Fractal dynamics of human gait: Stability of long-range correlations in stride interval fluctuations

Jeffrey M. Hausdorff*, Patrick L. Purdon, C. K. Peng, Zvi Ladin, Jeanne Y. Wei, Ary L. Goldberger

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

540 Scopus citations

Abstract

Fractal dynamics were recently detected in the apparently 'noisy' variations in the stride interval of human walking. Dynamical analysis of these step-to-step fluctuations revealed a self-similar pattern: fluctuations at one time scale are statistically similar to those at multiple other time scales, at least over hundreds of steps, while healthy subjects walk at their normal rate. To study the stability of this fractal property, we analyzed data obtained from healthy subjects who walked for 1 h at their usual, slow, and fast paces. The stride interval fluctuations exhibited long-range correlations with power-law decay for up to 1,000 strides at all 3 walking rates. In contrast, during metronomically paced walking, these long-range correlations disappeared; variations in the stride interval were random (uncorrelated) and nonfractal. The long-range correlations observed during spontaneous walking were not affected by removal of drifts in the time series. Thus the fractal dynamics of spontaneous stride interval are normally quite robust and intrinsic to the locomotor system. Furthermore, this fractal property of neural output may be related to the higher nervous centers responsible for the control of walking rhythm.

Original languageEnglish
Pages (from-to)1448-1457
Number of pages10
JournalJournal of Applied Physiology
Volume80
Issue number5
DOIs
StatePublished - May 1996

Funding

FundersFunder number
National Institute on AgingP60AG008812

    Keywords

    • human locomotion
    • nonlinear dynamics
    • power-law scaling

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