Model selection and parameter estimation in tumor growth models using approximate Bayesian computation-ABC

被引:0
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作者
José Mir Justino da Costa
Helcio Rangel Barreto Orlande
Wellington Betencurte da Silva
机构
[1] Federal University of Amazonas-UFAM,Department of Statistics
[2] Federal University of Rio de Janeiro,Department of Mechanical Engineering
[3] UFRJ Cidade Universitária,Laboratório de Modelagem e Otimização de Processos
[4] Federal University of Esprito Santo-UFES,undefined
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关键词
Model selection; Parameter estimation; Approximate Bayesian computation and tumor growth; 34F05; 35K57; 60G20; 62J02; 62M86; 92B05;
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摘要
Cancer is one of the most fatal diseases in the world. Governments and researchers from various areas have continuously concentrated efforts to better understand the disease and propose diagnostic and treatment techniques. The use of mathematical models of tumor growth is of great importance for the development of such techniques. Due to the variety of models nowadays available in the literature, the problems of model selection and parameter estimation come into picture, aiming at suitably predicting the patient’s status of the disease. As the available data on dependent variables of existing models might not justify the use of common likelihood functions, approximate Bayesian computation (ABC) becomes a very attractive tool for model selection and model calibration (parameter estimation) in tumor growth models. In the present study, a Monte Carlo approximate Bayesian computation (ABC) algorithm is applied to select among competing models of tumor growth, with and without chemotherapy treatment. Simulated measurements are used in this work. The results obtained show that the algorithm correctly selects the model and estimates the parameters used to generate the simulated measurements.
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页码:2795 / 2815
页数:20
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