BACKGROUND: For heterogeneous tissues, such as blood, measurements of gene expression are confounded by relative proportions of cell types involved. Conclusions have to rely on estimation of gene expression signals for homogeneous cell populations, e.g. by applying micro-dissection, fluorescence activated cell sorting, or in-silico deconfounding. We studied feasibility and validity of a non-negative matrix decomposition algorithm using experimental gene expression data for blood and sorted cells from the same donor samples. Our objective was to optimize the algorithm regarding detection of differentially expressed genes and to enable its use for classification in the difficult scenario of reversely regulated genes. This would be of importan...
Abstract Background Towards discovering robust cancer biomarkers, it is imperative to unravel the ce...
Summary: For heterogeneous tissues, measurements of gene expression through mRNA-Seq data are confou...
The cellular composition of heterogeneous samples can be predicted using an expression deconvolution...
Abstract Background For heterogeneous tissues, such as blood, measurements of gene expression are co...
Background: For heterogeneous tissues, such as blood, measurements of gene expression are confounded...
Bulk tissue samples examined by gene expression studies are usually heterogeneous. The data gained f...
<div><p>Bulk tissue samples examined by gene expression studies are usually heterogeneous. The data ...
Gene expression analyses of bulk tissues often ignore cell type composition as an important confound...
Expression levels of biological samples are affected by the intrinsic heterogeneity of cells and tis...
Quantifying cell-type proportions and their corresponding gene expression profiles in tissue samples...
Deconvolution of heterogeneous bulk tumor samples into distinct cellular populations is an important...
Tumor tissue samples comprise a mixture of cancerous and surrounding normal cells. Investigating cel...
Deconvolution methods reveal individual cell types in complex tissues profiled by bulk methods. Here...
Computational deconvolution is a time and cost-efficient approach to obtain cell type-specific infor...
Complexity of cell-type composition has created much skepticism surrounding the interpretation of bu...
Abstract Background Towards discovering robust cancer biomarkers, it is imperative to unravel the ce...
Summary: For heterogeneous tissues, measurements of gene expression through mRNA-Seq data are confou...
The cellular composition of heterogeneous samples can be predicted using an expression deconvolution...
Abstract Background For heterogeneous tissues, such as blood, measurements of gene expression are co...
Background: For heterogeneous tissues, such as blood, measurements of gene expression are confounded...
Bulk tissue samples examined by gene expression studies are usually heterogeneous. The data gained f...
<div><p>Bulk tissue samples examined by gene expression studies are usually heterogeneous. The data ...
Gene expression analyses of bulk tissues often ignore cell type composition as an important confound...
Expression levels of biological samples are affected by the intrinsic heterogeneity of cells and tis...
Quantifying cell-type proportions and their corresponding gene expression profiles in tissue samples...
Deconvolution of heterogeneous bulk tumor samples into distinct cellular populations is an important...
Tumor tissue samples comprise a mixture of cancerous and surrounding normal cells. Investigating cel...
Deconvolution methods reveal individual cell types in complex tissues profiled by bulk methods. Here...
Computational deconvolution is a time and cost-efficient approach to obtain cell type-specific infor...
Complexity of cell-type composition has created much skepticism surrounding the interpretation of bu...
Abstract Background Towards discovering robust cancer biomarkers, it is imperative to unravel the ce...
Summary: For heterogeneous tissues, measurements of gene expression through mRNA-Seq data are confou...
The cellular composition of heterogeneous samples can be predicted using an expression deconvolution...