Master's Program in Long-Term Care & School of Gerontology Health Management, College of Nursing, Taipei Medical University, Taipei, Taiwan.
Department of Geriatric Medicine & Physical Medicine and Rehabilitation, Taipei Medical University Hospital, Taipei, Taiwan.
BMJ Open. 2021 Nov 25;11(11):e045411. doi: 10.1136/bmjopen-2020-045411.
Health literacy (HL) is the degree of individuals' capacity to access, understand, appraise and apply health information and services required to make appropriate health decisions. This study aimed to establish a predictive algorithm for identifying community-dwelling older adults with a high risk of limited HL.
A cross-sectional study.
Four communities in northern, central and southern Taiwan.
A total of 648 older adults were included. Moreover, 85% of the core data set was used to generate the prediction model for the scoring algorithm, and 15% was used to test the fitness of the model.
Pearson's χ test and multiple logistic regression were used to identify the significant factors associated with the HL level. An optimal cut-off point for the scoring algorithm was identified on the basis of the maximum sensitivity and specificity.
A total of 350 (54.6%) patients were classified as having limited HL. We identified 24 variables that could significantly differentiate between sufficient and limited HL. Eight factors that could significantly predict limited HL were identified as follows: a socioenvironmental determinant (ie, dominant spoken dialect), a health service use factor (ie, having family doctors), a health cost factor (ie, self-paid vaccination), a heath behaviour factor (ie, searching online health information), two health outcomes (ie, difficulty in performing activities of daily living and requiring assistance while visiting doctors), a participation factor (ie, attending health classes) and an empowerment factor (ie, self-management during illness). The scoring algorithm yielded an area under the curve of 0.71, and an optimal cut-off value of 5 represented moderate sensitivity (62.0%) and satisfactory specificity (76.2%).
This simple scoring algorithm can efficiently and effectively identify community-dwelling older adults with a high risk of limited HL.
健康素养(HL)是指个体获取、理解、评估和应用健康信息和服务以做出适当健康决策的能力程度。本研究旨在建立一种预测算法,以识别社区居住的高龄老年人中 HL 水平有限的高危人群。
横断面研究。
台湾北部、中部和南部的四个社区。
共纳入 648 名老年人。此外,核心数据集的 85%用于生成评分算法的预测模型,15%用于测试模型的拟合度。
采用 Pearson χ 检验和多因素逻辑回归分析确定与 HL 水平相关的显著因素。根据最大灵敏度和特异性确定评分算法的最佳截断点。
共有 350 名(54.6%)患者被归类为 HL 水平有限。我们确定了 24 个变量,可以显著区分 HL 水平充足和有限的患者。确定了 8 个可以显著预测 HL 水平有限的因素,分别为:社会环境决定因素(即主导方言)、健康服务使用因素(即有家庭医生)、健康费用因素(即自付疫苗接种)、健康行为因素(即在线搜索健康信息)、两个健康结果(即日常生活活动困难和就诊时需要帮助)、参与因素(即参加健康课程)和赋权因素(即疾病期间的自我管理)。评分算法的曲线下面积为 0.71,最佳截断值为 5 代表中等灵敏度(62.0%)和满意的特异性(76.2%)。
该简单评分算法可有效地识别社区居住的高龄老年人中 HL 水平有限的高危人群。