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首页> 外文期刊>Operations Research: The Journal of the Operations Research Society of America >Dynamic policy modeling for chronic diseases: Metaheuristic-based identification of pareto-optimal
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Dynamic policy modeling for chronic diseases: Metaheuristic-based identification of pareto-optimal

机译:慢性病的动态策略建模:基于元启发式的最佳对等识别

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摘要

We present a risk-group oriented chronic disease progression model embedded within a metaheuristic-based optimization of the policy variables. Policy-makers are provided with Pareto-optimal screening schedules for risk groups by considering cost and effectiveness outcomes as well as budget constraints. The quality of the screening technology depends on risk group, disease stage, and time. As the metaheuristic solution technique, we use the Pareto ant colony optimization (P-ACO) algorithm for multiobjective combinatorial optimization problems, which is based on the ant colony optimization paradigm. Our approach is illustrated by a numerical example for breast cancer. For a 10-year time horizon, we provide cost-effective screening schedules for selected annual and total budgets. We then discuss policy implications of 16 mammography screening scenarios varying the screening schedule (annual, biennial, triennial, quadrennial) and the rate of women tested (25%, 50%, 75%, 100%). Due to the model's flexible structure, interventions for multiple chronic diseases can be considered simultaneously.
机译:我们提出了一个以风险启发为导向的慢性病进展模型,该模型嵌入在基于变启发法的政策变量优化中。通过考虑成本和有效性结果以及预算限制,为决策者提供了针对风险人群的帕累托最优筛选计划。筛查技术的质量取决于风险人群,疾病阶段和时间。作为元启发式求解技术,我们使用基于蚁群优化范例的多目标组合优化问题的Pareto蚁群优化(P-ACO)算法。乳腺癌的数值例子说明了我们的方法。在10年的时间范围内,我们为选定的年度和总预算提供具有成本效益的筛选时间表。然后,我们讨论了16种乳房X线照片筛查方案的政策含义,这些方案会改变筛查时间表(年度,两年期,三年期,四年期)和受检妇女的比例(25%,50%,75%,100%)。由于该模型的灵活结构,可以同时考虑多种慢性疾病的干预措施。

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