I have Illumina paired-end data from 4 libraries in sugarcane, and I've aligned using Sorghum as a reference and after that I normalized and got the RPKM values for gene expression, and then used DEGseq to call differentially expressed genes. I was told that FPKM values would work better for paired end data. Which one is more suitable, RPKM or FPKM? BTW, I DON'T want to find alternative splicing, I only want to want to find differentially expressed genes.
Use neither.
An update (6th October 2018):
You should abandon RPKM / FPKM. They are not ideal where cross-sample differential expression analysis is your aim; indeed, they render samples incomparable via differential expression analysis:
Please read this: A comprehensive evaluation of normalization methods for Illumina high-throughput RNA sequencing data analysis
Also, by Harold Pimental: What the FPKM? A review of RNA-Seq expression units