用计算程序鉴定后藤- kakizaki大鼠糖尿病进展的主要调节因子候选物

Shigeru Saito, Yidan Sun, Zhiping Liu, Yong Wang, Xiao Han, Huarong Zhou, Luonan Chen, K. Horimoto
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引用次数: 1

摘要

最近,我们通过网络筛选确定了39个Goto-Kakizaki (GK)大鼠糖尿病进展的活性调节网络候选,这与之前关于转录因子(tf)与其调节基因之间的调节关系的认识是一致的。此外,我们还开发了一种计算程序,用于识别与特殊生物现象(如疾病)相关的转录主调控因子(MRs),并结合网络筛选和推断。在这里,我们应用我们的程序来识别GK大鼠糖尿病进展的MR候选物。首先,考虑到tf具有特异性和覆盖性,通过网络筛选和网络推理,检测GK大鼠体内三个时期的tf基因活性关系,最终仅鉴定出5个tf作为MRs候选物,数量有限的MRs候选物承诺进行实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of master regulator candidates for diabetes progression in Goto-Kakizaki Rat by a computational procedure
Recently, we have identified 39 candidates of active regulatory networks for the diabetes progression in Goto-Kakizaki (GK) rat by using the network screening, which were well consistent with the previous knowledge of regulatory relationship between transcription factors (TFs) and their regulated genes. In addition, we have developed a computational procedure for identifying transcriptional master regulators (MRs) related to special biological phenomena, such as diseases, in conjunction of the network screening and inference. Here, we apply our procedure to identify the MR candidates for diabetes progression in GK rat. First, active TF-gene relationships for three periods in GK rat were detected by the network screening and the network inference, in consideration of TFs with specificity and coverage, and finally only 5 TFs were identified as the candidates of MRs. The limited number of the candidates of MRs promises to perform experiments to verify them.
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