首页> 外文会议>ACM international health informatics symposium;IHI'10 >Evidence-Based Medicine, the Essential Role of Systematic Reviews, and the Need for Automated Text Mining Tools
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Evidence-Based Medicine, the Essential Role of Systematic Reviews, and the Need for Automated Text Mining Tools

机译:循证医学,系统评价的基本作用以及对自动文本挖掘工具的需求

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High quality, cost-effective medical care requires consideration of the best available, most appropriate evidence in the care of each patient, a practice known as Evidence-based Medicine (EBM). EBM is dependent upon the wide availability and coverage of accurate, objective syntheses called evidence reports (also called systematic reviews). These are compiled by a time and resource-intensive process that is largely manual, and that has not taken advantage of many of the advances in information processing technologies that have assisted other textual domains. We propose a specific text-mining based pipeline to support the creation and updating of evidence reports that provides support for the literature collection, collation, and triage steps of the systematic review process. The pipeline includes a metasearch engine that covers both bibliographic databases and selected "grey" literature; a module that classifies articles according to study type; a module for grouping studies that are closely related (e.g. that derive from the same underlying clinical trial or same study cohort); and an automated system that ranks publications according to the likelihood that they will meet inclusion criteria for the report. The proposed pipeline will also enable groups performing systematic review to reuse tools and models created by other groups, and will provide a test-bed for further informatics research to develop improved tools in the future. Ultimately, this should increase the rate that high-quality systematic reviews and meta-analyses can be generated, accessed and utilized by clinicians, patients, care-givers, and policymakers, resulting in better and more cost-effective care.
机译:高质量,具有成本效益的医疗服务需要考虑每个患者护理中可获得的最佳,最适当的证据,这种做法被称为循证医学(EBM)。 EBM依赖于准确,客观的合成(称为证据报告(也称为系统评价))的广泛可用性和覆盖范围。这些是通过时间和资源密集的过程来编写的,该过程主要是手动的,并且没有利用帮助其他文本领域的信息处理技术的许多进步。我们提出了一个基于文本挖掘的特定管道,以支持证据报告的创建和更新,从而为系统性审查过程中的文献收集,整理和分类步骤提供支持。该管道包括一个元搜索引擎,该引擎既覆盖书目数据库又包括选定的“灰色”文献。根据研究类型对文章进行分类的模块;用于将密切相关的研究分组的模块(例如,源自相同的基础临床试验或相同的研究队列);以及一个自动系统,可根据出版物符合报告包含标准的可能性对出版物进行排名。拟议的管道还将使进行系统审查的小组能够重用其他小组创建的工具和模型,并将为进一步的信息学研究提供测试平台,以在将来开发改进的工具。最终,这应该提高临床医生,患者,护理人员和决策者可以生成,访问和使用高质量的系统评价和荟萃分析的速度,从而提供更好,更具成本效益的护理。

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