代表临床决策支持的生物医学文献证据:语义计算和生物医学的挑战

William Hsu
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引用次数: 0

摘要

生物医学文献发表的速度远远超过了我们有效利用这些信息进行循证医学的能力。虽然论文可以很容易地通过Pub Med等数据库进行搜索,但临床医生往往需要花费大量时间来寻找、评估、解释和应用这些信息。使用标准化数据模型构建已发表论文证据的工具,以及为探索记录的生物医学实体提供直观查询界面的工具,对于利用这些信息作为临床决策过程的一部分非常有价值。本讲座介绍了开发计算工具的努力,以及建模的表示和来自肺癌多个临床试验报告的相关证据。描述了与以机器可解释的方式表示这些信息、评估研究质量和处理相互矛盾的证据相关的挑战。我将讨论两种工具的开发:1)用于从论文中提取信息的注释器工具,将其映射到基于本体的表示中的概念;2)基于模型中捕获的信息总结单个论文信息的可视化工具。以肺癌为例,我演示了这些工具如何帮助用户将文献中报告的信息应用于个性化医疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Representing Evidence from Biomedical Literature for Clinical Decision Support: Challenges on Semantic Computing and Biomedicine
The rate at which biomedical literature is being published is quickly outpacing our ability to effectively leverage this information for evidence-based medicine. While papers are readily searchable through databases such as Pub Med, clinicians are often left with the time-consuming task of finding, assessing, interpreting, and applying this information. Tools that structure evidence from published papers using a standardized data model and provide an intuitive query interface for exploring documented biomedical entities would be valuable in utilizing this information as part of the clinical decision making process. This talk presents efforts towards developing computational tools and a representation for modeling and relating evidence from multiple clinical trial reports for lung cancer. Challenges related to representing this information in a machine-interpretable manner, assessing study quality, and handling conflicting evidence are described. I discuss the development of two tools: 1) an annotator tool used to extract information from papers, mapping it to concepts in an ontology-based representation and 2) a visualization that summarizes information about a single paper based on information captured in the model. Using lung cancer as a driving example, I demonstrate how these tools help users apply information reported in literature towards individually tailored medicine.
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