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Automated Classification of Consumer Health Information Needs in Patient Portal Messages

机译:患者门户消息中对消费者健康信息需求的自动分类

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摘要

Patients have diverse health information needs, and secure messaging through patient portals is an emerging means by which such needs are expressed and met. As patient portal adoption increases, growing volumes of secure messages may burden healthcare providers. Automated classification could expedite portal message triage and answering. We created four automated classifiers based on word content and natural language processing techniques to identify health information needs in 1000 patient-generated portal messages. Logistic regression and random forest classifiers detected single information needs well, with area under the curves of 0.804–0.914. A logistic regression classifier accurately found the set of needs within a message, with a Jaccard index of 0.859 (95% Confidence Interval: (0.847, 0.871)). Automated classification of consumer health information needs expressed in patient portal messages is feasible and may allow direct linking to relevant resources or creation of institutional resources for commonly expressed needs.
机译:病人有各种各样的健康信息需求,通过病人门户的安全消息传递是表达和满足这种需求的一种新兴手段。随着患者门户网站采用率的提高,越来越多的安全消息可能会给医疗服务提供商带来负担。自动分类可以加快门户网站消息分类和应答的速度。我们基于单词内容和自然语言处理技术创建了四个自动分类器,以识别1000条患者生成的门户消息中的健康信息需求。 Logistic回归和随机森林分类器检测到的单个信息需求很好,曲线下的面积为0.804–0.914。逻辑回归分类器在Jaccard指数为0.859(95%置信区间:(0.847,0.871))下准确地找到了消息中的需求集合。在患者门户消息中表达的消费者健康信息需求的自动分类是可行的,并且可以允许直接链接到相关资源或创建用于共同表达的需求的机构资源。

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