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利用“我们所有人”研究计划中的诊断和生物识别数据来揭示肥胖诊断方面的差异。

Leveraging diagnosis and biometric data from the All of Us Research Program to uncover disparities in obesity diagnosis.

作者信息

Arseniev-Koehler Alina, Tai-Seale Ming, Cené Crystal W, Grunvald Eduardo, Sitapati Amy

机构信息

Department of Sociology, Purdue University, Beering Hall Suite 1114, 100 N University Street, West Lafayette, IN, 47907, USA.

Division of Biomedical Informatics, UC San Diego Medicine, 9500 Gilman Dr. MC 0728 La Jolla, California, 92093, USA.

出版信息

Obes Pillars. 2025 Feb 7;13:100165. doi: 10.1016/j.obpill.2025.100165. eCollection 2025 Mar.

Abstract

BACKGROUND

Despite extensive efforts to standardize definitions of obesity, clinical practices of diagnosing obesity vary widely. This study examined (1) discrepancies between biometric body mass index (BMI) measures of obesity and documented diagnoses of obesity in patient electronic health records (EHRs) and (2) how these discrepancies vary by patient gender and race and ethnicity from an intersectional lens.

METHODS

Observational study of 383,380 participants in the National Institutes of Health Research Program dataset.

RESULTS

Over half (60 %) of participants with a BMI indicating obesity had no clinical diagnosis of obesity in their EHRs. Adjusting for BMI, comorbidities, and other covariates, women's adjusted odds of diagnosis were far higher than men's (95 % confidence interval 1.66-1.75). However, the gender gap between women's and men's likelihood of diagnosis varied widely across racial groups. Overall, Non-Hispanic (NH) Black women and Hispanic women were the most likely to be diagnosed and NH-Asian men were the least likely to be diagnosed.

CONCLUSION

Men, and particularly NH-Asian men, may be at heightened risk of underdiagnosis of obesity. Women, and especially Hispanic and NH-Black women, may be at heightened risk of unanticipated harms of obesity diagnosis, including stigma and competing demand with other health concerns. Leveraging diagnosis and biometric data from this unique public domain dataset from the All of Us project, this study revealed pervasive disparities in diagnostic attribution by gender, race, and ethnicity.

摘要

背景

尽管为标准化肥胖定义付出了巨大努力,但肥胖的临床诊断实践仍存在很大差异。本研究调查了:(1)肥胖的生物测量体重指数(BMI)测量值与患者电子健康记录(EHR)中记录的肥胖诊断之间的差异;(2)从交叉视角来看,这些差异如何因患者性别、种族和民族而有所不同。

方法

对美国国立卫生研究院研究项目数据集中的383,380名参与者进行观察性研究。

结果

BMI表明肥胖的参与者中,超过一半(60%)在其EHR中没有肥胖的临床诊断。在对BMI、合并症和其他协变量进行调整后,女性的调整后诊断几率远高于男性(95%置信区间1.66 - 1.75)。然而,不同种族群体中,女性和男性诊断可能性的性别差距差异很大。总体而言,非西班牙裔(NH)黑人女性和西班牙裔女性最有可能被诊断,而NH-亚洲男性最不可能被诊断。

结论

男性,尤其是NH-亚洲男性,可能面临肥胖诊断不足的更高风险。女性,尤其是西班牙裔和NH-黑人女性,可能面临肥胖诊断意外危害的更高风险,包括耻辱感以及与其他健康问题的竞争需求。利用“我们所有人”项目这个独特公共领域数据集中的诊断和生物测量数据,本研究揭示了按性别、种族和民族划分的诊断归因中普遍存在的差异。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e91b/11872124/78b6f0724922/gr1.jpg

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