Quantitative miRNA expression analysis: Comparing microarrays with next-generation sequencing
Open Access
- 10 September 2009
- journal article
- research article
- Published by Cold Spring Harbor Laboratory in RNA
- Vol. 15 (11) , 2028-2034
- https://doi.org/10.1261/rna.1699809
Abstract
Recently, next-generation sequencing has been introduced as a promising, new platform for assessing the copy number of transcripts, while the existing microarray technology is considered less reliable for absolute, quantitative expression measurements. Nonetheless, so far, results from the two technologies have only been compared based on biological data, leading to the conclusion that, although they are somewhat correlated, expression values differ significantly. Here, we use synthetic RNA samples, resembling human microRNA samples, to find that microarray expression measures actually correlate better with sample RNA content than expression measures obtained from sequencing data. In addition, microarrays appear highly sensitive and perform equivalently to next-generation sequencing in terms of reproducibility and relative ratio quantification.Keywords
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