Hi,
We are running a RNA-seq experiment to evaluate differential gene expression in different biological groups using Illumina. We already have some transcriptomic data for this species generated with a 454 sequencer.
Is it necessary to sequence paired-end data or, because we already have some good reference, single-end is the best strategy to use. I know that paired-end reads are better for de novo assembly, but I was wondering if they could have some advantages to evaluate gene expression profiles apart from the assembly step. Moreover, even if we have some transcriptomic data, the fact to have paired-end data and create a mixed assembly (with reference and de novo) could help to catch more ESTs. In conclusion, our doubt is if it is worth to spend more money to generate paired-end reads considering the benefits we could have for our experiment.
Thanks
We are running a RNA-seq experiment to evaluate differential gene expression in different biological groups using Illumina. We already have some transcriptomic data for this species generated with a 454 sequencer.
Is it necessary to sequence paired-end data or, because we already have some good reference, single-end is the best strategy to use. I know that paired-end reads are better for de novo assembly, but I was wondering if they could have some advantages to evaluate gene expression profiles apart from the assembly step. Moreover, even if we have some transcriptomic data, the fact to have paired-end data and create a mixed assembly (with reference and de novo) could help to catch more ESTs. In conclusion, our doubt is if it is worth to spend more money to generate paired-end reads considering the benefits we could have for our experiment.
Thanks
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