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首页> 外文期刊>Artificial intelligence in medicine >Detecting borderline infection in an automated monitoring system for healthcare-associated infection using fuzzy logic
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Detecting borderline infection in an automated monitoring system for healthcare-associated infection using fuzzy logic

机译:使用模糊逻辑在医疗相关感染自动监控系统中检测边界感染

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摘要

Background: Many electronic infection detection systems employ dichotomous classification methods, classifying patient data as pathological or normal with respect to one or several types of infection. An electronic monitoring and surveillance system for healthcare-associated infections (HAIs) known as Moni-ICU is being operated at the intensive care units (ICUs) of the Vienna General Hospital (VGH) in Austria. Instead of classifying patient data as pathological or normal, Moni-ICU introduces a third borderline class. Patient data classified as borderline with respect to an infection-related clinical concept or HAI surveillance definition signify that the data nearly or partly fulfill the definition for the respective concept or HAI, and are therefore neither fully pathological nor fully normal.
机译:背景技术:许多电子感染检测系统采用二分类方法,针对一种或几种类型的感染将患者数据分类为病理或正常。奥地利维也纳总医院(VGH)的重症监护病房(ICU)正在运行一个名为Moni-ICU的医疗保健相关感染(HAI)电子监视和监视系统。 Moni-ICU并没有将患者数据分类为病理数据还是正常数据,而是引入了第三类临界值。就感染相关临床概念或HAI监视定义而言,被归类为临界的患者数据表示该数据几乎或部分满足了相应概念或HAI的定义,因此既不是完全病理也不是完全正常。

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