Literature DB >> 19543681

Predicting in-patient falls in a geriatric clinic: a clinical study combining assessment data and simple sensory gait measurements.

M Marschollek1, G Nemitz, M Gietzelt, K H Wolf, H Meyer Zu Schwabedissen, R Haux.   

Abstract

BACKGROUND: Falls are among the predominant causes for morbidity and mortality in elderly persons and occur most often in geriatric clinics. Despite several studies that have identified parameters associated with elderly patients' fall risk, prediction models -- e.g., based on geriatric assessment data -- are currently not used on a regular basis. Furthermore, technical aids to objectively assess mobility-associated parameters are currently not used.
OBJECTIVES: To assess group differences in clinical as well as common geriatric assessment data and sensory gait measurements between fallers and non-fallers in a geriatric sample, and to derive and compare two prediction models based on assessment data alone (model #1) and added sensory measurement data (model #2).
METHODS: For a sample of n=110 geriatric in-patients (81 women, 29 men) the following fall risk-associated assessments were performed: Timed 'Up & Go' (TUG) test, STRATIFY score and Barthel index. During the TUG test the subjects wore a triaxial accelerometer, and sensory gait parameters were extracted from the data recorded. Group differences between fallers (n=26) and non-fallers (n=84) were compared using Student's t-test. Two classification tree prediction models were computed and compared.
RESULTS: Significant differences between the two groups were found for the following parameters: time to complete the TUG test, transfer item (Barthel), recent falls (STRATIFY), pelvic sway while walking and step length. Prediction model #1 (using common assessment data only) showed a sensitivity of 38.5% and a specificity of 97.6%, prediction model #2 (assessment data plus sensory gait parameters) performed with 57.7% and 100%, respectively. DISCUSSION AND
CONCLUSION: Significant differences between fallers and non-fallers among geriatric in-patients can be detected for several assessment subscores as well as parameters recorded by simple accelerometric measurements during a common mobility test. Existing geriatric assessment data may be used for falls prediction on a regular basis. Adding sensory data improves the specificity of our test markedly.

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Year:  2009        PMID: 19543681     DOI: 10.1007/s00391-009-0035-7

Source DB:  PubMed          Journal:  Z Gerontol Geriatr        ISSN: 0948-6704            Impact factor:   1.281


  24 in total

1.  The Physical Performance Test as a predictor of frequent fallers: a prospective community-based cohort study.

Authors:  Kim Delbaere; Nele Van den Noortgate; Jan Bourgois; Guy Vanderstraeten; Willems Tine; Dirk Cambier
Journal:  Clin Rehabil       Date:  2006-01       Impact factor: 3.477

2.  Development of a Portable Acceleration Monitor Device and its clinical application for the Quantitative Gait Assessment of the Elderly.

Authors:  K Takenoshita; N Shiozawa; J Onishi; M Makikawa
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2005

3.  Clinical history and biologic age predicted falls better than objective functional tests.

Authors:  Paul Gerdhem; Karin A M Ringsberg; Kristina Akesson; Karl J Obrant
Journal:  J Clin Epidemiol       Date:  2005-03       Impact factor: 6.437

4.  Editorial: pervasive healthcare. Selected papers from the Pervasive Healthcare 2008 Conference, Tampere, Finland.

Authors:  N Saranummi; H Wactlar
Journal:  Methods Inf Med       Date:  2008       Impact factor: 2.176

5.  An accelerometry-based system for the assessment of balance and postural sway.

Authors:  G Kamen; C Patten; C D Du; S Sison
Journal:  Gerontology       Date:  1998       Impact factor: 5.140

6.  The costs of fatal and non-fatal falls among older adults.

Authors:  J A Stevens; P S Corso; E A Finkelstein; T R Miller
Journal:  Inj Prev       Date:  2006-10       Impact factor: 2.399

7.  Characteristics of the fall-prone patient.

Authors:  J M Morse; S J Tylko; H A Dixon
Journal:  Gerontologist       Date:  1987-08

8.  Evaluation of the STRATIFY falls prediction tool on a geriatric unit.

Authors:  Esther Coker; David Oliver
Journal:  Outcomes Manag       Date:  2003 Jan-Mar

9.  Development and evaluation of evidence based risk assessment tool (STRATIFY) to predict which elderly inpatients will fall: case-control and cohort studies.

