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Automatic Classification of Radiological Reports for Clinical Care

机译:自动分类临床护理的放射报告

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Radiological reporting generates a large amount of free-text clinical narrative, a potentially valuable source of information for improving clinical care and supporting research. The use of automatic techniques to analyze such reports is necessary to make their content effectively available to radiologists in an aggregated form. In this paper we focus on the classification of chest computed tomography reports according to a classification schema proposed by radiologists of the Italian hospital ASST Spedali Civili di Brescia. At the time of writing, 346 reports have been annotated by a radiologist. Each report is classified according to the schema developed by radiologists and textual evidences are marked in the report. The annotations are then used to train different machine learning based classifiers. We present in this paper a method based on a cascade of classifiers which make use of a set of syntactic and semantic features. By testing the classifiers in cross-validation on manually annotated reports, we obtained a range of accuracy of 81-96%.
机译:放射性报告产生大量的自由文本临床叙述,是改善临床护理和支持研究的潜在有价值的信息来源。使用自动化技术来分析这些报告是必要的,以使其以汇总形式有效地提供给放射科学家的内容。在本文中,我们专注于胸部计算机断层扫描报告的分类,根据意大利医院Ast Spedali Cinulia di Brecesia的放射科医院提出的分类模式。在撰写本文时,放射科医师注释了346个报告。每份报告按照放射科医师开发的架构进行分类,报告中标志着文本证据。然后使用注释来训练基于机器的基于机器学习的分类器。我们在本文中呈现了一种基于级联分类器的方法,它利用了一组句法和语义特征。通过在手动注释的报告中测试交叉验证中的分类器,我们获得的一系列准确度为81-96%。

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