Jt Comm J Qual Patient Saf. 2022 Feb;48(2):71-80. doi: 10.1016/j.jcjq.2021.10.002. Epub 2021 Oct 29.
COVID-19 exposed systemic gaps with increased potential for diagnostic error. This project implemented a new approach leveraging electronic safety reporting to identify and categorize diagnostic errors during the pandemic.
All safety event reports from March 1, 2020, to February 28, 2021, at an academic medical center were evaluated using two complementary pathways (Pathway 1: all reports with explicit mention of COVID-19; Pathway 2: all reports without explicit mention of COVID-19 where natural language processing [NLP] plus logic-based stratification was applied to identify potential cases). Cases were evaluated by manual review to identify diagnostic error/delay and categorize error type using a recently proposed classification framework of eight categories of pandemic-related diagnostic errors.
A total of 14,230 reports were included, with 95 (0.7%) identified as cases of diagnostic error/delay. Pathway 1 (n = 1,780 eligible reports) yielded 45 reports with diagnostic error/delay (positive predictive value [PPV] = 2.5%), of which 35.6% (16/45) were attributed to pandemic-related strain. In Pathway 2, the NLP-based algorithm flagged 110 safety reports for manual review from 12,450 eligible reports. Of these, 50 reports had diagnostic error/delay (PPV = 45.5%); 94.0% (47/50) were related to strain. Errors from all eight categories of the taxonomy were found on analysis.
An event reporting-based strategy including use of simple-NLP-identified COVID-19-related diagnostic errors/delays uncovered several safety concerns related to COVID-19. An NLP-based approach can complement traditional reporting and be used as a just-in-time monitoring system to enable early detection of emerging risks from large volumes of safety reports.
COVID-19 暴露出系统中的差距,增加了诊断错误的可能性。本项目采用了一种新方法,利用电子安全报告来识别和分类大流行期间的诊断错误。
对一家学术医疗中心 2020 年 3 月 1 日至 2021 年 2 月 28 日期间的所有安全事件报告,通过两种互补途径进行评估(途径 1:所有明确提及 COVID-19 的报告;途径 2:所有未明确提及 COVID-19 的报告,其中应用自然语言处理 [NLP] 和基于逻辑的分层来识别潜在病例)。通过手动审查评估病例,以确定诊断错误/延迟,并使用最近提出的分类框架对 8 类与大流行相关的诊断错误进行分类。
共纳入 14230 份报告,其中 95 份(0.7%)被确定为诊断错误/延迟病例。途径 1(n=1780 份符合条件的报告)产生了 45 份诊断错误/延迟报告(阳性预测值 [PPV] = 2.5%),其中 35.6%(16/45)归因于与大流行相关的压力。在途径 2 中,基于 NLP 的算法从 12450 份符合条件的报告中标记了 110 份安全报告进行手动审查。其中,50 份报告有诊断错误/延迟(PPV=45.5%);94.0%(47/50)与压力有关。在分析中发现了分类法所有 8 类别的错误。
基于事件报告的策略,包括使用简单的 NLP 识别的与 COVID-19 相关的诊断错误/延迟,发现了与 COVID-19 相关的几个安全问题。基于 NLP 的方法可以补充传统报告,并用作即时监测系统,以便从大量安全报告中及早发现新出现的风险。