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SimSeq (version 1.4.0)

Nonparametric Simulation of RNA-Seq Data

Description

RNA sequencing analysis methods are often derived by relying on hypothetical parametric models for read counts that are not likely to be precisely satisfied in practice. Methods are often tested by analyzing data that have been simulated according to the assumed model. This testing strategy can result in an overly optimistic view of the performance of an RNA-seq analysis method. We develop a data-based simulation algorithm for RNA-seq data. The vector of read counts simulated for a given experimental unit has a joint distribution that closely matches the distribution of a source RNA-seq dataset provided by the user. Users control the proportion of genes simulated to be differentially expressed (DE) and can provide a vector of weights to control the distribution of effect sizes. The algorithm requires a matrix of RNA-seq read counts with large sample sizes in at least two treatment groups. Many datasets are available that fit this standard.

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Version

Install

install.packages('SimSeq')

Monthly Downloads

272

Version

1.4.0

License

GPL (>= 2)

Maintainer

Samuel Benidt

Last Published

November 23rd, 2015

Functions in SimSeq (1.4.0)

SortData

SortData
CalcPvalWilcox

Calculate P-values of Differential Expression
kidney

Kidney Renal Clear Cell Carcinoma [KIRC] RNA-Seq data
SimSeq-package

Nonparametric Simulation of RNA-Seq Data
SimData

SimData