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Can specific transcriptional regulators assemble a Universal Cancer Signature

Authors :
Michael Schroeder
Zerrin Isik
Janine Roy
Christian Pilarsky
Publication Year :
2013

Abstract

Recently, there is a lot of interest in using biomarker signatures derived from gene expression data to predict cancer progression. We assembled signatures of 25 published datasets covering 13 types of cancers. How do these signatures compare with each other? On one hand signatures answering the same biological question should overlap, whereas signatures predicting different cancer types should differ. On the other hand, there could also be a Universal Cancer Signature that is predictive independently of the cancer type. Initially, we generate signatures for all datasets using classical approaches such as t-test and fold change and then, we explore signatures resulting from a network-based method, that applies the random surfer model of Google's PageRank algorithm. We show that the signatures as published by the authors and the signatures generated with classical methods do not overlap - not even for the same cancer type - whereas the network-based signatures strongly overlap. Selecting 10 out of 37 unive...

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....2dc6091c9f9a373ca0c90c82b30d8866