Sasai Masaki, Wolynes Peter G
Graduate School of Human Informatics, Nagoya University, Nagoya 464-8601, Japan.
Proc Natl Acad Sci U S A. 2003 Mar 4;100(5):2374-9. doi: 10.1073/pnas.2627987100. Epub 2003 Feb 26.
Gene expression has a stochastic component because of the single-molecule nature of the gene and the small number of copies of individual DNA-binding proteins in the cell. We show how the statistics of such systems can be mapped onto quantum many-body problems. The dynamics of a single gene switch resembles the spin-boson model of a two-site polaron or an electron transfer reaction. Networks of switches can be approximately described as quantum spin systems by using an appropriate variational principle. In this way, the concept of frustration for magnetic systems can be taken over into gene networks. The landscape of stable attractors depends on the degree and style of frustration, much as for neural networks. We show the number of attractors, which may represent cell types, is much smaller for appropriately designed weakly frustrated stochastic networks than for randomly connected networks.
由于基因的单分子性质以及细胞中单个DNA结合蛋白的拷贝数较少,基因表达具有随机成分。我们展示了如何将此类系统的统计特性映射到量子多体问题上。单个基因开关的动力学类似于双位点极化子的自旋玻色子模型或电子转移反应。通过使用适当的变分原理,开关网络可以近似地描述为量子自旋系统。这样,磁系统的受挫概念就可以引入基因网络。稳定吸引子的格局取决于受挫的程度和方式,这与神经网络非常相似。我们表明,对于适当设计的弱受挫随机网络,可能代表细胞类型的吸引子数量比随机连接的网络要少得多。