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Automated Radiology Report Summarization Using an Open-Source Natural Language Processing Pipeline

机译:使用开源自然语言处理管道的自动放射学报告摘要

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摘要

Diagnostic radiologists are expected to review and assimilate findings from prior studies when constructing their overall assessment of the current study. Radiology information systems facilitate this process by presenting the radiologist with a subset of prior studies that are more likely to be relevant to the current study, usually by comparing anatomic coverage of both the current and prior studies. It is incumbent on the radiologist to review the full text report and/or images from those prior studies, a process that is time-consuming and confers substantial risk of overlooking a relevant prior study or finding. This risk is compounded when patients have dozens or even hundreds of prior imaging studies. Our goal is to assess the feasibility of natural language processing techniques to automatically extract asserted and negated disease entities from free-text radiology reports as a step towards automated report summarization. We compared automatically extracted disease mentions to a gold-standard set of manual annotations for 50 radiology reports from CT abdomen and pelvis examinations. The automated report summarization pipeline found perfect or overlapping partial matches for 86% of the manually annotated disease mentions (sensitivity 0.86, precision 0.66, accuracy 0.59, F1 score 0.74). The performance of the automated pipeline was good, and the overall accuracy was similar to the interobserver agreement between the two manual annotators.
机译:诊断放射线医师在构建对当前研究的总体评估时,应审查并吸收先前研究的发现。放射学信息系统通常通过比较当前和先前研究的解剖学覆盖范围,向放射科医生展示与先前研究更相关的先前研究的子集,从而促进此过程。放射科医生有责任查看这些先前研究的全文报告和/或图像,该过程既费时又给与忽视相关先前研究或发现的巨大风险。当患者进行了数十项甚至数百项先前的影像学研究时,这种风险更加复杂。我们的目标是评估自然语言处理技术从自由文本放射学报告中自动提取断言和否定的疾病实体的可行性,这是朝着自动报告摘要迈出的一步。我们将自动提取的疾病提及与50条来自CT腹部和骨盆检查的放射学报告的黄金标准手册注释进行了比较。自动化报告摘要管道发现86%的手动注释疾病提到了完全匹配或重叠的部分匹配项(灵敏度0.86,精度0.66,精度0.59,F1得分0.74)。自动化管道的性能良好,并且总体准确性类似于两个手动注释者之间的观察者间协议。

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