Department of Health Policy and Management, Yale University School of Public Health, New Haven, Connecticut.
Department of Epidemiology, University of Michigan School of Public Health, Ann Arbor, Michigan.
Am J Prev Med. 2020 Aug;59(2):e39-e47. doi: 10.1016/j.amepre.2020.03.021. Epub 2020 May 21.
Simulation models can improve measurement and understanding of mental health conditions in the population. Major depressive episodes are a common and leading cause of disability but are subject to substantial recall bias in survey assessments. This study illustrates the application of a simulation model to quantify the full burden of major depressive episodes on population health in the U.S.
A compartmental model of major depressive episodes that explicitly simulates individuals' under-reporting of past episodes was developed and calibrated to 2005-2017 National Surveys on Drug Use and Health data. Parameters for incidence of a first major depressive episode and the probability of under-reporting past episodes were estimated. Analysis was conducted from 2017 to 2019.
The model estimated that 30.1% of women (95% range: 29.0%-32.5%) and 17.4% of men (95% range: 16.7%-18.8%) have lifetime histories of a major depressive episode after adjusting for recall error. Among all adults, 13.1% of women (95% range: 8.1%-16.5%) and 6.6% of men (95% range: 4.0%-8.3%) failed to report a past major depressive episode. Under-reporting of a major depressive episode history in adults aged >65 years was estimated to be 70%.
Simulation models can address knowledge gaps in disease epidemiology and prevention and improve surveillance efforts. This model quantifies the under-reporting of major depressive episodes and provides parameter estimates for future research. After adjusting for under-reporting, 23.9% of adults have a lifetime history of major depressive episodes, which is much higher than based on self-report alone (14.0%). Far more adults would benefit from depression prevention strategies than what survey estimates suggest.
模拟模型可以提高对人群中心理健康状况的测量和理解。重度抑郁症发作是一种常见且主要的致残原因,但在调查评估中存在大量回忆偏倚。本研究举例说明了一种模拟模型在量化美国人群中重度抑郁症发作的全部负担方面的应用。
开发了一种明确模拟个体对过去发作的漏报的重度抑郁症发作的房室模型,并根据 2005-2017 年全国药物使用和健康调查数据进行了校准。估计了首次重度抑郁症发作的发生率和过去发作漏报的概率。分析于 2017 年至 2019 年进行。
该模型估计,在调整回忆错误后,30.1%的女性(95%范围:29.0%-32.5%)和 17.4%的男性(95%范围:16.7%-18.8%)有重度抑郁症发作的终身病史。在所有成年人中,13.1%的女性(95%范围:8.1%-16.5%)和 6.6%的男性(95%范围:4.0%-8.3%)未报告过去的重度抑郁症发作。年龄>65 岁的成年人重度抑郁症发作漏报估计为 70%。
模拟模型可以解决疾病流行病学和预防方面的知识空白,并改善监测工作。该模型量化了重度抑郁症发作的漏报情况,并为未来的研究提供了参数估计。在调整漏报后,23.9%的成年人有重度抑郁症发作的终身病史,这比仅基于自我报告的要高得多(14.0%)。需要采取预防抑郁症的策略的成年人比调查估计的要多得多。