Annotation and Information Extraction of Consumer-Friendly Health Articles for Enhancing Laboratory Test Reporting.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Zhe He, Shubo Tian, Arslan Erdengasileng, Karim Hanna, Yang Gong, Zhan Zhang, Xiao Luo, Mia Liza A Lustria
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Abstract

Viewing laboratory test results is patients' most frequent activity when accessing patient portals, but lab results can be very confusing for patients. Previous research has explored various ways to present lab results, but few have attempted to provide tailored information support based on individual patient's medical context. In this study, we collected and annotated interpretations of textual lab result in 251 health articles about laboratory tests from AHealthyMe.com. Then we evaluated transformer-based language models including BioBERT, ClinicalBERT, RoBERTa, and PubMedBERT for recognizing key terms and their types. Using BioPortal's term search API, we mapped the annotated terms to concepts in major controlled terminologies. Results showed that PubMedBERT achieved the best F1 on both strict and lenient matching criteria. SNOMED CT had the best coverage of the terms, followed by LOINC and ICD-10-CM. This work lays the foundation for enhancing the presentation of lab results in patient portals by providing patients with contextualized interpretations of their lab results and individualized question prompts that they can, in turn, refer to during physician consults.

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对方便消费者的健康文章进行注释和信息提取,以改进实验室检验报告。
查看化验结果是患者访问患者门户网站时最常见的活动,但化验结果可能会让患者非常困惑。以往的研究探索了各种呈现化验结果的方式,但很少有研究尝试根据患者的医疗背景提供量身定制的信息支持。在这项研究中,我们收集了 AHealthyMe.com 上 251 篇关于化验的健康文章,并对其中的化验结果文本进行了注释。然后,我们评估了基于转换器的语言模型,包括 BioBERT、ClinicalBERT、RoBERTa 和 PubMedBERT,以识别关键术语及其类型。利用 BioPortal 的术语搜索 API,我们将注释术语映射到主要控制术语表中的概念。结果显示,PubMedBERT 在严格和宽松的匹配标准下都达到了最佳的 F1。SNOMED CT 的术语覆盖率最高,其次是 LOINC 和 ICD-10-CM。这项工作为加强患者门户网站中化验结果的展示奠定了基础,它为患者提供了化验结果的上下文解释和个性化问题提示,患者在咨询医生时可以反过来参考这些解释和提示。
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