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Use of Natural Language Processing for Precise Retrieval of Key Elements of Health IT Evaluation Studies

机译:使用自然语言处理精确检索健康关键要素IT评估研究

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Having precise information about health IT evaluation studies is important for evidence-based decisions in medical informatics. In a former feasibility study, we used a faceted search based on ontological modeling of key elements of studies to retrieve precisely described health FT evaluation studies. However, extracting the key elements manually for the modeling of the ontology was time and resource-intensive. We now aimed at applying natural language processing to substitute manual data extraction by automatic data extraction. Four methods (Named Entity Recognition, Bag-of-Words, Term-Frequency-Inverse-Document-Frequency, and Latent Dirichlet Allocation Topic Modeling were applied to 24 health IT evaluation studies. We evaluated which of these methods was best suited for extracting key elements of each study. As gold standard, we used results from manual extraction. As a result, Named Entity Recognition is promising but needs to be adapted to the existing study context. After the adaption, key elements of studies could be collected in a more feasible, time- and resource-saving way.
机译:具有关于健康的精确信息,IT评估研究对于医学信息学的证据决策非常重要。在前一种可行性研究中,我们使用基于研究的关键要素的本体研究来利用各种研究,以检索正面描述的健康FT评估研究。但是,为本体建模提取的关键元素是时间和资源密集的。我们现在旨在应用自然语言处理来替代手动数据提取通过自动数据提取。四种方法(命名实体识别,单词袋,术语 - 频率反转文档频率和潜在的Dirichlet分配主题建模应用于24个卫生评估研究。我们评估了哪些方法最适合提取键每项研究的元素。作为黄金标准,我们使用了手动提取的结果。结果,命名实体识别是有希望的,但需要适应现有的研究背景。在适应之后,可以更多地收集研究后的关键学习元素可行,节省时间和资源的方式。

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