-prone stroke survivors, 25 fall-prone stroke survivors, 20 neurologically intact fall-prone older adults and 30 non fall-prone older adults. We created a binary logistic regression model to assess the ability of predicting falls for each gait characteristic. We included health status and the interaction between health status (stroke survivors versus older adults) and gait characteristic in the model.
We found four significant interactions between gait characteristics and health status. Furthermore we found another four gait characteristics that had similar predictive capacity in both stroke survivors and older adults.
The interactions between gait characteristics and health status indicate that gait characteristics are differently associated with fall history between stroke survivors and older adults. Thus specific models are needed to predict fall risk in stroke survivors.
中风幸存者跌倒会导致严重损伤和医疗费用。基于日常生活中测量的步态特征可以预测老年人的跌倒风险。鉴于中风幸存者表现出不同的步态模式,尚不清楚是否可以在该群体中使用类似的跌倒预测模型。因此,本研究的主要目的是检验已用于老年人的跌倒预测模型是否也可用于中风幸存者群体,或者是否需要对这些模型的临界值或感兴趣的步态特征进行修改。
本研究通过评估31名非易跌倒中风幸存者、25名易跌倒中风幸存者、20名神经功能正常的易跌倒老年人和30名非易跌倒老年人连续七天测量的下背部加速度来研究步态特征。我们创建了一个二元逻辑回归模型来评估每种步态特征预测跌倒的能力。我们在模型中纳入了健康状况以及健康状况(中风幸存者与老年人)和步态特征之间的相互作用。
我们发现步态特征与健康状况之间存在四种显著的相互作用。此外,我们还发现另外四种步态特征在中风幸存者和老年人中具有相似的预测能力。
步态特征与健康状况之间的相互作用表明,中风幸存者和老年人的步态特征与跌倒史的关联不同。因此,需要特定的模型来预测中风幸存者的跌倒风险。