Lyon Aaron R, Maras Melissa A, Pate Christina M, Igusa Takeru, Vander Stoep Ann
Department of Psychiatry and Behavioral Sciences, University of Washington, 6200 NE 74th St., Suite 100, Seattle, WA, 98115, USA.
University of Missouri, Columbia, USA.
Adm Policy Ment Health. 2016 Mar;43(2):168-88. doi: 10.1007/s10488-015-0628-y.
Although it is widely known that the occurrence of depression increases over the course of adolescence, symptoms of mood disorders frequently go undetected. While schools are viable settings for conducting universal screening to systematically identify students in need of services for common health conditions, particularly those that adversely affect school performance, few school districts routinely screen their students for depression. Among the most commonly referenced barriers are concerns that the number of students identified may exceed schools' service delivery capacities, but few studies have evaluated this concern systematically. System dynamics (SD) modeling may prove a useful approach for answering questions of this sort. The goal of the current paper is therefore to demonstrate how SD modeling can be applied to inform implementation decisions in communities. In our demonstration, we used SD modeling to estimate the additional service demand generated by universal depression screening in a typical high school. We then simulated the effects of implementing "compensatory approaches" designed to address anticipated increases in service need through (1) the allocation of additional staff time and (2) improvements in the effectiveness of mental health interventions. Results support the ability of screening to facilitate more rapid entry into services and suggest that improving the effectiveness of mental health services for students with depression via the implementation of an evidence-based treatment protocol may have a limited impact on overall recovery rates and service availability. In our example, the SD approach proved useful in informing systems' decision-making about the adoption of a new school mental health service.
尽管众所周知,抑郁症的发病率在青春期会上升,但情绪障碍的症状却常常未被发现。虽然学校是进行普遍筛查以系统识别有常见健康问题(尤其是那些对学业成绩有不利影响的问题)且需要服务的学生的可行场所,但很少有学区会定期对学生进行抑郁症筛查。最常被提及的障碍包括担心识别出的学生数量可能超过学校的服务提供能力,但很少有研究系统地评估过这一担忧。系统动力学(SD)建模可能是回答这类问题的有用方法。因此,本文的目的是展示如何将SD建模应用于为社区的实施决策提供信息。在我们的演示中,我们使用SD建模来估计在一所典型高中进行普遍抑郁症筛查所产生的额外服务需求。然后,我们模拟了实施“补偿方法”的效果,这些方法旨在通过(1)分配额外的工作人员时间和(2)提高心理健康干预措施的有效性来应对预期增加的服务需求。结果支持了筛查有助于更快获得服务的能力,并表明通过实施基于证据的治疗方案来提高抑郁症学生心理健康服务的有效性,可能对总体康复率和服务可及性的影响有限。在我们的例子中,SD方法被证明有助于为系统关于采用新的学校心理健康服务的决策提供信息。