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Association Rules and Data Mining in Hospital Infection Control and Public Health Surveillance

机译:医院感染控制与控制中的关联规则和数据挖掘 公共卫生监督

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摘要

>Abstract Objectives: The authors consider the problem of identifying new, unexpected, and interesting patterns in hospital infection control and public health surveillance data and present a new data analysis process and system based on association rules to address this problem.>Design: The authors first illustrate the need for automated pattern discovery and data mining in hospital infection control and public health surveillance. Next, they define association rules, explain how those rules can be used in surveillance, and present a novel process and system—the Data Mining Surveillance System (DMSS)—that utilize association rules to identify new and interesting patterns in surveillance data.>Results: Experimental results were obtained using DMSS to analyze Pseudomonas aeruginosa infection control data collected over one year (1996) at University of Alabama at Birmingham Hospital. Experiments using one-, three-, and six-month time partitions yielded 34, 57, and 28 statistically significant events, respectively. Although not all statistically significant events are clinically significant, a subset of events generated in each analysis indicated potentially significant shifts in the occurrence of infection or antimicrobial resistance patterns of P. aeruginosa.>Conclusion: The new process and system are efficient and effective in identifying new, unexpected, and interesting patterns in surveillance data. The clinical relevance and utility of this process await the results of prospective studies currently in progress.
机译:>抽象目标:作者考虑了在医院感染控制和公共卫生监视数据中识别新的,意外的和有趣的模式的问题,并提出了一种基于关联规则的新数据分析过程和系统来解决该问题。>设计:作者首先说明了在医院感染控制和公共卫生监测中自动模式发现和数据挖掘的需求。接下来,他们定义关联规则,解释如何在监视中使用这些规则,并展示一种新颖的过程和系统-数据挖掘监视系统(DMSS)-该过程和系统利用关联规则来识别监视数据中新的有趣的模式。 >结果:使用DMSS分析了在阿拉巴马大学伯明翰分校一年(1996年)收集的铜绿假单胞菌感染控制数据,获得了实验结果。使用1个月,3个月和6个月时间分区的实验分别产生了34、57和28个具有统计意义的事件。尽管并非所有统计上显着的事件都具有临床意义,但每次分析中产生的事件子集表明铜绿假单胞菌感染或抗菌素耐药性的发生方式可能发生重大变化。>结论:在识别监视数据中新的,意外的和有趣的模式方面非常有效。 该过程的临床相关性和实用性正在等待结果 前瞻性研究目前正在进行中。

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