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Structural Application of Medical Image Report Based on Bi-CNNs-LSTM-CRF

机译:基于Bi-CNNS-LSTM-CRF的医学图像报告的结构应用

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Medical image reporting is an important information carrier for medical staff to record medical activities for patients. It contains a large number of technical terms and medical knowledge. Extracting effective information from medical imaging reports can better serve clinical decision making and promote the development of the medical field. This paper focuses on the breast medical imaging report, analyzes the structural characteristics of the report, designs the medical record structured template, extracts the text features from the image report, and forms the structured data in the canonical form. In this paper, the machine learning model bidirectional CNNs-LSTM-CRF is used to extract the characteristic information of related lesions in the image report. The experimental data comes from an imaging inspection report provided by a medical institution to evaluate the effect of the structure by predicting the BI-RADS classification information. The data was provided by a medical institution, and the extracting result of the feature tagging is that the average accuracy is 95.71%, the average recall is 98.10%, and the average F1 values 97.29%.
机译:医学图像报告是医务人员为患者进行医疗活动的重要信息承运人。它包含大量的技术术语和医学知识。从医学成像报告中提取有效信息可以更好地服务于临床决策,促进医学领域的发展。本文重点介绍了乳房医学成像报告,分析了报告的结构特征,设计了医疗记录结构化模板,从图像报告中提取文本功能,并在规范形式中形成结构化数据。在本文中,机器学习模型双向CNNS-LSTM-CRF用于提取图像报告中的相关病变的特征信息。实验数据来自医疗机构提供的成像检验报告,通过预测BI-RADS分类信息来评估结构的影响。该数据由医疗机构提供,功能标记的提取结果是平均精度为95.71%,平均召回为98.10%,平均F1值97.29%。

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