Department of Anaesthesiology, Heidelberg University Hospital, Heidelberg, Germany.
Department of Anaesthesiology, Erlangen University Hospital, Erlangen, Germany.
Acta Anaesthesiol Scand. 2018 Nov;62(10):1403-1411. doi: 10.1111/aas.13213. Epub 2018 Jul 5.
The Human Factors Analysis and Classification System (HFACS) was developed as a practical taxonomy to investigate and analyse the human contribution to accidents and incidents. Based on Reason's "Swiss Cheese Model", it considers individual, environmental, leadership and organizational contributing factors in four hierarchical levels. The aim of this study was to assess the applicability of a modified HFACS taxonomy to incident reports from a large, anonymous critical incident database with the goal of gaining valuable insight into underlying, more systemic conditions and recurring schemes that might add important information for future incident avoidance.
We analysed 50 reports from an anonymous, anaesthesiologic, single-centre Critical Incident Reporting System using a modified HFACS-CIRS taxonomy. The 19 HFACS categories were further subdivided into a total of 117 nanocodes representing specific behaviours or preconditions for incident development.
On an individual level, the most frequent contributions were decision errors, attributed to inadequate risk assessment or critical-thinking failure. Communication and Coordination, mostly due to inadequate or ineffective communication, was contributory in two-thirds of reports. Half of the reports showed contributory complex interactions in a sociotechnical environment. Ratability scores were noticeably lower for categories evaluating leadership and organizational influences, necessitating careful interpretation.
We applied the HFACS taxonomy to the analysis of CIRS reports in anaesthesiology. This constitutes a structured approach that, especially when applied to a large data set, might help guide future mitigation and intervention strategies to reduce critical incidents and improve patient safety. Improved, more structured reporting templates could further optimize systematic analysis.
人为因素分析与分类系统(HFACS)是作为一种实用的分类法而开发的,用于调查和分析人为因素对事故和事件的贡献。它基于 Reason 的“瑞士奶酪模型”,考虑了个体、环境、领导和组织等四个层次的促成因素。本研究的目的是评估修改后的 HFACS 分类法在大型匿名关键事件数据库中的应用,以深入了解潜在的、更系统的条件和反复出现的模式,这些可能为未来的事件避免提供重要信息。
我们使用修改后的 HFACS-CIRS 分类法分析了来自匿名的麻醉学单一中心关键事件报告系统的 50 份报告。19 个 HFACS 类别进一步细分为总共 117 个纳米码,代表事件发展的特定行为或前提条件。
在个体层面上,最常见的贡献是决策错误,归因于风险评估不足或批判性思维失败。沟通和协调,主要是由于沟通不足或无效,在三分之二的报告中起了作用。一半的报告显示在社会技术环境中存在复杂的相互作用。评估领导和组织影响的类别评分明显较低,需要仔细解释。
我们将 HFACS 分类法应用于麻醉学中 CIRS 报告的分析。这是一种结构化的方法,特别是在应用于大型数据集时,可能有助于指导未来的缓解和干预策略,以减少关键事件并提高患者安全。改进的、更结构化的报告模板可以进一步优化系统分析。