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Structured Information Extraction of Pathology Reports with Attention-based Graph Convolutional Network

机译:基于关注的图表卷积网络的病理学报告的结构化信息提取

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Electronic medical data contains biochemical, imaging, pathological information during diagnosis and treatment. The pathology report is a kind of highly liberalized unstructured textual data, which is the basis and gold standard of cancer diagnosis and is very important for the prognosis and treatment of patients. The application of information extraction technology to pathological reports can obtain structured data that can be understood and analyzed by computers, helping pathologists make appropriate decisions. In this work, we proposed an attention-based graph convolutional network (GCN) for converting unstructured pathological reports into a structured form suitable for computer analysis to improve the current pathologist's workflow, collected medical data from different platforms, and provided more accurate assistance for diagnosis and treatment. We used pathology reports data from TCGA (The Cancer Genome Atlas) database with fine-grained annotations on 3632 pathology reports including four types of cancers. Our method performs better in our pathology report dataset with higher F1 score than traditional methods and deep learning methods. The results indicate that our method is robust, thus may work with other types of cancer pathology report.
机译:电子医疗数据含有生物化学,成像,病理信息在诊断和治疗期间。病理报告是一种高度自由化的非结构化文本数据,这是癌症诊断的基础和黄金标准,对患者的预后和治疗非常重要。信息提取技术在病理报告中的应用可以获得可通过计算机理解和分析的结构化数据,帮助病理学家做出适当的决策。在这项工作中,我们提出了一种基于关注的图表卷积网络(GCN),用于将非结构化病理报告转换为适合于计算机分析的结构化形式,以改善当前的病理学家的工作流程,从不同平台收集医疗数据,并提供更准确的诊断辅助和治疗。我们使用的病理学报告从TCGA(癌症基因组Atlas)数据库的数据报告,在3632种病理报告中,包括四种类型的癌症的细粒度注释。我们的方法在我们的病理学报告数据集中表现得更高,F1得分比传统方法和深度学习方法更高。结果表明,我们的方法是稳健的,因此可以与其他类型的癌症病理报告合作。

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