Title :
Modeling spatial population dynamics of stem cell lineage in wound healing and cancerogenesis
Author :
Youfang Cao ; Naveed, Hammad ; Liang, Chulong ; Jie Liang
Author_Institution :
Dept. of Bioeng., Univ. of Illinois at Chicago, Chicago, IL, USA
Abstract :
Modeling the dynamics of cell population in tissues involving stem cell niches allows insight into the control mechanisms of the important wound healing process. It is well known that growth and divisions of stem cells are mainly repressed by niche cells, but can also be activated by signals released from wound. In addition, the proliferation and differentiation among three different types of cell: stem cells (SCs), intermediate progenitor cells (IPCs), and fully differentiated cells (FDCs) in stem cell lineage are under different activation and inhibition controls. We have developed a novel stochastic spatial dynamic model of cells. We can characterize not only overall cell population dynamics, but also details of temporal-spatial relationship of individual cells within a tissue. In our model, the shape, growth, and division of each cell are modeled using a realistic geometric model. Furthermore, the inhibited growth rate, proliferation and differentiation probabilities of individual cells are modeled through feedback loops controlled by secreted factors and wound signals from neighboring cells. With specific proliferation and differentiation probabilities, the actual division type that each cell will take is chosen by a Monte Carlo sampling process. With simulations, we study the effects of different strengths of wound signals to wound healing behaviors. We also study the correlations between chronic wound and cancerogenesis.
Keywords :
Monte Carlo methods; biological tissues; cancer; cellular biophysics; feedback; geometry; physiological models; stochastic processes; wounds; Monte Carlo sampling process; biological tissue; cancerogenesis; cell activation control; cell differentiation probability; cell division model; cell growth model; cell inhibition control; cell population dynamics modeling; cell proliferation probability; cell shape model; cell temporal-spatial relationship; cellular growth rate inhibition; chronic wound; feedback loop control; fully differentiated cell; intermediate progenitor cell; neighboring cell secreted factor; neighboring cell wound signal; niche cell; realistic geometric model; spatial population dynamics modeling; stem cell division; stem cell growth; stem cell lineage; stochastic spatial cell dynamic model; wound healing behavior; wound healing process control mechanism; wound signal release; wound signal strength effect; Mathematical model; Shape; Sociology; Statistics; Stem cells; Wounds;
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2013 35th Annual International Conference of the IEEE
Conference_Location :
Osaka
DOI :
10.1109/EMBC.2013.6610807