Comparing the normalization methods for the differential analysis of Illumina high-throughput RNA-Seq data

Peipei Li, Yongjun Piao, Ho Sun Shon, Keun Ho Ryu, Peipei Li, Yongjun Piao, Ho Sun Shon, Keun Ho Ryu

Abstract

Background: Recently, rapid improvements in technology and decrease in sequencing costs have made RNA-Seq a widely used technique to quantify gene expression levels. Various normalization approaches have been proposed, owing to the importance of normalization in the analysis of RNA-Seq data. A comparison of recently proposed normalization methods is required to generate suitable guidelines for the selection of the most appropriate approach for future experiments.

Results: In this paper, we compared eight non-abundance (RC, UQ, Med, TMM, DESeq, Q, RPKM, and ERPKM) and two abundance estimation normalization methods (RSEM and Sailfish). The experiments were based on real Illumina high-throughput RNA-Seq of 35- and 76-nucleotide sequences produced in the MAQC project and simulation reads. Reads were mapped with human genome obtained from UCSC Genome Browser Database. For precise evaluation, we investigated Spearman correlation between the normalization results from RNA-Seq and MAQC qRT-PCR values for 996 genes. Based on this work, we showed that out of the eight non-abundance estimation normalization methods, RC, UQ, Med, TMM, DESeq, and Q gave similar normalization results for all data sets. For RNA-Seq of a 35-nucleotide sequence, RPKM showed the highest correlation results, but for RNA-Seq of a 76-nucleotide sequence, least correlation was observed than the other methods. ERPKM did not improve results than RPKM. Between two abundance estimation normalization methods, for RNA-Seq of a 35-nucleotide sequence, higher correlation was obtained with Sailfish than that with RSEM, which was better than without using abundance estimation methods. However, for RNA-Seq of a 76-nucleotide sequence, the results achieved by RSEM were similar to without applying abundance estimation methods, and were much better than with Sailfish. Furthermore, we found that adding a poly-A tail increased alignment numbers, but did not improve normalization results.

Conclusion: Spearman correlation analysis revealed that RC, UQ, Med, TMM, DESeq, and Q did not noticeably improve gene expression normalization, regardless of read length. Other normalization methods were more efficient when alignment accuracy was low; Sailfish with RPKM gave the best normalization results. When alignment accuracy was high, RC was sufficient for gene expression calculation. And we suggest ignoring poly-A tail during differential gene expression analysis.

