Network information improves cancer outcome prediction

被引:22
作者
Roy, Janine [1 ]
Winter, Christof [2 ]
Isik, Zerrin [3 ]
Schroeder, Michael [4 ]
机构
[1] Tech Univ Dresden, Dept Informat, D-01307 Dresden, Germany
[2] Tech Univ Dresden, Grp Michael Schroeder, D-01307 Dresden, Germany
[3] Middle E Tech Univ, TR-06531 Ankara, Turkey
[4] Tech Univ Dresden, Bioinformat Dept, D-01307 Dresden, Germany
关键词
network-based; outcome prediction; gene expression; PageRank; cancer biomarker; GENE-EXPRESSION SIGNATURE; DYSREGULATED SUBNETWORKS; SQUAMOUS-CELL; GROWTH-FACTOR; METASTASIS; SURVIVAL; PROFILE; SP1; IDENTIFICATION; PROGRESSION;
D O I
10.1093/bib/bbs083
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Disease progression in cancer can vary substantially between patients. Yet, patients often receive the same treatment. Recently, there has been much work on predicting disease progression and patient outcome variables from gene expression in order to personalize treatment options. Despite first diagnostic kits in the market, there are open problems such as the choice of random gene signatures or noisy expression data. One approach to deal with these two problems employs protein-protein interaction networks and ranks genes using the random surfer model of Google's PageRank algorithm. In this work, we created a benchmark dataset collection comprising 25 cancer outcome prediction datasets from literature and systematically evaluated the use of networks and a PageRank derivative, NetRank, for signature identification. We show that the NetRank performs significantly better than classical methods such as fold change or t-test. Despite an order of magnitude difference in network size, a regulatory and protein-protein interaction network perform equally well. Experimental evaluation on cancer outcome prediction in all of the 25 underlying datasets suggests that the network-based methodology identifies highly overlapping signatures over all cancer types, in contrast to classical methods that fail to identify highly common gene sets across the same cancer types. Integration of network information into gene expression analysis allows the identification of more reliable and accurate biomarkers and provides a deeper understanding of processes occurring in cancer development and progression.
引用
收藏
页码:612 / 625
页数:14
相关论文
共 69 条
[1]   Small inhibitory RNA duplexes for Sp1 mRNA block basal and estrogen-induced gene expression and cell cycle progression in MCF-7 breast cancer cells [J].
Abdelrahim, M ;
Samudio, I ;
Smith, R ;
Burghardt, R ;
Safe, S .
JOURNAL OF BIOLOGICAL CHEMISTRY, 2002, 277 (32) :28815-28822
[2]  
Ancha B, 2011, PLOS ONE, V6
[3]  
[Anonymous], 1998, P 7 INT WORLD WID WE
[4]  
[Anonymous], 2000, Pattern Classification
[5]   Gene expression signatures predictive of early response and outcome in high-risk childhood acute lymphoblastic leukemia: A Children's oncology group study on behalf of the Dutch Childhood Oncology Group and the German Cooperative Study Group for childhood acute lymphoblastic leukemia [J].
Bhojwani, Deepa ;
Kang, Huining ;
Menezes, Renee X. ;
Yang, Wenjian ;
Sather, Harland ;
Moskowitz, Naomi P. ;
Min, Dong-Joon ;
Potter, Jeffrey W. ;
Harvey, Richard ;
Hunger, Stephen P. ;
Seibel, Nita ;
Raetz, Elizabeth A. ;
Pieters, Rob ;
Horstmann, Martin A. ;
Relling, Mary V. ;
den Boer, Monique L. ;
Willman, Cheryl L. ;
Carroll, William L. .
JOURNAL OF CLINICAL ONCOLOGY, 2008, 26 (27) :4376-4384
[6]   Immune profile and mitotic index of metastatic melanoma lesions enhance clinical staging in predicting patient survival [J].
Bogunovic, Dusan ;
O'Neill, David W. ;
Belitskaya-Levy, Ilana ;
Vacic, Vladimir ;
Yu, Yi-Lo ;
Adams, Sylvia ;
Darvishian, Farbod ;
Berman, Russell ;
Shapiro, Richard ;
Pavlick, Anna C. ;
Lonardi, Stefano ;
Zavadil, Jiri ;
Osman, Iman ;
Bhardwaj, Nina .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2009, 106 (48) :20429-20434
[7]   Identifying cancer biomarkers by network-constrained support vector machines [J].
Chen, Li ;
Xuan, Jianhua ;
Riggins, Rebecca B. ;
Clarke, Robert ;
Wang, Yue .
BMC SYSTEMS BIOLOGY, 2011, 5
[8]   Betulinic acid inhibits prostate cancer growth through inhibition of specificity protein transcription factors [J].
Chintharlapalli, Sudhakar ;
Papineni, Sabitha ;
Ramaiah, Shashi K. ;
Safe, Stephen .
CANCER RESEARCH, 2007, 67 (06) :2816-2823
[9]   Subnetwork State Functions Define Dysregulated Subnetworks in Cancer [J].
Chowdhury, Salim A. ;
Nibbe, Rod K. ;
Chance, Mark R. ;
Koyutuerk, Mehmet .
JOURNAL OF COMPUTATIONAL BIOLOGY, 2011, 18 (03) :263-281
[10]  
Chowdhury SA, 2010, BIOCOMPUT-PAC SYM, P133