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 t...
Hypoxia and the pH level of the tumor microenvironment have a great impact on the treatment of tumor...
Computational models represent a highly suitable framework, not only for testing biological hypothes...
The speed and the versatility of today’s computers open up new opportunities to simulate complex bio...
The design of accurate in silico cancer models capable of quantitatively predicting tumor growth is ...
Computational systems and methods are often being used in biological research, including the underst...
Increasingly complex in silico modeling approaches offer a way to simultaneously access cancerous pr...
Increasingly complex in silico modeling approaches offer a way to simultaneously access cancerous pr...
The inverse geometric approach to the modeling of the growth of circular objects revealing required ...
A recently proposed mathematical model for the growth of Multicellular Tumor Spheroids [1] is here i...
The vast computational resources that became available during the past decade enabled the developmen...
Increasingly complex in silico modeling approaches offer a way to simultaneously access cancerous pr...
International audienceThe tumour microenvironment is known to play an important role in determining ...
Experiments that probe epithelial tissue dynamics, cell competition, and tumour growth are fundament...
The dynamics of tumor progression is driven by multiple factors, which can be exogenous to the tumor...
BACKGROUND: The vast computational resources that became available during the past decade enabled th...
Hypoxia and the pH level of the tumor microenvironment have a great impact on the treatment of tumor...
Computational models represent a highly suitable framework, not only for testing biological hypothes...
The speed and the versatility of today’s computers open up new opportunities to simulate complex bio...
The design of accurate in silico cancer models capable of quantitatively predicting tumor growth is ...
Computational systems and methods are often being used in biological research, including the underst...
Increasingly complex in silico modeling approaches offer a way to simultaneously access cancerous pr...
Increasingly complex in silico modeling approaches offer a way to simultaneously access cancerous pr...
The inverse geometric approach to the modeling of the growth of circular objects revealing required ...
A recently proposed mathematical model for the growth of Multicellular Tumor Spheroids [1] is here i...
The vast computational resources that became available during the past decade enabled the developmen...
Increasingly complex in silico modeling approaches offer a way to simultaneously access cancerous pr...
International audienceThe tumour microenvironment is known to play an important role in determining ...
Experiments that probe epithelial tissue dynamics, cell competition, and tumour growth are fundament...
The dynamics of tumor progression is driven by multiple factors, which can be exogenous to the tumor...
BACKGROUND: The vast computational resources that became available during the past decade enabled th...
Hypoxia and the pH level of the tumor microenvironment have a great impact on the treatment of tumor...
Computational models represent a highly suitable framework, not only for testing biological hypothes...
The speed and the versatility of today’s computers open up new opportunities to simulate complex bio...