Department of Community and Health Systems, University of Pittsburgh School of Nursing, Pittsburgh, Pennsylvania, USA.
Department of Nursing, University of Massachusetts Boston, Boston, Massachusetts, USA.
J Gerontol A Biol Sci Med Sci. 2023 Aug 27;78(9):1683-1691. doi: 10.1093/gerona/glad130.
Understanding fall circumstances can help researchers better identify causes of falls and develop effective and tailored fall prevention programs. This study aims to describe fall circumstances among older adults from quantitative data using conventional statistical approaches and qualitative analyses using a machine learning approach.
The MOBILIZE Boston Study enrolled 765 community-dwelling adults aged 70 years and older in Boston, MA. Occurrence and circumstances of falls (ie, locations, activities, and self-reported causes of falls) were recorded using monthly fall calendar postcards and fall follow-up interviews with open- and close-ended questions during a 4-year period. Descriptive analyses were used to summarize circumstances of falls. Natural language processing was used to analyze narrative responses from open-ended questions.
During the 4-year follow-up, 490 participants (64%) had at least 1 fall. Among 1 829 falls, 965 falls occurred indoors and 804 falls occurred outdoors. Commonly reported activities when the fall occurred were walking (915, 50.0%), standing (175, 9.6%), and going down stairs (125, 6.8%). The most commonly reported causes of falls were slip or trip (943, 51.6%) and inappropriate footwear (444, 24.3%). Using qualitative data, we extracted more detailed information on locations and activities, and additional information on obstacles related to falls and commonly reported scenarios such as "lost my balance and fell."
Self-reported fall circumstances provide important information on both intrinsic and extrinsic factors contributing to falls. Future studies are warranted to replicate our findings and optimize approaches to analyzing narrative data on fall circumstances in older adults.
了解跌倒的情况有助于研究人员更好地确定跌倒的原因,并制定出有效且有针对性的预防跌倒计划。本研究旨在使用传统的统计学方法和机器学习方法从定量数据中描述老年人的跌倒情况。
MOBILIZE Boston 研究招募了马萨诸塞州波士顿市 765 名 70 岁及以上的社区居民。在 4 年期间,使用每月的跌倒日历明信片和跌倒随访访谈(包括开放式和封闭式问题)记录跌倒的发生情况和情况(即地点、活动以及自我报告的跌倒原因)。使用描述性分析总结跌倒情况。使用自然语言处理分析开放式问题的叙述性回答。
在 4 年的随访期间,490 名参与者(64%)至少发生了 1 次跌倒。在 1829 次跌倒中,965 次发生在室内,804 次发生在室外。报告的常见活动是行走(915 次,50.0%)、站立(175 次,9.6%)和下楼梯(125 次,6.8%)。报告的常见跌倒原因是滑倒或绊倒(943 次,51.6%)和不合适的鞋子(444 次,24.3%)。使用定性数据,我们提取了更多关于地点和活动的详细信息,以及与跌倒相关的障碍物和常见场景的额外信息,例如“失去平衡跌倒”。
自我报告的跌倒情况提供了有关内在和外在因素导致跌倒的重要信息。未来的研究有必要复制我们的发现,并优化分析老年人跌倒情况的叙述性数据的方法。