| Literature DB >> 31970500 |
David Robert Grimes1,2, Alexander G Fletcher3,4.
Abstract
Cancer is a complex phenomenon, and the sheer variation in behaviour across different types renders it difficult to ascertain underlying biological mechanisms. Experimental approaches frequently yield conflicting results for myriad reasons, and mathematical modelling of cancer is a vital tool to explore what we cannot readily measure, and ultimately improve treatment and prognosis. Like experiments, models are underpinned by certain biological assumptions, variation of which can lead to divergent predictions. An outstanding and important question concerns contact inhibition of proliferation (CIP), the observation that proliferation ceases when cells are spatially confined by their neighbours. CIP is a characteristic of many healthy adult tissues, but it remains unclear to which extent it holds in solid tumours, which exhibit regions of hyper-proliferation, and apparent breakdown of CIP. What precisely occurs in tumour tissue remains an open question, which mathematical modelling can help shed light on. In this perspective piece, we explore the implications of different hypotheses and available experimental evidence to elucidate the implications of these scenarios. We also outline how erroneous conclusions about the nature of tumour growth may be arrived at by looking selectively at biological data in isolation, and how this might be circumvented.Entities:
Keywords: Cancer; Growth laws; Mathematical oncology; Tumour growth
Mesh:
Year: 2020 PMID: 31970500 PMCID: PMC6976547 DOI: 10.1007/s11538-019-00677-y
Source DB: PubMed Journal: Bull Math Biol ISSN: 0092-8240 Impact factor: 1.758
Fig. 1Chaste data (average and standard deviations obtained from 500 runs) with pushing (CIP failure) and without (CIP). In former case, the exponential form in Eq. (4) fits perfectly with . In the latter, the polynomial expression in Eq. (3) fits with (Color figure online)
Fig. 2Best-fit growth curves for analytical models relative to tumour spheroid data (Freyer 1988) assuming either CIP (space-limited) or no CIP (nutrient limited) scenarios. The assumption of CIP yielded a best-fit with a negative coefficient of determination ( m/day), indicating this does not describe the data at all. By contrast, the mechanistic model assuming no CIP yielded excellent fit () with parameters that were biologically realistic (Color figure online)
Fig. 3a HCT-116 tumour spheroid stained with Ki-67 (green), a marker of proliferation grown for 4 days. b The same spheroid co-stained with the hypoxia marker EF5 (red). Proliferation is apparent throughout the entirety of the spheroid, while there is no central region of anoxia. Images reproduced with permission (Grimes et al. 2016). c Dual-stained DLD-1 tumour spheroid with central necrosis showing Ki-67 (green) and EF5 (red) grown for 12 days. Proliferation occurs throughout the viable rim. Reproduced with permission (Grimes et al. 2014b) (Color figure online)
Fig. 4a Long-range growth data for V-79 hamster cells taken from Freyer et al. (1988), depicted with a linear fit through the quasi-linear growth phase with . b Simulated growth of a DLD-1 tumour spheroid using a mechanistic growth model (Grimes et al. 2016), with a linear fit of through the quasi-linear phase (Color figure online)