Simsekler Mecit Can Emre, Alhashmi Noura Hamed, Azar Elie, King Nelson, Luqman Rana Adel Mahmoud Ali, Al Mulla Abdalla
Department of Industrial and Systems Engineering, Khalifa University of Science and Technology, P.O. Box 127788, Abu Dhabi, UAE.
Mubadala Healthcare, Ipic Square, Abu Dhabi, 45005, UAE.
BMC Med Inform Decis Mak. 2021 May 13;21(1):157. doi: 10.1186/s12911-021-01519-5.
Patient satisfaction is a multi-dimensional concept that provides insights into various quality aspects in healthcare. Although earlier studies identified a range of patient and provider-related determinants, their relative importance to patient satisfaction remains unclear.
We used a tree-based machine-learning algorithm, random forests, to estimate relationships between patient and provider-related determinants and satisfaction level in two of the main patient journey stages, registration and consultation, through survey data from 411 patients at a hospital in Abu Dhabi, UAE. Radar charts were also generated to determine which type of questions-demographics, time, behaviour, and procedure-influence patient satisfaction.
Our results showed that the 'age' attribute, a patient-related determinant, is the leading driver of patient satisfaction in both stages. 'Total time taken for registration' and 'attentiveness and knowledge of the doctor/physician while listening to your queries' are the leading provider-related determinants in each model developed for registration and consultation stages, respectively. The radar charts revealed that 'demographics' are the most influential type in the registration stage, whereas 'behaviour' is the most influential in the consultation stage.
Generating valuable results, the random forest model provides significant insights on the relative importance of different determinants to overall patient satisfaction. Healthcare practitioners, managers and researchers can benefit from applying the model for prediction and feature importance analysis in their particular healthcare settings and areas of their concern.
患者满意度是一个多维度概念,能为医疗保健的各个质量方面提供见解。尽管早期研究确定了一系列与患者和提供者相关的决定因素,但它们对患者满意度的相对重要性仍不明确。
我们使用基于树的机器学习算法——随机森林,通过阿联酋阿布扎比一家医院411名患者的调查数据,估计在两个主要患者就医阶段(挂号和就诊)中与患者和提供者相关的决定因素与满意度水平之间的关系。还生成了雷达图,以确定哪些类型的问题——人口统计学、时间、行为和流程——会影响患者满意度。
我们的结果表明,与患者相关的决定因素“年龄”属性是两个阶段患者满意度的主要驱动因素。“挂号总时长”和“医生/医师在倾听您的问题时的专注度和知识水平”分别是为挂号和就诊阶段建立的每个模型中与提供者相关的主要决定因素。雷达图显示,“人口统计学”在挂号阶段是最具影响力的类型,而“行为”在就诊阶段是最具影响力的。
随机森林模型产生了有价值的结果,为不同决定因素对总体患者满意度的相对重要性提供了重要见解。医疗从业者、管理人员和研究人员可以通过在其特定的医疗环境和关注领域应用该模型进行预测和特征重要性分析而受益。