Suppr超能文献

基于事件学习与失效模式和影响分析的数据驱动的患者安全改善融合

The Fusion of Incident Learning and Failure Mode and Effects Analysis for Data-Driven Patient Safety Improvements.

机构信息

Department of Radiation Oncology, University of Michigan Health System, Ann Arbor, Michigan.

Department of Radiation Oncology, University of Michigan Health System, Ann Arbor, Michigan.

出版信息

Pract Radiat Oncol. 2021 Jan-Feb;11(1):e106-e113. doi: 10.1016/j.prro.2020.02.015. Epub 2020 Mar 19.

Abstract

PURPOSE

Incident learning is a critical part of the quality improvement process for all radiation therapy clinics. Failure mode and effects analysis has also been adopted as a hazard analysis method within the field of radiation oncology based on the recommendations of American Association of Physicists in Medicine Task Group 100. In this work, we demonstrate a fusion of these techniques that is efficient and transferrable to all types of clinics and that allows data-driven targeting of the highest risk error types.

METHODS AND MATERIALS

Four clinical physicists recorded safety events detected during physics treatment plan quality assurance over a 27-month period. Events were sorted into the broad categories of either a documentation or plan construction error. Events were further stratified into subcategories until sufficiently discriminated against for analysis. Event risks were quantified using reduced-resolution TG-100 severity scores combined with observed occurrence rates. The highest risk categories were examined for intervention strategies.

RESULTS

A total of 871 events were identified over the study period. Of these, 652 (74.9%) were classified as low severity, 178 (20.4%) as medium severity, and 41 (4.7%) as high severity. Four of the top 5 ranked categories could be targeted by a preplanning chart rounds. Several of the categories could be targeted by additional automation in the planning and QA processes.

CONCLUSIONS

The retrospective classification and risk analysis of safety events allows clinics to design targeted workflow and quality assurance changes aimed at reducing the occurrence of high-risk events. The method presented here leverages incident learning efforts that many clinics are already performing, allows the severity of events to be efficiently assigned, and generates actionable results without requiring a complete failure mode and effects analysis.

摘要

目的

事故学习是所有放射治疗诊所质量改进过程的重要组成部分。基于美国医学物理学家协会工作组 100 的建议,失效模式和效果分析也已被采用作为放射肿瘤学领域的危害分析方法。在这项工作中,我们展示了一种将这些技术融合在一起的方法,该方法既高效又可适用于所有类型的诊所,并允许针对最高风险错误类型进行数据驱动的靶向治疗。

方法和材料

在 27 个月的时间里,四位临床物理学家记录了在物理治疗计划质量保证过程中发现的安全事件。事件被归类为文档或计划构建错误中的一个大类。事件进一步细分为子类别,直到可以进行充分区分以进行分析。使用降低分辨率的 TG-100 严重程度评分和观察到的发生频率来量化事件风险。对最高风险类别进行干预策略检查。

结果

在研究期间共发现 871 起事件。其中,652 起(74.9%)被归类为低严重程度,178 起(20.4%)为中度严重程度,41 起(4.7%)为高严重程度。排名前五的类别中有四个可以通过预规划图表轮次进行靶向治疗。许多类别可以通过规划和 QA 流程中的额外自动化来靶向治疗。

结论

安全事件的回顾性分类和风险分析使诊所能够设计有针对性的工作流程和质量保证更改,旨在减少高风险事件的发生。这里提出的方法利用了许多诊所已经在进行的事故学习工作,允许高效地分配事件的严重程度,并在不要求进行完整失效模式和效果分析的情况下生成可操作的结果。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验