School of Exercise Science, Ellmer College of Health Sciences, Old Dominion University, United States.
School of Exercise Science, Ellmer College of Health Sciences, Old Dominion University, United States.
J Biomech. 2024 Aug;173:112253. doi: 10.1016/j.jbiomech.2024.112253. Epub 2024 Jul 31.
For time-continuous analysis of gait, the problem of variations in cycle durations is resolved by normalizing to the gait cycle, but results depend on the definition of the cycle start. Gait cycle normalization ignores variations in gait phase durations, which results in averaging and comparing data across different phases. We propose gait phase normalization as part of a comprehensive method for independently analyzing magnitude and timing differences. First, gait phases are identified and differences in absolute and/or relative timing of phase durations or any point of interest between conditions or groups are analyzed using standard statistics. Next, time-continuous gait data is normalized to gait phases, and statistical parametric mapping (SPM) is used to assess magnitude differences in gait data. This approach is demonstrated on data recorded from ten young healthy adults walking on a treadmill at five different speeds. Sagittal knee angle was normalized to gait cycle or gait phase using five different gait cycle start events. Walking at different speeds resulted in significant changes in gait phase durations, highlighting a problem ignored by gait cycle normalization. SPM results for knee angle normalized to gait cycle varied from normalization to gait phases. Gait phase normalized SPM results were robust to the definition of the cycle start, in contrast to gait cycle normalized data. The approach of analyzing phase durations and normalizing data to gait phases overcomes previous limitations and enables a comprehensive analysis of magnitude and timing differences in time-continuous gait data and could be readily adapted to other tasks.
为了对步态进行连续时间分析,通过将其归一化为步态周期来解决周期持续时间变化的问题,但结果取决于周期起点的定义。步态周期归一化忽略了步态相位持续时间的变化,这导致在不同相位上进行平均和比较数据。我们提出步态相位归一化作为独立分析幅度和时间差异的综合方法的一部分。首先,确定步态相位,并使用标准统计分析来分析条件或组之间相位持续时间或任何感兴趣点的绝对和/或相对定时以及任何点的差异。接下来,将连续时间步态数据归一化为步态相位,并使用统计参数映射(SPM)评估步态数据的幅度差异。该方法在十个年轻健康成年人在跑步机上以五种不同速度行走时记录的数据上进行了演示。矢状面膝关节角度使用五种不同的步态周期起始事件归一化为步态周期或步态相位。以不同速度行走会导致步态相位持续时间发生显著变化,这突出了步态周期归一化忽略的一个问题。归一化为步态周期的膝关节角度的 SPM 结果因归一化为步态相位而有所不同。与步态周期归一化数据相比,步态相位归一化的 SPM 结果对周期起点的定义具有鲁棒性。分析相位持续时间并将数据归一化为步态相位的方法克服了以前的限制,能够对连续时间步态数据的幅度和时间差异进行全面分析,并且可以很容易地适应其他任务。