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A large-scale quantitative analysis of latent factors and sentiment in online doctor reviews

机译:在线医生评论中潜在因素和情绪的大规模定量分析

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摘要

Online physician reviews are a massive and potentially rich source of information capturing patient sentiment regarding healthcare. We analyze a corpus comprising nearly 60 000 such reviews with a state-of-the-art probabilistic model of text. We describe a probabilistic generative model that captures latent sentiment across aspects of care (eg, interpersonal manner). We target specific aspects by leveraging a small set of manually annotated reviews. We perform regression analysis to assess whether model output improves correlation with state-level measures of healthcare. We report both qualitative and quantitative results. Model output correlates with state-level measures of quality healthcare, including patient likelihood of visiting their primary care physician within 14 days of discharge (p=0.03), and using the proposed model better predicts this outcome (p=0.10). We find similar results for healthcare expenditure. Generative models of text can recover important information from online physician reviews, facilitating large-scale analyses of such reviews.
机译:在线医生评论是捕获患者关于医疗保健的信息的大量且潜在的丰富信息来源。我们使用最新的文本概率模型分析了包含近60 000个此类评论的语料库。我们描述了一种概率生成模型,该模型捕获了护理各个方面(例如,人际交往方式)的潜在情绪。我们通过利用一小组手动注释的评论来针对特定方面。我们执行回归分析,以评估模型输出是否改善了与州级卫生保健措施的相关性。我们报告定性和定量结果。模型输出与质量医疗保健的州级衡量标准相关,包括患者出院14天之内就诊的基本护理医师的可能性(p = 0.03),并且使用建议的模型可以更好地预测这一结果(p = 0.10)。我们发现医疗保健支出的类似结果。文本的生成模型可以从在线医师评论中恢复重要信息,从而有助于对此类评论进行大规模分析。

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