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Stochastic model of yeast cell-cycle network

✍ Scribed by Yuping Zhang; Minping Qian; Qi Ouyang; Minghua Deng; Fangting Li; Chao Tang


Publisher
Elsevier Science
Year
2006
Tongue
English
Weight
446 KB
Volume
219
Category
Article
ISSN
0167-2789

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✦ Synopsis


Biological functions in living cells are controlled by protein interaction and genetic networks. These molecular networks should be dynamically stable against various fluctuations which are inevitable in the living world. In this paper, we propose and study a stochastic model for the network regulating the cell cycle of the budding yeast. The stochasticity in the model is controlled by a temperature-like parameter Ξ². Our simulation results show that both the biological stationary state and the biological pathway are stable for a wide range of "temperature". There is, however, a sharp transition-like behavior at Ξ² c , below which the dynamics are dominated by noise. We also define a pseudo energy landscape for the system in which the biological pathway can be seen as a deep valley.


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