首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Evaluation of an Automated Information Extraction Tool for Imaging Data Elements to Populate a Breast Cancer Screening Registry
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Evaluation of an Automated Information Extraction Tool for Imaging Data Elements to Populate a Breast Cancer Screening Registry

机译:自动化的信息提取工具的成像数据元素的评估,以填充乳腺癌筛查注册表。

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Breast cancer screening is central to early breast cancer detection. Identifying and monitoring process measures for screening is a focus of the National Cancer Institute's Population-based Research Optimizing Screening through Personalized Regimens (PROSPR) initiative, which requires participating centers to report structured data across the cancer screening continuum. We evaluate the accuracy of automated information extraction of imaging findings from radiology reports, which are available as unstructured text. We present prevalence estimates of imaging findings for breast imaging received by women who obtained care in a primary care network participating in PROSPR (n=139,953 radiology reports) and compared automatically extracted data elements to a "gold standard" based on manual review for a validation sample of 941 randomly selected radiology reports, including mammograms, digital breast tomosynthesis, ultrasound, and magnetic resonance imaging (MRI). The prevalence of imaging findings vary by data element and modality (e.g., suspicious calcification noted in 2.6 % of screening mammograms, 12.1 % of diagnostic mammograms, and 9.4 % of tomosynthesis exams). In the validation sample, the accuracy of identifying imaging findings, including suspicious calcifications, masses, and architectural distortion (on mammogram and tomosynthesis); masses, cysts, non-mass enhancement, and enhancing foci (on MRI); and masses and cysts (on ultrasound), range from 0.8 to 1.0 for recall, precision, and F-measure. Information extraction tools can be used for accurate documentation of imaging findings as structured data elements from text reports for a variety of breast imaging modalities. These data can be used to populate screening registries to help elucidate more effective breast cancer screening processes.
机译:乳腺癌筛查对于早期乳腺癌检测至关重要。识别和监控筛选过程的措施是美国国家癌症研究所基于个性化方案的基于人群的研究优化筛选(PROSPR)计划的重点,该计划要求参与中心报告整个癌症筛查连续体的结构化数据。我们评估了放射学报告中影像发现的自动信息提取的准确性,这些报告可以作为非结构化文本来获得。我们介绍了在参与PROSPR的基层医疗网络中获得护理的女性(n = 139,953放射学报告)并根据人工检查将自动提取的数据元素与“黄金标准”进行了比较的女性所获得的乳腺成像影像学发现的普遍性估计值。随机选择的941份放射学报告的样本,包括乳房X线照片,乳腺断层合成,超声和磁共振成像(MRI)。影像学发现的患病率因数据元素和模态而异(例如,筛查性X线检查的2.6%,诊断性X线检查的12.1%和断层合成检查的9.4%指出可疑钙化)。在验证样本中,识别成像结果的准确性,包括可疑的钙化,肿块和建筑畸变(关于乳房X线照片和断层合成);肿块,囊肿,非肿块增强和病灶增强(在MRI上);肿块和囊肿(超声检查)在召回率,精确度和F值范围从0.8至1.0。信息提取工具可用于以各种乳腺成像方式的文本报告将成像结果准确记录为结构化的数据元素,作为结构化的数据元素。这些数据可用于填充筛查注册表,以帮助阐明更有效的乳腺癌筛查过程。

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