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Classifying publications from the clinical and translational science award program along the translational research spectrum: a machine learning approach

机译:根据转化研究范围对临床和转化科学奖计划的出版物进行分类:一种机器学习方法

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摘要

BackgroundTranslational research is a key area of focus of the National Institutes of Health (NIH), as demonstrated by the substantial investment in the Clinical and Translational Science Award (CTSA) program. The goal of the CTSA program is to accelerate the translation of discoveries from the bench to the bedside and into communities. Different classification systems have been used to capture the spectrum of basic to clinical to population health research, with substantial differences in the number of categories and their definitions. Evaluation of the effectiveness of the CTSA program and of translational research in general is hampered by the lack of rigor in these definitions and their application. This study adds rigor to the classification process by creating a checklist to evaluate publications across the translational spectrum and operationalizes these classifications by building machine learning-based text classifiers to categorize these publications.
机译:背景翻译研究是美国国立卫生研究院(NIH)重点关注的关键领域,临床与转化科学奖(CTSA)计划的大量投资证明了这一点。 CTSA计划的目标是加速将发现成果从实验台转移到床边再到社区。已经使用了不同的分类系统来捕获从基础到临床再到人群健康研究的范围,类别的数量和定义存在实质性差异。这些定义及其应用缺乏严格性,因此妨碍了对CTSA计划和翻译研究总体效果的评估。这项研究通过创建清单来评估跨翻译领域的出版物,并通过构建基于机器学习的文本分类器对这些出版物进行分类,从而使分类过程更加严格。

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