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安全网医院的救援失败:医院资源的可用性和绩效差异。

Failure to rescue in safety-net hospitals: availability of hospital resources and differences in performance.

机构信息

Center for Surgery and Public Health, Department of Surgery, Brigham and Women's Hospital, Boston, Massachusetts2Division of General Surgery, Department of Surgery, University of Toronto, Toronto, Canada.

Center for Surgery and Public Health, Department of Surgery, Brigham and Women's Hospital, Boston, Massachusetts.

出版信息

JAMA Surg. 2014 Mar;149(3):229-35. doi: 10.1001/jamasurg.2013.3566.

Abstract

IMPORTANCE

Failure to rescue (FTR), the mortality rate among surgical patients with complications, is an emerging quality indicator. Hospitals with a high safety-net burden, defined as the proportion of patients covered by Medicaid or uninsured, provide a disproportionate share of medical care to vulnerable populations. Given the financial strains on hospitals with a high safety-net burden, availability of clinical resources may have a role in outcome disparities.

OBJECTIVES

To assess the association between safety-net burden and FTR and to evaluate the effect of clinical resources on this relationship.

DESIGN, SETTING, AND PARTICIPANTS: A retrospective cohort of 46,519 patients who underwent high-risk inpatient surgery between January 1, 2007, and December 31, 2010, was assembled using the Nationwide Inpatient Sample. Hospitals were divided into the following 3 safety-net categories: high-burden hospitals (HBHs), moderate-burden hospitals (MBHs), and low-burden hospitals (LBHs). Bivariate and multivariate analyses controlling for patient, procedural, and hospital characteristics, as well as clinical resources, were used to evaluate the relationship between safety-net burden and FTR.

MAIN OUTCOMES AND MEASURES

FTR.

RESULTS

Patients in HBHs were younger (mean age, 65.2 vs 68.2 years; P = .001), more likely to be of black race (11.3% vs 4.2%, P < .001), and less likely to undergo an elective procedure (39.3% vs 48.6%, P = .002) compared with patients in LBHs. The HBHs were more likely to be large, major teaching facilities and to have high levels of technology (8.6% vs 4.0%, P = .02), sophisticated internal medicine (7.7% vs 4.3%, P = .10), and high ratios of respiratory therapists to beds (39.7% vs 21.1%, P < .001). However, HBHs had lower proportions of registered nurses (27.9% vs 38.8%, P = .02) and were less likely to have a positron emission tomographic scanner (15.4% vs 22.0%, P = .03) and a fully implemented electronic medical record (12.6% vs 17.8%, P = .03). Multivariate analyses showed that HBHs (adjusted odds ratio, 1.35; 95% CI, 1.19-1.53; P < .001) and MBHs (adjusted odds ratio, 1.15; 95% CI, 1.05-1.27; P = .005) were associated with higher odds of FTR compared with LBHs, even after adjustment for clinical resources.

CONCLUSIONS AND RELEVANCE

Despite access to resources that can improve patient rescue rates, HBHs had higher odds of FTR, suggesting that availability of hospital clinical resources alone does not explain increased FTR rates.

摘要

重要性

手术患者并发症导致的抢救失败(FTR)是一种新出现的质量指标。具有较高安全网负担的医院(定义为接受医疗补助或无保险的患者比例)为弱势群体提供了不成比例的医疗服务。鉴于具有较高安全网负担的医院面临着财务压力,临床资源的可用性可能在结果差异中起作用。

目的

评估安全网负担与 FTR 之间的关联,并评估临床资源对这种关系的影响。

设计、设置和参与者:使用全国住院患者样本,于 2007 年 1 月 1 日至 2010 年 12 月 31 日期间,组建了一个 46519 名接受高危住院手术的患者的回顾性队列。医院被分为以下 3 个安全网类别:高负担医院(HBHs)、中负担医院(MBHs)和低负担医院(LBHs)。使用双变量和多变量分析,控制患者、手术和医院特征以及临床资源,评估安全网负担与 FTR 之间的关系。

主要结局和测量

FTR。

结果

与 LBHs 相比,HBHs 中的患者年龄更小(平均年龄,65.2 岁比 68.2 岁;P <.001),更可能为黑种人(11.3%比 4.2%;P <.001),更不可能接受择期手术(39.3%比 48.6%;P = 0.002)。HBHs 更有可能是大型、主要教学设施,并且具有更高水平的技术(8.6%比 4.0%;P = 0.02)、更复杂的内科(7.7%比 4.3%;P = 0.10)和更高的呼吸治疗师与床位比例(39.7%比 21.1%;P <.001)。然而,HBHs 的注册护士比例较低(27.9%比 38.8%;P = 0.02),并且不太可能拥有正电子发射断层扫描(15.4%比 22.0%;P = 0.03)和完全实施的电子病历(12.6%比 17.8%;P = 0.03)。多变量分析显示,HBHs(调整后的优势比,1.35;95%置信区间,1.19-1.53;P <.001)和 MBHs(调整后的优势比,1.15;95%置信区间,1.05-1.27;P = 0.005)与 LBHs 相比,FTR 的几率更高,即使在调整了临床资源后也是如此。

结论和相关性

尽管可以获得可以提高患者抢救成功率的资源,但 HBHs 的 FTR 几率更高,这表明医院临床资源的可用性本身并不能解释 FTR 率的增加。

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