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Journal ArticleDOI

A General Framework for Weighted Gene Co-Expression Network Analysis

TLDR
A general framework for `soft' thresholding that assigns a connection weight to each gene pair is described and several node connectivity measures are introduced and provided empirical evidence that they can be important for predicting the biological significance of a gene.
Abstract
Gene co-expression networks are increasingly used to explore the system-level functionality of genes. The network construction is conceptually straightforward: nodes represent genes and nodes are connected if the corresponding genes are significantly co-expressed across appropriately chosen tissue samples. In reality, it is tricky to define the connections between the nodes in such networks. An important question is whether it is biologically meaningful to encode gene co-expression using binary information (connected=1, unconnected=0). We describe a general framework for ;soft' thresholding that assigns a connection weight to each gene pair. This leads us to define the notion of a weighted gene co-expression network. For soft thresholding we propose several adjacency functions that convert the co-expression measure to a connection weight. For determining the parameters of the adjacency function, we propose a biologically motivated criterion (referred to as the scale-free topology criterion). We generalize the following important network concepts to the case of weighted networks. First, we introduce several node connectivity measures and provide empirical evidence that they can be important for predicting the biological significance of a gene. Second, we provide theoretical and empirical evidence that the ;weighted' topological overlap measure (used to define gene modules) leads to more cohesive modules than its ;unweighted' counterpart. Third, we generalize the clustering coefficient to weighted networks. Unlike the unweighted clustering coefficient, the weighted clustering coefficient is not inversely related to the connectivity. We provide a model that shows how an inverse relationship between clustering coefficient and connectivity arises from hard thresholding. We apply our methods to simulated data, a cancer microarray data set, and a yeast microarray data set.

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Citations
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Journal ArticleDOI

Convergent eusocial evolution is based on a shared reproductive groundplan plus lineage-specific plastic genes

TL;DR: Investigation of the amount of shared vs. lineage-specific genes involved in the evolution of caste in pharaoh ants and honey bees by comparing transcriptomes across tissues, developmental stages, and castes indicates that the recruitment of both highly conserved and lineage- specific genes underlie the convergent evolution of novel traits such as eusociality.
Journal ArticleDOI

Identification of a gene module associated with BMD through the integration of network analysis and genome‐wide association data

TL;DR: This study highlights the advantages of systems‐level analyses to uncover coexpression modules associated with bone mass and suggests that particular monocyte expression patterns may mediate differences in BMD.
Journal ArticleDOI

Fast hierarchy construction for dense subgraphs

TL;DR: Efficient and generic algorithms to construct the hierarchy of dense subgraphs for k-core, k-truss, or any nucleus decomposition are proposed and outperform the hypothetical limits of any possible traversal-based solution.
Journal ArticleDOI

Network-based approach to identify prognostic biomarkers for estrogen receptor–positive breast cancer treatment with tamoxifen

TL;DR: Results indicated that a network-based approach may facilitate the discovery of biomarkers for the prognosis of ER+ breast cancer and may also be used as a basis for establishing personalized therapies.
Journal ArticleDOI

Inferring causal genomic alterations in breast cancer using gene expression data

TL;DR: This is the first effort to systematically identify and validate drivers for expression based CNV regions in breast cancer and develops a framework for identifying recurrent regions of CNV and distinguishing the cancer driver genes from the passenger genes in the regions.
References
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Journal ArticleDOI

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Finding Groups in Data: An Introduction to Cluster Analysis

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Journal ArticleDOI

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