New insights into the plantar pressure correlates of walking speed using pedobarographic statistical parametric mapping (pSPM)

Todd C. Pataky, Paolo Caravaggi, Russell Savage, Daniel Parker, John Y. Goulermas, William I. Sellers, Robin H. Crompton

    Research output: Contribution to journalArticlepeer-review

    Abstract

    This study investigates the relation between walking speed and the distribution of peak plantar pressure and compares a traditional ten-region subsampling (10RS) technique with a new technique: pedobarographic statistical parametric mapping (pSPM). Adapted from cerebral fMRI methodology, pSPM is a digital image processing technique that registers foot pressure images such that homologous structures optimally overlap, thereby enabling statistical tests to be conducted at the pixel level. Following previous experimental protocols, we collected pedobarographic records from 10 subjects walking at three different speeds: slow, normal, and fast. Walking speed was recorded and correlated with the peak pressures extracted from the 10 regions, and subsequently with the peak pixel data extracted after pSPM preprocessing. Both methods revealed significant positive correlation between peak plantar pressure and walking speed over the rearfoot and distal forefoot after Bonferroni correction for multiple comparisons. The 10RS analysis found positive correlation in the midfoot and medial proximal forefoot, but the pixel data exhibited significant negative correlation throughout these regions (p
    Original languageEnglish
    Pages (from-to)1987-1994
    Number of pages7
    JournalJournal of biomechanics
    Volume41
    Issue number9
    DOIs
    Publication statusPublished - 2008

    Keywords

    • Biomedical image processing
    • Gait biomechanics
    • Locomotor efficiency
    • Longitudinal arch
    • Midfoot
    • Plantar aponeurosis
    • Plantar pressure
    • Stance phase

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