Modelling the genesis and treatment of cancer: The potential role of physiologically based pharmacodynamics

作者:Steimer Jean Louis; Dahl Svein G; De Alwis Dinesh P; Gundert Remy Ursula; Karlsson Mats O; Martinkova Jirina; Aarons Leon*; Ahr Hans Juergen; Clairambault Jean; Freyer Gilles; Friberg Lena E; Kern Steven E; Kopp Schneider Annette; Ludwig Wolf Dieter; De Nicolao Giuseppe; Rocchetti Maurizio; Troconiz Inaki F
来源:European Journal of Cancer, 2010, 46(1): 21-32.
DOI:10.1016/j.ejca.2009.10.011

摘要

Physiologically based modelling of pharmacodynamics/toxicodynamics requires an a priori knowledge on the underlying mechanisms causing toxicity or causing the disease. In the context of cancer, the objective of the expert meeting was to discuss the molecular understanding of the disease, modelling approaches used so far to describe the process, preclinical models of cancer treatment and to evaluate modelling approaches developed based on improved knowledge.
Molecular events in cancerogenesis can be detected using 'omics' technology, a tool applied in experimental carcinogenesis, but also for diagnostics and prognosis. The molecular understanding forms the basis for new drugs, for example targeting protein kinases specifically expressed in cancer. At present, empirical preclinical models of tumour growth are in great use as the development of physiological models is cost and resource intensive. Although a major challenge in PKPD modelling in oncology patients is the complexity of the system, based in part on preclinical models, successful models have been constructed describing the mechanism of action and providing a tool to establish levels of biomarker associated with efficacy and assisting in defining biologically effective dose range selection for first dose in man. To follow the concentration in the tumour compartment enables to link kinetics and dynamics. in order to obtain a reliable model of tumour growth dynamics and drug effects, specific aspects of the modelling of the concentration-effect relationship in cancer treatment that need to be accounted for include: the physiological/circadian rhythms of the cell cycle; the treatment with combinations and the need to optimally choose appropriate combinations of the multiple agents to study; and the schedule dependence of the response in the clinical situation.