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Examining the Determinants of Patient Perception of Physician Review Helpfulness across Different Disease Severities: A Machine Learning Approach

机译:检查患者对不同疾病严重程度的医生审查帮助感知的决定因素:一种机器学习方法

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(1) Background. Patients are increasingly using physician online reviews (PORs) to learn about the quality of care. Patients benefit from the use of PORs and physicians need to be aware of how this evaluation affects their treatment decisions. The current work aims to investigate the influence of critical quantitative and qualitative factors on physician review helpfulness (RH). (2) Methods. The data including 45,300 PORs across multiple disease types were scraped from Healthgrades.com. Grounded on the signaling theory, machine learning-based mixed methods approaches (i.e., text mining and econometric analyses) were performed to test study hypotheses and address the research questions. Machine learning algorithms were used to classify the data set with review-and service-related features through a confusion matrix. (3) Results. Regarding review-related signals, RH is primarily influenced by review readability, wordiness, and specific emotions (positive and negative). With regard to service-related signals, the results imply that service quality and popularity are critical to RH. Moreover, review wordiness, service quality, and popularity are better predictors for perceived RH for serious diseases than they are for mild diseases. (4) Conclusions. The findings of the empirical investigation suggest that platform designers should design a recommendation system that reduces search time and cognitive processing costs in order to assist patients in making their treatment decisions. This study also discloses the point that reviews and service-related signals influence physician RH. Using the machine learning-based sentic computing framework, the findings advance our understanding of the important role of discrete emotions in determining perceived RH. Moreover, the research also contributes by comparing the effects of different signals on perceived RH across different disease types.
机译:(1)背景。患者越来越多地使用医生在线评论 (POR) 来了解护理质量。患者受益于 POR 的使用,医生需要了解这种评估如何影响他们的治疗决策。目前的工作旨在调查关键定量和定性因素对医生审查帮助性 (RH) 的影响。(2)方法。从 Healthgrades.com 中抓取了包括多种疾病类型的 45,300 个 POR 在内的数据。基于信令理论,采用基于机器学习的混合方法(即文本挖掘和计量经济学分析)来检验研究假设并解决研究问题。机器学习算法通过混淆矩阵对具有审查和服务相关特征的数据集进行分类。(3)结果。关于与评论相关的信号,RH主要受评论可读性、冗长和特定情绪(正面和负面)的影响。关于与服务相关的信号,结果表明服务质量和受欢迎程度对RH至关重要。此外,与轻度疾病相比,评论冗长、服务质量和受欢迎程度是严重疾病感知 RH 的更好预测指标。(4)结论。实证研究的结果表明,平台设计者应该设计一个推荐系统,减少搜索时间和认知处理成本,以帮助患者做出治疗决策。这项研究还揭示了评论和服务相关信号影响医生 RH 的观点。使用基于机器学习的感知计算框架,这些发现促进了我们对离散情绪在确定感知RH中的重要作用的理解。此外,该研究还通过比较不同疾病类型中不同信号对感知RH的影响来做出贡献。

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