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Clustering-based methodology for analyzing near-miss reports and identifying risks in healthcare delivery.

机译:基于聚类的方法,用于分析未命中的报告并确定医疗保健提供中的风险。

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摘要

Near-miss reports are qualitative descriptions of events that could have harmed patients but did not due to a timely intervention or a convenient evolution of the circumstances. Near-miss reporting has increasingly become a relevant tool to support patient safety efforts since they provide some evidence of risk in the system before patients suffer adverse consequences. Near-misses are usually classified into pre-specified categories that correspond to sources of risk in the system or its processes. Their analysis often consists of tallying classified near-misses to determine risk priorities based on frequency within each pre-specified risk category. Our research aims to use different combinations of near-miss reports to find potential sources of risk. We propose an unsupervised bisecting k-prototypes algorithm for clustering coded near-miss reports to identify relationships between events that would not otherwise have been easily identified. Subsequent study of resulting clusters will lead to the identification of potentially dangerous, but unsuspected system interactions. We illustrate or methodology with preliminary results of its implementation at the University of South Florida Health clinics.
机译:几乎未命中的报告是对可能伤害患者但并非由于及时干预或情况的便利演变而导致的事件的定性描述。由于未命中报告在患者遭受不利后果之前提供了系统风险的一些证据,因此未命中报告已越来越成为支持患者安全工作的相关工具。未遂事故通常被分类为与系统或其过程中的风险来源相对应的预定类别。他们的分析通常包括对分类未遂事件进行分类,以根据每个预先指定的风险类别中的频率确定风险优先级。我们的研究旨在使用未遂报告的不同组合来查找潜在的风险来源。我们提出了一种无监督的二等分k原型算法,用于对编码的未命中报告进行聚类,以识别原本不会轻易识别的事件之间的关系。随后对结果集群的研究将导致识别潜在危险但未曾怀疑的系统交互。我们以南佛罗里达大学健康诊所的实施结果为例来说明或采用方法。

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