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Comparative analysis of RNA sequencing methods for degraded or low-input samples

Author(s)
Adiconis, Xian; Borges-Rivera, Diego; Satija, Rahul; DeLuca, David S.; Busby, Michele A.; Berlin, Aaron M.; Sivachenko, Andrey; Thompson, Dawn Anne; Wysoker, Alec; Fennell, Timothy; Gnirke, Andreas; Pochet, Nathalie; Regev, Aviv; Levin, Joshua Z.; ... Show more Show less
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Abstract
RNA-seq is an effective method for studying the transcriptome, but it can be difficult to apply to scarce or degraded RNA from fixed clinical samples, rare cell populations or cadavers. Recent studies have proposed several methods for RNA-seq of low-quality and/or low-quantity samples, but the relative merits of these methods have not been systematically analyzed. Here we compare five such methods using metrics relevant to transcriptome annotation, transcript discovery and gene expression. Using a single human RNA sample, we constructed and sequenced ten libraries with these methods and compared them against two control libraries. We found that the RNase H method performed best for chemically fragmented, low-quality RNA, and we confirmed this through analysis of actual degraded samples. RNase H can even effectively replace oligo(dT)-based methods for standard RNA-seq. SMART and NuGEN had distinct strengths for measuring low-quantity RNA. Our analysis allows biologists to select the most suitable methods and provides a benchmark for future method development.
Description
available in PMC 2014 January 01.
Date issued
2013-05
URI
http://hdl.handle.net/1721.1/85835
Department
Massachusetts Institute of Technology. Department of Biology
Journal
Nature Methods
Publisher
Nature Publishing Group
Citation
Adiconis, Xian, Diego Borges-Rivera, Rahul Satija, David S DeLuca, Michele A Busby, Aaron M Berlin, Andrey Sivachenko, et al. “Comparative analysis of RNA sequencing methods for degraded or low-input samples.” Nature Methods 10, no. 7 (May 19, 2013): 623-629.
Version: Author's final manuscript
ISSN
1548-7091
1548-7105

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