Postural instability detection: Aging and the complexity of spatial-temporal distributional patterns for virtually contacting the stability boundary in human stance

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Abstract

Falls among the older population can severely restrict their functional mobility and even cause death. Therefore, it is crucial to understand the mechanisms and conditions that cause falls, for which it is important to develop a predictive model of falls. One critical quantity for postural instability detection and prediction is the instantaneous stability of quiet upright stance based on motion data. However, well-established measures in the field of motor control that quantify overall postural stability using center-of-pressure (COP) or center-of-mass (COM) fluctuations are inadequate predictors of instantaneous stability. For this reason, 2D COP/COM virtual-time-to-contact (VTC) is investigated to detect the postural stability deficits of healthy older people compared to young adults. VTC predicts the temporal safety margin to the functional stability boundary ( = limits of the region of feasible COP or COM displacement) and, therefore, provides an index of the risk of losing postural stability. The spatial directions with increased instability were also determined using quantities of VTC that have not previously been considered. Further, Lempel-Ziv-Complexity (LZC), a measure suitable for on-line monitoring of stability/instability, was applied to explore the temporal structure or complexity of VTC and the predictability of future postural instability based on previous behavior. These features were examined as a function of age, vision and different load weighting on the legs. The primary findings showed that for old adults the stability boundary was contracted and VTC reduced. Furthermore, the complexity decreased with aging and the direction with highest postural instability also changed in aging compared to the young adults. The findings reveal the sensitivity of the time dependent properties of 2D VTC to the detection of postural instability in aging, availability of visual information and postural stance and potential applicability as a predictive model of postural instability during upright stance.

Figures

  • Figure 1. In the upper left panel the 2D COP path of one single representative trial with normal vision, the respective polygon representation of the 2D functional stability boundary and two virtual COP trajectories at arbitrary time instants are illustrated in original aspect ratio, resolved in the force platform coordinate system. Each boundary segment represented one specific direction in relation to the COP (e.g. front or back segments). Additional representative 2D traces of the COP with the functional stability boundary as a function of age and loading (with normal vision) are also illustrated. doi:10.1371/journal.pone.0108905.g001
  • Figure 2. Group mean ± SE (N = 12) 2D COP path length as a function of age, vision and loading. The asterisks * illustrate the significant age 6 loading interaction with regard to age. doi:10.1371/journal.pone.0108905.g002
  • Figure 3. Group mean ± SE (N = 12) VTC mean and minimum values for both COP and COM as a function of age, vision and loading. The asterisks * illustrate the significant age6vision interaction with regard to vision and the age6 loading interaction with regard to age. The arrow with asterisk indicates significant main effects of age and vision. doi:10.1371/journal.pone.0108905.g003
  • Figure 4. Polar distributions of VTC mean magnitude and probability of a virtual contact across the 40 boundary segments as a function of age and loading (with normal vision) using COP data. Each bar represents the group mean value 6 SE (N = 12) for the respective boundary segment. doi:10.1371/journal.pone.0108905.g004
  • Figure 5. Polar distributions of VTC mean magnitude and probability of a virtual contact across the 40 boundary segments as a function of age and loading (with normal vision) using COM data. Each bar represents the group mean value 6 SE (N = 12) for the respective boundary segment. doi:10.1371/journal.pone.0108905.g005
  • Figure 6. Polar distributions of VTC mean magnitude and probability of a virtual contact across the 40 boundary segments as a function of age and loading (visual information removed) using COP data. Each bar represents the group mean value 6 SE (N = 12) for the respective boundary segment. doi:10.1371/journal.pone.0108905.g006
  • Figure 7. Polar distributions of VTC mean magnitude and probability of a virtual contact across the 40 boundary segments as a function of age and loading (visual information removed) using COM data. Each bar represents the group mean value 6 SE (N = 12) for the respective boundary segment. doi:10.1371/journal.pone.0108905.g007
  • Table 1. Group mean 6 SE (N = 12) Lempel Ziv complexity values (LZC) for the Boundary segment sequence for both COP and COM as a function of age, vision and loading.

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CITATION STYLE

APA

Kilby, M. C., Slobounov, S. M., & Newell, K. M. (2014). Postural instability detection: Aging and the complexity of spatial-temporal distributional patterns for virtually contacting the stability boundary in human stance. PLoS ONE, 9(10). https://doi.org/10.1371/journal.pone.0108905

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