Department of Kinesiology, University of Texas, 1 University Station, D3700, Austin, TX 78712-0360, USA.
J Biomech. 2010 Nov 16;43(15):2929-35. doi: 10.1016/j.jbiomech.2010.07.008. Epub 2010 Aug 12.
People at risk of falling exhibit increased gait variability, which may predict future falls. However, the causal mechanisms underlying these correlations are not well known. Increased neuronal noise associated with aging likely leads to increased gait variability, which could in turn lead to increased fall risk. This paper presents a model of how changes in neuromuscular noise independently affect gait variability and probability of falling, and aims to determine the extent to which changes in gait variability directly predict fall risk. We used a dynamic walking model that incorporates a lateral step controller to maintain lateral stability. Noise was applied to this controller to approximate neuromuscular noise in humans. Noise amplitude was varied between low amplitudes that did not induce falls and high amplitudes for which the model always fell. With increases in noise amplitude, the model fell more often and after fewer steps. Gait variability increased with noise amplitude and predicted increased probability of falling. Importantly, these relationships were not linear. At either low gait variability or very high gait variability, small increases in noise and variability affected probability of falling very little. Conversely, at intermediate noise and/or variability levels, the same small increases resulted in large increases in probability of falling. Our results validate the idea that age-related increases in neuromuscular noise likely play a direct contributing role in increasing fall risk. However, neuromuscular noise remains only one of many important factors that need to be considered. These findings have important implications for fall prevention research and practice.
易跌倒人群的步态变化性增加,这可能预示着未来会跌倒。然而,这些相关性的潜在因果机制尚不清楚。与衰老相关的神经元噪声增加可能导致步态变化性增加,进而导致跌倒风险增加。本文提出了一个模型,说明神经肌肉噪声的变化如何独立地影响步态变化性和跌倒的可能性,并旨在确定步态变化性的变化在多大程度上直接预测跌倒风险。我们使用了一个包含侧向步控制器以维持侧向稳定性的动态步行模型。将噪声应用于该控制器以模拟人类的神经肌肉噪声。噪声幅度在不会引起跌倒的低幅度和模型总是跌倒的高幅度之间变化。随着噪声幅度的增加,模型跌倒的频率更高,所需的步数更少。步态变化性随噪声幅度增加而增加,预测跌倒的可能性增加。重要的是,这些关系不是线性的。在低步态变化性或非常高的步态变化性下,噪声和变化性的微小增加对跌倒的可能性影响很小。相反,在中等噪声和/或变化性水平下,相同的小增加会导致跌倒的可能性大大增加。我们的结果验证了这样一种观点,即与年龄相关的神经肌肉噪声增加可能直接导致跌倒风险增加。然而,神经肌肉噪声只是需要考虑的许多重要因素之一。这些发现对跌倒预防研究和实践具有重要意义。