Observational clinical human reliability analysis (OCHRA) for assessing and improving quality of surgical performance: the current status and future

B. Tang
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Abstract

Morbidity and mortality data (MMD), as the traditional measure of surgical performance, have major limitations when used to assess and ensure quality of surgical performance. To improve and ensure the safest possible surgical performance, there is a need for prospective observational multidisciplinary studies, for which surgeons and human factor specialists should work together towards this objective. These considerations have led to the development of new systematic approaches for assessing and improving surgical operative performance. One of these is human reliability analysis (HRA), which eventually progressed to observational clinical human reliability analysis (OCHRA). HRA techniques are widely used in the risk management of safety-critical systems, e.g. nuclear power industry, aviation industry, and military operations. HRA techniques determine the impact of human error within a system. Surgical complications are related to techniques and result from errors most commonly committed during the intervention. Therefore, these errors can be influenced, i.e. deducted, by an HRA system that proactively reduces risk by preventing errors during human activities to the ‘as low as reasonably possible’. Two major limitations of OCHRA are its labour-intensive nature and the requirement for human factors engineering expertise in the assessment. These issues will be resolved in the short term by the significant progress based on artificial intelligence and machine learning, alongside with increased clinical use of OCHRA in surgical practice and health care in general.
观察性临床人的可靠性分析(OCHRA)用于评估和提高手术质量:现状和未来
发病率和死亡率数据(MMD)作为传统的外科手术效果衡量指标,在用于评估和确保外科手术质量时存在很大的局限性。为了提高和确保尽可能安全的手术效果,有必要进行前瞻性观察性多学科研究,外科医生和人为因素专家应该共同努力实现这一目标。这些考虑导致了评估和提高外科手术性能的新系统方法的发展。其中之一是人类可靠性分析(HRA),最终发展为观察性临床人类可靠性分析(OCHRA)。HRA技术广泛应用于安全关键系统的风险管理,例如核动力工业、航空工业和军事行动。HRA技术确定系统中人为错误的影响。手术并发症与技术有关,并由干预过程中最常见的错误引起。因此,这些错误可以被HRA系统影响,即扣除,该系统通过预防人类活动中的错误来主动降低风险,使其“尽可能低”。ohchra的两个主要限制是其劳动密集型性质和评估中对人因工程专业知识的要求。这些问题将在短期内通过基于人工智能和机器学习的重大进展,以及OCHRA在外科实践和一般医疗保健中的临床应用的增加而得到解决。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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