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De novo compartment deconvolution and weight estimation of tumor samples using DECODER

Nature Communications, ISSN: 2041-1723, Vol: 10, Issue: 1, Page: 4729
2019
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Most Recent News

Researchers develop method for separating tissue types in tumor samples

A dense web of tissue can surround pancreatic cancer tumors, impeding treatment and sometimes acting as a barrier to the tumor's spread. Researchers want to distinguish cancerous tissue from the surrounding connective tissue and cells known as stroma as well as from immune cells in the tumor's environment in order to drive personalized treatment strategies.

Article Description

Tumors are mixtures of different compartments. While global gene expression analysis profiles the average expression of all compartments in a sample, identifying the specific contribution of each compartment remains a challenge. With the increasing recognition of the importance of non-neoplastic components, the ability to breakdown the gene expression contribution of each is critical. Here, we develop DECODER, an integrated framework which performs de novo deconvolution and single-sample compartment weight estimation. We use DECODER to deconvolve 33 TCGA tumor RNA-seq data sets and show that it may be applied to other data types including ATAC-seq. We demonstrate that it can be utilized to reproducibly estimate cellular compartment weights in pancreatic cancer that are clinically meaningful. Application of DECODER across cancer types advances the capability of identifying cellular compartments in an unknown sample and may have implications for identifying the tumor of origin for cancers of unknown primary.

Bibliographic Details

Peng, Xianlu Laura; Moffitt, Richard A; Torphy, Robert J; Volmar, Keith E; Yeh, Jen Jen

Springer Science and Business Media LLC

Chemistry; Biochemistry, Genetics and Molecular Biology; Physics and Astronomy

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