School of Management Engineering, Zhengzhou University, Zhengzhou 450001, China.
National Engineering Laboratory for Internet Medical Systems and Applications, Zhengzhou 450052, China.
Int J Environ Res Public Health. 2022 Jun 17;19(12):7466. doi: 10.3390/ijerph19127466.
Mobile medicine plays a significant role in optimizing medical resource allocation, improving medical efficiency, etc. Identifying and analyzing user concern elements from active online reviews can help to improve service quality and enhance product competitiveness in a targeted manner. Based on the latent Dirichlet allocation (LDA) topic model, this study carries out a topic-clustering analysis of users' online comments and builds an evaluation index system of mobile medical users' satisfaction by using grounded theory. After that, the evaluation information of users is obtained through an emotional analysis of online comments. Then, in order to fully consider the uncertainty of decision makers' evaluations, rough number theory and the fuzzy comprehensive evaluation method are used to confirm the conclusions of experts and indicators and to evaluate the satisfaction of mobile medical users. The empirical results show that users are satisfied with the service quality and content quality of mobile medical apps, and less satisfied with the management and technology qualities. Therefore, this paper puts forward corresponding countermeasures from the aspects of strengthening safety supervision, strengthening scientific research, strengthening information audit, attaching importance to service quality management and strengthening doctors' sense of gain. This study uses text mining for index extraction and satisfaction analysis of online reviews to quantitatively evaluate user satisfaction with mobile medical apps, providing a reference for the improvement of mobile medical apps. However, there are still certain shortcomings in the current study, and subsequent studies can screen false reviews for a deeper study of online review information.
移动医疗在优化医疗资源配置、提高医疗效率等方面发挥着重要作用。从活跃的在线评论中识别和分析用户关注的要素,可以有针对性地提高服务质量,增强产品竞争力。本研究基于潜在狄利克雷分配(LDA)主题模型,对用户在线评论进行主题聚类分析,运用扎根理论构建移动医疗用户满意度评价指标体系。然后,通过对在线评论的情感分析获取用户的评价信息。为了充分考虑决策者评价的不确定性,利用粗糙数理论和模糊综合评价方法对专家和指标的结论进行验证,并对移动医疗用户的满意度进行评价。实证结果表明,用户对移动医疗应用的服务质量和内容质量较为满意,对管理和技术质量的满意度较低。因此,本文从加强安全监管、加强科研、加强信息审核、重视服务质量管理、增强医生获得感等方面提出了相应的对策。本文采用文本挖掘方法对在线评论进行指标提取和满意度分析,对移动医疗应用的用户满意度进行定量评价,为移动医疗应用的改进提供了参考。然而,目前的研究仍存在一定的局限性,后续研究可以对虚假评论进行筛选,以更深入地研究在线评论信息。