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首页> 外文期刊>Journal of neurosurgical sciences >Natural language processing to identify ureteric stones in radiology reports
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Natural language processing to identify ureteric stones in radiology reports

机译:自然语言处理以识别放射学报告中的输尿管石

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摘要

Introduction Natural language processing (NLP) is an emerging tool which has the ability to automate data extraction from large volumes of unstructured text. One of the main described uses of NLP in radiology is cohort building for epidemiological studies. This study aims to assess the accuracy of NLP in identifying a group of patients positive for ureteric stones on Computed Tomography - Kidneys, Ureter, Bladder (CT KUB) reports. Methods Retrospective review of all CT KUB reports in a single calendar year. A locally available NLP tool was used to automatically classify the reports based on positivity for ureteric stones. This was validated by manual review and refined to maximize the accuracy of stone detection. Results A total of 1874 CT KUB reports were identified. Manual classification of ureteric stone positivity was 36% compared with 27% using NLP. The accuracy of NLP was 85% with a sensitivity of 66% and specificity of 95%. Incorrect classification was due to misspellings, variable syntax, terminology, pluralization and the inability to exclude clinical request details from the search algorithm. Conclusions Our NLP tool demonstrated high specificity but low sensitivity at identifying CT KUB reports that are positive for ureteric stones. This was attributable to the lack of feature extraction tools tailored for analysing radiology text, incompleteness of the medical lexicon database and heterogeneity of unstructured reports. Improvements in these areas will help improve data extraction accuracy.
机译:简介自然语言处理(NLP)是一种新兴工具,具有自动从大量非结构化文本中提取数据提取的能力。 NLP在放射学中的主要描述用途之一是流行病学研究的队列建设。本研究旨在评估NLP的准确性,鉴定一组患者对计算断层扫描术 - 肾脏,输尿管,膀胱(CT kub)报告的患者。方法回顾单个日历年度所有CT桶报告的回顾述评。本地可用的NLP工具用于根据输尿管结石的积极性自动对报告进行分类。这是通过手动审查和精致的验证,以最大限度地提高石头检测的准确性。结果共有1874年CT Kub报告。手动分类输尿管石阳性为36%,相比使用NLP 27%。 NLP的准确性为85%,灵敏度为66%,特异性为95%。分类不正确是由于拼写错误,可变语法,术语,多元化和无法从搜索算法中排除临床请求细节。结论我们的NLP工具表现出高特异性但在识别对输尿管结石阳性的CT KUB报告时的敏感性低。这归因于缺乏针对分析放射学文本的特征提取工具,医疗词典数据库的不完整性和非结构化报告的异质性。这些区域的改进将有助于提高数据提取精度。

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