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      NExUS: Bayesian simultaneous network estimation across unequal sample sizes

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          Abstract

          Network-based analyses of high-throughput genomics data provide a holistic, systems-level understanding of various biological mechanisms for a common population. However, when estimating multiple networks across heterogeneous sub-populations, varying sample sizes pose a challenge in the estimation and inference, as network differences may be driven by differences in power. We are particularly interested in addressing this challenge in the context of proteomic networks for related cancers, as the number of subjects available for rare cancer (sub-)types is often limited. We develop NExUS (Network Estimation across Unequal Sample sizes), a Bayesian method that enables joint learning of multiple networks while avoiding artefactual relationship between sample size and network sparsity. We demonstrate through simulations that NExUS outperforms existing network estimation methods in this context, and apply it to learn network similarity and shared pathway activity for groups of cancers with related origins represented in The Cancer Genome Atlas (TCGA) proteomic data.

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          Author and article information

          Journal
          06 November 2018
          Article
          1811.05405
          ec3c4823-ab57-4166-a34b-01ce2b3cfb4b

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          8 pages, 8 figues
          stat.AP stat.ME

          Applications,Methodology
          Applications, Methodology

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