Rogith Deevakar, Iyengar M Sriram, Singh Hardeep
Jt Comm J Qual Patient Saf. 2017 Nov;43(11):598-605. doi: 10.1016/j.jcjq.2017.06.007. Epub 2017 Oct 2.
Diagnostic errors annually affect at least 5% of adults in the outpatient setting in the United States. Formal analytic techniques are only infrequently used to understand them, in part because of the complexity of diagnostic processes and clinical work flows involved. In this article, diagnostic errors were modeled using fault tree analysis (FTA), a form of root cause analysis that has been successfully used in other high-complexity, high-risk contexts. How factors contributing to diagnostic errors can be systematically modeled by FTA to inform error understanding and error prevention is demonstrated.
A team of three experts reviewed 10 published cases of diagnostic error and constructed fault trees. The fault trees were modeled according to currently available conceptual frameworks characterizing diagnostic error. The 10 trees were then synthesized into a single fault tree to identify common contributing factors and pathways leading to diagnostic error.
FTA is a visual, structured, deductive approach that depicts the temporal sequence of events and their interactions in a formal logical hierarchy. The visual FTA enables easier understanding of causative processes and cognitive and system factors, as well as rapid identification of common pathways and interactions in a unified fashion. In addition, it enables calculation of empirical estimates for causative pathways. Thus, fault trees might provide a useful framework for both quantitative and qualitative analysis of diagnostic errors.
Future directions include establishing validity and reliability by modeling a wider range of error cases, conducting quantitative evaluations, and undertaking deeper exploration of other FTA capabilities.
在美国,诊断错误每年至少影响5%的门诊成年患者。正式的分析技术很少用于理解这些错误,部分原因是诊断过程和临床工作流程复杂。在本文中,使用故障树分析(FTA)对诊断错误进行建模,故障树分析是一种根本原因分析形式,已在其他高复杂性、高风险环境中成功应用。本文展示了如何通过故障树分析系统地对导致诊断错误的因素进行建模,以增进对错误的理解并预防错误。
一个由三位专家组成的团队回顾了10个已发表的诊断错误案例并构建了故障树。这些故障树是根据当前可用的表征诊断错误的概念框架构建的。然后将这10个树综合成一个单一的故障树,以识别导致诊断错误的常见促成因素和途径。
故障树分析是一种可视化、结构化的演绎方法,它在形式逻辑层次结构中描述事件的时间顺序及其相互作用。可视化的故障树分析使人们更容易理解因果过程以及认知和系统因素,还能以统一的方式快速识别常见途径和相互作用。此外,它还能计算因果途径的实证估计值。因此,故障树可能为诊断错误的定量和定性分析提供一个有用的框架。
未来的方向包括通过对更广泛的错误案例进行建模来确立有效性和可靠性、进行定量评估以及更深入地探索故障树分析的其他能力。