Dexter Franklin, Epstein Richard H, Marian Anil A
Anesthesia, University of Iowa, Iowa City, USA.
Anesthesiology, University of Miami Miller School of Medicine, Miami, USA.
Cureus. 2022 Oct 26;14(10):e30730. doi: 10.7759/cureus.30730. eCollection 2022 Oct.
Introduction An "unscheduled absence" refers to an occurrence when an employee does not appear for work and the absence was not approved in advance by an authorized supervisor. Daily unscheduled absences need to be forecasted when doing staff scheduling to maintain an acceptable risk of being unable to run all anesthetizing locations and operating rooms planned. The number of extra personnel to be scheduled needs to be at least twice as large as the mean number absent. In an earlier historical cohort study, we found that our department's modeled risks of being unavailable unexpectedly differed among types of anesthesia practitioners (e.g., anesthesiologists and nurse anesthetists) and among weekdays (i.e., Mondays, Fridays, and workdays adjacent to holidays versus other weekdays). In the current study, with two extra years of data, we examined the effect of the coronavirus COVID-19 pandemic on the frequency of unscheduled absences. Methods There were 50 four-week periods studied at a large teaching hospital in the United States, from August 30, 2018 to June 29, 2022. The sample size of 120,687 person-assignment days (i.e., a person assigned to work on a given day) included 322 anesthesia practitioners (86 anesthesiologists, 88 certified registered nurse anesthetists, 99 resident and fellow physicians, and 49 student nurse anesthetists). The community prevalence of COVID‑19 was estimated using the percentage positive among asymptomatic patients tested before surgery and other interventional procedures at the hospital. Results Each 1% increase in the prevalence of COVID-19 among asymptomatic patients was associated with a 1.131 increase in the odds of unscheduled absence (P < 0.0001, 99% confidence interval 1.086 to 1.178). Using an alternative model with prevalence categories, unscheduled absences were substantively more common when the COVID-19 prevalence exceeded 2.50%, P [Formula: see text] 0.0002. For example, there was a 1% unscheduled absence rate among anesthesiologists working Mondays and Fridays early in the pandemic when the prevalence of COVID-19 among asymptomatic patients was 1.3%. At a 1% unscheduled absence rate, 67 would be the minimum scheduled to maintain a <5.0% risk for being unable to run all 65 anesthetizing locations. In contrast, there was a 3% unscheduled absence rate among nurse anesthetists working Mondays and Fridays during the Omicron variant surge when the prevalence was 4.5%. At a 3% unscheduled absence rate, 70 would be the minimum scheduled to maintain the same risk of not being able to run 65 rooms. Conclusions Increases in the prevalence of COVID-19 asymptomatic tests were associated with more unscheduled absences, with no detected threshold. This quantitative understanding of the impact of communicable diseases on the workforce potentially has broad generalizability to other fields and infectious diseases.
引言 “意外缺勤” 是指员工未出勤且该缺勤未事先得到授权主管批准的情况。在进行人员排班时,需要预测每日的意外缺勤情况,以维持在无法运营所有计划中的麻醉地点和手术室方面可接受的风险。需要安排的额外人员数量至少应是平均缺勤人数的两倍。在一项早期的历史队列研究中,我们发现本部门意外无法出勤的建模风险在不同类型的麻醉从业者(如麻醉医生和麻醉护士)以及不同工作日(即周一、周五以及节假日临近的工作日与其他工作日)之间存在差异。在本研究中,利用额外两年的数据,我们考察了新型冠状病毒COVID-19大流行对意外缺勤频率的影响。
方法 在美国一家大型教学医院进行了50个为期四周的时间段研究,时间跨度从2018年8月30日至2022年6月29日。120,687人工作日(即一个人被安排在给定日期工作)的样本量包括322名麻醉从业者(86名麻醉医生、88名注册麻醉护士、99名住院医师和专科医师以及49名实习麻醉护士)。COVID-19的社区流行率通过医院术前及其他介入手术前无症状患者检测呈阳性的百分比来估计。
结果 无症状患者中COVID-19流行率每增加1%,意外缺勤的几率增加1.131(P<0.0001,99%置信区间1.086至1.178)。使用患病率分类的替代模型,当COVID-19流行率超过2.50%时,意外缺勤实质上更为常见,P[公式:见正文]<0.0002。例如,在大流行早期,无症状患者中COVID-19流行率为1.3%时,周一和周五工作的麻醉医生意外缺勤率为1%。在意外缺勤率为1%的情况下,为维持无法运营所有65个麻醉地点的风险<5.0%,至少应安排67人。相比之下,在奥密克戎变异株激增期间,患病率为4.5%时,周一和周五工作的麻醉护士意外缺勤率为3%。在意外缺勤率为3%的情况下,为维持无法运营65个房间的相同风险,至少应安排70人。
结论 COVID-19无症状检测流行率的增加与更多的意外缺勤相关,未检测到阈值。这种对传染病对劳动力影响的定量理解可能对其他领域和传染病具有广泛的普遍适用性。