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Automatic Knowledge Extraction and Data Mining from Echo Reports of Pediatric Heart Disease: Application on Clinical Decision Support

机译:小儿心脏病回声报告的自动知识提取与数据挖掘:在临床决策支持中的应用

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Echocardiography (Echo) reports of the patients with pediatric heart disease contain many disease related information, which provide great support to physicians for clinical decision. Such as treatment customization based on the risk level of the specific patient. With the help of natural language processing (NLP), information can be automatically extracted from free-text reports. Those structured data is much easier to analyze with the existing data mining approaches. In this study, we extract the entity/anatomic site-feature-value (EFV) triples in the Echo reports and predict the risk level on this basis. The prediction accuracy of machine learning and rule-based method are compared based on a manual prepared ideal data, to explore the application of automatic knowledge extraction on clinical decision support.
机译:超声心动图(Echo)报告儿科心脏病患者含有许多疾病相关信息,为医生提供了临床决策的极大支持。如根据特定患者的风险水平的治疗定制。借助自然语言处理(NLP),可以从自由文本报告中自动提取信息。这些结构化数据更容易分析现有数据挖掘方法。在这项研究中,我们在回声报告中提取实体/解剖站点 - 特征值(EFV)三倍,并在此基础上预测风险级别。基于手动准备的理想数据比较了机器学习和规则的方法的预测精度,探讨了自动知识提取对临床决策支持的应用。

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