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种族、收入和保险状况与骨折患者初次门诊评估时间延长有关。

Race, Income, and Insurance Status Are Associated with Increased Time to Initial Outpatient Evaluation of Fracture Patients.

作者信息

Gupta Sumit K, Troyer Luke D, Si Zhengye, Gieg Samuel D, Leary Emily V

机构信息

Department of Orthopaedic Surgery, University of Missouri Health Care, Columbia, MO, United States.

出版信息

J Pediatr Soc North Am. 2024 Jul 4;8:100070. doi: 10.1016/j.jposna.2024.100070. eCollection 2024 Aug.

Abstract

BACKGROUND

Social determinants of health (SDOH) are conditions in the environments where people are born, live, learn, work, play, and worship that affect a wide range of health and quality of life outcomes. While SDOH have been shown to have a significant effect on outcomes and access to care for many orthopaedic conditions, their effect on pediatric orthopaedic care is less well established. The purpose of this study was to evaluate the effects of race, income, parental employment status and education level, and type of insurance, on time to initial evaluation of pediatric fracture patients in an orthopaedic clinic.

METHODS

A retrospective chart review was performed for fracture patients who presented to a children's emergency department (ED) and were followed up at an outpatient pediatric orthopaedic clinic. Socioeconomic and demographic data were collected including patient age at presentation of fracture, type of insurance, patient race and ethnicity, patient ZIP code, primary guardian's employment status and education level, and household annual income. Multivariable negative binomial regression analysis was used to determine the effect of SDOH on time from ED visit to initial orthopaedic follow up.

RESULTS

A total of 516 patients were included in the study (mean follow-up time = 8.54 days; SD = 4.53 days) between the ED visit and initial orthopaedic follow up. After adjusting for all other collected variables, there was a correlation between time to follow up and patient race (White patients had 0.76 days shorter time compared with that of non-White patients,  = .0455), insurance status (self-pay patients had 1.73 days longer time compared with that of insured patients), and mean household income in the patient's ZIP code (decrease of 0.92 days per $10,000 increase in mean household income,  = .0431). Patient age also correlated with increased time to follow up (1.03-day increase per year of age,  = .0051).

CONCLUSIONS

The time from ED visit to initial evaluation in an orthopaedic clinic for pediatric fracture patients was correlated with certain SDOH including race, insurance status, mean income in patients' respective ZIP code, and age of the patient.

KEY CONCEPTS

(1)Social determinants of health may impact access to care and outcomes in pediatric orthopaedics, and this relationship is confounded by multiple factors.(2)Time to follow up for pediatric fracture patients is affected by race, income, and insurance status.(3)Pediatric orthopaedic surgeons must be aware of this disparity and use specific strategies to address potential barriers to care.

LEVEL OF EVIDENCE

III, Prognostic Study.

摘要

背景

健康的社会决定因素(SDOH)是指人们出生、生活、学习、工作、娱乐和礼拜的环境中的条件,这些条件会影响广泛的健康和生活质量结果。虽然已有研究表明,SDOH对许多骨科疾病的治疗结果和获得治疗的机会有重大影响,但其对小儿骨科护理的影响尚不明确。本研究的目的是评估种族、收入、父母就业状况和教育水平以及保险类型对骨科诊所小儿骨折患者初次评估时间的影响。

方法

对在儿童急诊科就诊并在小儿骨科门诊接受随访的骨折患者进行回顾性病历审查。收集社会经济和人口统计学数据,包括骨折就诊时的患者年龄、保险类型、患者种族和族裔、患者邮政编码、主要监护人的就业状况和教育水平以及家庭年收入。采用多变量负二项回归分析来确定SDOH对从急诊科就诊到初次骨科随访时间的影响。

结果

本研究共纳入516例患者(急诊就诊至初次骨科随访的平均时间=8.54天;标准差=4.53天)。在对所有其他收集到的变量进行调整后,随访时间与患者种族(白人患者比非白人患者的随访时间短0.76天,P = 0.0455)、保险状况(自费患者比参保患者的随访时间长1.73天)以及患者邮政编码区域的平均家庭收入(平均家庭收入每增加10,000美元,随访时间减少0.92天,P = 0.0431)之间存在相关性。患者年龄也与随访时间的增加相关(年龄每增加一岁,随访时间增加1.03天,P = 0.0051)。

结论

小儿骨折患者从急诊科就诊到骨科诊所初次评估的时间与某些SDOH相关,包括种族、保险状况、患者各自邮政编码区域的平均收入以及患者年龄。

关键概念

(1)健康的社会决定因素可能会影响小儿骨科的治疗机会和治疗结果,并且这种关系受到多种因素的混杂影响。(2)小儿骨折患者的随访时间受到种族、收入和保险状况的影响。(3)小儿骨科医生必须意识到这种差异,并采用特定策略来解决潜在的治疗障碍。

证据水平

III级,预后研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7e36/12088261/b4c00d53bf64/gr1.jpg

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