STEMI服务交付建模:概念验证研究。

Emergency medicine journal : EMJ Pub Date : 2022-09-01 Epub Date: 2021-12-22 DOI:10.1136/emermed-2020-210334
Justin Cole, Richard Beare, Thanh Phan, Velandai Srikanth, Dion Stub, Karen Smith, Karen Murdoch, Jamie Layland
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引用次数: 0

摘要

背景:进入个别经皮冠状动脉介入治疗(PCI)中心传统上是由历史转诊模式沿任意定义的地理边界决定的。我们着手建立st段抬高型心肌梗死(STEMI)需求的预测模型和进入PCI中心的时间效率。方法:使用Google地图应用程序编程接口(API)估计从随机地址到澳大利亚墨尔本PCI中心的旅行时间。将08:15和17:15发车时间与23:00发车时间进行对比,确定高峰时段交通拥堵的影响。使用谷歌地图开发软件将真实世界的救护车行驶时间与估计的行驶时间进行比较。每个邮编的STEMI发病率通过合并每个年龄组的STEMI发病率数据和每个邮编年龄组的人口普查数据来估计。评估PCI中心网络配置变化对医院STEMI负荷、集水区大小、出行时间和距离PCI中心30分钟内STEMI病例数的影响。结果:近10%的STEMI病例前往PCI中心的路程超过30分钟,通过模拟大城市外PCI中心的移除,这一数字增加到20%(结论:本文提供了一个框架,整合院前环境变量、现有或改变的医疗资源和健康统计数据,客观地模拟STEMI需求和随后的PCI获取。我们的方法可以修改,以纳入其他输入,以计算最佳医疗保健效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling STEMI service delivery: a proof of concept study.

Background: Access to individual percutaneous coronary intervention (PCI) centres has traditionally been determined by historical referral patterns along arbitrarily defined geographic boundaries. We set out to produce predictive models of ST-elevation myocardial infarction (STEMI) demand and time-efficient access to PCI centres.

Methods: Travel times from random addresses to PCI centres in Melbourne, Australia, were estimated using Google map application programming interface (API). Departures at 08:15 and 17:15 were compared with 23:00 to determine the effect of peak hour traffic congestion. Real-world ambulance travel times were compared with estimated travel times using Google map developer software. STEMI incidence per postcode was estimated by merging STEMI incidence per age group data with age group per postcode census data. PCI centre network configuration changes were assessed for their effect on hospital STEMI loading, catchment size, travel times and the number of STEMI cases within 30 min of a PCI centre.

Results: Nearly 10% of STEMI cases travelled more than 30 min to a PCI centre, increasing to 20% by modelling the removal of large outer metropolitan PCI centres (p<0.05). A model of 7 PCI centres compared favourably to the current existing network of 11 PCI centres (p=0.18 (afternoon), p=0.5 (morning and night)). The intraclass correlation between estimated travel times and ambulance travel times was 0.82, p<0.001.

Conclusion: This paper provides a framework to integrate prehospital environmental variables, existing or altered healthcare resources and health statistics to objectively model STEMI demand and consequent access to PCI. Our methodology can be modified to incorporate other inputs to compute optimum healthcare efficiencies.

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