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Predicting the growth of glioblastoma multiforme spheroids using a multiphase porous media model
Authors:Pietro Mascheroni  Cinzia Stigliano  Melania Carfagna  Daniela P Boso  Luigi Preziosi  Paolo Decuzzi  Bernhard A Schrefler
Institution:1.Dipartimento di Ingegneria Civile Edile ed Ambientale,Università di Padova,Padova,Italy;2.Nanomedicine Department,Houston Methodist Research Institute,Houston,USA;3.Dipartimento di Scienze Matematiche,Politecnico di Torino,Torino,Italy;4.Department of Drug Design and Development,Fondazione Istituto Italiano di Tecnologia,Genova,Italy
Abstract:Tumor spheroids constitute an effective in vitro tool to investigate the avascular stage of tumor growth. These three-dimensional cell aggregates reproduce the nutrient and proliferation gradients found in the early stages of cancer and can be grown with a strict control of their environmental conditions. In the last years, new experimental techniques have been developed to determine the effect of mechanical stress on the growth of tumor spheroids. These studies report a reduction in cell proliferation as a function of increasingly applied stress on the surface of the spheroids. This work presents a specialization for tumor spheroid growth of a previous more general multiphase model. The equations of the model are derived in the framework of porous media theory, and constitutive relations for the mass transfer terms and the stress are formulated on the basis of experimental observations. A set of experiments is performed, investigating the growth of U-87MG spheroids both freely growing in the culture medium and subjected to an external mechanical pressure induced by a Dextran solution. The growth curves of the model are compared to the experimental data, with good agreement for both the experimental settings. A new mathematical law regulating the inhibitory effect of mechanical compression on cancer cell proliferation is presented at the end of the paper. This new law is validated against experimental data and provides better results compared to other expressions in the literature.
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