BMC Genomics (May 2018)

Evaluation of commercially available small RNASeq library preparation kits using low input RNA

  • Ashish Yeri,
  • Amanda Courtright,
  • Kirsty Danielson,
  • Elizabeth Hutchins,
  • Eric Alsop,
  • Elizabeth Carlson,
  • Michael Hsieh,
  • Olivia Ziegler,
  • Avash Das,
  • Ravi V. Shah,
  • Joel Rozowsky,
  • Saumya Das,
  • Kendall Van Keuren-Jensen

DOI
https://doi.org/10.1186/s12864-018-4726-6
Journal volume & issue
Vol. 19, no. 1
pp. 1 – 15

Abstract

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Abstract Background Evolving interest in comprehensively profiling the full range of small RNAs present in small tissue biopsies and in circulating biofluids, and how the profile differs with disease, has launched small RNA sequencing (RNASeq) into more frequent use. However, known biases associated with small RNASeq, compounded by low RNA inputs, have been both a significant concern and a hurdle to widespread adoption. As RNASeq is becoming a viable choice for the discovery of small RNAs in low input samples and more labs are employing it, there should be benchmark datasets to test and evaluate the performance of new sequencing protocols and operators. In a recent publication from the National Institute of Standards and Technology, Pine et al., 2018, the investigators used a commercially available set of three tissues and tested performance across labs and platforms. Results In this paper, we further tested the performance of low RNA input in three commonly used and commercially available RNASeq library preparation kits; NEB Next, NEXTFlex, and TruSeq small RNA library preparation. We evaluated the performance of the kits at two different sites, using three different tissues (brain, liver, and placenta) with high (1 μg) and low RNA (10 ng) input from tissue samples, or 5.0, 3.0, 2.0, 1.0, 0.5, and 0.2 ml starting volumes of plasma. As there has been a lack of robust validation platforms for differentially expressed miRNAs, we also compared low input RNASeq data with their expression profiles on three different platforms (Abcam Fireplex, HTG EdgeSeq, and Qiagen miRNome). Conclusions The concordance of RNASeq results on these three platforms was dependent on the RNA expression level; the higher the expression, the better the reproducibility. The results provide an extensive analysis of small RNASeq kit performance using low RNA input, and replication of these data on three downstream technologies.

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