Multivariate Regularized Newton And Levenberg-Marquardt Methods: A Comparison On Synthetic Data Of Tumor Hypoxia In A Kinetic Framework

COMMUNICATIONS IN APPLIED AND INDUSTRIAL MATHEMATICS(2019)

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摘要
In this paper we propose a new algorithm to optimize the parameters of a compartmental problem describing tumor hypoxia. The method is based on a multivariate Newton approach, with Tikhonov regularization, and can be easily applied to data with diverse statistical distributions. Here we simulate [F-18] Positron Emission Tomography dynamic data of hypoxia of a neck tumor and describe the tracer flow inside tumor with a two-compartments compartmental model. We perform optimization on the parameters of the model via the proposed Multivariate Regularized Newton method and validate it against results obtained with a standard Levenberg-Marquardt approach. The proposed algorithm returns parameters that are closer to the ground truth while preserving the statistical distribution of the data.
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关键词
Compartmental analysis, Newton methods, tumor hypoxia, Fmiso-PET
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