DocumentCode
8960
Title
Modeling Cell–Cell Interactions in Regulating Multiple Myeloma Initiating Cell Fate
Author
Tao Peng ; Huiming Peng ; Dong Soon Choi ; Jing Su ; Chung-Che Chang ; Xiaobo Zhou
Author_Institution
Dept. of Radiol., Methodist Hosp. Res. Inst., Houston, TX, USA
Volume
18
Issue
2
fYear
2014
fDate
Mar-14
Firstpage
484
Lastpage
491
Abstract
Cancer initiating cells have been documented in multiple myeloma and believed to be a key factor that initiates and drives tumor growth, differentiation, metastasis, and recurrence of the diseases. Although myeloma initiating cells (MICs) are likely to share many properties of normal stem cells, the underlying mechanisms regulating the fate of MICs are largely unknown. Studies designed to explore such communication are urgently needed to enhance our ability to predict the fate decisions of MICs (self-renewal, differentiation, and proliferation). In this study, we developed a novel system to understand the intercellular communication between MICs and their niche by seamlessly integrating experimental data and mathematical model. We first designed dynamic cell culture experiments and collected three types of cells (side population cells, progenitor cells, and mature myeloma cells) under various cultural conditions with flow cytometry. Then we developed a lineage model with ordinary differential equations by considering secreted factors, self-renewal, differentiation, and other biological functions of those cells, to model the cell-cell interactions among the three cell types. Particle swarm optimization was employed to estimate the model parameters by fitting the experimental data to the lineage model. The theoretical results show that the correlation coefficient analysis can reflect the feedback loops among the three cell types, the intercellular feedback signaling can regulate cell population dynamics, and the culture strategies can decide cell growth. This study provides a basic framework of studying cell-cell interactions in regulating MICs fate.
Keywords
biomedical measurement; cancer; cellular biophysics; correlation methods; differential equations; feedback; flow measurement; laser applications in medicine; particle swarm optimisation; tumours; biological functions; cancer initiating cells; cell differentiation; cell fate; cell population dynamics; cell-cell interaction modeling; correlation coefficient analysis; disease recurrence; dynamic cell culture experiments; fate decisions; feedback loops; flow cytometry; intercellular communication; intercellular feedback signaling; lineage model; mathematical model; mature myeloma cells; multiple myeloma regulation; normal stem cells; ordinary differential equations; particle swarm optimization; progenitor cells; secreted factors; self-renewal; side population cells; tumor differentiation; tumor growth; tumor metastasis; Biological system modeling; Cancer; Mathematical model; Microwave integrated circuits; Sociology; Statistics; Stem cells; Cancer initiating cell; lineage model; mathematical modeling; multiple myeloma (MM); parameter estimation;
fLanguage
English
Journal_Title
Biomedical and Health Informatics, IEEE Journal of
Publisher
ieee
ISSN
2168-2194
Type
jour
DOI
10.1109/JBHI.2013.2281774
Filename
6600762
Link To Document