Gormley Michael, Akella Viswanadha U, Quong Judy N, Quong Andrew A
Department of Cancer Biology, Kimmel Cancer Center, Thomas Jefferson University, Bluemle Life Sciences Building, 233 S. 10th Street, Philadelphia, PA 19107, USA.
Adv Bioinformatics. 2011;2011:608295. doi: 10.1155/2011/608295. Epub 2011 Nov 29.
Identification of regulatory molecules in signaling pathways is critical for understanding cellular behavior. Given the complexity of the transcriptional gene network, the relationship between molecular expression and phenotype is difficult to determine using reductionist experimental methods. Computational models provide the means to characterize regulatory mechanisms and predict phenotype in the context of gene networks. Integrating gene expression data with phenotypic data in transcriptional network models enables systematic identification of critical molecules in a biological network. We developed an approach based on fuzzy logic to model cell budding in Saccharomyces cerevisiae using time series expression microarray data of the cell cycle. Cell budding is a phenotype of viable cells undergoing division. Predicted interactions between gene expression and phenotype reflected known biological relationships. Dynamic simulation analysis reproduced the behavior of the yeast cell cycle and accurately identified genes and interactions which are essential for cell viability.
识别信号通路中的调控分子对于理解细胞行为至关重要。鉴于转录基因网络的复杂性,使用简化实验方法难以确定分子表达与表型之间的关系。计算模型提供了在基因网络背景下表征调控机制和预测表型的手段。将基因表达数据与转录网络模型中的表型数据相结合,能够系统地识别生物网络中的关键分子。我们基于模糊逻辑开发了一种方法,利用细胞周期的时间序列表达微阵列数据对酿酒酵母中的细胞出芽进行建模。细胞出芽是正在进行分裂的活细胞的一种表型。基因表达与表型之间预测的相互作用反映了已知的生物学关系。动态模拟分析重现了酵母细胞周期的行为,并准确识别了对细胞活力至关重要的基因和相互作用。