Boltin Nicholas, Valdes Diego, Culley Joan M, Valafar Homayoun
Department of Computer Science and Engineering, University of South Carolina, Columbia, SC, United States.
College of Nursing, University of South Carolina, Columbia, SC, United States.
JMIR Mhealth Uhealth. 2018 Jun 22;6(6):e10727. doi: 10.2196/10727.
Chemical exposures pose a significant threat to life. A rapid assessment by first responders and emergency nurses is required to reduce death and disability. Currently, no informatics tools exist to process victims of chemical exposures efficiently. The surge of patients into a hospital emergency department during a mass casualty incident creates additional stress on an already overburdened system, potentially placing patients at risk and challenging staff to process patients for appropriate care and treatment efficacy. Traditional emergency department triage models are oversimplified during highly stressed mass casualty incident scenarios in which there is little margin for error. Emerging mobile technology could alleviate the burden placed on nurses by allowing the freedom to move about the emergency department and stay connected to a decision support system.
This study aims to present and evaluate a new mobile tool for assisting emergency department personnel in patient management and triage during a chemical mass casualty incident.
Over 500 volunteer nurses, students, and first responders were recruited for a study involving a simulated chemical mass casualty incident. During the exercise, a mobile application was used to collect patient data through a kiosk system. Nurses also received tablets where they could review patient information and choose recommendations from a decision support system. Data collected was analyzed on the efficiency of the app to obtain patient data and on nurse agreement with the decision support system.
Of the 296 participants, 96.3% (288/296) of the patients completed the kiosk system with an average time of 3 minutes, 22 seconds. Average time to complete the entire triage process was 5 minutes, 34 seconds. Analysis of the data also showed strong agreement among nurses regarding the app's decision support system. Overall, nurses agreed with the system 91.6% (262/286) of the time when it came to choose an exposure level and 84.3% (241/286) of the time when selecting an action.
The app reliably demonstrated the ability to collect patient data through a self-service kiosk system thus reducing the burden on hospital resources. Also, the mobile technology allowed nurses the freedom to triage patients on the go while staying connected to a decision support system in which they felt would give reliable recommendations.
化学物质暴露对生命构成重大威胁。急救人员和急诊护士需要进行快速评估,以减少死亡和残疾。目前,尚无信息学工具可有效处理化学物质暴露的受害者。在大规模伤亡事件期间,大量患者涌入医院急诊科,给本已不堪重负的系统带来了额外压力,可能使患者处于危险之中,并给工作人员处理患者以提供适当护理和治疗效果带来挑战。在压力极大、容错空间极小的大规模伤亡事件场景中,传统的急诊科分诊模式过于简单化。新兴的移动技术可以让护士在急诊科自由走动并与决策支持系统保持连接,从而减轻他们的负担。
本研究旨在展示和评估一种新的移动工具,以协助急诊科人员在化学物质大规模伤亡事件中进行患者管理和分诊。
招募了500多名志愿者护士、学生和急救人员参与一项涉及模拟化学物质大规模伤亡事件的研究。在演练过程中,使用移动应用程序通过自助服务亭系统收集患者数据。护士们还收到了平板电脑,他们可以在上面查看患者信息并从决策支持系统中选择建议。对收集到的数据进行分析,以评估该应用程序获取患者数据的效率以及护士对决策支持系统的认同度。
在296名参与者中,96.3%(288/296)的患者完成了自助服务亭系统,平均用时3分22秒。完成整个分诊过程的平均时间为5分34秒。对数据的分析还表明,护士们对该应用程序的决策支持系统高度认同。总体而言,在选择暴露水平时,护士们91.6%(262/286)的情况下认同该系统;在选择行动时,84.3%(241/286)的情况下认同该系统。
该应用程序可靠地展示了通过自助服务亭系统收集患者数据的能力,从而减轻了医院资源的负担。此外,移动技术使护士能够在移动过程中对患者进行分诊,同时与他们认为能提供可靠建议的决策支持系统保持连接。