| Literature DB >> 23669370 |
Sayed Naseel Mohamed Thangal1, Mukul Talaty, Sriram Balasubramanian.
Abstract
Quantifying the risk of falling (falls risk) would be helpful in treating people with gait disorders. The gait sensitivity norm (GSN) is a stability measure that correlates well to risk of falling in passive dynamic walkers but has not been evaluated on humans or human-like walking models. We assessed the correlation of GSN to risk of falling in a neuromusculoskeletal (NMS) walking model. Specifically, we evaluated the correlation of GSN to the actual disturbance rejection (ADR) of the model and the sensitivity of this relationship to gait parameter, Poincaré section selection and steady state variability correction. Statistically significant results at p<0.05 were obtained for some of the gait indicators evaluated at the point in the gait cycle where they were most variable. The correlation between GSN and ADR was sensitive to gait indicator and Poincaré sections evaluated but not to steady state variability correction. The current work suggests some simple steps to reduce the sensitivity of GSN to arbitrary and subjective factors. Overall, the findings support the potential of GSN to be a clinically applicable measure of falls risk. Further study is required to identify methods to more definitively select the various factors within the GSN calculation and to confirm its ability to predict falls risk in human subjects.Entities:
Keywords: ADR; Bipedal walking stability; COM; Disturbance rejection; GRF; GSN; HAT; HFDC; Neuromusculoskeletal model; SD; Simulation; Variability; actual disturbance rejection; center of mass; gait sensitivity norm; ground reaction force; head, arms and trunk; hip flexion damping coefficient; maxFM; maximum Floquet multiplier; standard deviation
Mesh:
Year: 2013 PMID: 23669370 DOI: 10.1016/j.medengphy.2013.03.018
Source DB: PubMed Journal: Med Eng Phys ISSN: 1350-4533 Impact factor: 2.242