Increased entropy of signal transduction in the cancer metastasis phenotype
Andrew Teschendorff, Simone Severini

TL;DR
This study introduces an entropy measure to quantify the randomness in gene expression networks, revealing increased entropy in metastatic breast cancer and identifying related genes and pathways.
Contribution
It presents a novel entropy-based approach to distinguish metastatic from non-metastatic breast cancer using gene expression and protein interaction data.
Findings
Metastatic breast cancers show higher local entropy in gene expression networks.
Local entropy better characterizes metastasis than other measures.
Entropy increases help identify metastasis-related genes and pathways.
Abstract
Studies into the statistical properties of biological networks have led to important biological insights, such as the presence of hubs and hierarchical modularity. There is also a growing interest in studying the statistical properties of networks in the context of cancer genomics. However, relatively little is known as to what network features differ between the cancer and normal cell physiologies, or between different cancer cell phenotypes. Based on the observation that frequent genomic alterations underlie a more aggressive cancer phenotype, we asked if such an effect could be detectable as an increase in the randomness of local gene expression patterns. Using a breast cancer gene expression data set and a model network of protein interactions we derive constrained weighted networks defined by a stochastic information flux matrix reflecting expression correlations between…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Gene Regulatory Network Analysis · Gene expression and cancer classification
