加拿大重度抑郁障碍模拟模型:研究协议。

IF 2 Q2 ECONOMICS PharmacoEconomics Open Pub Date : 2024-05-01 Epub Date: 2024-03-26 DOI:10.1007/s41669-024-00481-y
Shahzad Ghanbarian, Gavin W K Wong, Mary Bunka, Louisa Edwards, Sonya Cressman, Tania Conte, Sandra Peterson, Rohit Vijh, Morgan Price, Christian Schuetz, David Erickson, Linda Riches, Ginny Landry, Kim McGrail, Jehannine Austin, Stirling Bryan
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引用次数: 0

摘要

背景:重度抑郁症(MDD)是一种常见的、经常复发的疾病,也是医疗成本的重要驱动因素。重度抑郁症患者通常接受药物治疗作为一线治疗,但大多数患者需要进行不止一次的药物试验,才能找到一种既能缓解症状又不会产生难以忍受的副作用的药物。目前急需更有效的干预措施来改善患者的病情缓解和生活质量,并减轻该病对医疗系统造成的经济负担。药物基因组学 (PGx) 检测可以实现这些目标,利用基因组学信息指导处方决策。多发性硬化症的治疗路径已经非常复杂且涉及多个方面,因此未来对新治疗方案的评估需要一个灵活的分析基础设施,涵盖整个治疗路径。个体水平的模拟模型非常适合这一目的。我们试图开发一种经济模拟模型,以评估对重度抑郁症患者进行 PGx 检测的有效性和成本效益。此外,该模型还可作为分析基础设施,模拟重度抑郁症患者的整个治疗路径:包括患者伙伴、临床专家、研究人员和建模人员在内的主要利益相关者设计并开发了不列颠哥伦比亚省(BC 省)成年 MDD 患者临床路径的离散时间微观模拟模型,其中包括所有公共资助的治疗方案和多个治疗步骤。重度抑郁症模拟模型(SiMMDep)采用模块化方法编码,以提高灵活性。该模型是利用不列颠哥伦比亚省的行政数据、系统性回顾和专家小组进行的多项原始数据分析而构建的。该模型适用于不列颠哥伦比亚省新诊断和流行的成年 MDD 患者,包括接受和未接受 PGx 指导治疗的患者。SiMMDep 包含 8 个模块中的 1500 多个参数:初始队列、人口统计学、疾病进展、治疗、不良事件、住院、成本和质量调整生命年(回报)以及死亡率。该模型从卫生系统的角度预测健康结果并估算成本。此外,该模型还可以加入互动决策节点,以解决临床路径中 PGx 检测(或其他干预措施)的不同实施策略问题。我们对模型进行了各种形式的验证(表面验证、内部验证和交叉验证),以确保 SiMMDep 的正确运行和预期结果:SiMMDep 是加拿大首个治疗 MDD 的特定药物离散时间微观模拟模型。在患者伙伴的合作指导下,该模型结合了现实的护理历程。SiMMDep 综合了现有信息,并纳入了各省的具体数据,以预测与 PGx 试验相关的效益和成本。与目前的护理标准相比,这些预测估算了 PGx 检验的有效性、成本效益、资源利用率和健康收益。不过,灵活的分析基础设施也可用于支持其他政策问题,并促进新数据的快速综合,以便在抑郁症临床领域更广泛地寻找提高效率的方法。
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A Canadian Simulation Model for Major Depressive Disorder: Study Protocol.

Background: Major depressive disorder (MDD) is a common, often recurrent condition and a significant driver of healthcare costs. People with MDD often receive pharmacological therapy as the first-line treatment, but the majority of people require more than one medication trial to find one that relieves symptoms without causing intolerable side effects. There is an acute need for more effective interventions to improve patients' remission and quality of life and reduce the condition's economic burden on the healthcare system. Pharmacogenomic (PGx) testing could deliver these objectives, using genomic information to guide prescribing decisions. With an already complex and multifaceted care pathway for MDD, future evaluations of new treatment options require a flexible analytic infrastructure encompassing the entire care pathway. Individual-level simulation models are ideally suited for this purpose. We sought to develop an economic simulation model to assess the effectiveness and cost effectiveness of PGx testing for individuals with major depression. Additionally, the model serves as an analytic infrastructure, simulating the entire patient pathway for those with MDD.

Methods and analysis: Key stakeholders, including patient partners, clinical experts, researchers, and modelers, designed and developed a discrete-time microsimulation model of the clinical pathways of adults with MDD in British Columbia (BC), including all publicly-funded treatment options and multiple treatment steps. The Simulation Model of Major Depression (SiMMDep) was coded with a modular approach to enhance flexibility. The model was populated using multiple original data analyses conducted with BC administrative data, a systematic review, and an expert panel. The model accommodates newly diagnosed and prevalent adult patients with MDD in BC, with and without PGx-guided treatment. SiMMDep comprises over 1500 parameters in eight modules: entry cohort, demographics, disease progression, treatment, adverse events, hospitalization, costs and quality-adjusted life-years (payoff), and mortality. The model predicts health outcomes and estimates costs from a health system perspective. In addition, the model can incorporate interactive decision nodes to address different implementation strategies for PGx testing (or other interventions) along the clinical pathway. We conducted various forms of model validation (face, internal, and cross-validity) to ensure the correct functioning and expected results of SiMMDep.

Conclusion: SiMMDep is Canada's first medication-specific, discrete-time microsimulation model for the treatment of MDD. With patient partner collaboration guiding its development, it incorporates realistic care journeys. SiMMDep synthesizes existing information and incorporates provincially-specific data to predict the benefits and costs associated with PGx testing. These predictions estimate the effectiveness, cost-effectiveness, resource utilization, and health gains of PGx testing compared with the current standard of care. However, the flexible analytic infrastructure can be adapted to support other policy questions and facilitate the rapid synthesis of new data for a broader search for efficiency improvements in the clinical field of depression.

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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
64
审稿时长
8 weeks
期刊介绍: PharmacoEconomics - Open focuses on applied research on the economic implications and health outcomes associated with drugs, devices and other healthcare interventions. The journal includes, but is not limited to, the following research areas:Economic analysis of healthcare interventionsHealth outcomes researchCost-of-illness studiesQuality-of-life studiesAdditional digital features (including animated abstracts, video abstracts, slide decks, audio slides, instructional videos, infographics, podcasts and animations) can be published with articles; these are designed to increase the visibility, readership and educational value of the journal’s content. In addition, articles published in PharmacoEconomics -Open may be accompanied by plain language summaries to assist readers who have some knowledge of, but not in-depth expertise in, the area to understand important medical advances.All manuscripts are subject to peer review by international experts. Letters to the Editor are welcomed and will be considered for publication.
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