Department of Geography, University of Utah, Salt Lake City.
Surgical Population Analysis Research Core, Department of Surgery, University of Utah, Salt Lake City.
JAMA Netw Open. 2024 Oct 1;7(10):e2439509. doi: 10.1001/jamanetworkopen.2024.39509.
There is growing interest in developing coordinated regional systems for nontraumatic surgical emergencies; however, our understanding of existing emergency general surgery (EGS) care communities is limited.
To apply network analysis methods to delineate EGS care regions and compare the performance of this method with the Dartmouth Health Referral Regions (HRRs).
DESIGN, SETTING, AND PARTICIPANTS: This cross-sectional study was conducted using the 2019 California and New York state emergency department and inpatient databases. Eligible participants included all adult patients with a nonelective admission for common EGS conditions. Interhospital transfers (IHTs) were identified by transfer indicators or temporally adjacent hospitalizations at 2 different facilities. Data analysis was conducted from January to May 2024.
Admission for primary EGS diagnosis.
Regional EGS networks (RENs) were delineated by modularity optimization (MO), a community detection method, and compared with the plurality-based Dartmouth HRRs. Geographic boundaries were compared through visualization of patient flows and associated health care regions. Spatial accuracy of the 2 methods was compared using 6 common network analysis measures: localization index (LI), market share index (MSI), net patient flow, connectivity, compactness, and modularity.
A total of 1 244 868 participants (median [IQR] age, 55 [37-70 years]; 776 725 male [62.40%]) were admitted with a primary EGS diagnosis. In New York, there were 405 493 EGS encounters with 3212 IHTs (0.79%), and 9 RENs were detected using MO compared with 10 Dartmouth HRRs. In California, there were 839 375 encounters with 10 037 IHTs (1.20%), and 14 RENs were detected compared with 24 HRRs. The greatest discrepancy between REN and HRR boundaries was in rural regions where one REN often encompassed multiple HRRs. The MO method was significantly better than HRRs in identifying care networks that accurately captured patients living within the geographic region as indicated by the LI and MSI for New York (mean [SD] LI, 0.86 [1.00] for REN vs 0.74 [1.00] for HRR; mean [SD] MSI, 0.16 [0.13] for REN vs 0.32 [0.21] for HRR) and California (mean [SD] LI, 0.83 [1.00] for REN vs 0.74 [1.00] for HRR; mean [SD] MSI, 0.19 [0.14] for REN vs 0.39 [0.43] for HRR). Nearly 27% of New York hospitals (37 of 139 hospitals [26.62%]) and 15% of California hospitals (48 of 336 hospitals [14.29%]) were reclassified into a different community with the MO method.
Development of optimal health delivery systems for EGS patients will require knowledge of care patterns specific to this population. The findings of this cross-sectional study suggest that network science methods, such as MO, offer opportunities to identify empirical EGS care regions that outperform HRRs and can be applied in the development of coordinated regional systems of care.
人们对开发非创伤性外科急症的协调区域系统越来越感兴趣;然而,我们对现有的紧急普通外科 (EGS) 护理社区的了解有限。
应用网络分析方法划定 EGS 护理区域,并将该方法的性能与达特茅斯健康转诊区域 (HRR) 进行比较。
设计、地点和参与者:这是一项使用 2019 年加利福尼亚州和纽约州急诊部门和住院数据库进行的横断面研究。合格的参与者包括所有因常见 EGS 病症进行非选择性入院的成年患者。通过转移指标或在两个不同设施之间的时间相邻住院来确定院内转院 (IHT)。数据分析于 2024 年 1 月至 5 月进行。
初次 EGS 诊断入院。
通过模块化优化 (MO) 确定区域 EGS 网络 (REN),并与基于多数的达特茅斯 HRR 进行比较。通过可视化患者流动和相关医疗保健区域来比较地理边界。使用 6 种常见网络分析指标比较 2 种方法的空间准确性:定位指数 (LI)、市场份额指数 (MSI)、净患者流量、连通性、紧凑性和模块性。
共有 1244868 名参与者(中位数[IQR]年龄为 55[37-70 岁];776725 名男性[62.40%])因原发性 EGS 诊断入院。在纽约,有 405493 次 EGS 就诊,有 3212 次 IHT(0.79%),使用 MO 检测到 9 个 REN,而 10 个 Dartmouth HRR。在加利福尼亚州,有 839375 次就诊,有 10037 次 IHT(1.20%),检测到 14 个 REN,而 24 个 HRR。REN 和 HRR 边界之间最大的差异在农村地区,一个 REN 通常包含多个 HRR。MO 方法在识别护理网络方面明显优于 HRR,这些网络准确地捕获了居住在地理区域内的患者,这一点从纽约的 LI 和 MSI 以及加利福尼亚的 LI 和 MSI 可以看出(REN 的平均[SD]LI 为 0.86[1.00],HRR 为 0.74[1.00];REN 的平均[SD]MSI 为 0.16[0.13],HRR 为 0.32[0.21])。纽约的近 27%(139 家医院中的 37 家[26.62%])和加利福尼亚的 15%(336 家医院中的 48 家[14.29%])的医院被重新分类到 MO 方法中的不同社区。
为 EGS 患者开发最佳的医疗服务系统将需要了解针对该人群的护理模式。这项横断面研究的结果表明,网络科学方法(如 MO)为识别优于 HRR 的经验 EGS 护理区域提供了机会,并且可以应用于协调区域护理系统的开发。