Study on Medical Imaging Reports Tagging Extraction Based on Bi-LSTM + CRF

Jiyun Li, Kaihua Li
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引用次数: 0

Abstract

As an important information carrier for hospital to record medical activities for patients, medical imaging report contains a large amount of technical terms and medical knowledge. In order to automatically generate computer-aided diagnosis reports, it is necessary to extract effective information from medical image reports, so as to reduce the pressure of professional physicians and better serve clinical decision-making. This paper mainly focuses on mammography medical imaging reports, analyzes the structure and contents of the reports, and deals with the imaging reports using the machine learning model, called Bi-LSTM + CRF (Bidirectional Long Short Term Memory with a Conditional Random Fields layer), in order to extract tags of the lesion, such as the position, size and shape in the imaging reports. The experimental results achieved satisfactory effort.
基于Bi-LSTM + CRF的医学影像报告标注提取研究
医学影像报告是医院记录患者医疗活动的重要信息载体,它包含了大量的专业术语和医学知识。为了自动生成计算机辅助诊断报告,有必要从医学图像报告中提取有效信息,以减轻专业医生的压力,更好地为临床决策服务。本文主要针对乳腺x线摄影医学影像报告,对报告的结构和内容进行分析,并利用Bi-LSTM + CRF (Bidirectional Long - Short Term Memory with a Conditional Random Fields layer)机器学习模型对影像报告进行处理,提取影像报告中病灶的位置、大小、形状等标签。实验结果取得了满意的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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