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首页> 外文期刊>PLoS Computational Biology >Cell cycle time series gene expression data encoded as cyclic attractors in Hopfield systems
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Cell cycle time series gene expression data encoded as cyclic attractors in Hopfield systems

机译:Hopfield系统中编码为循环吸引子的细胞周期时间序列基因表达数据

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Modern time series gene expression and other omics data sets have enabled unprecedented resolution of the dynamics of cellular processes such as cell cycle and response to pharmaceutical compounds. In anticipation of the proliferation of time series data sets in the near future, we use the Hopfield model, a recurrent neural network based on spin glasses, to model the dynamics of cell cycle in HeLa (human cervical cancer) and S. cerevisiae cells. We study some of the rich dynamical properties of these cyclic Hopfield systems, including the ability of populations of simulated cells to recreate experimental expression data and the effects of noise on the dynamics. Next, we use a genetic algorithm to identify sets of genes which, when selectively inhibited by local external fields representing gene silencing compounds such as kinase inhibitors, disrupt the encoded cell cycle. We find, for example, that inhibiting the set of four kinases AURKB, NEK1, TTK, and WEE1 causes simulated HeLa cells to accumulate in the M phase. Finally, we suggest possible improvements and extensions to our model.
机译:现代时间序列基因表达和其他组学数据集实现了前所未有的细胞过程动力学解析,例如细胞周期和对药物化合物的反应。预期在不久的将来会有时间序列数据集的激增,我们使用Hopfield模型(一种基于自旋眼镜的循环神经网络)对HeLa(人宫颈癌)和酿酒酵母细胞的细胞周期动力学进行建模。我们研究了这些循环Hopfield系统的一些丰富的动力学特性,包括模拟细胞群体重建实验表达数据的能力以及噪声对动力学的影响。接下来,我们使用一种遗传算法来识别基因集,这些基因集在被代表基因沉默化合物(例如激酶抑制剂)的局部外部区域选择性抑制时,会破坏编码的细胞周期。例如,我们发现抑制四种激酶AURKB,NEK1,TTK和WEE1的集合会导致模拟的HeLa细胞积聚在M期。最后,我们建议对模型进行可能的改进和扩展。

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