Spatial modelling of tumour drug resistance: the case of GIST liver metastases
Author
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Lefebvre, Guillaume
Author
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Cornelils, Francois
Author
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Cumsille, Patricio
Author
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Colin, Thierry
Author
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Poignard, Clair
Author
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Saut, Olivier
Admission date
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2018-05-28T16:38:48Z
Available date
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2018-05-28T16:38:48Z
Publication date
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2017
Cita de ítem
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Mathematical Medicine and Biology (2017) 34, 151–176
es_ES
Identifier
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10.1093/imammb/dqw002
Identifier
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https://repositorio.uchile.cl/handle/2250/148187
Abstract
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This work is devoted to modelling gastrointestinal stromal tumour metastases to the liver, their growth and resistance to therapies. More precisely, resistance to two standard treatments based on tyrosine kinase inhibitors (imatinib and sunitinib) is observed clinically. Using observations from medical images (CT scans), we build a spatial model consisting in a set of non-linear partial differential equations. After calibration of its parameters with clinical data, this model reproduces qualitatively and quantitatively the spatial tumour evolution of one specific patient. Important features of the growth such as the appearance of spatial heterogeneities and the therapeutical failures may be explained by our model. We then investigate numerically the possibility of optimizing the treatment in terms of progression-free survival time and minimum tumour size reachable by varying the dose of the first treatment. We find that according to our model, the progression-free survival time reaches a plateau with respect to this dose. We also demonstrate numerically that the spatial structure of the tumour may provide much more insights on the cancer cell activities than the standard RECIST criteria, which only consists in the measurement of the tumour diameter. Finally, we discuss on the non-predictivity of the model using only CT scans, in the sense that the early behaviour of the lesion is not sufficient to predict the response to the treatment.
es_ES
Patrocinador
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French State, ANR-10-LABX-005, ANR-10-IDEX-03-02 / LABRI / IMB / Conseil Regional d'Aquitaine / FeDER /
Universite de Bordeaux / CNRS / Conicyt, FB0001 /
Universidad del Bio-Bio, DIUBB 121909, DIUBB 122109