脓毒症入院患者的流程挖掘。

Renee M Hendricks
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引用次数: 11

摘要

数据挖掘是一种分析各种格式的大量数据的技术,通常被称为大数据,以获得有关它的知识。医疗保健行业是下一个感兴趣的大数据领域,因为它在患者、他们的健康状况和他们的记录(包括图像扫描、图形测试结果和手写的医生笔记)方面具有很大的可变性,尚未开发用于分析。除了数据挖掘,还有一种新的分析方法,称为过程挖掘。流程挖掘类似于数据挖掘,即查看和分析大型数据文件,但在这种情况下,会分析特定流程或一系列流程的特定事件日志。流程挖掘使人们能够了解初始基线,确定任何瓶颈或资源限制,并评估最近实施的更改。对败血症患者进入急诊室的医院事件日志进行了过程挖掘,以更好地理解这种新的分析方法,突出所发现的信息,并通过数据挖掘确定其作用。事件日志的分析不仅提供了过程映射和过程分析,还突出了临床操作中需要进一步调查的领域,包括与患者再次入院及其释放方法的可能关系。此外,还应用了创建过程数据直方图的数据挖掘方法,使数据挖掘和过程挖掘得以互补利用。
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Process Mining of Incoming Patients with Sepsis.
Data mining is a technique for analyzing large amounts of data, in various formats, often called Big Data, in order to gain knowledge about it. The healthcare industry is the next Big Data area of interest as its large variability in patients, their health status and their records which can include image scans, graphical test results, and hand-written physician notes, has been untapped for analysis. In addition to data mining, there is a newer analysis method called process mining. Process mining is similar to data mining in that large data files are reviewed and analyzed, but in this case, event logs specific to a particular process or series of processes, are analyzed. Process mining allows one to understand the initial baseline, determine any bottlenecks or resource constraints, and evaluate a recently implemented change. Process mining was conducted on a hospital event log of patients entering the emergency room with sepsis, to better understand this newer analysis method, to highlight the information discovered, and to determine its role with data mining. Not only did the analysis of the event logs provide process mapping and process analysis, but it also highlighted areas in the clinical operations in need of further investigation, including a possible relationship with patient re-admission and their release method. In addition, the data mining method of creating a histogram, of the process data, was applied, allowing data mining and process mining to be utilized complimentary.
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