March 2021
We now have the locations of our reads on the genome.
We also know the locations of exons of genes on the genome.
So the simplest approach is to count how many reads overlap each gene.
We now have the locations of our reads on the genome.
We also know the locations of exons of genes on the genome.
So the simplest approach is to count how many reads overlap each gene.
e.g. featureCounts or HTSeq
More sophisticated approaches:
Count against the transcriptome instead.
Summarise to gene level for differential gene expression analysis.
Switch to quasi-mapping or pseudo-alignment to transcriptome
Switch to quasi-mapping or pseudo-alignment
Switch to quasi-mapping or pseudo-alignment
Include modelling for GC bias, positional bias and sequence bias in the quantification algorithm
Love et al. (2016) Nature Biotechnology doi:10.1038/nbt.3682
Patro et al. (2017) Nature Methods doi:10.1038/nmeth.4197
Patro et al. (2017) Nature Methods doi:10.1038/nmeth.4197