AI Article Synopsis

  • The World Falls Guidelines (WFG) propose a fall risk classification system (low, intermediate, high) and were evaluated against other fall screening tools, like the AGS/BGS algorithm and fall history.
  • A study with 1509 older adults assessed falls over one year, using various methods to measure the algorithm’s predictive performance.
  • The WFG algorithm can effectively identify fall risk, especially when using the 3KQ tool, but shows similar performance to other tools, with the 3KQ being more sensitive but less specific.

Article Abstract

Background: The World Falls Guidelines (WFG) propose an algorithm that classifies patients as low-, intermediate-, and high-risk. We evaluated different operationalizations of the WFG algorithm and compared its predictive performance to other screening tools for falls, namely: the American Geriatrics Society and British Geriatrics Society (AGS/BGS) algorithm, the 3KQ on their own and fall history on its own.

Methods: We included data from 1509 adults aged ≥65 years from the population-based Longitudinal Aging Study Amsterdam. The outcome was ≥1 fall during 1-year follow-up, which was ascertained using fall calendars. The screening tools' items were retrospectively operationalized using baseline measures, using proxies where necessary.

Results: Sensitivity ranged between 30.9-48.0% and specificity ranged between 77.0-88.2%. Operationalizing the algorithm with the 3KQ instead of fall history yielded a higher sensitivity but lower specificity, whereas operationalization with the Clinical Frailty Scale (CFS) classification tree instead of Fried's frailty criteria did not affect predictive performance. Compared to the WFG algorithm, the AGS/BGS algorithm and fall history on its own yielded similar predictive performance, whereas the 3KQ on their own yielded a higher sensitivity but lower specificity.

Conclusion: The WFG algorithm can identify patients at risk of a fall, especially when the 3KQ are included in its operationalization. The CFS and Fried's frailty criteria may be used interchangeably in the algorithm's operationalization. The algorithm performed similarly compared to other screening tools, except for the 3KQ on their own, which have higher sensitivity but lower specificity and lack clinical recommendations per risk category.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11488976PMC
http://dx.doi.org/10.1093/ageing/afae229DOI Listing

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