Abstract Background Combining genomic data sets from multiple studies is advantageous to increase statistical power in studies where logistical considerations restrict sample size or require the sequential generation of data. However, significant technical heterogeneity is commonly observed across multiple batches of data that are generated from different processing or reagent batches, experimenters, protocols, or profiling platforms. These so-called batch effects often confound true biological relationships in the data, reducing the power benefits of combining multiple batches, and may even lead to spurious results in some combined studies. Therefore there is significant need for effective methods and software tools that account for batch ...
High-throughput sequencing is a powerful tool, but suffers biases and errors that must be accounted ...
Batch effects are due to probe-specific systematic variation between groups of samples (batches) res...
It is often unavoidable to combine data from different sequencing centers or sequencing platforms wh...
High-throughput technologies are widely used in a variety of biomedical research fields to enable ra...
Genome projects now generate large-scale data often produced at various time points by different lab...
With the steadily increasing abundance of omics data produced all over the world, some-times decades...
Abstract Background Batch effects are notoriously common technical variations in multiomics data and...
Motivation: International consortia such as the Genotype-Tissue Expression (GTEx) project, The Cance...
BackgroundNon-biological experimental error routinely occurs in microarray data collected in differe...
Abstract Background Large sample sets of whole genome sequencing with deep coverage are being genera...
High-throughput sequencing is a powerful tool, but suffers biases and errors that must be accounted ...
14 páginasDiversity of omic technologies has expanded in the last years together with the number of ...
The expression microarray is a frequently used approach to study gene expression on a genome-wide sc...
In the context of high-throughput molecular data analysis it is common that the observations include...
Abstract Background Batch effect is one type of variability that is not of primary interest but ubiq...
High-throughput sequencing is a powerful tool, but suffers biases and errors that must be accounted ...
Batch effects are due to probe-specific systematic variation between groups of samples (batches) res...
It is often unavoidable to combine data from different sequencing centers or sequencing platforms wh...
High-throughput technologies are widely used in a variety of biomedical research fields to enable ra...
Genome projects now generate large-scale data often produced at various time points by different lab...
With the steadily increasing abundance of omics data produced all over the world, some-times decades...
Abstract Background Batch effects are notoriously common technical variations in multiomics data and...
Motivation: International consortia such as the Genotype-Tissue Expression (GTEx) project, The Cance...
BackgroundNon-biological experimental error routinely occurs in microarray data collected in differe...
Abstract Background Large sample sets of whole genome sequencing with deep coverage are being genera...
High-throughput sequencing is a powerful tool, but suffers biases and errors that must be accounted ...
14 páginasDiversity of omic technologies has expanded in the last years together with the number of ...
The expression microarray is a frequently used approach to study gene expression on a genome-wide sc...
In the context of high-throughput molecular data analysis it is common that the observations include...
Abstract Background Batch effect is one type of variability that is not of primary interest but ubiq...
High-throughput sequencing is a powerful tool, but suffers biases and errors that must be accounted ...
Batch effects are due to probe-specific systematic variation between groups of samples (batches) res...
It is often unavoidable to combine data from different sequencing centers or sequencing platforms wh...