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A Qualitative Evidence Synthesis of Adverse Event Detection Methodologies

机译:不良事件检测方法的定性证据合成

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The detection of adverse events (AE) and their relationship to data quality issues through processes or medical error is not currently understood. In order to study the relationship between adverse events and data quality it is necessary to capture as many AE as possible and computational methods will be necessary to handle the large volumes of patient data. The need for adverse event detection methodology has been repeatedly noted but standard AE detection methods are not in place in the US. At present, there are several widely enforced strategies for AE detection but none are both highly successful and computational. In order to maximize AE detection, we have conducted a qualitative evidence synthesis of these approaches. The categorization of the circumstances of the event as well as the resulting patient safety problem and the method of detection provide a means to synthesize AE detection solutions. This has resulted in a set of 130 AE detection algorithms in 9 circumstances categories and 41 patient safety problem categories. This work begins the effort of consolidation of current safety metrics in an effort to produce a common set of safety measures.
机译:目前还没有明白通过进程或医疗错误的不良事件(AE)的检测及其与数据质量问题的关系。为了研究不良事件和数据质量之间的关系,必须尽可能多地捕获尽可能多的AE,并且需要计算方法来处理大量的患者数据。对不良事件检测方法的需求已经反复注意到,但标准AE检测方法未到位。目前,有几种广泛强制的AE检测策略,但没有高度成功和计算。为了最大化AE检测,我们对这些方法进行了定性证据。对事件的情况的分类以及所得到的患者安全问题以及检测方法提供了合成AE检测解决方案的方法。这导致了一组130 AE检测算法在9个情况下,41个患者安全问题类别。这项工作开始巩固当前安全指标的努力,以产生一套常见的安全措施。

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