Implementation of Eye-Tracking Technology to Monitor Clinician Fatigue in Routine Clinical Care: A Feasibility Study

ACI open Pub Date : 2022-05-03 DOI:10.1055/s-0042-1760267
Bashar Kadhim, Saif S. Khairat, Fangyong Li, I. Gross, Bidisha Nath, R. Hauser, E. Melnick
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Abstract

Abstract Background  Physician fatigue increases the likelihood of medical errors. Eye-tracking technology offers an unobtrusive and objective way to measure fatigue but has only been implemented in controlled settings. Objective  Our objective was to determine the feasibility of capturing physiological indicators of fatigue using eye-tracking technology in a real-world clinical setting. Methods  A mixed-methods feasibility study was performed in a convenience sample of clinicians practicing in an urban, academic emergency department from November 11 to December 15, 2021. Outcomes included fatigue assessed at the beginning and end of each shift via eye-tracking (with low scores indicating greater fatigue) and self-report. Results  Among 15 participants, self-reported fatigue and task load increased from the beginning to the end of their shift (fatigue visual analog scale [FVAS] 3.7–4.6, p  = 0.04; physician task load [PTL] 97.7–154.3, p  = 0.01). It was feasible to collect eye-tracking data at a fixed computer workstation with twice daily calibration and 61% capture of reliable data when the clinician was working at the study computer. Eye-tracking metrics did not change significantly from the beginning to the end of the shift. Eye metric fatigue score was associated with the change in PTL score (r 0.59, p  = 0.02) but not FVAS. This association persisted after adjusting for age, gender, and role, with every 10-point increase in PTL, there was a 0.02-point increase in fatigue score ( p  = 0.04). Conclusion  It is unclear whether the inability to detect fatigue via eye-tracking in routine clinical care was due to confounding factors, the technology, study design, sample size, or an absence of physiological fatigue. Further research and advances in functionality are needed to determine the eye-tracking technology's role in measuring clinician fatigue in routine care.
眼动追踪技术在临床常规护理中监测临床医生疲劳的可行性研究
医生疲劳增加了医疗差错的可能性。眼球追踪技术提供了一种不显眼、客观的测量疲劳的方法,但只在受控环境下实施。我们的目的是确定在现实世界的临床环境中使用眼动追踪技术捕捉疲劳生理指标的可行性。方法选取2021年11月11日至12月15日在某城市学术性急诊科执业的临床医生作为方便样本,采用混合方法进行可行性研究。结果包括在每次轮班开始和结束时通过眼动追踪评估疲劳程度(分数低表明疲劳程度高)和自我报告。结果15名被试的自我报告疲劳和任务负荷从轮班开始到结束呈上升趋势(疲劳视觉模拟量表[FVAS] 3.7 ~ 4.6, p = 0.04;医师任务负荷[PTL] 97.7 ~ 154.3, p = 0.01)。当临床医生在研究计算机前工作时,在固定的计算机工作站收集眼动追踪数据是可行的,每天校准两次,捕获61%的可靠数据。从轮班开始到结束,眼动追踪指标没有显著变化。眼疲劳评分与PTL评分的变化相关(r 0.59, p = 0.02),但与FVAS无关。在调整了年龄、性别和角色后,这种关联仍然存在,PTL每增加10分,疲劳评分就增加0.02分(p = 0.04)。结论常规临床护理中无法通过眼动追踪检测疲劳是由于混杂因素、技术、研究设计、样本量还是缺乏生理性疲劳所致,目前尚不清楚。在日常护理中,眼动追踪技术在测量临床医生疲劳方面的作用需要进一步的研究和功能上的进步。
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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