| Literature DB >> 28916290 |
Jochen Klenk1, Clemens Becker2, Pierpaolo Palumbo3, Lars Schwickert2, Kilan Rapp2, Jorunn L Helbostad4, Chris Todd5, Stephen R Lord6, Ngaire Kerse7.
Abstract
Falls are a major cause of injury and disability in older people, leading to serious health and social consequences including fractures, poor quality of life, loss of independence, and institutionalization. To design and provide adequate prevention measures, accurate understanding and identification of person's individual fall risk is important. However, to date, the performance of fall risk models is weak compared with models estimating, for example, cardiovascular risk. This deficiency may result from 2 factors. First, current models consider risk factors to be stable for each person and not change over time, an assumption that does not reflect real-life experience. Second, current models do not consider the interplay of individual exposure including type of activity (eg, walking, undertaking transfers) and environmental risks (eg, lighting, floor conditions) in which activity is performed. Therefore, we posit a dynamic fall risk model consisting of intrinsic risk factors that vary over time and exposure (activity in context). eHealth sensor technology (eg, smartphones) begins to enable the continuous measurement of both the above factors. We illustrate our model with examples of real-world falls from the FARSEEING database. This dynamic framework for fall risk adds important aspects that may improve understanding of fall mechanisms, fall risk models, and the development of fall prevention interventions.Entities:
Keywords: Dynamic; concept; falls; model; risk
Mesh:
Year: 2017 PMID: 28916290 DOI: 10.1016/j.jamda.2017.08.001
Source DB: PubMed Journal: J Am Med Dir Assoc ISSN: 1525-8610 Impact factor: 4.669