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Understanding patient satisfaction with received healthcare services: A natural language processing approach

机译:了解患者对获得的医疗服务的满意度:一种自然语言处理方法

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摘要

Important information is encoded in free-text patient comments. We determine the most common topics in patient comments, design automatic topic classifiers, identify comments ’ sentiment, and find new topics in negative comments. Our annotation scheme consisted of 28 topics, with positive and negative sentiment. Within those 28 topics, the seven most frequent accounted for 63% of annotations. For automated topic classification, we developed vocabulary-based and Naive Bayes ’ classifiers. For sentiment analysis, another Naive Bayes ’ classifier was used. Finally, we used topic modeling to search for unexpected topics within negative comments. The seven most common topics were appointment access, appointment wait, empathy, explanation, friendliness, practice environment, and overall experience. The best F-measures from our classifier were 0.52(NB), 0.57(NB), 0.36(Vocab), 0.74(NB), 0.40(NB), and 0.44(Vocab), respectively. F- scores ranged from 0.16 to 0.74. The sentiment classification F-score was 0.84. Negative comment topic modeling revealed complaints about appointment access, appointment wait, and time spent with physician.
机译:重要信息以自由文本形式的患者注释编码。我们确定患者评论中最常见的主题,设计自动主题分类器,识别评论的情绪,并在负面评论中找到新主题。我们的注释方案由28个主题组成,具有积极和消极的情绪。在这28个主题中,最常出现的七个主题占注释的63%。对于自动主题分类,我们开发了基于词汇的分类器和朴素贝叶斯分类器。为了进行情感分析,使用了另一个朴素贝叶斯(Naive Bayes)分类器。最后,我们使用主题建模来在负面评论中搜索意外主题。七个最常见的主题是约会访问,约会等待,同理心,解释,友善,练习环境和整体经验。来自我们分类器的最佳F度量分别为0.52(NB),0.57(NB),0.36(Vocab),0.74(NB),0.40(NB)和0.44(Vocab)。 F-分数介于0.16至0.74之间。情感分类F值为0.84。负面的评论主题建模揭示了有关约会访问,约会等待和与医生花费时间的抱怨。

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