Arthritis Research UK Biomechanics and Bioengineering Centre, Division School of Healthcare Studies, Cardiff University, Heath Park, Cardiff CF14 4XN, UK.
Hum Mov Sci. 2013 Oct;32(5):984-96. doi: 10.1016/j.humov.2013.07.001. Epub 2013 Oct 10.
Falls are common in older adults. The most common cause of falls is tripping while walking. Simulation studies demonstrated that older adults may be restricted by lower limb strength and movement speed to regain balance after a trip. This review examines how modeling approaches can be used to determine how different measures predict actual fall risk and what some of the causal mechanisms of fall risk are. Although increased gait variability predicts increased fall risk experimentally, it is not clear which variability measures could best be used, or what magnitude of change corresponded with increased fall risk. With a simulation study we showed that the increase in fall risk with a certain increase in gait variability was greatly influenced by the initial level of variability. Gait variability can therefore not easily be used to predict fall risk. We therefore explored other measures that may be related to fall risk and investigated the relationship between stability measures such as Floquet multipliers and local divergence exponents and actual fall risk in a dynamic walking model. We demonstrated that short-term local divergence exponents were a good early predictor for fall risk. Neuronal noise increases with age. It has however not been fully understood if increased neuronal noise would cause an increased fall risk. With our dynamic walking model we showed that increased neuronal noise caused increased fall risk. Although people who are at increased risk of falling reduce their walking speed it had been questioned whether this slower speed would actually cause a reduced fall risk. With our model we demonstrated that a reduced walking speed caused a reduction in fall risk. This may be due to the decreased kinematic variability as a result of the reduced signal-dependent noise of the smaller muscle forces that are required for slower. These insights may be used in the development of fall prevention programs in order to better identify those at increased risk of falling and to target those factors that influence fall risk most.
老年人中跌倒很常见。跌倒最常见的原因是行走时绊倒。模拟研究表明,老年人在绊倒后可能会因下肢力量和运动速度下降而难以恢复平衡。本综述探讨了如何使用建模方法来确定不同的测量指标如何预测实际跌倒风险,以及跌倒风险的一些因果机制是什么。虽然步态变异性增加在实验中预测跌倒风险增加,但尚不清楚哪些变异性测量指标最能被使用,或者与跌倒风险增加对应的变化幅度是多少。通过模拟研究,我们发现,步态变异性的增加与跌倒风险的增加之间的关系受到初始变异性水平的很大影响。因此,步态变异性不能轻易地用于预测跌倒风险。因此,我们探索了其他可能与跌倒风险相关的措施,并在动态行走模型中研究了稳定性措施(如 Floquet 乘子和局部散度指数)与实际跌倒风险之间的关系。我们证明,短期局部散度指数是跌倒风险的一个很好的早期预测指标。随着年龄的增长,神经元噪声增加。然而,增加的神经元噪声是否会导致跌倒风险增加还不完全清楚。通过我们的动态行走模型,我们表明增加的神经元噪声会导致跌倒风险增加。尽管跌倒风险增加的人会降低行走速度,但人们质疑这种较慢的速度是否会真正降低跌倒风险。通过我们的模型,我们证明了较慢的行走速度会降低跌倒风险。这可能是由于较小的肌肉力所需的信号相关噪声减小,从而导致运动学变异性减小。这些见解可用于预防跌倒计划的制定,以便更好地识别那些跌倒风险增加的人,并针对那些对跌倒风险影响最大的因素。