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Can text-search methods of pathology reports accurately identify patients with rectal cancer in large administrative databases?

机译:病理报告的文本搜索方法能否在大型管理数据库中准确识别直肠癌患者?

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Background: The aim of this study is to derive and to validate a cohort of rectal cancer surgical patients within administrative datasets using text-search analysis of pathology reports. Materials and Methods: A text-search algorithm was developed and validated on pathology reports from 694 known rectal cancers, 1000 known colon cancers, and 1000 noncolorectal specimens. The algorithm was applied to all pathology reports available within the Ottawa Hospital Data Warehouse from 1996 to 2010. Identified pathology reports were validated as rectal cancer specimens through manual chart review. Sensitivity, specificity, and positive predictive value (PPV) of the text-search methodology were calculated. Results: In the derivation cohort of pathology reports (n = 2694), the text-search algorithm had a sensitivity and specificity of 100% and 98.6%, respectively. When this algorithm was applied to all pathology reports from 1996 to 2010 (n = 284,032), 5588 pathology reports were identified as consistent with rectal cancer. Medical record review determined that 4550 patients did not have rectal cancer, leaving a final cohort of 1038 rectal cancer patients. Sensitivity and specificity of the text-search algorithm were 100% and 98.4%, respectively. PPV of the algorithm was 18.6%. Conclusions: Text-search methodology is a feasible way to identify all rectal cancer surgery patients through administrative datasets with high sensitivity and specificity. However, in the presence of a low pretest probability, text-search methods must be combined with a validation method, such as manual chart review, to be a viable approach.
机译:背景:本研究的目的是使用病理报告的文本搜索分析在行政数据集中得出并验证一组直肠癌手术患者。材料和方法:开发了文本搜索算法,并根据694个已知直肠癌,1000个已知结肠癌和1000个非结肠直肠标本的病理报告进行了验证。该算法已应用于1996年至2010年在渥太华医院数据仓库中提供的所有病理报告。通过手动图表检查,已鉴定的病理报告已作为直肠癌标本进行了验证。计算了文本搜索方法的敏感性,特异性和阳性预测值(PPV)。结果:在病理报告的派生队列(n = 2694)中,文本搜索算法的敏感性和特异性分别为100%和98.6%。当将该算法应用于1996年至2010年的所有病理报告(n = 284,032)时,发现5588个病理报告与直肠癌一致。病历审查确定有4550名患者未患有直肠癌,最后的队列为1038名直肠癌患者。文本搜索算法的敏感性和特异性分别为100%和98.4%。该算法的PPV为18.6%。结论:文本搜索方法是通过具有高度敏感性和特异性的行政数据集识别所有直肠癌手术患者的可行方法。但是,在存在较低的前测概率的情况下,文本搜索方法必须与验证方法(例如手动图表检查)结合使用,这样才是可行的方法。

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