Data normalization is a crucial step in the gene expression analysis as it ensures the validity of its downstream analyses. Although many metrics have been designed to evaluate the existing normalization methods, different metrics or different datasets by the same metric yield inconsistent results, particularly for the single-cell RNA sequencing (scRNA-seq) data. The worst situations could be that one method evaluated as the best by one metric is evaluated as the poorest by another metric, or one method evaluated as the best using one dataset is evaluated as the poorest using another dataset. Here raises an open question: principles need to be established to guide the evaluation of normalization methods. In this study, we propose a principl...
Normalization of high-throughput molecular expression profiles secures differential expression analy...
Background Transcriptome sequencing is a powerful tool for measuring gene expression, but as well as...
Profiling miRNA levels in cells with miRNA microarrays is becoming a widely used technique. Although...
Data normalization is a crucial step in the gene expression analysis as it ensures the validity of i...
Background RNA sequencing technologies have allowed researchers to gain a better understanding of h...
In recent years, RNA-Seq technologies became a powerful tool for transcriptome studies. However, com...
Single-cell transcriptomics is becoming an important component of the molecular biologist's toolkit....
Large, publicly available gene expression datasets are often analyzed with the aid of machine learni...
Gene expression analysis of microRNA molecules is becoming increasingly important. In this study we ...
Normalization of RNA-sequencing (RNA-seq) data has proven essential to ensure accurate inference of ...
Copyright © 2015 J. Zyprych-Walczak et al. This is an open access article distributed under the Crea...
Normalization of RNA-Seq data has proven essential to ensure accurate inferences and replication of ...
Normalization of RNA-Seq data has proven essential to ensure accurate inferences and replication of ...
Normalization of gene expression data refers the process of minimizing non biological variation in m...
In this video, I provide a high-level overview over different scRNA-Seq noramlization methods. In pa...
Normalization of high-throughput molecular expression profiles secures differential expression analy...
Background Transcriptome sequencing is a powerful tool for measuring gene expression, but as well as...
Profiling miRNA levels in cells with miRNA microarrays is becoming a widely used technique. Although...
Data normalization is a crucial step in the gene expression analysis as it ensures the validity of i...
Background RNA sequencing technologies have allowed researchers to gain a better understanding of h...
In recent years, RNA-Seq technologies became a powerful tool for transcriptome studies. However, com...
Single-cell transcriptomics is becoming an important component of the molecular biologist's toolkit....
Large, publicly available gene expression datasets are often analyzed with the aid of machine learni...
Gene expression analysis of microRNA molecules is becoming increasingly important. In this study we ...
Normalization of RNA-sequencing (RNA-seq) data has proven essential to ensure accurate inference of ...
Copyright © 2015 J. Zyprych-Walczak et al. This is an open access article distributed under the Crea...
Normalization of RNA-Seq data has proven essential to ensure accurate inferences and replication of ...
Normalization of RNA-Seq data has proven essential to ensure accurate inferences and replication of ...
Normalization of gene expression data refers the process of minimizing non biological variation in m...
In this video, I provide a high-level overview over different scRNA-Seq noramlization methods. In pa...
Normalization of high-throughput molecular expression profiles secures differential expression analy...
Background Transcriptome sequencing is a powerful tool for measuring gene expression, but as well as...
Profiling miRNA levels in cells with miRNA microarrays is becoming a widely used technique. Although...