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Natural language processing of radiology reports for the detection of thromboembolic diseases and clinically relevant incidental findings

机译:放射学报告的自然语言处理用于检测血栓栓塞性疾病和临床相关的偶然发现

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摘要

BackgroundNatural Language Processing (NLP) has been shown effective to analyze the content of radiology reports and identify diagnosis or patient characteristics. We evaluate the combination of NLP and machine learning to detect thromboembolic disease diagnosis and incidental clinically relevant findings from angiography and venography reports written in French. We model thromboembolic diagnosis and incidental findings as a set of concepts, modalities and relations between concepts that can be used as features by a supervised machine learning algorithm. A corpus of 573 radiology reports was de-identified and manually annotated with the support of NLP tools by a physician for relevant concepts, modalities and relations. A machine learning classifier was trained on the dataset interpreted by a physician for diagnosis of deep-vein thrombosis, pulmonary embolism and clinically relevant incidental findings. Decision models accounted for the imbalanced nature of the data and exploited the structure of the reports.
机译:背景自然语言处理(NLP)已被证明可有效分析放射学报告的内容并识别诊断或患者特征。我们评估了自然语言处理和机器学习的组合,以检测以法语编写的血管造影和静脉造影报告中的血栓栓塞性疾病诊断和临床相关偶然发现。我们将血栓栓塞诊断和偶然发现建模为一组概念,模态以及概念之间的关系,这些概念,模式和概念之间的关系可以通过有监督的机器学习算法用作特征。取消了573份放射学报告的语料库,并在医师的支持下利用NLP工具手动注释了相关的概念,方式和关系。在医生解释的数据集上训练了机器学习分类器,以诊断深静脉血栓形成,肺栓塞和临床相关的偶然发现。决策模型考虑了数据的不平衡性,并利用了报告的结构。

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