Using Self-Identified Gender Identity Data to Advance Health Equity Among Transgender and Gender Diverse Veterans in the Veterans Health Administration.

IF 2.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Guneet K Jasuja, Mark S Zocchi, Joel I Reisman, Julianne E Brady, Nicholas A Livingston, John R Blosnich, Varsha G Vimalananda, Rajinder S Singh, Michael Goodman, Michael J Silverberg, Jolie B Wormwood, Jillian C Shipherd
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引用次数: 0

Abstract

Background: Identification of transgender and gender diverse (TGD) people has been limited to diagnoses and text rather than self-identified gender identity (SIGI), representing a subset of TGD people. In 2017, the Veterans Health Administration (VHA) implemented SIGI, allowing for precise identification of TGD veterans, including subgroups (transgender man, transgender woman, and nonbinary).

Objectives: Health conditions, adverse social determinants of health (SDOH), and health care utilization were compared among veterans (1) identified by SIGI only, both SIGI and diagnosis/text, diagnosis/text only (ie, without SIGI), and (2) SIGI subgroups.

Research design: Cross-sectional.

Subjects: Twenty thousand seventy-nine TGD VHA patients from 2019 to 2023; SIGI only (n=5523), both SIGI and diagnosis/text (n=4066), and without SIGI (n=10,490).

Measures: Health conditions, adverse SODH and health care utilization.

Results: In adjusted models, SIGI only veterans were less likely to have documentation of depression (32.4% vs. 60.7% vs. 54.8%), post-traumatic stress disorder (PTSD; 23.5% vs. 41.4% vs. 37.5%), housing instability (8.8% vs. 21.5% vs. 16.1%), unemployment/financial problems (10.5% vs. 23.8% vs. 19.0%), and mental health visits (72.5% vs. 97.7% vs. 95.2%) compared with those with both SIGI and diagnosis/text and without SIGI. Health conditions were more similar across the diagnosis groups (i.e. both SIGI and diagnosis/text and without SIGI). Among veterans with SIGI data, we identified 49% transgender women, 38% transgender men, and 14% nonbinary veterans without many differences across subgroups. In adjusted models, more nonbinary veterans than transgender women and transgender men had documentation of alcohol use disorder (10.1% vs. 6.1% vs. 7.5%), depression (62.3% vs. 42.6% vs. 47.0%), PTSD (45.9% vs. 27.4% vs. 33.5%), mental health visits (96.7% vs. 89.1% vs. 91.9%), and experienced unemployment/financial problems (21.3% vs. 16.9% vs. 14.7%).

Conclusions: Without diagnosis, SIGI enables the identification of healthier TGD veterans. Regardless of SIGI, diagnosis signals much higher rates of health concerns. SIGI data facilitates understanding veteran subgroups, informing TGD policy and practice.

使用自我认同的性别身份数据促进退伍军人健康管理局跨性别和性别多样化退伍军人的健康平等。
背景:变性和性别多样性(TGD)人群的识别仅限于诊断和文本,而不是自我认同的性别认同(SIGI),代表了TGD人群的一个子集。2017年,退伍军人健康管理局(VHA)实施了SIGI,允许精确识别TGD退伍军人,包括亚群体(跨性别男性、跨性别女性和非二元性别)。目的:比较(1)仅通过SIGI识别的退伍军人健康状况、健康不良社会决定因素(SDOH)和医疗保健利用(1)通过SIGI识别的退伍军人、SIGI和诊断/文本识别的退伍军人、仅诊断/文本识别的退伍军人(即没有SIGI)和(2)SIGI亚组。研究设计:横断面。对象:2019 - 2023年TGD VHA患者2079例;只有SIGI (n=5523),同时有SIGI和诊断/文本(n=4066),没有SIGI (n= 10490)。措施:健康状况,不良SODH和卫生保健利用。结果:在调整后的模型中,与SIGI和诊断/文本以及没有SIGI的退伍军人相比,只有SIGI的退伍军人更不可能有抑郁症(32.4%对60.7%对54.8%)、创伤后应激障碍(PTSD; 23.5%对41.4%对37.5%)、住房不稳定(8.8%对21.5%对16.1%)、失业/财务问题(10.5%对23.8%对19.0%)和心理健康就诊(72.5%对97.7%对95.2%)。诊断组的健康状况更相似(即SIGI和诊断/文本以及没有SIGI)。在具有SIGI数据的退伍军人中,我们确定了49%的变性女性,38%的变性男性和14%的非二元退伍军人,在亚组之间没有太多差异。在调整后的模型中,非二元性退伍军人比跨性别女性和跨性别男性有更多的酒精使用障碍(10.1%对6.1%对7.5%)、抑郁症(62.3%对42.6%对47.0%)、创伤后应激障碍(45.9%对27.4%对33.5%)、精神健康就诊(96.7%对89.1%对91.9%)和经历过失业/财务问题(21.3%对16.9%对14.7%)。结论:无需诊断,SIGI可以识别更健康的TGD退伍军人。不管SIGI指数如何,诊断结果表明健康问题的发生率要高得多。SIGI数据有助于了解老兵群体,为TGD政策和实践提供信息。
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来源期刊
Medical Care
Medical Care 医学-公共卫生、环境卫生与职业卫生
CiteScore
5.20
自引率
3.30%
发文量
228
审稿时长
3-8 weeks
期刊介绍: Rated as one of the top ten journals in healthcare administration, Medical Care is devoted to all aspects of the administration and delivery of healthcare. This scholarly journal publishes original, peer-reviewed papers documenting the most current developments in the rapidly changing field of healthcare. This timely journal reports on the findings of original investigations into issues related to the research, planning, organization, financing, provision, and evaluation of health services.
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