The use of the World Guidelines for Falls Prevention and Management’s risk stratification algorithm in predicting falls in The Irish Longitudinal Study on Ageing (TILDA)

Author:

Hartley Peter1234ORCID,Forsyth Faye3,Rowbotham Scott5,Briggs Robert126ORCID,Kenny Rose Anne126,Romero-Ortuno Roman1267

Affiliation:

1. Discipline of Medical Gerontology , School of Medicine, , Dublin , Ireland

2. Trinity College Dublin , School of Medicine, , Dublin , Ireland

3. Department of Public Health and Primary Care, University of Cambridge , Cambridge , UK

4. Department of Physiotherapy, Cambridge University Hospital NHS Foundation Trust , Cambridge , UK

5. Department of Physiotherapy, The Queen Elizabeth Hospital King’s Lynn NHS Foundation Trust , King’s Lynn , UK

6. Mercer’s Institute for Successful Ageing, St James’s Hospital , Dublin , Ireland

7. Global Brain Health Institute, Trinity College Dublin , Dublin , Ireland

Abstract

Abstract Background the aim of this study was to retrospectively operationalise the World Guidelines for Falls Prevention and Management (WGFPM) falls risk stratification algorithm using data from The Irish Longitudinal Study on Ageing (TILDA). We described how easy the algorithm was to operationalise in TILDA and determined its utility in predicting falls in this population. Methods participants aged ≥50 years were stratified as ‘low risk’, ‘intermediate’ or ‘high risk’ as per WGFPM stratification based on their Wave 1 TILDA assessments. Groups were compared for number of falls, number of people who experienced one or more falls and number of people who experienced an injury when falling between Wave 1 and Wave 2 (approximately 2 years). Results 5,882 participants were included in the study; 4,521, 42 and 1,309 were classified as low, intermediate and high risk, respectively, and 10 participants could not be categorised due to missing data. At Wave 2, 17.4%, 43.8% and 40.5% of low-, intermediate- and high-risk groups reported having fallen, and 7.1%, 18.8% and 18.7%, respectively, reported having sustained an injury from falling. Conclusion the implementation of the WGFPM risk assessment algorithm was feasible in TILDA and successfully differentiated those at greater risk of falling. The high number of participants classified in the low-risk group and lack of differences between the intermediate and high-risk groups may be related to the non-clinical nature of the TILDA sample, and further study in other samples is warranted.

Funder

Irish Department of Health

The Healthcare Improvement Studies Institute

Health Foundation

Science Foundation Ireland

Publisher

Oxford University Press (OUP)

Subject

Geriatrics and Gerontology,Aging,General Medicine

Reference32 articles.

1. Comprehensive geriatric assessment in older people: an umbrella review of health outcomes;Veronese;Age Ageing,2022

2. Exercise for preventing falls in older people living in the community;Sherrington;Cochrane Database Syst Rev,2019

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