SimSeq: a nonparametric approach to simulation of RNA-sequence datasets.
about
Dynamics in Transcriptomics: Advancements in RNA-seq Time Course and Downstream AnalysisEmpirical likelihood tests for nonparametric detection of differential expression from RNA-seq data.Synthetic data sets for the identification of key ingredients for RNA-seq differential analysis.Identification of expression patterns in the progression of disease stages by integration of transcriptomic data.A Combined PLS and Negative Binomial Regression Model for Inferring Association Networks from Next-generation Sequencing Count Data.CLOVE: classification of genomic fusions into structural variation eventsTIDDIT, an efficient and comprehensive structural variant caller for massive parallel sequencing data.Systematic review of next-generation sequencing simulators: computational tools, features and perspectives.Feasibility of sample size calculation for RNA-seq studies.A broken promise: microbiome differential abundance methods do not control the false discovery rate.EAMA: Empirically adjusted meta-analysis for large-scale simultaneous hypothesis testing in genomic experiments.Incorporating interaction networks into the determination of functionally related hit genes in genomic experiments with Markov random fields.Differential gene expression analysis tools exhibit substandard performance for long non-coding RNA-sequencing data
P2860
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P2860
SimSeq: a nonparametric approach to simulation of RNA-sequence datasets.
description
2015 nî lūn-bûn
@nan
2015年の論文
@ja
2015年論文
@yue
2015年論文
@zh-hant
2015年論文
@zh-hk
2015年論文
@zh-mo
2015年論文
@zh-tw
2015年论文
@wuu
2015年论文
@zh
2015年论文
@zh-cn
name
SimSeq: a nonparametric approach to simulation of RNA-sequence datasets.
@ast
SimSeq: a nonparametric approach to simulation of RNA-sequence datasets.
@en
type
label
SimSeq: a nonparametric approach to simulation of RNA-sequence datasets.
@ast
SimSeq: a nonparametric approach to simulation of RNA-sequence datasets.
@en
prefLabel
SimSeq: a nonparametric approach to simulation of RNA-sequence datasets.
@ast
SimSeq: a nonparametric approach to simulation of RNA-sequence datasets.
@en
P2860
P356
P1433
P1476
SimSeq: a nonparametric approach to simulation of RNA-sequence datasets
@en
P2093
Sam Benidt
P2860
P304
P356
10.1093/BIOINFORMATICS/BTV124
P407
P577
2015-02-26T00:00:00Z