IEEE Trans Neural Syst Rehabil Eng. 2021;29:478-487. doi: 10.1109/TNSRE.2021.3057257. Epub 2021 Mar 2.
Falls are a major concern of public health, particularly for older adults, as the consequences of falls include serious injuries and death. Therefore, the understanding and evaluation of postural control is considered key, as its deterioration is an important risk factor predisposing to falls. In this work we introduce a new Langevin-based model, local recall, that integrates the information from both the center of pressure (CoP) and the center of mass (CoM) trajectories, and compare its accuracy to a previously proposed model that only uses the CoP. Nine healthy young participants were studied under quiet bipedal standing conditions with eyes either open or closed, while standing on either a rigid surface or a foam. We show that the local recall model produces significantly more accurate prediction than its counterpart, regardless of the eyes and surface conditions, and we replicate these results using another publicly available human dataset. Additionally, we show that parameters estimated using the local recall model are correlated with the quality of postural control, providing a promising method to evaluate static balance. These results suggest that this approach might be interesting to further extend our understanding of the underlying mechanisms of postural control in quiet stance.
跌倒对公共健康是一个主要关注点,特别是对老年人而言,因为跌倒的后果包括严重伤害和死亡。因此,对姿势控制的理解和评估被认为是关键,因为其恶化是导致跌倒的一个重要风险因素。在这项工作中,我们引入了一个新的基于 Langevin 的模型,局部回忆,它整合了来自压力中心(CoP)和质心(CoM)轨迹的信息,并将其准确性与之前仅使用 CoP 的模型进行了比较。九名健康的年轻参与者在安静的双足站立条件下进行研究,眼睛睁开或闭着,同时站在刚性表面或泡沫上。我们表明,无论眼睛和表面条件如何,局部回忆模型产生的预测都明显更准确,并且我们使用另一个公开可用的人类数据集复制了这些结果。此外,我们表明,使用局部回忆模型估计的参数与姿势控制的质量相关,这为评估静态平衡提供了一种很有前途的方法。这些结果表明,这种方法可能有助于进一步加深我们对安静站立时姿势控制的潜在机制的理解。