Li Junyi, Li Yi-Xue, Li Yuan-Yuan
Key Lab of Computational Biology, CAS-MPG Partner Institute for Computational Biology, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai 200031, China; Shanghai Center for Bioinformation Technology, 1278 Keyuan Road, Shanghai 201203, China.
Key Lab of Computational Biology, CAS-MPG Partner Institute for Computational Biology, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai 200031, China; Shanghai Center for Bioinformation Technology, 1278 Keyuan Road, Shanghai 201203, China; Shanghai Industrial Technology Institute, 1278 Keyuan Road, Shanghai 201203, China; Shanghai Engineering Research Center of Pharmaceutical Translation, 1278 Keyuan Road, Shanghai 201203, China.
Biomed Res Int. 2016;2016:4241293. doi: 10.1155/2016/4241293. Epub 2016 Aug 11.
With rapid development of high-throughput techniques and accumulation of big transcriptomic data, plenty of computational methods and algorithms such as differential analysis and network analysis have been proposed to explore genome-wide gene expression characteristics. These efforts are aiming to transform underlying genomic information into valuable knowledges in biological and medical research fields. Recently, tremendous integrative research methods are dedicated to interpret the development and progress of neoplastic diseases, whereas differential regulatory analysis (DRA) based on gene coexpression network (GCN) increasingly plays a robust complement to regular differential expression analysis in revealing regulatory functions of cancer related genes such as evading growth suppressors and resisting cell death. Differential regulatory analysis based on GCN is prospective and shows its essential role in discovering the system properties of carcinogenesis features. Here we briefly review the paradigm of differential regulatory analysis based on GCN. We also focus on the applications of differential regulatory analysis based on GCN in cancer research and point out that DRA is necessary and extraordinary to reveal underlying molecular mechanism in large-scale carcinogenesis studies.
随着高通量技术的迅速发展和大量转录组数据的积累,人们提出了许多计算方法和算法,如差异分析和网络分析,以探索全基因组的基因表达特征。这些努力旨在将潜在的基因组信息转化为生物和医学研究领域中有价值的知识。最近,大量的综合研究方法致力于解释肿瘤疾病的发生和发展,而基于基因共表达网络(GCN)的差异调控分析(DRA)在揭示癌症相关基因的调控功能(如逃避生长抑制和抵抗细胞死亡)方面,对常规差异表达分析起到了越来越强大的补充作用。基于GCN的差异调控分析具有前瞻性,并在发现致癌特征的系统特性方面发挥着重要作用。在此,我们简要回顾基于GCN的差异调控分析范式。我们还重点关注基于GCN的差异调控分析在癌症研究中的应用,并指出差异调控分析在大规模致癌研究中揭示潜在分子机制是必要且卓越的。