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首页> 外文期刊>Canadian Urological Association Journal >Derivation and validation of text search algorithms for renal and adrenal lesion identification in radiology text reports
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Derivation and validation of text search algorithms for renal and adrenal lesion identification in radiology text reports

机译:放射文本报告中肾和肾上腺病变识别文本搜索算法的衍生和验证

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Introduction: Most cohort studies are limited by sampling and accrual bias. The capability to detect specific lesions identified in radiological text reports could eliminate these biases and benefit patient care, clinical research, and trial recruitment. This study derived and internally validated text search algorithms to identify four common urological lesions (solid renal masses, complex renal cysts, adrenal masses, and simple renal cysts) using radiology text reports. Methods: A simple random sample of 10 000 abdominal ultrasound (US) and computed tomography (CT) reports was drawn from our hospital’s data warehouse. Reports were manually reviewed to determine the true status of the four lesions. Using commonly available software, we created logistic regression models having as predictors the status of a priori selected text terms in the report. We used bootstrap sampling with 95th percentile thresholds to select variables for the final models, which were modified into point systems. A second independent, random sample of 2855 reports, stratified by the number of points for each abnormality, was reviewed in a blinded fashion to measure the accuracy of each lesion’s point system. Results: The prevalence of solid renal mass, complex renal cyst, adrenal mass and simple renal cyst, was 2.0%, 1.7%, 3.2%, and 20.0%, respectively. Each model contained between one and five text terms with c-statistics ranging between 0.66 and 0.90. In the independent validation, the scoring systems accurately predicted the probability that a text report cited the four lesions. Conclusions: Textual radiology reports can be analyzed using common statistical software to accurately determine the probability that important abnormalities of the kidneys or adrenal glands exist. These methods can be used for case identification or epidemiological studies.
机译:介绍:大多数队列研究受到采样和应计偏差的限制。检测放射文本报告中确定的特定病变的能力可以消除这些偏差和患者护理,临床研究和审判招聘。该研究衍生出和内部验证的文本搜索算法以鉴定使用放射学文本报告的四种常见的泌尿外病变(固体肾肿瘤,复杂肾囊肿,肾上腺囊肿)。方法:从我们医院的数据仓库中绘制了10 000腹超声(US)和计算机断层扫描(CT)报告的简单随机样品。预报报告审查以确定四个病变的真实状态。使用常用的软件,我们创建了逻辑回归模型,其具有预测器的预测结果在报告中的先验文本术语的状态。我们使用具有第95个百分位数的引导抽样来选择最终模型的变量,该变量被修改为点系统。通过盲目的方式审查了由每个异常的点数分层的第二个独立的随机样本,以盲目的方式审查,以测量每个病变点系统的准确性。结果:固体肾脏质量,复杂肾囊肿,肾上腺质量和简单肾囊肿的患病率分别为2.0%,1.7%,3.2%和20.0%。每个模型在一个和五个文本之间包含的C统计值0.66和0.90之间。在独立验证中,评分系统准确地预测了文本报告引用了四个病变的概率。结论:可以使用常规统计软件分析文本放射学报告,以准确确定存在肾脏或肾上腺的重要异常的可能性。这些方法可用于案例鉴定或流行病学研究。

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