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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Bayesian Parameter Identification in Cahn-Hilliard Models for Biological Growth
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Bayesian Parameter Identification in Cahn-Hilliard Models for Biological Growth

机译:在Cahn-Hilliard贝叶斯参数识别生物生长模型

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摘要

We consider the inverse problem of parameter estimation in a diffuse interface model for tumor growth. The model consists of a fourth-order Cahn-Hilliard system and contains three phenomeno-logical parameters: the tumor proliferation rate, the nutrient consumption rate, and the chemotactic sensitivity. We study the inverse problem within the Bayesian framework and construct the likelihood and noise for two typical observation settings. One setting involves an infinite-dimensional data space where we observe the full tumor. In the second setting we observe only the tumor volume; hence the data space is finite-dimensional. We show the well-posedness of the posterior measure for both settings, building upon and improving the analytical results in [C. Kahle and K. F. Lam, Appl. Math. Optim., (2018)]. A numerical example involving synthetic data is presented in which the posterior measure is numerically approximated by the sequential Monte Carlo approach with tempering.
机译:我们考虑参数的反问题在肿瘤的扩散界面模型估计增长。Cahn-Hilliard系统和包含三个phenomeno-logical参数:肿瘤增殖率,营养消费率,趋化现象的敏感度。贝叶斯框架内的反问题和构建的可能性和噪音典型的观察设置。包括一个无限维度数据的地方我们观察到完整的肿瘤。我们只观察肿瘤体积;空间是有限维。后的适定性问题的措施设置,建立和改善分析结果(C。达成。涉及合成数据提出了后测量数值近似序贯蒙特卡罗方法回火。

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