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cqn [35] is a normalization tool for RNA-Seq data, implementing the conditional quantile normalization method. EDASeq [36] is a Bioconductor package to perform GC-Content Normalization for RNA-Seq Data. GeneScissors A comprehensive approach to detecting and correcting spurious transcriptome inference due to RNAseq reads misalignment.
Method Reference Sequencing Mode Early Estimate Late Estimate Tang method [2] Short Reads 2008 2009 CyTOF [3] Short Reads 2011 2012 STRT-seq / C1 [4] Short Reads 2011 2012 SMART-seq [5] Short Reads 2012 2013 CEL-seq [6] Short Reads 2012 2013 Quartz-Seq [7] Short Reads 2012 2013 PMA / SMA [8] Short Reads 2012 2013 scBS-seq [9] Short Reads 2013 ...
A small conditional RNA (scRNA) is a small RNA molecule or complex (typically less than approximately 100 nt) engineered to interact and change conformation conditionally in response to cognate molecular inputs so as to perform signal transduction in vitro, in situ, or in vivo.
Strand-seq overcomes limitations of methods based on whole genome amplification for genetic variant calling: Since Strand-seq does not require reads (or read pairs) transversing the boundaries (or breakpoints) of CNVs or copy-balanced structural variant classes, it is less susceptible to common artefacts of single-cell methods based on whole ...
Single-cell RNA sequencing (scRNA-Seq) provides the expression profiles of individual cells. Although it is not possible to obtain complete information on every RNA expressed by each cell, due to the small amount of material available, patterns of gene expression can be identified through gene clustering analyses. This can uncover the existence ...
An example algorithm is the Monocle algorithm [26] that carries out dimensionality reduction of the data, builds a minimal spanning tree using the transformed data, orders cells in pseudo-time by following the longest connected path of the tree and consequently labels cells by type.
DESeq2 is a software package in the field of bioinformatics and computational biology for the statistical programming language R.It is primarily employed for the analysis of high-throughput RNA sequencing (RNA-seq) data to identify differentially expressed genes between different experimental conditions.
By minimizing these systematic variations, true biological differences can be found. To determine whether normalization is needed, one can plot Cy5 (R) intensities against Cy3 (G) intensities and see whether the slope of the line is around 1. An improved method, which is basically a scaled, 45 degree rotation of the R vs. G plot is an MA-plot. [4]