COVID-19大流行期间初级保健诊所患者流程和流程的优化

Claire Dozier, Alexandra S. Schmid, Bryce Huffman, Margaret M Cusack, Sarah Saas, Wei Wu, Aram Bahrini, R. Riggs, Kimberly Dowdell, Karen Measells
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引用次数: 1

摘要

许多患者吞吐量效率低下的原因是沟通不当、对优化医疗保健系统以最大限度地提高效率的理解不足,以及COVID-19大流行造成的长期并发症。大流行带来的挑战,加上需要向患者提供安全、高质量的护理,进一步加剧了现有的患者流量和吞吐量问题。该项目的总体目标是改善初级保健诊所的患者体验,减轻提供者、护士和工作人员的压力。作者实施了一种两阶段的方法,将定性观察与定量数据分析相结合,开发了一种强大的方法来理解夏洛茨维尔大学医师诊所(UPC)的流程,并为利益相关者提供结构化的见解。通过定性的临床观察,我们确定了典型患者通过系统接收的旅程的组成部分:预登记、登记和分房。与定性观察相比,定量分析包含了完整的患者体验,包括预约持续时间和检查。所有定量分析都依赖于弗吉尼亚大学(UVA)健康电子病历(EMR)系统Epic的数据。除了定性分析外,作者还利用Cadence报告和预约安排数据来了解UPC诊所的患者流量。首先,利用这些数据来了解不同患者流程里程碑(注册、诊所登记、房间和退房)之间的分布,以及哪些因素(如果有的话)具有统计显著性。这种方法使我们能够对患者到达时间的分布、到达和开房之间的等待时间以及流程中的其他相关瓶颈进行建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Patient Flow and Process for a Primary Care Clinic During the COVID-19 Pandemic
Many patient throughput inefficiencies result from poor communication practices, inadequate understanding of optimizing healthcare systems to maximize efficiency, and longterm complications caused by the COVID-19 pandemic. The challenges precipitated by the pandemic, combined with the need to provide safe, high-quality care to patients, have further exacerbated existing patient flow and throughput issues. The overarching goal of this project is to improve the patient experience in primary care clinics and reduce the stress placed on providers, nurses, and staff. The authors implemented a two-phased approach that combined qualitative observations with quantitative data analysis, developed a robust methodology for understanding the University Physicians of Charlottesville (UPC) Clinic's processes, and produced structured insights for stakeholders. We established what components comprised a typical patient's journey through system intake through qualitative clinic observations: pre-registration, check-in, and rooming. In contrast to the qualitative observations, the quantitative analysis encompassed the complete patient experience, outs coping to include appointment durations and check-out. All quantitative analyses relied on data from the University of Virginia (UVA) Health's electronic medical record (EMR) system, Epic. In addition to the qualitative analyses, the authors utilized Cadence reports and appointment scheduling data to understand patient flow through the UPC Clinic. Primarily, the data are utilized to understand the distributions between the different patient flow milestones of registration, clinic check-in, rooming, and check-out and what factors, if any, were statistically significant. This approach enabled us to model the distribution of patient arrival times, wait times between arrival and rooming, and other relevant bottlenecks in the flow process.
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