International audienceBackground - Quantification of tumor heterogeneity is essential to better understand cancer progression and to adapt therapeutic treatments to patient specificities. Bioinformatic tools to assess the different cell populations from single-omic datasets as bulk transcriptome or methylome samples have been recently developed, including reference-based and reference-free methods. Improved methods using multi-omic datasets are yet to be developed in the future and the community would need systematic tools to perform a comparative evaluation of these algorithms on controlled data. Results - We present DECONbench, a standardized unbiased benchmarking resource, applied to the evaluation of computational methods quantifying c...
Motivation: DNA methylation aberrations are common in many cancer types. A major challenge hindering...
Summary: Transcriptome deconvolution in cancer and other heterogeneous tissues remains challenging. ...
Motivation: Tissue samples of both tumor cells mixed with stromal cells cause underdetection of gene...
International audienceBackground - Quantification of tumor heterogeneity is essential to better unde...
Quantification of tumor heterogeneity is essential to better understand cancer progression and to ad...
Expression levels of biological samples are affected by the intrinsic heterogeneity of cells and tis...
Deciphering cell type heterogeneity is crucial for systematically understanding tissue homeostasis a...
Cell deconvolution methods have emerged in recent years as relevant bioinformatics approaches for pr...
We performed systematic assessment of computational deconvolution methods that play an important rol...
Abstract Background Towards discovering robust cancer biomarkers, it is imperative to unravel the ce...
Various computational approaches have been developed for estimating the relative abundance of differ...
The developments of sequencing technologies in the past two decades have enabled exciting findings a...
Tumor tissue samples comprise a mixture of cancerous and surrounding normal cells. Investigating cel...
Many computational methods to infer proportions of individual cell types from bulk transcriptomics d...
Quantifying cell-type proportions and their corresponding gene expression profiles in tissue samples...
Motivation: DNA methylation aberrations are common in many cancer types. A major challenge hindering...
Summary: Transcriptome deconvolution in cancer and other heterogeneous tissues remains challenging. ...
Motivation: Tissue samples of both tumor cells mixed with stromal cells cause underdetection of gene...
International audienceBackground - Quantification of tumor heterogeneity is essential to better unde...
Quantification of tumor heterogeneity is essential to better understand cancer progression and to ad...
Expression levels of biological samples are affected by the intrinsic heterogeneity of cells and tis...
Deciphering cell type heterogeneity is crucial for systematically understanding tissue homeostasis a...
Cell deconvolution methods have emerged in recent years as relevant bioinformatics approaches for pr...
We performed systematic assessment of computational deconvolution methods that play an important rol...
Abstract Background Towards discovering robust cancer biomarkers, it is imperative to unravel the ce...
Various computational approaches have been developed for estimating the relative abundance of differ...
The developments of sequencing technologies in the past two decades have enabled exciting findings a...
Tumor tissue samples comprise a mixture of cancerous and surrounding normal cells. Investigating cel...
Many computational methods to infer proportions of individual cell types from bulk transcriptomics d...
Quantifying cell-type proportions and their corresponding gene expression profiles in tissue samples...
Motivation: DNA methylation aberrations are common in many cancer types. A major challenge hindering...
Summary: Transcriptome deconvolution in cancer and other heterogeneous tissues remains challenging. ...
Motivation: Tissue samples of both tumor cells mixed with stromal cells cause underdetection of gene...