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A Metadata Extraction Approach for Clinical Case Reports to Enable Advanced Understanding of Biomedical Concepts

机译:用于临床病例报告的元数据提取方法以使人们能够更好地理解生物医学概念

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摘要

Clinical case reports (CCRs) are a valuable means of sharing observations and insights in medicine. The form of these documents varies, and their content includes descriptions of numerous, novel disease presentations and treatments. Thus far, the text data within CCRs is largely unstructured, requiring significant human and computational effort to render these data useful for in-depth analysis. In this protocol, we describe methods for identifying metadata corresponding to specific biomedical concepts frequently observed within CCRs. We provide a metadata template as a guide for document annotation, recognizing that imposing structure on CCRs may be pursued by combinations of manual and automated effort. The approach presented here is appropriate for organization of concept-related text from a large literature corpus (e.g., thousands of CCRs) but may be easily adapted to facilitate more focused tasks or small sets of reports. The resulting structured text data includes sufficient semantic context to support a variety of subsequent text analysis workflows: meta-analyses to determine how to maximize CCR detail, epidemiological studies of rare diseases, and the development of models of medical language may all be made more realizable and manageable through the use of structured text data.
机译:临床病例报告(CCR)是分享医学观察和见解的宝贵手段。这些文件的形式各不相同,其内容包括对许多新颖疾病的介绍和治疗的描述。到目前为止,CCR中的文本数据基本上是非结构化的,需要大量的人力和计算工作才能使这些数据对深度分析有用。在此协议中,我们描述了识别与CCR中经常观察到的特定生物医学概念相对应的元数据的方法。我们提供了元数据模板作为文档注释的指南,并认识到在CCR上强加结构可以通过手动和自动工作的组合来实现。此处介绍的方法适用于组织来自大型文献语料库(例如,数千个CCR)的与概念相关的文本,但可以轻松地进行调整,以促进更集中的任务或较小的报告集。生成的结构化文本数据包括足够的语义上下文,以支持各种后续的文本分析工作流程:可以确定如何最大化CCR详细信息的荟萃分析,罕见病的流行病学研究以及医学语言模型的开发都可以更加实现并且可以通过使用结构化的文本数据进行管理。

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