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Automated Classification of Radiology Reports for Acute Lung Injury: Comparison of Keyword and Machine Learning Based Natural Language Processing Approaches

机译:急性肺损伤的放射学报告的自动分类:基于关键字和机器的自然语言处理方法的比较

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This paper compares the performance of keyword and machine learning-based chest x-ray report classification for Acute Lung Injury (ALI). ALI mortality is approximately 30 percent. High mortality is, in part, a consequence of delayed manual chest x-ray classification. An automated system could reduce the time to recognize ALI and lead to reductions in mortality. For our study, 96 and 857 chest x-ray reports in two corpora were labeled by domain experts for ALI. We developed a keyword and a Maximum Entropy-based classification system. Word unigram and character n-grams provided the features for the machine learning system. The Maximum Entropy algorithm with character 6-gram achieved the highest performance (Recall=0.91, Precision=0.90 and F-measure=0.91) on the 857-report corpus. This study has shown that for the classification of ALI chest x-ray reports, the machine learning approach is superior to the keyword based system and achieves comparable results to highest performing physician annotators.
机译:本文比较了关键字和基于机器学习的胸部X射线报告分类对急性肺损伤(ALI)的性能。阿里死亡率约为30%。部分死亡率部分是延迟手动胸X射线分类的结果。自动化系统可以减少识别ALI并导致降低死亡率的时间。对于我们的研究,两层胸部的96和857胸X射线报告由Ali的域名专家标记。我们开发了一个关键字和基于最大熵的分类系统。单词UNIGRAM和字符N-GRAM提供了机器学习系统的功能。具有字符6-GRAM的最大熵算法在857举报语料库上实现了具有最高性能(召回= 0.91,PRECISION = 0.90和F-MEACT = 0.91)。本研究表明,对于ALI胸部X射线报告的分类,机器学习方法优于基于关键字的系统,并实现了对最高执行医师注释器的可比结果。

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