Computational systems and methods are often being used in biological research, including the understanding of cancer and the development of treatments. Simulations of tumor growth and its response to different drugs are of particular importance, but also challenging complexity. The main challenges are first to calibrate the simulators so as to reproduce real-world cases, and second, to search for specific values of the parameter space concerning effective drug treatments. In this work, we combine a multi-scale simulator for tumor cell growth and a Genetic Algorithm (GA) as a heuristic search method for finding good parameter configurations in reasonable time. The two modules are integrated into a single workflow that can be executed in para...
Abstract Background Cancer is a complex, multiscale dynamical system, with interactions between tumo...
This dissertation presents how to use parallel computing algorithms on the basis of graphics process...
A primary goal of modern cancer research is to characterize the nature of intratumour evolution. Stu...
The design of accurate in silico cancer models capable of quantitatively predicting tumor growth is ...
In this paper, we propose a parallel cellular automaton tumor growth model that includes load balanc...
© 2019 Elsevier B.V. The use of high-fidelity computational simulations promises to enable high-thro...
Many human tumors cannot easily be avoided. In most cases a prophylactic vaccination prevents the tu...
The temporal and spatial resolution in the microscopy of tissues has increased significa...
Abstract: The challenging issues of cancer prevention and cure lie in the need for a more detailed k...
450,000 European citizens are diagnosed every year with colorectal cancer (CRC) and more than 230,00...
Modeling of brain tumor dynamics has the potential to advance therapeutic planning. Current modeling...
The study of tumor growth biology with computer-based models is currently an area of active research...
Abstract Background Cancer is a complex, multiscale dynamical system, with interactions between tumo...
This dissertation presents how to use parallel computing algorithms on the basis of graphics process...
A primary goal of modern cancer research is to characterize the nature of intratumour evolution. Stu...
The design of accurate in silico cancer models capable of quantitatively predicting tumor growth is ...
In this paper, we propose a parallel cellular automaton tumor growth model that includes load balanc...
© 2019 Elsevier B.V. The use of high-fidelity computational simulations promises to enable high-thro...
Many human tumors cannot easily be avoided. In most cases a prophylactic vaccination prevents the tu...
The temporal and spatial resolution in the microscopy of tissues has increased significa...
Abstract: The challenging issues of cancer prevention and cure lie in the need for a more detailed k...
450,000 European citizens are diagnosed every year with colorectal cancer (CRC) and more than 230,00...
Modeling of brain tumor dynamics has the potential to advance therapeutic planning. Current modeling...
The study of tumor growth biology with computer-based models is currently an area of active research...
Abstract Background Cancer is a complex, multiscale dynamical system, with interactions between tumo...
This dissertation presents how to use parallel computing algorithms on the basis of graphics process...
A primary goal of modern cancer research is to characterize the nature of intratumour evolution. Stu...