Title
From Phage lambda to human cancer: endogenous molecular-cellular network hypothesis
Abstract
Experimental evidences and theoretical analyses have amply suggested that in cancer genesis and progression genetic information is very important but not the whole. Nevertheless, “cancer as a disease of the genome” is still currently the dominant doctrine. With such a background and based on the fundamental properties of biological systems, a new endogenous molecular-cellular network theory for cancer was recently proposed by us. Similar proposals were also made by others. The new theory attempts to incorporate both genetic and environmental effects into one single framework, with the possibility to give a quantitative and dynamical description. It is asserted that the complex regulatory machinery behind biological processes may be modeled by a nonlinear stochastic dynamical system similar to a noise perturbed Morse-Smale system. Both qualitative and quantitative descriptions may be obtained. The dynamical variables are specified by a set of endogenous molecular-cellular agents and the structure of the dynamical system by the interactions among those biological agents. Here we review this theory from a pedagogical angle which emphasizes the role of modularization, hierarchy and autonomous regulation. We discuss how the core set of assumptions is exemplified in detail in one of the simple, important and well studied model organisms, Phage lambda. With this concrete and quantitative example in hand, we show that the application of the hypothesized theory in human cancer, such as hepatocellular carcinoma (HCC), is plausible, and that it may provide a set of new insights on understanding cancer genesis and progression, and on strategies for cancer prevention, cure, and care.
Year
DOI
Keywords
2013
10.1007/s40484-013-0007-1
Phage Lambda, Intrinsic State, Adaptive Landscape, Regulatory Machinery, Genetic Switch
DocType
Volume
Issue
Journal
1
1
ISSN
Citations 
PageRank 
2095-4697
2
0.42
References 
Authors
4
4
Name
Order
Citations
PageRank
gaowei wang120.42
xiaomei zhu220.42
Leroy Hood316545.56
Ping Ao43810.94