Department of Neurology, Division of Movement Disorders, Beth Israel Deaconess Medical Center, Harvard Medical School, Boston, MA, 02215, USA.
Rush Alzheimer's Disease Center, Rush University Medical Center, Chicago, Il 60612, USA.
Sci Rep. 2017 Jun 12;7(1):3225. doi: 10.1038/s41598-017-03336-1.
A method for capturing gait signatures in neurological conditions that allows comparison of human gait with animal models would be of great value in translational research. However, the velocity dependence of gait parameters and differences between quadruped and biped gait have made this comparison challenging. Here we present an approach that accounts for changes in velocity during walking and allows for translation across species. In mice, we represented spatial and temporal gait parameters as a function of velocity and established regression models that reproducibly capture the signatures of these relationships during walking. In experimental parkinsonism models, regression curves representing these relationships shifted from baseline, implicating changes in gait signatures, but with marked differences between models. Gait parameters in healthy human subjects followed similar strict velocity dependent relationships which were altered in Parkinson's patients in ways that resemble some but not all mouse models. This novel approach is suitable to quantify qualitative walking abnormalities related to CNS circuit dysfunction across species, identify appropriate animal models, and it provides important translational opportunities.
在神经学疾病中捕捉步态特征的方法,如果能够将人类步态与动物模型进行比较,将对转化研究具有重要价值。然而,步态参数的速度依赖性以及四足动物和两足动物步态之间的差异使得这种比较具有挑战性。在这里,我们提出了一种方法,该方法考虑了行走过程中的速度变化,并允许在物种间进行转换。在小鼠中,我们将空间和时间步态参数表示为速度的函数,并建立了回归模型,这些模型在行走过程中可重复地捕捉这些关系的特征。在实验性帕金森病模型中,代表这些关系的回归曲线从基线偏移,暗示了步态特征的变化,但不同模型之间存在明显差异。健康人类受试者的步态参数遵循类似的严格的速度依赖性关系,而帕金森病患者的这些关系发生了改变,与一些但不是所有的小鼠模型相似。这种新方法适合于定量分析与中枢神经系统电路功能障碍相关的跨物种定性行走异常,识别合适的动物模型,并提供重要的转化机会。