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Automated Extraction of BI-RADS Final Assessment Categories from Radiology Reports with Natural Language Processing

机译:通过自然语言处理从放射学报告中自动提取BI-RADS最终评估类别

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摘要

The objective of this study is to evaluate a natural language processing (NLP) algorithm that determines American College of Radiology Breast Imaging Reporting and Data System (BI-RADS) final assessment categories from radiology reports. This HIPAA-compliant study was granted institutional review board approval with waiver of informed consent. This cross-sectional study involved 1,165 breast imaging reports in the electronic medical record (EMR) from a tertiary care academic breast imaging center from 2009. Reports included screening mammography, diagnostic mammography, breast ultrasound, combined diagnostic mammography and breast ultrasound, and breast magnetic resonance imaging studies. Over 220 reports were included from each study type. The recall (sensitivity) and precision (positive predictive value) of a NLP algorithm to collect BI-RADS final assessment categories stated in the report final text was evaluated against a manual human review standard reference. For all breast imaging reports, the NLP algorithm demonstrated a recall of 100.0 % (95 % confidence interval (CI), 99.7, 100.0 %) and a precision of 96.6 % (95 % CI, 95.4, 97.5 %) for correct identification of BI-RADS final assessment categories. The NLP algorithm demonstrated high recall and precision for extraction of BI-RADS final assessment categories from the free text of breast imaging reports. NLP may provide an accurate, scalable data extraction mechanism from reports within EMRs to create databases to track breast imaging performance measures and facilitate optimal breast cancer population management strategies.
机译:这项研究的目的是评估一种自然语言处理(NLP)算法,该算法可确定放射线学报告中美国放射学院的乳房影像学报告和数据系统(BI-RADS)最终评估类别。这项符合HIPAA要求的研究已获得机构审查委员会的批准,但无需知情同意。这项横断面研究涉及三级医疗学术乳房成像中心自2009年以来在电子病历(EMR)中的1,165例乳房成像报告。这些报告包括筛查乳房X线照片,诊断乳房X线照片,乳房超声,联合诊断乳房X线照片和乳房超声以及乳房磁共振成像研究。每种研究类型均包含220多个报告。 NLP算法收集了报告最终文本中所述的BI-RADS最终评估类别的查全率(敏感性)和精确度(阳性预测值)是根据人工审查的标准参考进行评估的。对于所有乳腺成像报告,NLP算法显示召回率为100.0%(95%置信区间(CI),99.7、100.0%)和96.6%的准确度(95%CI,95.4、97.5%) -RADS最终评估类别。 NLP算法展示了从乳房成像报告的自由文本中提取BI-RADS最终评估类别的高召回率和准确性。 NLP可以从EMR中的报告中提供准确,可扩展的数据提取机制,以创建数据库来跟踪乳腺成像性能指标并促进最佳的乳腺癌人群管理策略。

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