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用于高危、险些安全事件的放射肿瘤学专用自动触发指标工具。

A Radiation Oncology-Specific Automated Trigger Indicator Tool for High-Risk, Near-Miss Safety Events.

机构信息

Department of Radiation Oncology, University of Washington School of Medicine, Seattle, Washington; Department of Radiation Medicine, Oregon Health and Science University, Portland, Oregon.

Department of Radiation Oncology, Stanford University, Stanford, California.

出版信息

Pract Radiat Oncol. 2020 May-Jun;10(3):142-150. doi: 10.1016/j.prro.2019.10.017. Epub 2019 Nov 26.

Abstract

PURPOSE

Error detection in radiation oncology relies heavily on voluntary reporting, and many adverse events and near misses likely go undetected. Trigger tools use existing data in patient charts to identify otherwise-unaccounted-for events and have been successfully employed in other areas of medicine. We developed an automated radiation oncology-specific trigger tool and validated it against near-miss data from a high-volume incident learning system (ILS).

METHODS AND MATERIALS

Twenty triggers were derived from an electronic radiation oncology information system. Data from the systems over an approximately 3.5-year period were split randomly into training and test sets. The probability of a high-grade (grade 3-4) near miss for each treatment course in the training set was estimated using a regularized logistic regression model. The predictive model was applied to the test set. Records for 25 flagged treatment courses with an ILS entry were reviewed to explore the association between triggers and near misses, and 25 flagged courses without an ILS entry were reviewed to detect unreported near misses.

RESULTS

Of the 3159 treatment courses analyzed, 357 had a grade 3 to 4 ILS entry; 2210 courses composed the training set, and the test set had 949 courses. Areas under the curve on the training and test sets were 0.650 and 0.652, respectively. Of 20 triggers, 9 reached statistical significance on univariate analysis. Fifty percent of the 25 treatment courses in the test set with the highest predicted likelihood of a high-grade near miss with an ILS entry had a direct relationship between the triggers and the near miss. Review of the 25 treatment courses with the highest predicted likelihood of high-grade near miss without an ILS entry found 2 unreported near-miss events.

CONCLUSIONS

The radiation oncology-specific automated trigger tool performed modestly and identified additional treatment courses with near-miss events. Radiation oncology trigger tools deserve further exploration.

摘要

目的

放射肿瘤学中的错误检测主要依赖于自愿报告,许多不良事件和险些发生的事故可能未被发现。触发工具利用患者病历中的现有数据来识别否则无法解释的事件,并已在医学的其他领域成功应用。我们开发了一种自动化的放射肿瘤学专用触发工具,并将其与高容量事件学习系统(ILS)的险些发生事故数据进行了验证。

方法和材料

从电子放射肿瘤学信息系统中提取了 20 个触发因素。系统数据在大约 3.5 年的时间内随机分为训练集和测试集。使用正则逻辑回归模型估计每个治疗过程中发生高级别(3-4 级)险些发生事故的概率。该预测模型应用于测试集。对 ILS 记录中有触发因素的 25 个标记治疗过程进行了审查,以探讨触发因素与险些发生事故之间的关系,对 ILS 记录中没有触发因素的 25 个标记治疗过程进行了审查,以发现未报告的险些发生事故。

结果

在分析的 3159 个治疗过程中,有 357 个出现了 3-4 级 ILS 记录;2210 个疗程组成了训练集,测试集有 949 个疗程。训练集和测试集的曲线下面积分别为 0.650 和 0.652。在单变量分析中,有 9 个触发因素具有统计学意义。在测试集中,有 25 个治疗过程的预测值最高,有高等级险些发生事故的可能性,其中有 50%的治疗过程与触发因素和险些发生事故之间存在直接关系。对预测值最高的 25 个无 ILS 记录的高等级险些发生事故的治疗过程进行审查,发现了 2 起未报告的险些发生事故。

结论

放射肿瘤学专用的自动化触发工具表现中等,并确定了其他具有险些发生事故的治疗过程。放射肿瘤学触发工具值得进一步探索。

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