Enhancing Physician Satisfaction and Patient Safety Through an Artificial Intelligence-Driven Scheduling System in Anesthesiology.

IF 1.3 Q2 MEDICINE, GENERAL & INTERNAL
William D Sumrall, Jakob V Oury, George M Gilly
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引用次数: 0

Abstract

Background: Overcoming challenges to effective clinical practice depends on finding dynamic solutions to issues such as physician burnout and patient safety. This study evaluated the impact of an artificial intelligence (AI)-driven scheduling system on physician burnout and patient safety, using intraoperative transitions of care as an operative metric for patient safety.

Methods: In May 2019, the Department of Anesthesiology at Ochsner Health in New Orleans, Louisiana, implemented an AI-driven scheduling system called Lightning Bolt Scheduling (PerfectServe, Inc). Utilizing an idealized design framework, the department steering committee analyzed 12 months of historic operating room data and developed more than 400 scheduling rules to optimize staffing. The scheduling rules, representing the steering committee's new work model, were provided as inputs into Lightning Bolt Scheduling, which then used combinatorial optimization to recommend an ideal staff schedule. Preimplementation and postimplementation data were collected on physician satisfaction, vacation approval rates, and intraoperative transitions of care.

Results: Six months postimplementation, physician satisfaction scores and vacation approvals increased, reflecting improved work-life balance, schedule flexibility, and decreased symptoms of burnout. Additionally, 1,072 fewer handoffs occurred, equating to 71.5 fewer adverse events and a savings of approximately $335,550 in health care costs during the 21 months after implementation.

Conclusion: Our study findings underscore the potential of data-driven scheduling systems to enhance physician well-being and patient safety, thereby promoting continuous improvement and adaptability in health care operations.

通过人工智能驱动的麻醉科排班系统提高医生满意度和患者安全。
背景:克服挑战,有效的临床实践取决于找到动态解决方案的问题,如医生的职业倦怠和病人的安全。本研究评估了人工智能(AI)驱动的调度系统对医生职业倦怠和患者安全的影响,使用术中护理过渡作为患者安全的手术指标。方法:2019年5月,路易斯安那州新奥尔良Ochsner Health的麻醉科实施了一个名为Lightning Bolt scheduling的人工智能驱动调度系统(PerfectServe, Inc .)。利用理想化的设计框架,部门指导委员会分析了12个月的手术室历史数据,并制定了400多条调度规则来优化人员配置。将代表指导委员会新工作模式的调度规则作为Lightning Bolt scheduling的输入,然后使用组合优化方法推荐理想的员工调度。实施前和实施后收集了医生满意度、假期批准率和术中护理过渡的数据。结果:实施6个月后,医生满意度得分和休假批准增加,反映了工作与生活平衡,时间表灵活性的改善,以及倦怠症状的减少。此外,在实施后的21个月内,交接次数减少了1 072次,相当于不良事件减少了71.5次,保健费用节省了约335 550美元。结论:我们的研究结果强调了数据驱动调度系统在提高医生福祉和患者安全方面的潜力,从而促进医疗保健操作的持续改进和适应性。
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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来源期刊
Ochsner Journal
Ochsner Journal MEDICINE, GENERAL & INTERNAL-
CiteScore
2.10
自引率
0.00%
发文量
71
审稿时长
24 weeks
期刊介绍: The Ochsner Journal is a quarterly publication designed to support Ochsner"s mission to improve the health of our community through a commitment to innovation in healthcare, medical research, and education. The Ochsner Journal provides an active dialogue on practice standards in today"s changing healthcare environment. Emphasis will be given to topics of great societal and medical significance.
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