Authors:  D Oliver; M Britton; P Seed; F C Martin; A H Hopper
Journal:  BMJ       Date:  1997-10-25

10.  Injurious falls in nonambulatory nursing home residents: a comparative study of circumstances, incidence, and risk factors.

Authors:  P B Thapa; K G Brockman; P Gideon; R L Fought; W A Ray
Journal:  J Am Geriatr Soc       Date:  1996-03       Impact factor: 5.562

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  19 in total

1.  Smartphone-based solutions for fall detection and prevention: the FARSEEING approach.

Authors:  S Mellone; C Tacconi; L Schwickert; J Klenk; C Becker; L Chiari
Journal:  Z Gerontol Geriatr       Date:  2012-12       Impact factor: 1.281

2.  Risk assessment after hip fracture: check the "healthy" leg!

Authors:  K Pils; W Meisner; W Haas; G Ebenbichler; F Herrmann
Journal:  Z Gerontol Geriatr       Date:  2011-12-14       Impact factor: 1.281

Review 3.  Toward Automating Clinical Assessments: A Survey of the Timed Up and Go.

Authors:  Gina Sprint; Diane J Cook; Douglas L Weeks
Journal:  IEEE Rev Biomed Eng       Date:  2015-01-12

Review 4.  Diagnostic accuracy of the STRATIFY clinical prediction rule for falls: a systematic review and meta-analysis.

Authors:  Jennifer Billington; Tom Fahey; Rose Galvin
Journal:  BMC Fam Pract       Date:  2012-08-07       Impact factor: 2.497

5.  Sensors vs. experts - a performance comparison of sensor-based fall risk assessment vs. conventional assessment in a sample of geriatric patients.

Authors:  Michael Marschollek; Anja Rehwald; Klaus-Hendrik Wolf; Matthias Gietzelt; Gerhard Nemitz; Hubertus Meyer zu Schwabedissen; Mareike Schulze
Journal:  BMC Med Inform Decis Mak       Date:  2011-06-28       Impact factor: 2.796

6.  Mining geriatric assessment data for in-patient fall prediction models and high-risk subgroups.

Authors:  Michael Marschollek; Mehmet Gövercin; Stefan Rust; Matthias Gietzelt; Mareike Schulze; Klaus-Hendrik Wolf; Elisabeth Steinhagen-Thiessen
Journal:  BMC Med Inform Decis Mak       Date:  2012-03-14       Impact factor: 2.796

7.  An accelerometer-based method for estimating fluidity in the sit-to-walk task.

Authors:  Tomoyuki Asakura; Hikaru Hagiwara; Yoshiyuki Miyazawa; Shigeru Usuda
Journal:  J Phys Ther Sci       Date:  2015-11-30

Review 8.  Sensor-based fall risk assessment in older adults with or without cognitive impairment: a systematic review.

Authors:  Jelena Bezold; Janina Krell-Roesch; Tobias Eckert; Darko Jekauc; Alexander Woll
Journal:  Eur Rev Aging Phys Act       Date:  2021-07-09       Impact factor: 3.878

9.  Review: Are we stumbling in our quest to find the best predictor? Over-optimism in sensor-based models for predicting falls in older adults.

Authors:  Tal Shany; Kejia Wang; Ying Liu; Nigel H Lovell; Stephen J Redmond
Journal:  Healthc Technol Lett       Date:  2015-08-03

10.  Muscular Activity and Fatigue in Lower-Limb and Trunk Muscles during Different Sit-To-Stand Tests.

Authors:  Cristina Roldán-Jiménez; Paul Bennett; Antonio I Cuesta-Vargas
Journal:  PLoS One       Date:  2015-10-27       Impact factor: 3.240

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