Yaghmour Nicholas A, Savage Nastassia M, Rockey Paul H, Santen Sally A, DeCarlo Kristen E, Hickam Grace, Schwartzberg Joanne G, Baldwin DeWitt C, Perera Robert A
Accreditation Council for Graduate Medical Education.
School of Health Professions Education, Maastricht University, Maastricht, The Netherlands.
HCA Healthc J Med. 2024 Jun 1;5(3):237-250. doi: 10.36518/2689-0216.1784. eCollection 2024.
Burnout is common among residents and negatively impacts patient care and professional development. Residents vary in terms of their experience of burnout. Our objective was to employ cluster analysis, a statistical method of separating participants into discrete groups based on response patterns, to uncover resident burnout profiles using the exhaustion and engagement sub-scales of the Oldenburg Burnout Inventory (OLBI) in a cross-sectional, multispecialty survey of United States medical residents.
The 2017 ACGME resident survey provided residents with an optional, anonymous addendum containing 3 engagement and 3 exhaustion items from the OBLI, a 2-item depression screen (PHQ-2), general queries about health and satisfaction, and whether respondents would still choose medicine as a career. Gaussian finite mixture models were fit to exhaustion and disengagement scores, with the resultant clusters compared across PHQ-2 depression screen results. Other variables were used to demonstrate evidence for the validity and utility of this approach.
From 14 088 responses, 4 clusters were identified as statistically and theoretically distinct: Highly Engaged (25.8% of respondents), Engaged (55.2%), Disengaged (9.4%), and Highly Exhausted (9.5%). Only 2% of Highly Engaged respondents screened positive for depression, compared with 8% of Engaged respondents, 29% of Disengaged respondents, and 53% of Highly Exhausted respondents. Similar patterns emerged for the general query about health, satisfaction, and whether respondents would choose medicine as a career again.
Clustering based on exhaustion and disengagement scores differentiated residents into 4 meaningful groups. Interventions that mitigate resident burnout should account for differences among clusters.
职业倦怠在住院医师中很常见,对患者护理和职业发展产生负面影响。住院医师的职业倦怠体验各不相同。我们的目标是采用聚类分析(一种基于反应模式将参与者分为不同组别的统计方法),在美国医学住院医师的横断面多专业调查中,使用奥尔登堡倦怠量表(OLBI)的疲惫和投入子量表来揭示住院医师的倦怠概况。
2017年美国研究生医学教育认证委员会(ACGME)住院医师调查为住院医师提供了一份可选的匿名附录,其中包含来自OLBI的3个投入项目和3个疲惫项目、一个2项抑郁筛查(患者健康问卷-2,PHQ-2)、关于健康和满意度的一般问题,以及受访者是否仍会选择医学作为职业。对疲惫和脱离工作状态得分拟合高斯有限混合模型,并将所得聚类结果与PHQ-2抑郁筛查结果进行比较。使用其他变量来证明这种方法的有效性和实用性。
在14088份回复中,确定了4个在统计学和理论上不同的聚类:高度投入(占受访者的25.8%)、投入(55.2%)、脱离工作状态(9.4%)和高度疲惫(9.5%)。高度投入的受访者中只有2%的人抑郁筛查呈阳性,相比之下,投入的受访者为8%,脱离工作状态的受访者为29%,高度疲惫的受访者为53%。在关于健康、满意度以及受访者是否会再次选择医学作为职业的一般问题上也出现了类似的模式。
基于疲惫和脱离工作状态得分的聚类将住院医师分为4个有意义的组。减轻住院医师职业倦怠的干预措施应考虑到不同聚类之间的差异。