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利用数据挖掘中的知识发现,从一家英国急症医院定期收集的事件报告中获取信息。

Using knowledge discovery through data mining to gain intelligence from routinely collected incident reporting in an acute English hospital.

作者信息

Leary Alison, Cook Robert, Jones Sarahjane, Radford Mark, Smith Judtih, Gough Malcolm, Punshon Geoffrey

机构信息

School of Health and Social Care, London South Bank University, London, UK.

School of Health, University of South Eastern Norway, Oslo, Norway.

出版信息

Int J Health Care Qual Assur. 2020 Feb 12;33(2):221-234. doi: 10.1108/IJHCQA-08-2018-0209.

Abstract

PURPOSE

Incident reporting systems are commonly deployed in healthcare but resulting datasets are largely warehoused. This study explores if intelligence from such datasets could be used to improve quality, efficiency, and safety.

DESIGN/METHODOLOGY/APPROACH: Incident reporting data recorded in one NHS acute Trust was mined for insight ( = 133,893 April 2005-July 2016 across 201 fields, 26,912,493 items). An a priori dataset was overlaid consisting of staffing, vital signs, and national safety indicators such as falls. Analysis was primarily nonlinear statistical approaches using Mathematica V11.

FINDINGS

The organization developed a deeper understanding of the use of incident reporting systems both in terms of usability and possible reflection of culture. Signals emerged which focused areas of improvement or risk. An example of this is a deeper understanding of the timing and staffing levels associated with falls. Insight into the nature and grading of reporting was also gained.

PRACTICAL IMPLICATIONS

Healthcare incident reporting data is underused and with a small amount of analysis can provide real insight and application to patient safety.

ORIGINALITY/VALUE: This study shows that insight can be gained by mining incident reporting datasets, particularly when integrated with other routinely collected data.

摘要

目的

事件报告系统在医疗保健领域普遍应用,但由此产生的数据集大多被存储起来。本研究探讨这些数据集的信息是否可用于提高质量、效率和安全性。

设计/方法/途径:对一家国民保健服务(NHS)急性信托机构记录的事件报告数据进行挖掘以获取见解(2005年4月至2016年7月期间,涉及201个字段,共26,912,493条记录)。叠加了一个先验数据集,包括人员配备、生命体征以及诸如跌倒等国家安全指标。分析主要采用使用Mathematica V11的非线性统计方法。

研究结果

该机构对事件报告系统在可用性和可能反映的文化方面有了更深入的理解。出现了一些信号,指明了改进或风险的重点领域。其中一个例子是对与跌倒相关的时间和人员配备水平有了更深入的理解。还获得了对报告性质和分级的见解。

实际意义

医疗保健事件报告数据未得到充分利用,通过少量分析就能为患者安全提供真正的见解和应用。

原创性/价值:本研究表明,通过挖掘事件报告数据集可以获得见解,特别是当与其他常规收集的数据相结合时。

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