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Lessons Learned from a Cross-Model Validation between a Discrete Event Simulation Model and a Cohort State-Transition Model for Personalized Breast Cancer Treatment

机译:从离散事件模拟模型和个性化乳腺癌治疗的队列状态转换模型之间的交叉模型验证中吸取的教训

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Objectives. Breast cancer is the most common malignancy among women in developed countries. We developed a model (the Oncotyrol breast cancer outcomes model) to evaluate the cost-effectiveness of a 21-gene assay when used in combination with Adjuvant! Online to support personalized decisions about the use of adjuvant chemotherapy. The goal of this study was to perform a cross-model validation. Methods. The Oncotyrol model evaluates the 21-gene assay by simulating a hypothetical cohort of 50-year-old women over a lifetime horizon using discrete event simulation. Primary model outcomes were life-years, quality-adjusted life-years (QALYs), costs, and incremental cost-effectiveness ratios (ICERs). We followed the International Society for Pharmacoeconomics and Outcomes Research-Society for Medical Decision Making (ISPOR-SMDM) best practice recommendations for validation and compared modeling results of the Oncotyrol model with the state-transition model developed by the Toronto Health Economics and Technology Assessment (THETA) Collaborative. Both models were populated with Canadian THETA model parameters, and outputs were compared. Results. The differences between the models varied among the different validation end points. The smallest relative differences were in costs, and the greatest were in QALYs. All relative differences were less than 1.2%. The cost-effectiveness plane showed that small differences in the model structure can lead to different sets of nondominated test-treatment strategies with different efficiency frontiers. We faced several challenges: distinguishing between differences in outcomes due to different modeling techniques and initial coding errors, defining meaningful differences, and selecting measures and statistics for comparison (means, distributions, multivariate outcomes). Conclusions. Cross-model validation was crucial to identify and correct coding errors and to explain differences in model outcomes. In our comparison, small differences in either QALYs or costs led to changes in ICERs because of changes in the set of dominated and nondominated strategies.
机译:目标。乳腺癌是发达国家女性中最常见的恶性肿瘤。我们开发了一个模型(Oncotyrol乳腺癌结局模型)来评估与佐剂联合使用时21基因检测的成本效益!在线支持有关使用辅助化疗的个性化决策。这项研究的目的是执行跨模型验证。方法。 Oncotyrol模型通过使用离散事件模拟在整个生命周期内模拟50岁女性的假设队列来评估21基因检测。主要模型结果是生命年,质量调整生命年(QALY),成本和增量成本效益比(ICER)。我们遵循国际药物经济学和结果研究协会-医疗决策协会(ISPOR-SMDM)的最佳实践建议进行验证,并将Oncotyrol模型的建模结果与多伦多健康经济与技术评估局开发的状态转换模型进行了比较( THETA)合作。两种模型均使用加拿大THETA模型参数填充,并比较了输出。结果。不同验证终点之间模型之间的差异也有所不同。相对差异最小的是成本,最大的是QALY。所有相对差异均小于1.2%。成本效益平面表明,模型结构中的细微差异可以导致具有不同效率边界的不同套非支配的测试处理策略。我们面临几个挑战:区分由于不同的建模技术和初始编码错误导致的结果差异,定义有意义的差异以及选择比较的度量和统计数据(均值,分布,多元结果)。结论。跨模型验证对于识别和纠正编码错误以及解释模型结果的差异至关重要。在我们的比较中,由于主导和非主导策略集的变化,QALY或成本的微小差异导致ICER发生变化。

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