Nomogram for Predicting the Risk Factors for Falls in Older People: A Secondary Data Analysis Based on the 2021 Community Health Survey.

IF 1.7 4区 医学 Q3 HEALTH CARE SCIENCES & SERVICES Inquiry-The Journal of Health Care Organization Provision and Financing Pub Date : 2024-01-01 DOI:10.1177/00469580241273173
Sook Kyoung Park, Hyuk Joon Kim, Young-Me Lee, Hye Young Kim
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Abstract

This study aimed to identify the risk factors for falls among older individuals living at home in a community and develop a nomogram to predict falls. This study included 74 492 people aged 65 years or older who participated in the 2021 Community Health Survey conducted in Korea. The data analysis methods used included the Rao-Scott χ2 test, a complex sample t-test, and complex binary logistic regression using SPSS 26.0. Using logistic regression analysis, a fall-risk prediction nomogram was created based on regression coefficients, and the reliability of the nomogram was calculated using a receiver operating characteristic (ROC) curve and values of the area under the curve (AUC). The fall incidence rate among older adults was 16.4%. Factors affecting the subject's fall experience included being more than 85 years old (OR = 1.40); living alone (OR = 1.13); receiving basic welfare (OR = 1.18); subjective health status (OR = 1.72); number of days spent walking (OR = 0.98); obesity (OR = 1.08); severe depression (OR = 2.84); sleep duration time (OR = 1.11); experiencing cognitive decline (OR = 1.34); and diabetes (OR = 1.12). In the nomogram, the depression score exhibited the greatest discriminatory power, followed by subjective health status, gender, experience of cognitive decline, age, basic livelihood security, adequacy of sleep, living alone, diabetes, and number of days of walking. The AUC value was 0.66. An intervention plan that comprehensively considers physical, psychological, and social factors is required to prevent falls in older adults. The nomogram developed in this study will help local health institutions assess all these risk factors for falling and create and implement systematic education and intervention programs to prevent falls and fall-related injuries among older individuals.

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预测老年人跌倒风险因素的提名图:基于 2021 年社区健康调查的二手数据分析。
本研究旨在确定社区居家老年人跌倒的风险因素,并制定预测跌倒的提名图。研究对象包括参加韩国 2021 年社区健康调查的 74 492 名 65 岁及以上老年人。使用的数据分析方法包括 Rao-Scott χ2 检验、复杂样本 t 检验和使用 SPSS 26.0 的复杂二元逻辑回归。利用逻辑回归分析,根据回归系数绘制了跌倒风险预测提名图,并利用接收者操作特征曲线(ROC)和曲线下面积(AUC)值计算了提名图的可靠性。老年人的跌倒发生率为 16.4%。影响受试者跌倒经历的因素包括:85 岁以上(OR = 1.40);独居(OR = 1.13);领取基本福利(OR = 1.18);主观健康状况(OR = 1.72);步行天数(OR = 0.98);肥胖(OR = 1.08);严重抑郁(OR = 2.84);睡眠持续时间(OR = 1.11);认知能力下降(OR = 1.34);糖尿病(OR = 1.12)。在提名图中,抑郁评分的判别能力最强,其次是主观健康状况、性别、认知能力下降经历、年龄、基本生活保障、睡眠充足程度、独居、糖尿病和步行天数。AUC值为0.66。要预防老年人跌倒,需要制定一个全面考虑生理、心理和社会因素的干预计划。本研究开发的提名图将有助于地方卫生机构评估所有这些跌倒风险因素,并制定和实施系统的教育和干预计划,以预防老年人跌倒和与跌倒相关的伤害。
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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
192
审稿时长
>12 weeks
期刊介绍: INQUIRY is a peer-reviewed open access journal whose msision is to to improve health by sharing research spanning health care, including public health, health services, and health policy.
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