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A method for imputation of semantic class in diagnostic radiology text

机译:诊断放射学文本中语义类别的一种估算方法

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Diagnostic medicine produces large volumes of free-text reports used primarily for communication between medical professionals. Secondary use of these reports requires extraction of structured information from the free text. State-of-the-art computational natural language processing techniques can make partial identification of semantics in text, but the diverse terminology used in medical settings makes training classifiers for every lexicon a laborious task. We present statistics of semantics from a large-scale machine-annotated corpus of 83,452 chest x-ray reports. We show that the distribution of semantics is consistent with Zipfian distributions observed in other natural language corpora, and we quantify the semantic focus imparted by limiting a study by body area and modality. We demonstrate that within our semantically focused corpus, pairwise co-occurrence statistics can be used to accurately impute the semantic class for frequently occurring unknown entities, thereby reducing the number of semantically unclassified phrases by up to 25%. Finally, we show that our imputation approach is consistent across multiple reconstructions of the underlying text data.
机译:诊断医学会生成大量的自由文本报告,这些报告主要用于医疗专业人员之间的通信。这些报告的二次使用需要从自由文本中提取结构化信息。先进的计算自然语言处理技术可以部分识别文本中的语义,但是医疗环境中使用的各种术语使针对每个词典的训练分类器都成为一项艰巨的任务。我们提供了来自83,452个胸部X射线报告的大型机器注释语料库的语义统计。我们表明语义分布与在其他自然语言语料库中观察到的Zipfian分布是一致的,并且我们通过限制身体区域和情态来限制研究,从而给出了语义重点。我们证明,在我们的语义集中语料库中,成对共现统计可用于为经常出现的未知实体准确地推算语义类别,从而将语义上未分类的短语的数量减少多达25%。最后,我们证明了插补方法在基础文本数据的多次重构中是一致的。

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