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Gait information flow indicates complex motor dysfunction

Dirk Hoyer et al 2005 Physiol. Meas. 26 545-554   doi: 10.1088/0967-3334/26/4/018  Help

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Dirk Hoyer1, Ulf Kletzin2, Daniela Adler2,4, Steffen Adler2,4, Winfried Meissner3 and Reinhard Blickhan4
1 Institute for Pathophysiology and Pathobiochemistry, Friedrich Schiller University, Jena, Germany
2 Friendly Sensors AG, Jena, Germany
3 Department of Anesthesiology and Intensive Care, Friedrich Schiller University, Jena, Germany
4 Department of Science of Motion, Institute of Sportscience, Friedrich Schiller University, Jena, Germany
E-mail: dirk.hoyer@mti.uni-jena.de

Abstract. Gait-related back movements require coordination of multiple extremities including the flexible trunk. Ageing and chronic back pain influence these adjustments. These complex coordinations can advantageously be quantified by information theoretically based communication measures such as the gait information flow (GIF). Nine back pain patients (aged 61 ± 10yr) and 12 controls (aged 38 ± 10yr) were investigated during normal walking across a distance of 300 m. The back movements were measured as distances between characteristic points (cervical spine CS, thoracic spine TS, lumbar spine LS) by the sonoSens® Monitor, a system for mobile motion analysis. Gait information flow and regularity indices (RI1: short prediction horizon of 100 ms, RI2: longer prediction horizon of walking period) were assessed as communication characteristics. All indices were non-parametrically tested for group differences. Sensitivity and specificity were assessed by bivariate logistic regression models. We found regularity indices systematically dependent on measurement points, information flow horizon and groups. In the patients RI1 was increased, but RI2 was decreased in comparison to the control group. These results quantitatively characterize the altered complex communication in the patients. We conclude that ageing and/or chronic back pain related dysfunctions of gait can advantageously be monitored by gait information flow characteristics of back movements measured as distances between characteristics points at the back surface.

Keywords: motor coordination, back movement, gait analysis, gait information flow, ageing, back pain

Print publication: Issue 4 (August 2005)
Received 18 February 2005, accepted for publication 19 April 2005
Published 10 May 2005

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