数学建模以解决乳腺癌筛查中的问题:癌症干预和监测建模网络的乳腺癌模型概述。

IF 2 Q3 ONCOLOGY
Oguzhan Alagoz, Jennifer L Caswell-Jin, Harry J de Koning, Hui Huang, Xuelin Huang, Sandra J Lee, Yisheng Li, Sylvia K Plevritis, Swarnavo Sarkar, Clyde B Schechter, Natasha K Stout, Amy Trentham-Dietz, Nicolien van Ravesteyn, Kathryn P Lowry
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引用次数: 0

摘要

国家癌症研究所资助的癌症干预和监测建模网络(CISNET)乳腺癌数学模型已越来越多地被决策者用于解决乳腺癌筛查政策决策和影响临床实践。这些完善和验证的模型在20多年的合作中具有成功的使用记录。虽然数学建模是将短期筛查表现数据转化为长期乳腺癌结果的一种有价值的方法,但它本身就很复杂,需要大量的输入来近似乳腺癌筛查的影响。这篇综述文章描述了6个独立开发的CISNET乳腺癌模型,特别关注它们如何代表乳腺癌筛查,并估计筛查对降低乳腺癌死亡率和提高预期寿命的贡献。我们还描述了模型结构和假设的差异,以及模型结果的变化如何突出不确定性领域。最后,我们提供了关于如何使用模型产生的结果来帮助制定乳腺癌筛查政策的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Modeling to Address Questions in Breast Cancer Screening: An Overview of the Breast Cancer Models of the Cancer Intervention and Surveillance Modeling Network.

The National Cancer Institute-funded Cancer Intervention and Surveillance Modeling Network (CISNET) breast cancer mathematical models have been increasingly utilized by policymakers to address breast cancer screening policy decisions and influence clinical practice. These well-established and validated models have a successful track record of use in collaborations spanning over 2 decades. While mathematical modeling is a valuable approach to translate short-term screening performance data into long-term breast cancer outcomes, it is inherently complex and requires numerous inputs to approximate the impacts of breast cancer screening. This review article describes the 6 independently developed CISNET breast cancer models, with a particular focus on how they represent breast cancer screening and estimate the contribution of screening to breast cancer mortality reduction and improvements in life expectancy. We also describe differences in structures and assumptions across the models and how variation in model results can highlight areas of uncertainty. Finally, we offer insight into how the results generated by the models can be used to aid decision-making regarding breast cancer screening policy.

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来源期刊
CiteScore
3.40
自引率
20.00%
发文量
81
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