High-throughput gene expression data are often obtained from pure or complex (heterogeneous) biological samples. In the latter case, data obtained are a mixture of different cell types and the heterogeneity imposes some difficulties in the analysis of such data. In order to make conclusions on gene expresssion data obtained from heterogeneous samples, methods such as microdissection and flow cytometry have been employed to physically separate the constituting cell types. However, these manual approaches are time consuming when measuring the responses of multiple cell types simultaneously. In addition, exposed samples, on many occasions, end up being contaminated with external perturbations and this may result in an altered yield of molecula...
Abstract Background This paper introduces a new const...
Background: Methods of microarray analysis that suit experimentalists using the technology are vital...
Next-generation sequencing technologies provide a revolutionary tool for generating gene expres-sion...
<div><p>High-throughput gene expression data are often obtained from pure or complex (heterogeneous)...
Tumor tissue samples comprise a mixture of cancerous and surrounding normal cells. Investigating cel...
Analysis of gene expression is one of the main research areas of bioinformatics. The advances in mol...
Background: For heterogeneous tissues, such as blood, measurements of gene expression are confounded...
Gene expression microarrays are powerful tools for global comparison and estimation of gene expressi...
Deconvolution methods reveal individual cell types in complex tissues profiled by bulk methods. Here...
In this paper we define a hierarchical Bayesian model for microarray expression data collected from ...
In this paper we define a hierarchical Bayesian model for microarray expression data collected fro...
Abstract-I Background: Heterogeneous cell populations have previously been described as noisy. Howev...
Gene expression microarrays have become powerful tools in many areas of biological and biomedical re...
BACKGROUND: For heterogeneous tissues, such as blood, measurements of gene expression are confounded...
Computational deconvolution is a time and cost-efficient approach to obtain cell type-specific infor...
Abstract Background This paper introduces a new const...
Background: Methods of microarray analysis that suit experimentalists using the technology are vital...
Next-generation sequencing technologies provide a revolutionary tool for generating gene expres-sion...
<div><p>High-throughput gene expression data are often obtained from pure or complex (heterogeneous)...
Tumor tissue samples comprise a mixture of cancerous and surrounding normal cells. Investigating cel...
Analysis of gene expression is one of the main research areas of bioinformatics. The advances in mol...
Background: For heterogeneous tissues, such as blood, measurements of gene expression are confounded...
Gene expression microarrays are powerful tools for global comparison and estimation of gene expressi...
Deconvolution methods reveal individual cell types in complex tissues profiled by bulk methods. Here...
In this paper we define a hierarchical Bayesian model for microarray expression data collected from ...
In this paper we define a hierarchical Bayesian model for microarray expression data collected fro...
Abstract-I Background: Heterogeneous cell populations have previously been described as noisy. Howev...
Gene expression microarrays have become powerful tools in many areas of biological and biomedical re...
BACKGROUND: For heterogeneous tissues, such as blood, measurements of gene expression are confounded...
Computational deconvolution is a time and cost-efficient approach to obtain cell type-specific infor...
Abstract Background This paper introduces a new const...
Background: Methods of microarray analysis that suit experimentalists using the technology are vital...
Next-generation sequencing technologies provide a revolutionary tool for generating gene expres-sion...