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Automated Information Extraction of Key Trial Design Elements from Clinical Trial Publications

机译:从临床试验出版物中自动提取关键试验设计要素的信息

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摘要

Clinical trials are one of the most valuable sources of scientific evidence for improving the practice of medicine. The Trial Bank project aims to improve structured access to trial findings by including formalized trial information into a knowledge base. Manually extracting trial information from published articles is costly, but automated information extraction techniques can assist. The current study highlights a single architecture to extract a wide array of information elements from full-text publications of randomized clinical trials (RCTs). This architecture combines a text classifier with a weak regular expression matcher. We tested this two-stage architecture on 88 RCT reports from 5 leading medical journals, extracting 23 elements of key trial information such as eligibility rules, sample size, intervention, and outcome names. Results prove this to be a promising avenue to help critical appraisers, systematic reviewers, and curators quickly identify key information elements in published RCT articles.
机译:临床试验是改善医学实践的最有价值的科学证据来源之一。 Trial Bank项目旨在通过将正式的试验信息纳入知识库来改善对试验结果的结构化访问。从发表的文章中手动提取试验信息的成本很高,但是自动信息提取技术可以提供帮助。当前的研究强调了一个单一的体系结构,可以从随机临床试验(RCT)的全文出版物中提取各种各样的信息元素。这种体系结构将文本分类器与弱正则表达式匹配器结合在一起。我们在来自5家领先医学期刊的88篇RCT报告中测试了这种两阶段体系结构,提取了23个关键试验信息的元素,例如资格规则,样本量,干预措施和结果名称。结果证明这是帮助关键评估师,系统的审稿人和策展人快速识别已发布的RCT文章中关键信息元素的有前途的途径。

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