2015
DOI: 10.7287/peerj.preprints.1198v1
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Getting the most out of RNA-seq data analysis

Abstract: Background: A common research goal in transcriptome projects is to find genes that are differentially expressed in different phenotype classes. Biologists might wish to validate such gene candidates experimentally or use them for downstream systems biology analysis. Producing a coherent differential expression analysis from RNA-seq count data requires an understanding of how numerous sources of variation such as the replicate size, the hypothesized biological effect, and the specific method for making differen… Show more

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“…In our study, RNA-seq analysis was performed, in order to identify and select candidate genes related to fruit morphology. Pooled samples, which is a common practice for RNA-seq experiments (Khang and Lau, 2015;Rajkumar et al, …”
Section: Differential Gene Expressions (Degs) In Two Cultivars With Dmentioning
confidence: 99%
“…In our study, RNA-seq analysis was performed, in order to identify and select candidate genes related to fruit morphology. Pooled samples, which is a common practice for RNA-seq experiments (Khang and Lau, 2015;Rajkumar et al, …”
Section: Differential Gene Expressions (Degs) In Two Cultivars With Dmentioning
confidence: 99%