Title :
A Minimal Model of Tumor Growth Inhibition
Author :
Magni, Paolo ; Germani, Massimiliano ; Nicolao, Giuseppe De ; Bianchini, Giulia ; Simeoni, Monica ; Poggesi, Italo ; Rocchetti, Maurizio
Author_Institution :
Dipt. di Inf. e Sist., Univ. degli Studi di Pavia, Pavia
Abstract :
The preclinical development of antitumor drugs greatly benefits from the availability of models capable of predicting tumor growth as a function of the drug administration schedule. For being of practical use, such models should be simple enough to be identifiable from standard experiments conducted on animals. In the present paper, a stochastic model is derived from a set of minimal assumptions formulated at cellular level. Tumor cells are divided in two groups: proliferating and nonproliferating. The probability that a proliferating cell generates a new cell is a function of the tumor weight. The probability that a proliferating cell becomes nonproliferating is a function of the plasma drug concentration. The time-to-death of a nonproliferating cell is a random variable whose distribution reflects the nondeterministic delay between drug action and cell death. The evolution of the expected value of tumor weight obeys two differential equations (an ordinary and a partial differential one), whereas the variance is negligible. Therefore, the tumor growth dynamics can be well approximated by the deterministic evolution of its expected value. The tumor growth inhibition model, which is a lumped parameter model that in the last few years has been successfully applied to several antitumor drugs, is shown to be a special case of the minimal model presented here.
Keywords :
cellular biophysics; drugs; stochastic processes; tumours; antitumor drugs; drug administration schedule; plasma drug concentration; stochastic model; tumor cells; tumor growth inhibition; Animals; Delay; Differential equations; Drugs; Neoplasms; Plasmas; Predictive models; Random variables; Stochastic processes; Tumors; Anticancer drug discovery; Poisson events; pharmacodynamics models; stochastic model; tumor growth dynamics; tumor growth model; Antineoplastic Agents; Carcinoma; Cell Count; Cell Death; Cell Line, Tumor; Cell Proliferation; Humans; Models, Biological; Neoplasms; Poisson Distribution; Probability; Stochastic Processes; Tumor Burden;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2008.913420