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Predicting medical nonadherence using natural language processing

机译:使用自然语言处理预测医疗不正常

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Patient nonadherence is a multi-billion dollar problem in the United States healthcare system [1], accounting for over 93 million people and over 10% of American healthcare spending [2]. This study makes use of techniques in unsupervised natural language processing and human annotation to generate a set of predictive words that detect medical nonadherence. We defined nonadherence with more nuance than just patient medication practices by taking into account various psychosocial factors including adherence to dietary and therapeutic advice. Because of the multifaceted nature of the problem, our study analyzed the most multifaceted element of healthcare data: physician notes. We used natural language processing to extract meaningful keywords that predict nonadherence. We constructed three contextual categories of keywords that were statistically significant (p<;0.05) predictors of nonadherence. Using our extracted key features, we made a nuanced contribution to the detection of nonadherence. These findings may be used to facilitate reduction of nonadherence in our healthcare system.
机译:患者不正常是美国医疗保健系统的数十亿美元的问题[1],占9300多万人,超过10%的美国医疗保健支出[2]。本研究利用无监督的自然语言处理和人类注释中的技术,以产生一种检测医疗不正常的预测词。我们通过考虑到包括依赖饮食和治疗建议的各种心理社会因素,从患者药物治疗方面定义了比患者药物治疗更多的细微不正常。由于问题的多方面性质,我们的研究分析了医疗数据的最多多方面的元素:医师票据。我们使用自然语言处理来提取预测不正常的有意义的关键字。我们构建了三种语境类别的关键字,其具有统计学意义(P <; 0.05)的非正义预测因子。使用我们提取的关键特征,我们对不正常的检测做了细微贡献。这些发现可用于促进我们的医疗保健系统中的非正长。

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