Innovative Horizons in Fall Risk Self-Management for Older Adults: An Integrative Review and Model
Angela Shanahan, Patricia Groves, Harleah Buck

TL;DR
This paper explores how older adults' beliefs and perceptions influence their ability to manage fall risks, aiming to improve prevention strategies.
Contribution
The study introduces a conceptual model linking Health Belief Model factors to fall risk self-management in older adults.
Findings
Most studies focused on general fall prevention factors rather than individual perceptions or beliefs.
A conceptual model was developed to guide future research on how beliefs influence fall risk self-management.
Understanding perceptions of risk, injury, and self-efficacy is critical for effective fall prevention strategies.
Abstract
Falls affect 1 in 4 community-dwelling older adults. Despite focusing on fall prevention factors such as knowledge about falls, mobility, and fear of falling, researchers and clinicians continue to report high fall rates and low adherence to prevention programs. The Health Belief Model (HBM) suggests unexplored factors (i.e. perceptions and beliefs), which may influence older adults’ engagement in fall risk self-management. The purpose of this review was to conduct a comprehensive review of the literature examining the relationships among HBM factors: perceptions/beliefs, cues-to-action, self-efficacy, and older adults’ fall risk self-management and create a conceptual model. Pubmed, PsychINFO and CINAHL were searched using the terms: perception, belief, motivation, fall risk, and community-dwelling. Inclusion criteria: English language and included perceptions or beliefs related to…
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Taxonomy
TopicsBalance, Gait, and Falls Prevention · Prosthetics and Rehabilitation Robotics · Injury Epidemiology and Prevention
