68 The stars back pain app – using real time emergency department data to address overdiagnosis

Macedo Gustavo, M. Oliveira, Noel Baidya, Hannah Storey, Bethan Richards, C. Maher
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Abstract

Objectives When low back pain is managed in the emergency department overdiagnosis and overtreatment are common. Measuring this is usually cumbersome. An online data analytics and visualisation tool was designed and developed to capture, store, analyse and visually present ED care data of patients presenting with low back pain. Method This project was conducted in collaboration with the Performance Monitoring, System Improvement and Innovation Unit of the Sydney Local Health District (SLHD). An online data analytics and visualisation tool was designed and created using Qlik Sense® by a multidisciplinary team of researchers, clinicians, and information technology experts Results The online data analytics and visualisation tool (STARS Back Pain App) was developed within the SLHD Targeted Activity and Reporting System (STARS). It displays the total number of presentations for low back pain at the three SLHD’s EDs, as well as subsequent admissions to hospital. Data displayed in the app reflect ED practice for low back pain management, such as proportion of patients receiving: i) laboratory tests, ii) imaging, and iii) pain medications. The app also displays demographics and characteristics of patients, including age, gender, days and hours presenting, mode of arrival, and emergency triage category. The app allows interactive analysis using innovative visualisation techniques. Conclusions The STARS Back Pain App will provide emergency clinicians with a summary of their clinical performance. It will also allow us to efficiently measure unwarranted clinical variation and drive practice change using and audit and feedback approach to avoid inappropriate use of tests and treatments for low back pain.
明星背痛应用程序-使用实时急诊科数据来解决过度诊断问题
目的在急诊科处理腰痛时,过度诊断和过度治疗是常见的。测量这一点通常很麻烦。设计并开发了一种在线数据分析和可视化工具,用于捕获、存储、分析和可视化地呈现患有腰痛的患者的急诊科护理数据。方法本项目与悉尼地方卫生区(SLHD)绩效监测、系统改进和创新单位合作进行。一个由研究人员、临床医生和信息技术专家组成的多学科团队使用Qlik Sense®设计和创建了一个在线数据分析和可视化工具。结果在线数据分析和可视化工具(STARS背痛应用程序)是在SLHD目标活动和报告系统(STARS)中开发的。它显示了三个SLHD急诊科中腰痛的总病例数,以及随后住院的病例数。应用程序中显示的数据反映了ED对腰痛管理的实践,例如接受以下检查的患者比例:i)实验室检查,ii)成像和iii)止痛药。该应用程序还显示患者的人口统计数据和特征,包括年龄、性别、就诊天数和时间、到达模式和紧急分类。该应用程序允许使用创新的可视化技术进行交互式分析。STARS背痛应用程序将为急诊临床医生提供他们的临床表现总结。它还将使我们能够有效地测量无根据的临床变化,并使用审计和反馈方法来驱动实践变化,以避免不适当地使用下腰痛的测试和治疗。
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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