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Improving Prediction Accuracy of “Central Line-Associated Blood Stream Infections” Using Data Mining Models

机译:使用数据挖掘模型提高“中线相关血流感染”的预测准确性

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摘要

Prediction of nosocomial infections among patients is an important part of clinical surveillance programs to enable the related personnel to take preventive actions in advance. Designing a clinical surveillance program with capability of predicting nosocomial infections is a challenging task due to several reasons, including high dimensionality of medical data, heterogenous data representation, and special knowledge required to extract patterns for prediction. In this paper, we present details of six data mining methods implemented using cross industry standard process for data mining to predict central line-associated blood stream infections. For our study, we selected datasets of healthcare-associated infections from US National Healthcare Safety Network and consumer survey data from Hospital Consumer Assessment of Healthcare Providers and Systems. Our experiments show that central line-associated blood stream infections (CLABSIs) can be successfully predicted using AdaBoost method with an accuracy up to 89.7%. This will help in implementing effective clinical surveillance programs for infection control, as well as improving the accuracy detection of CLABSIs. Also, this reduces patients' hospital stay cost and maintains patients' safety.
机译:对患者中医院感染的预测是临床监测计划的重要组成部分,以使相关人员能够提前采取预防措施。由于多种原因,设计具有预测医院感染的能力的临床监测程序是一项艰巨的任务,其中包括医学数据的高维度,异构数据表示以及提取预测模式所需的特殊知识。在本文中,我们介绍了使用跨行业标准过程进行数据挖掘以预测与中心线相关的血液感染的六种数据挖掘方法的详细信息。在我们的研究中,我们从美国国家医疗安全网络中选择了与医疗相关的感染数据集,并从《医疗服务提供者和系统的医院消费者评估》中选择了消费者调查数据。我们的实验表明,使用AdaBoost方法可以成功预测中心线相关的血流感染(CLABSI),其准确率高达89.7%。这将有助于实施有效的临床监控程序以控制感染,并提高CLABSI的准确性检测。而且,这降低了患者的住院费用并维护了患者的安全。

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