Energy Landscape Reveals That the Budding Yeast Cell Cycle Is a Robust and Adaptive Multi-stage Process

نویسندگان

  • Cheng Lv
  • Xiaoguang Li
  • Fangting Li
  • Tiejun Li
چکیده

Quantitatively understanding the robustness, adaptivity and efficiency of cell cycle dynamics under the influence of noise is a fundamental but difficult question to answer for most eukaryotic organisms. Using a simplified budding yeast cell cycle model perturbed by intrinsic noise, we systematically explore these issues from an energy landscape point of view by constructing an energy landscape for the considered system based on large deviation theory. Analysis shows that the cell cycle trajectory is sharply confined by the ambient energy barrier, and the landscape along this trajectory exhibits a generally flat shape. We explain the evolution of the system on this flat path by incorporating its non-gradient nature. Furthermore, we illustrate how this global landscape changes in response to external signals, observing a nice transformation of the landscapes as the excitable system approaches a limit cycle system when nutrients are sufficient, as well as the formation of additional energy wells when the DNA replication checkpoint is activated. By taking into account the finite volume effect, we find additional pits along the flat cycle path in the landscape associated with the checkpoint mechanism of the cell cycle. The difference between the landscapes induced by intrinsic and extrinsic noise is also discussed. In our opinion, this meticulous structure of the energy landscape for our simplified model is of general interest to other cell cycle dynamics, and the proposed methods can be applied to study similar biological systems.

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Text S1 Energy landscape reveals that the budding yeast cell cycle is a robust and adaptive multi-stage process Supporting Information

I. The three-node Budding Yeast Cell Cycle Model II. Stochastic Model III. Large Deviation Theory and the Hamiltonian IV. Overview of the Construction of the Landscape V. Introduction of the gMAM V-A. The Outer Loop V-B. Evaluating the Action V-C. The Inner Loop VI. Construction of the Quasi-potential energy landscape VI-A. Landscape with One Stable State VI-B. Landscape with Two Stable States ...

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عنوان ژورنال:

دوره 11  شماره 

صفحات  -

تاریخ انتشار 2015