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Research Article

Turning duration and steps predict future falls in poststroke hemiplegic individuals: A preliminary cohort study

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Pages 33-41 | Received 13 Nov 2019, Accepted 19 Apr 2020, Published online: 12 May 2020
 

ABSTRACT

Introduction: Turning was reported as one of the activities that most frequently leads to falling among stroke patients. This study investigated whether the duration and steps of a 180° turn while walking can distinguish retrospective fallers from non-fallers and predict future falls in a 1-year period in patients with poststroke hemiplegia.

Methods: Thirty stroke patients were recruited. They were instructed to get up from a chair, walk straight 3 m, turn around, and return to seated position to assess the 180° walking-turn task. Turning performance was measured by two inertial sensor units of Physilog. Turn duration and steps were recorded for analysis. The numbers of retrospective and prospective falls were also obtained.

Results: No significant difference was observed between retrospective stroke fallers and non-fallers in turn duration and steps. Turn duration and steps were significantly greater in prospective stroke fallers than in non-fallers. The cutoff turn duration of 4 s (area under the curve 0.75, 95% CI: 0.56–0.93, sensitivity 67%, specificity 80%, p =.04) and turn step of 7 steps (area under the curve 0.73, 95% CI: 0.51–0.94, sensitivity 56%, specificity 85%, p =.05) were found to most accurately predict prospective stroke fallers from non-fallers.

Conclusions: Turn duration and steps were unable to discriminate between retrospective fallers and non-fallers but could predict prospective falls in patients with stroke. More than 4 s or 7 steps to complete a 180° turn while walking can be a predictor for patients with stroke at an increased risk of falling.

Acknowledgments

The authors would like to acknowledge the essential contribution made by the study participants who generously volunteered their time.

Permission to publish personal information form

Tian-En Zou, Pei-Jung Liang, and Shu-Chun Lee agree to publish their personal information in Topics in Stroke Rehabilitation.

Additional information

Funding

This work was supported by the Taiwanese Ministry of Science and Technology under [Grant number MOST107-2314-B-038-009].

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