The design of accurate in silico cancer models capable of quantitatively predicting tumor growth is an important goal in cancer research today. Mesoscopic models have shown great promise in this scenario; however, their use is often inhibited by the difficulty in correctly assigning parameter values. In this paper, enabled by an extremely computationally efficient mesoscopic model, we propose a Genetic Algorithms' (GAs) approach to the exploration of parameter space. Analysis of the results suggest that this novel application of GAs to tumor growth models both facilitates the attribution of parameter values to the fitting of experimental data and, more importantly, lends insight to the role played by the different parameters in regulating the tumor model growth.

A Genetic Algorithms' approach to the exploration of parameter space in mesoscopic Multicellular Tumour Spheroid models / Delsanto, Silvia; Morra, Lia; Griffa, Michele; Demartini, CLAUDIO GIOVANNI. - ELETTRONICO. - 26:(2004), pp. 675-678. (Intervento presentato al convegno Conference Proceedings - 26th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, EMBC 2004 tenutosi a San Francisco, CA, usa nel 2004).

A Genetic Algorithms' approach to the exploration of parameter space in mesoscopic Multicellular Tumour Spheroid models

Silvia Delsanto;Lia Morra;Michele Griffa;Claudio Giovanni Demartini
2004

Abstract

The design of accurate in silico cancer models capable of quantitatively predicting tumor growth is an important goal in cancer research today. Mesoscopic models have shown great promise in this scenario; however, their use is often inhibited by the difficulty in correctly assigning parameter values. In this paper, enabled by an extremely computationally efficient mesoscopic model, we propose a Genetic Algorithms' (GAs) approach to the exploration of parameter space. Analysis of the results suggest that this novel application of GAs to tumor growth models both facilitates the attribution of parameter values to the fitting of experimental data and, more importantly, lends insight to the role played by the different parameters in regulating the tumor model growth.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2692855