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Full-text Automated Detection of Surgical Site Infections Secondary to Neurosurgery in Rennes, France

机译:法国雷恩雷恩神经外科的外科自动检测

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The surveillance of Surgical Site Infections (SSI) contributes to the management of risk in French hospitals. Manual identification of infections is costly, time-consuming and limits the promotion of preventive procedures by the dedicated teams. The introduction of alternative methods using automated detection strategies is promising to improve this surveillance. The present study describes an automated detection strategy for SSI in neurosurgery, based on textual analysis of medical reports stored in a clinical data warehouse. The method consists firstly, of enrichment and concept extraction from full-text reports using NOMINDEX, and secondly, text similarity measurement using a vector space model. The text detection was compared to the conventional strategy based on self-declaration and to the automated detection using the diagnosis-related group database. The text-mining approach showed the best detection accuracy, with recall and precision equal to 92% and 40% respectively, and confirmed the interest of reusing full-text medical reports to perform automated detection of SSI.
机译:手术部位感染的监测(SSI)有助于法国医院的风险管理。手动鉴定感染是昂贵的,耗时的,并限制了专门团队的预防程序的促进。使用自动检测策略的替代方法的引入很有希望改善这种监视。本研究描述了神经外科SSI的自动检测策略,基于存储在临床数据仓库中的医疗报告的文本分析。该方法首先由使用NOMIndex的全文报告提取,其次,使用矢量空间模型来提取富集和概念提取。将文本检测与基于自我声明的传统策略和使用诊断相关组数据库进行了相比。文本挖掘方法显示出最佳的检测精度,召回和精度分别等于92%和40%,并确认了重用全文医疗报告的兴趣以执行SSI的自动检测。

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