按性别、种族或民族组合估算美国青少年重度抑郁症模型的过渡概率。

IF 3.1 4区 医学 Q1 ECONOMICS
Tran T Doan, David W Hutton, Davene R Wright, Lisa A Prosser
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引用次数: 0

摘要

目的:约有五分之一的美国青少年出现过严重抑郁症状,但很少有研究探讨青少年患抑郁症的纵向趋势或因人口因素而导致的抑郁症康复情况。我们估算了新的过渡概率输入,然后将其用于模拟模型,按性别、种族或民族组合预测不同青少年抑郁症的流行病学负担和发展轨迹:过渡概率首先是通过对 "全国青少年到成人健康纵向研究 "的数据进行参数生存分析得出的,然后根据 "全国药物使用和健康调查 "的横截面数据进行校准。我们建立了一个队列状态转换模型,以模拟美国青少年特定年龄段的抑郁症结果。假设青少年队列的年龄为 12-22 岁,每年都会发生变化。模型结果包括经历抑郁、康复或无抑郁病例的青少年比例,并按性别、种族或民族以及性别和种族或民族组合对美国青少年人群进行了报告:22岁时,约16%的青少年患有抑郁症,12%的青少年处于康复期,72%的青少年从未患过抑郁症。抑郁症发病率在 16-17 岁左右达到高峰。与其他种族或族裔群体相比,多种族或其他种族或族裔、白人、美国印第安人或阿拉斯加原住民以及西班牙裔、拉美裔或西班牙后裔的青少年更容易患抑郁症。除来自美国印第安人或阿拉斯加原住民以及多种族或其他种族或族裔背景的个体外,该模型生成的抑郁轨迹与按性别和种族或族裔分列的历史观察研究结果非常吻合:本研究验证了新的过渡概率,可用于未来评估青少年抑郁症政策或干预措施的决策模型中。根据人口统计因素(性别、种族或民族组合)生成了不同的过渡参数集,以支持未来的健康公平研究,包括分配成本效益分析。进一步提供按种族、民族、宗教、收入、地域、性别认同、性取向和残疾分类的数据,将有助于为历史上的少数群体预测准确的估计值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Estimating Transition Probabilities for Modeling Major Depression in Adolescents by Sex and Race or Ethnicity Combinations in the USA.

Estimating Transition Probabilities for Modeling Major Depression in Adolescents by Sex and Race or Ethnicity Combinations in the USA.

Objective: About one-fifth of US adolescents experienced major depressive symptoms, but few studies have examined longitudinal trends of adolescents developing depression or recovering by demographic factors. We estimated new transition probability inputs, and then used them in a simulation model to project the epidemiologic burden and trajectory of depression of diverse adolescents by sex and race or ethnicity combinations.

Methods: Transition probabilities were first derived using parametric survival analysis of data from the National Longitudinal Study of Adolescent to Adult Health and then calibrated to cross-sectional data from the National Survey on Drug Use and Health. We developed a cohort state-transition model to simulate age-specific depression outcomes of US adolescents. A hypothetical adolescent cohort was modeled from 12-22 years with annual transitions. Model outcomes included proportions of youth experiencing depression, recovery, or depression-free cases and were reported for a US adolescent population by sex, race or ethnicity, and sex and race or ethnicity combinations.

Results: At 22 years of age, approximately 16% of adolescents had depression, 12% were in recovery, and 72% had never developed depression. Depression prevalence peaked around 16-17 years-old. Adolescents of multiracial or other race or ethnicity, White, American Indian or Alaska Native, and Hispanic, Latino, or Spanish descent were more likely to experience depression than other racial or ethnic groups. Depression trajectories generated by the model matched well with historical observational studies by sex and race or ethnicity, except for individuals from American Indian or Alaska Native and multiracial or other race or ethnicity backgrounds.

Conclusions: This study validated new transition probabilities for future use in decision models evaluating adolescent depression policies or interventions. Different sets of transition parameters by demographic factors (sex and race or ethnicity combinations) were generated to support future health equity research, including distributional cost-effectiveness analysis. Further data disaggregated with respect to race, ethnicity, religion, income, geography, gender identity, sexual orientation, and disability would be helpful to project accurate estimates for historically minoritized communities.

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来源期刊
Applied Health Economics and Health Policy
Applied Health Economics and Health Policy Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
6.10
自引率
2.80%
发文量
64
期刊介绍: Applied Health Economics and Health Policy provides timely publication of cutting-edge research and expert opinion from this increasingly important field, making it a vital resource for payers, providers and researchers alike. The journal includes high quality economic research and reviews of all aspects of healthcare from various perspectives and countries, designed to communicate the latest applied information in health economics and health policy. While emphasis is placed on information with practical applications, a strong basis of underlying scientific rigor is maintained.
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