Inferring the perturbed microRNA regulatory networks from gene expression data using a network propagation based method

被引:12
作者
Wang, Ting
Gu, Jin [1 ]
Li, Yanda
机构
[1] Tsinghua Univ, MOE Key Lab Bioinformat, TNLIST Bioinformat Div, Beijing 100084, Peoples R China
来源
BMC BIOINFORMATICS | 2014年 / 15卷
关键词
MicroRNA; Gene regulatory networks; Network analysis; Gene expression; Cancer; HUMAN COLORECTAL-CANCER; TUMOR-GROWTH; TARGET; APOPTOSIS; MIR-145; PROLIFERATION; BIOGENESIS; ACTIVATION; TRANSITION; RESISTANCE;
D O I
10.1186/1471-2105-15-255
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: MicroRNAs (miRNAs) are a class of endogenous small regulatory RNAs. Identifications of the dys-regulated or perturbed miRNAs and their key target genes are important for understanding the regulatory networks associated with the studied cellular processes. Several computational methods have been developed to infer the perturbed miRNA regulatory networks by integrating genome-wide gene expression data and sequence-based miRNA-target predictions. However, most of them only use the expression information of the miRNA direct targets, rarely considering the secondary effects of miRNA perturbation on the global gene regulatory networks. Results: We proposed a network propagation based method to infer the perturbed miRNAs and their key target genes by integrating gene expressions and global gene regulatory network information. The method used random walk with restart in gene regulatory networks to model the network effects of the miRNA perturbation. Then, it evaluated the significance of the correlation between the network effects of the miRNA perturbation and the gene differential expression levels with a forward searching strategy. Results show that our method outperformed several compared methods in rediscovering the experimentally perturbed miRNAs in cancer cell lines. Then, we applied it on a gene expression dataset of colorectal cancer clinical patient samples and inferred the perturbed miRNA regulatory networks of colorectal cancer, including several known oncogenic or tumor-suppressive miRNAs, such as miR-17, miR-26 and miR-145. Conclusions: Our network propagation based method takes advantage of the network effect of the miRNA perturbation on its target genes. It is a useful approach to infer the perturbed miRNAs and their key target genes associated with the studied biological processes using gene expression data.
引用
收藏
页数:13
相关论文
共 50 条
[21]   Inferring Gene Regulatory Networks of Metabolic Enzymes Using Gradient Boosted Trees [J].
Zhang, Yi ;
Zhang, Xiaofei ;
Lane, Andrew N. ;
Fan, Teresa W-M ;
Liu, Jinze .
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2020, 24 (05) :1528-1536
[22]   Data integration for inferring context-specific gene regulatory networks [J].
Baur, Brittany ;
Shin, Junha ;
Zhang, Shilu ;
Roy, Sushmita .
CURRENT OPINION IN SYSTEMS BIOLOGY, 2020, 23 :38-46
[23]   Using gene expression programming to infer gene regulatory networks from time-series data [J].
Zhang, Yongqing ;
Pu, Yifei ;
Zhang, Haisen ;
Su, Yabo ;
Zhang, Lifang ;
Zhou, Jiliu .
COMPUTATIONAL BIOLOGY AND CHEMISTRY, 2013, 47 :198-206
[24]   ARMADA: Using motif activity dynamics to infer gene regulatory networks from gene expression data [J].
Pemberton-Ross, Peter J. ;
Pachkov, Mikhail ;
van Nimwegen, Erik .
METHODS, 2015, 85 :62-74
[25]   Dynamic Bayesian networks in molecular plant science: inferring gene regulatory networks from multiple gene expression time series [J].
Dondelinger, Frank ;
Husmeier, Dirk ;
Lebre, Sophie .
EUPHYTICA, 2012, 183 (03) :361-377
[26]   Dynamic Bayesian networks in molecular plant science: inferring gene regulatory networks from multiple gene expression time series [J].
Frank Dondelinger ;
Dirk Husmeier ;
Sophie Lèbre .
Euphytica, 2012, 183 :361-377
[27]   Extensive evaluation of the generalized relevance network approach to inferring gene regulatory networks [J].
Kuzmanovski, Vladimir ;
Todorovski, Ljupco ;
Dzeroski, Saso .
GIGASCIENCE, 2018, 7 (11) :1-22
[28]   A Novel Method of Gene Regulatory Network Structure Inference from Gene Knock-Out Expression Data [J].
Xiang Chen ;
Min Li ;
Ruiqing Zheng ;
Siyu Zhao ;
Jianxin Wang ;
Fang-Xiang Wu ;
Yaohang Li .
Tsinghua Science and Technology, 2019, (04) :446-454
[29]   A Novel Method of Gene Regulatory Network Structure Inference from Gene Knock-Out Expression Data [J].
Chen, Xiang ;
Li, Min ;
Zheng, Ruiqing ;
Zhao, Siyu ;
Wu, Fang-Xiang ;
Li, Yaohang ;
Wang, Jianxin .
TSINGHUA SCIENCE AND TECHNOLOGY, 2019, 24 (04) :446-455
[30]   Investigating the Effects of Imputation Methods for Modelling Gene Networks Using a Dynamic Bayesian Network from Gene Expression Data [J].
Chai, Lian En ;
Law, Chow Kuan ;
Mohamad, Mohd Saberi ;
Chong, Chuii Khim ;
Choon, Yee Wen ;
Deris, Safaai ;
Illias, Rosli Md .
MALAYSIAN JOURNAL OF MEDICAL SCIENCES, 2014, 21 (02) :20-27