Department of Pediatrics, Northwestern Feinberg School of Medicine, Chicago, Illinois.
Division of Hospital Based Medicine.
Hosp Pediatr. 2023 Sep 1;13(9):751-759. doi: 10.1542/hpeds.2023-007218.
Following development and validation of a sepsis prediction model described in a companion article, we aimed to use quality improvement and safety methodology to guide the design and deployment of clinical decision support (CDS) tools and clinician workflows to improve pediatric sepsis recognition in the inpatient setting.
CDS tools and sepsis huddle workflows were created to implement an electronic health record-based sepsis prediction model. These were proactively analyzed and refined using simulation and safety science principles before implementation and were introduced across inpatient units during 2020-2021. Huddle compliance, alerts per non-ICU patient days, and days between sepsis-attributable emergent transfers were monitored. Rapid Plan-Do-Study-Act (PDSA) cycles based on user feedback and weekly metric data informed improvement throughout implementation.
There were 264 sepsis alerts on 173 patients with an 89% bedside huddle completion rate and 10 alerts per 1000 non-ICU patient days per month. There was no special cause variation in the metric days between sepsis-attributable emergent transfers.
An automated electronic health record-based sepsis prediction model, CDS tools, and sepsis huddle workflows were implemented on inpatient units with a relatively low rate of interruptive alerts and high compliance with bedside huddles. Use of CDS best practices, simulation, safety tools, and quality improvement principles led to high utilization of the sepsis screening process.
在开发并验证了一篇相关文章中描述的脓毒症预测模型之后,我们旨在使用质量改进和安全方法来指导临床决策支持 (CDS) 工具和临床医生工作流程的设计和部署,以提高住院环境中儿童脓毒症的识别率。
创建了 CDS 工具和脓毒症小组工作流程,以实施基于电子病历的脓毒症预测模型。在实施之前,使用模拟和安全科学原理对这些工具和流程进行了主动分析和改进,并在 2020-2021 年期间在住院病房中推广使用。监测小组合规性、非 ICU 患者每天的警报数以及与脓毒症相关的紧急转科之间的天数。根据用户反馈和每周指标数据进行快速的计划-执行-研究-行动 (PDSA) 循环,为整个实施过程提供改进。
在 173 名患者中出现了 264 次脓毒症警报,床边小组完成率为 89%,每月每 1000 名非 ICU 患者出现 10 次警报。与脓毒症相关的紧急转科之间的天数没有特殊的因果变化。
在住院病房中实施了基于自动化电子病历的脓毒症预测模型、CDS 工具和脓毒症小组工作流程,其具有相对较低的中断警报率和较高的床边小组完成率。使用 CDS 最佳实践、模拟、安全工具和质量改进原则,使得脓毒症筛查过程得到了广泛应用。