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利用语言特征开发和测试患者沟通健康素养的自动模型:来自 ECLIPPSE 研究的发现。

Developing and Testing Automatic Models of Patient Communicative Health Literacy Using Linguistic Features: Findings from the ECLIPPSE study.

机构信息

Department of Applied Linguistics, Georgia State University.

Department of Psychology, Arizona State University.

出版信息

Health Commun. 2021 Jul;36(8):1018-1028. doi: 10.1080/10410236.2020.1731781. Epub 2020 Mar 2.

DOI:10.1080/10410236.2020.1731781
PMID:32114833
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7483831/
Abstract

Patients with diabetes and limited health literacy (HL) may have suboptimal communication exchange with their health care providers and be at elevated risk of adverse health outcomes. These difficulties are generally attributed to patients' reduced ability to both communicate and understand health-related ideas as well as physicians' lack of skill in identifying those with limited HL. Understanding and identifying patients with barriers posed by lower HL to improve healthcare delivery and outcomes is an important research avenue. However, doing so using traditional methods has proven difficult and infeasible to scale. This study using corpus analyses, expert human ratings of HL, and natural language processing (NLP) approaches to estimate HL at the individual patient level. The goal of the study is to better understand HL from a linguistic perspective and to open new research areas to enhance population management and individualized care. Specifically, this study examines HL as a function of patients' demonstrated ability to communicate health-related information to their providers via secure messages. The study develops an NLP-based HL model and validates the model by predicting patient-related events such as medical outcomes and hospitalizations. Results indicate that the developed model predicts human ratings of HL with ~80% accuracy. Validation indicates that lower HL patients are more likely to be nonwhite and have lower educational attainment. In addition, patients with lower HL suffered more negative health outcomes and had higher healthcare service utilization.

摘要

患有糖尿病和有限健康素养 (HL) 的患者可能与他们的医疗保健提供者之间的沟通交流欠佳,并且存在不良健康结果的风险增加。这些困难通常归因于患者在沟通和理解与健康相关的想法方面的能力下降,以及医生在识别那些 HL 有限的患者方面缺乏技能。了解和识别因 HL 较低而面临障碍的患者,以改善医疗保健的提供和结果,是一个重要的研究方向。然而,使用传统方法证明这是困难的,并且难以扩展。本研究使用语料库分析、HL 的专家人工评分和自然语言处理 (NLP) 方法来估计个体患者的 HL 水平。该研究的目的是从语言学角度更好地理解 HL,并开辟新的研究领域,以加强人群管理和个性化护理。具体来说,本研究将 HL 作为患者通过安全消息向提供者传达与健康相关信息的能力的函数进行研究。该研究开发了一种基于 NLP 的 HL 模型,并通过预测与患者相关的事件(如医疗结果和住院)来验证该模型。结果表明,所开发的模型以约 80%的准确率预测了 HL 的人工评分。验证表明,HL 较低的患者更有可能是非白人,并且受教育程度较低。此外,HL 较低的患者的健康结果更差,医疗服务利用率更高。

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Assessing the Readability of Medical Documents: A Ranking Approach.评估医学文档的可读性:一种排序方法。
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