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Minimizing Prediction Time for Catheter-Associated Urinary Tract Infection Using Big Data Mining Model

机译:大数据挖掘模型最小化导管相关性尿路感染的预测时间

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This paper focuses on minimizing prediction time for Catheter-Associated Urinary Tract Infection (CAUTI) as one of the main types of Healthcare Associated Infections (HAIs) through a big data analytics model. Big data raises the bar as a result of additional features. It is mainly characterized by tremendous amount of data that is composed of different forms. It also deals with the rapid data flow rate that is generated from multiple sources, and to top it off the quality of the data is questionable. Data mining (DM) approach consumes significantly less time, provides higher accuracy, and prevents personal subjective decisions. The paper evaluates seven data mining algorithms with real patients dataset. It includes more than 28,000 cases for a period of five years. The modeling process considers the latest definition of the Centers for Disease Control and Prevention (CDC), published in January 2019. The model is evaluated through calculations of different assessment factors such as accuracy, computation speed, and precision (true positive and true negative). The research results show the best suitable algorithm is Naïve Bayes. It overcomes the other data mining techniques utilized in similar works.
机译:本文着重于通过大数据分析模型将导管相关性尿路感染(CAUTI)作为医疗保健相关感染(HAIs)的主要类型之一的预测时间最小化。大数据由于附加功能而提高了标准。它的主要特点是由大量不同形式的数据组成。它还处理从多个源生成的快速数据流,最重要的是数据质量令人怀疑。数据挖掘(DM)方法消耗的时间大大减少,准确性更高,并且可以防止个人主观决策。本文评估了具有真实患者数据集的七种数据挖掘算法。它包括28,000多个案件,为期五年。建模过程考虑了2019年1月发布的疾病控制与预防中心(CDC)的最新定义。该模型是通过计算不同评估因子(如准确性,计算速度和精度(真阳性和真阴性))进行评估的。研究结果表明,最合适的算法是朴素贝叶斯。它克服了类似工作中使用的其他数据挖掘技术。

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