| Literature DB >> 19919296 |
Matthias Gietzelt1, Gerhard Nemitz, Klaus-Hendrik Wolf, Hubertus Meyer Zu Schwabedissen, Reinhold Haux, Michael Marschollek.
Abstract
Falls have various causes and are often associated with mobility impairments. Preventive steps to avoid falls may be initiated, if an increasing fall risk could be detected in time. The objective of this article is to identify an automated sensor-based method to determine fall risk of patients based on objectively measured gait parameters. One hundred fifty-one healthy subjects and 90 subjects at risk of falling were measured during a Timed 'Up & Go' test with a single triaxial acceleration sensor worn on a waist belt. The fall risk was assessed using the STRATIFY score. A decision tree induction algorithm was used to distinguish between subjects with high and low risk using the determined gait parameters. The results of the risk classification produce an overall accuracy of 90.4% in relation to STRATIFY score. The sensitivity amount to 89.4%, the specificity to 91.0% and the reliability parameter kappa equals 0.79. The method presented is able to distinguish between subjects with high and low fall risk. It is unobtrusive and therefore may be applied over extended time periods. A subsequent study is needed to confirm the model's suitability for data recorded in patients' everyday lives.Entities:
Mesh:
Year: 2009 PMID: 19919296 DOI: 10.3109/17538150903356275
Source DB: PubMed Journal: Inform Health Soc Care ISSN: 1753-8157 Impact factor: 2.439