Mei Chao, Wu San-Lan, Zhou Tao, Lv Yong-Ning, Zhang Yu, Shi Chen, Gong Wei-Jing
Department of Pharmacy, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.
Hubei Province Clinical Research Center for Precision Medicine for Critical Illness, Wuhan, China.
Front Public Health. 2025 Jun 2;13:1574531. doi: 10.3389/fpubh.2025.1574531. eCollection 2025.
To evaluate the current state and determinants of medication safety knowledge, attitudes, and practices (KAP) among residents in Hubei Province, and to offer guidance for targeted educational initiatives.
A standardized questionnaire from the Science and Technology Development Center of the Chinese Pharmaceutical Association was utilized. Responses were scored systematically. Univariate and multivariate Logistic regression analyses, along with machine learning (ML) techniques, were applied to identify risk factors associated with medication safety KAP.
Out of 1,065 distributed questionnaires, 1,042 were valid (91.8% response rate). The study revealed that 30.2% of residents demonstrated 'excellent' medication knowledge, while attitude and practice scores were lower 10.3 and 46.3%, respectively. Univariate analysis indicated that age, monthly income, employment status, and occupation significantly influenced KAP. Multivariate analysis further identified age (≥65 years: OR = 0.27), education level (Middle school: OR = 0.36, Primary school: OR = 0.16), occupation (Healthcare workers: OR = 3.67), and medical insurance coverage (Basic social medical insurance: OR = 17.48, Out-of-pocket medical care: OR = 7.44, Publicly-funded medical care: OR = 11.92) as independent risk factors affecting the total KAP score. In evaluating ML models for predicting KAP, the eXtreme Gradient Boosting (XGB) model showed the best performance for predicting knowledge (training accuracy: 0.7014, Kappa: 0.3045; validation accuracy: 0.6186, Kappa: 0.1004). The Fully Connected Neural Network (FCNN) was optimal for attitude prediction (training accuracy: 0.7205, Kappa: 0.0778; validation accuracy: 0.7019, Kappa: 0.0008). The Ordered Multinomial Logistic Regression model was most accurate for practice prediction (training accuracy: 0.6471, Kappa: 0.3421; validation accuracy: 0.6302, Kappa: 0.3153). And the Deep Neural Network (DNN) model demonstrated the highest accuracy for predicting the total score (training accuracy: 0.7387, Kappa: 0.3211; validation accuracy: 0.7074, Kappa: 0.1902).
Residents of Hubei have a fundamental grasp of medication safety but also harbor certain misconceptions. Effective pharmaceutical science communication should take into account the characteristics of the residents and the identified risk factors.
评估湖北省居民用药安全知识、态度和行为(KAP)的现状及影响因素,为针对性的教育举措提供指导。
采用中国药学会科技开发中心的标准化问卷。对回答进行系统评分。运用单因素和多因素Logistic回归分析以及机器学习(ML)技术,识别与用药安全KAP相关的风险因素。
在分发的1065份问卷中,1042份有效(应答率91.8%)。研究显示,30.2%的居民用药知识“优秀”,而态度和行为得分较低,分别为10.3%和46.3%。单因素分析表明,年龄、月收入、就业状况和职业对KAP有显著影响。多因素分析进一步确定年龄(≥65岁:OR = 0.27)、教育水平(初中:OR = 0.36,小学:OR = 0.16)、职业(医护人员:OR = 3.67)和医疗保险覆盖情况(基本社会医疗保险:OR = 17.48,自费医疗:OR = 7.44,公费医疗:OR = 11.92)是影响KAP总分的独立风险因素。在评估预测KAP的ML模型时,极端梯度提升(XGB)模型在预测知识方面表现最佳(训练准确率:0.7014,Kappa值:0.3045;验证准确率:0.6186,Kappa值:0.1004)。全连接神经网络(FCNN)在预测态度方面最优(训练准确率:0.7205,Kappa值:0.0778;验证准确率:0.7019,Kappa值:0.0008)。有序多项Logistic回归模型在预测行为方面最准确(训练准确率:0.6471,Kappa值:0.3421;验证准确率:0.6302,Kappa值:0.3153)。深度神经网络(DNN)模型在预测总分方面准确率最高(训练准确率:0.7387,Kappa值:0.3211;验证准确率:0.7074,Kappa值:0.1902)。
湖北省居民对用药安全有基本的了解,但也存在一些误解。有效的药学知识传播应考虑居民的特点和已识别的风险因素。