Abstract Cell-type composition is an important indicator of health. We present Guided Topic Model for deconvolution (GTM-decon) to automatically infer cell-type-specific gene topic distributions from single-cell RNA-seq data for deconvolving bulk transcriptomes. GTM-decon performs competitively on deconvolving simulated and real bulk data compared with the state-of-the-art methods. Moreover, as demonstrated in deconvolving disease transcriptomes, GTM-decon can infer multiple cell-type-specific gene topic distributions per cell type, which captures sub-cell-type variations. GTM-decon can also use phenotype labels from single-cell or bulk data to infer phenotype-specific gene distributions. In a nested-guided design, GTM-decon identified cell...
Sample-wise deconvolution methods estimate cell-type proportions and gene expressions in bulk-tissue...
Cell deconvolution methods have emerged in recent years as relevant bioinformatics approaches for pr...
Bulk tissue samples examined by gene expression studies are usually heterogeneous. The data gained f...
This package contains the source code for GTM-decon, a method for sub-cell-type deconvolution and di...
Expression levels of biological samples are affected by the intrinsic heterogeneity of cells and tis...
Gene expression analyses of bulk tissues often ignore cell type composition as an important confound...
Many computational methods to infer proportions of individual cell types from bulk transcriptomics d...
Many computational methods have been developed to infer cell type proportions from bulk transcriptom...
Computational deconvolution is a time and cost-efficient approach to obtain cell type-specific infor...
Abstract Deconvolution of RNA sequencing data is a computational method used to estimate the relativ...
The developments of sequencing technologies in the past two decades have enabled exciting findings a...
Quantifying cell-type proportions and their corresponding gene expression profiles in tissue samples...
Background and aims of study: Glioblastoma multiforme is the most malignant primary brain cancer. Im...
The cell type composition of heterogeneous tissue samples can be a critical variable in both clinica...
Cell type deconvolution is a computational approach to infer proportions of individual cell types fr...
Sample-wise deconvolution methods estimate cell-type proportions and gene expressions in bulk-tissue...
Cell deconvolution methods have emerged in recent years as relevant bioinformatics approaches for pr...
Bulk tissue samples examined by gene expression studies are usually heterogeneous. The data gained f...
This package contains the source code for GTM-decon, a method for sub-cell-type deconvolution and di...
Expression levels of biological samples are affected by the intrinsic heterogeneity of cells and tis...
Gene expression analyses of bulk tissues often ignore cell type composition as an important confound...
Many computational methods to infer proportions of individual cell types from bulk transcriptomics d...
Many computational methods have been developed to infer cell type proportions from bulk transcriptom...
Computational deconvolution is a time and cost-efficient approach to obtain cell type-specific infor...
Abstract Deconvolution of RNA sequencing data is a computational method used to estimate the relativ...
The developments of sequencing technologies in the past two decades have enabled exciting findings a...
Quantifying cell-type proportions and their corresponding gene expression profiles in tissue samples...
Background and aims of study: Glioblastoma multiforme is the most malignant primary brain cancer. Im...
The cell type composition of heterogeneous tissue samples can be a critical variable in both clinica...
Cell type deconvolution is a computational approach to infer proportions of individual cell types fr...
Sample-wise deconvolution methods estimate cell-type proportions and gene expressions in bulk-tissue...
Cell deconvolution methods have emerged in recent years as relevant bioinformatics approaches for pr...
Bulk tissue samples examined by gene expression studies are usually heterogeneous. The data gained f...