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Multistate Statistical Modeling: A Tool to Build a Lung Cancer Microsimulation Model That Includes Parameter Uncertainty and Patient Heterogeneity

机译:多状态统计建模:建立包括参数不确定性和患者异质性在内的肺癌微观模拟模型的工具

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摘要

With the shift toward individualized treatment, cost-effectiveness models need to incorporate patient and tumor characteristics that may be relevant to treatment planning. In this study, we used multistate statistical modeling to inform a microsimulation model for cost-effectiveness analysis of individualized radiotherapy in lung cancer. The model tracks clinical events over time and takes patient and tumor features into account. Four clinical states were included in the model: alive without progression, local recurrence, metastasis, and death. Individual patients were simulated by repeatedly sampling a patient profile, consisting of patient and tumor characteristics. The transitioning of patients between the health states is governed by personalized time-dependent hazard rates, which were obtained from multistate statistical modeling (MSSM). The model simulations for both the individualized and conventional radiotherapy strategies demonstrated internal and external validity. Therefore, MSSM is a useful technique for obtaining the correlated individualized transition rates that are required for the quantification of a microsimulation model. Moreover, we have used the hazard ratios, their 95% confidence intervals, and their covariance to quantify the parameter uncertainty of the model in a correlated way. The obtained model will be used to evaluate the cost-effectiveness of individualized radiotherapy treatment planning, including the uncertainty of input parameters. We discuss the model-building process and the strengths and weaknesses of using MSSM in a microsimulation model for individualized radiotherapy in lung cancer.
机译:随着向个体化治疗的转变,成本效益模型需要结合可能与治疗计划有关的患者和肿瘤特征。在这项研究中,我们使用多状态统计模型为肺癌个体化放射治疗的成本-效果分析提供了微观模拟模型。该模型随时间跟踪临床事件,并考虑患者和肿瘤的特征。该模型包括四个临床状态:没有进展的存活状态,局部复发,转移和死亡。通过重复采样包括患者和肿瘤特征的患者资料来模拟单个患者。患者在健康状态之间的过渡由个性化的与时间相关的危险率控制,该危险率是从多状态统计模型(MSSM)获得的。针对个体化和常规放射治疗策略的模型仿真证明了内部和外部有效性。因此,MSSM是一种有用的技术,可用于获得量化微仿真模型所需的相关个性化转换率。此外,我们使用了危险比,它们的95%置信区间和它们的协方差以相关的方式量化模型的参数不确定性。所获得的模型将用于评估个性化放疗治疗计划的成本效益,包括输入参数的不确定性。我们讨论模型建立过程以及在个体化放射治疗的肺癌微观模拟模型中使用MSSM的优缺点。

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