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在学术型保障医院减轻乳腺癌治疗中的差异。

Mitigating disparities in breast cancer treatment at an academic safety-net hospital.

机构信息

Department of Surgery, Boston Medical Center, Boston, MA, USA.

Boston University School of Medicine, Boston, MA, USA.

出版信息

Breast Cancer Res Treat. 2023 Apr;198(3):597-606. doi: 10.1007/s10549-023-06875-6. Epub 2023 Feb 24.

Abstract

PURPOSE

Among women with non-metastatic breast cancer, marked disparities in stage at presentation, receipt of guideline-concordant treatment and stage-specific survival have been shown in national cohorts based on race, ethnicity, insurance and language. Little is published on the performance of safety-net hospitals to achieve equitable care. We evaluate differences in treatment and survival by race, ethnicity, language and insurance status among women with non-metastatic invasive breast cancer at a single, urban academic safety-net hospital.

METHODS

We conducted a retrospective study of patients with invasive ductal or lobular breast cancer, diagnosed and treated between 2009 and 2014 at an urban, academic safety-net hospital. Demographic, tumor and treatment characteristics were obtained. Stage at presentation, stage-specific overall survival, and receipt of guideline-concordant surgical and adjuvant therapies were analyzed. Chi-square analysis and ANOVA were used for statistical analysis. Unadjusted survival analysis was conducted by Kaplan-Meier method using log-rank test; adjusted 5 year survival analysis was completed stratified by early and late stage, using flexible parametric survival models incorporating age, race, primary language and insurance status.

RESULTS

520 women with stage 1-3 invasive breast cancer were identified. Median age was 58.5 years, 56.1% were non-white, 31.7% were non-English-speaking, 16.4% were Hispanic, and 50.1% were Medicaid/uninsured patients. There were no statistically significant differences in stage at presentation between age group, race, ethnicity, language or insurance. The rate of breast conserving surgery (BCS) among stage 1-2 patients did not vary by race, insurance or language. Among patients indicated for adjuvant therapies, the rates of recommendation and completion of therapy did not vary by race, ethnicity, insurance or language. Unadjusted survival at 5 years was 93.7% for stage 1-2 and 73.5% for stage 3. Adjusting for age, race, insurance status and primary language, overall survival at 5 years was 93.8% (95% CI 86.3-97.2%) for stage 1-2 and 83.4% (95% CI 35.5-96.9%) for stage 3 disease. Independently, for patients with early- and late-stage disease, age, race, language and insurance were not associated with survival at 5-years.

CONCLUSION

Among patients diagnosed and treated at an academic safety-net hospital, there were no differences in the stage at presentation or receipt of guideline-concordant treatment by race, ethnicity, insurance or language. Overall survival did not vary by race, insurance or language. Additional research is needed to assess how hospitals and healthcare systems mitigate breast cancer disparities.

摘要

目的

在基于种族、族裔、保险和语言的全国队列中,患有非转移性乳腺癌的女性在就诊时的分期、接受符合指南的治疗以及特定分期的生存方面存在明显差异。关于 安全网医院在实现公平护理方面的表现,发表的内容很少。我们评估了单一城市学术安全网医院患有非转移性浸润性乳腺癌的女性在种族、族裔、语言和保险状况方面治疗和生存方面的差异。

方法

我们对 2009 年至 2014 年间在城市学术安全网医院诊断和治疗的浸润性导管或小叶性乳腺癌患者进行了回顾性研究。获取了人口统计学、肿瘤和治疗特征。分析了就诊时的分期、特定分期的总生存率以及接受符合指南的手术和辅助治疗的情况。采用卡方分析和 ANOVA 进行统计学分析。Kaplan-Meier 法进行未调整的生存分析,并使用对数秩检验;使用包含年龄、种族、主要语言和保险状况的灵活参数生存模型,对早期和晚期进行分层,进行调整后 5 年生存率分析。

结果

确定了 520 名患有 1-3 期浸润性乳腺癌的女性。中位年龄为 58.5 岁,56.1%为非白人,31.7%为非英语使用者,16.4%为西班牙裔,50.1%为医疗补助/无保险患者。年龄组、种族、族裔、语言或保险对就诊时的分期无统计学差异。1-2 期患者保乳手术(BCS)的比例不因种族、保险或语言而异。在需要辅助治疗的患者中,推荐和完成治疗的比率不因种族、族裔、保险或语言而异。未调整的 5 年生存率为 1-2 期为 93.7%,3 期为 73.5%。调整年龄、种族、保险状况和主要语言后,1-2 期患者的 5 年总生存率为 93.8%(95%CI 86.3-97.2%),3 期患者为 83.4%(95%CI 35.5-96.9%)。独立地,对于早期和晚期疾病患者,年龄、种族、语言和保险与 5 年生存率无关。

结论

在学术安全网医院诊断和治疗的患者中,种族、族裔、保险或语言与就诊时的分期或接受符合指南的治疗无差异。种族、保险或语言对总生存率无影响。需要进一步研究评估医院和医疗系统如何减轻乳腺癌的差异。

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