References

    1. Li M, Cho SB, Ryu KH. A novel approach for predicting disordered regions in a protein sequence. Osong Public Health Res Perspect. 2014;5(4):211–8. doi: 10.1016/j.phrp.2014.06.006.
    1. Li P, Pok G, Jung KS, Shon HS, Ryu KH. QSE: A new 3-D solvent exposure measure for the analysis of protein structure. Proteomics. 2011;11(19):3793–801. doi: 10.1002/pmic.201100189.
    1. Schuster SC. Next-generation sequencing transforms today’s biology. Nat Methods. 2008;5(1):16–8. doi: 10.1038/nmeth1156.
    1. de Magalhães JP, Finch CE, Janssens G. Next-generation sequencing in aging research: emerging applications, problems, pitfalls and possible solutions. Ageing Res Rev. 2010;9(3):315–23. doi: 10.1016/j.arr.2009.10.006.
    1. Church GM. Genomes for all. Sci Am. 2006;294(1):46–54. doi: 10.1038/scientificamerican0106-46.
    1. Anders S, Huber W. Differential expression analysis for sequence count data. Genome Biol. 2010;11(10):R106. doi: 10.1186/gb-2010-11-10-r106.
    1. Trapnell C, Roberts A, Goff L, Pertea G, Kim D, et al. Differential gene and transcript expression analysis of RNA-Seq experiments with TopHat and Cufflinks. Nat Protoc. 2012;7(3):562–78. doi: 10.1038/nprot.2012.016.
    1. Barbazuk WB, Emrich SJ, Chen HD, Li L, Schnable PS. SNP discovery via 454 transcriptome sequencing. Plant J. 2007;51(5):910–8. doi: 10.1111/j.1365-313X.2007.03193.x.
    1. Teixeira MR. Recurrent fusion oncogenes in carcinomas. Ciritical Rev Oncogenesis. 2006;12(3–4):257–271. doi: 10.1615/CritRevOncog.v12.i3-4.40.
    1. Maher CA, Kumar-Sinha C, Cao X, Kalyana-Sundaram S, Han B, et al. Transcriptome sequencing to detect gene fusions in cancer. Nature. 2009;458(7234):97–101. doi: 10.1038/nature07638.
    1. Chu Y, Corey DR. RNA sequencing: platform selection, experimental design, and data interpretation. Nucleic Acid Ther. 2012;22(4):271–4.
    1. Morin R, Bainbridge M, Fejes A, Hirst M, Krzywinski M, et al. Profiling the HeLa S3 transcriptome using randomly primed cDNA and massively parallel short-read sequencing. Biotechniques. 2008;45(1):81–94. doi: 10.2144/000112900.
    1. Marioni JC, Mason CE, Mane SM, Stephens M, Gilad Y. RNA-Seq: an assessment of technical reproducibility and comparison with gene expression arrays. Genome Res. 2008;18(9):1509–17. doi: 10.1101/gr.079558.108.
    1. Oshlack A, Robinson MD, Young MD. From RNA-seq reads to differential expression results. Genome Biol. 2010;11(12):220. doi: 10.1186/gb-2010-11-12-220.
    1. Wang Z, Gerstein M, Snyder M. RNA -Seq: a revolutionary tool for transcriptomics. Nat Rev Genet. 2009;10(1):57–63. doi: 10.1038/nrg2484.
    1. Piao Y, Piao M, Park K, Ryu KH. An ensemble correlation-based gene selection algorithm for cancer classification with gene expression data. Bioinformatics. 2012;28(24):3306–15. doi: 10.1093/bioinformatics/bts602.
    1. Li F, Piao M, Piao Y, Li M, Ryu KH. A New direction of cancer classification: positive effect of Low-ranking MicroRNAs. Osong Public Health Res Perspect. 2014;5(5):279–85. doi: 10.1016/j.phrp.2014.08.004.
    1. Lee S, Seo CH, Lim B, Yang JO, Oh J. Accurate quantification of transcriptome from RNA-Seq data by effective length normalization. Nucleic Acids Res. 2011;39(2) doi: 10.1093/nar/gkq1015.
    1. Robinson MD, Oshlack A. A scaling normalization method for differential expression analysis of RNA-Seq data. Genome Biol. 2010;11(3):R25. doi: 10.1186/gb-2010-11-3-r25.
    1. Bolstad BM, Irizarry RA, Astrand M, Speed TP. A comparison of normalization methods for high density oligonucleotides array data based on variance and bias. Bioinformatics. 2003;19(2):185–93. doi: 10.1093/bioinformatics/19.2.185.
    1. Mortazavi A, Williams BA, McCue K, Schaeffer L, Wold B. Mapping and quantifying mammalian transcriptomes by RNAseq. Nat Methods. 2008;5(7):621–8. doi: 10.1038/nmeth.1226.
    1. Li B, Dewey CN. RSEM: accurate transcript quantification from RNA-Seq data with or without a reference genome. BMC Bioinformatics. 2011;12:323. doi: 10.1186/1471-2105-12-323.
    1. Patro R, Mount SM, Kingsford C. Sailfish enables alignment-free isoform quantification from RNA-seq reads using lightweight algorithms. Nat Biotechnol. 2014;32(5):462–4. doi: 10.1038/nbt.2862.
    1. Dillies MA, Rau A, Aubert J, Hennequet-Antier C, Jeanmougin M, et al. A comprehensive evaluation of normalization methods for Illumina high-throughput RNA sequencing data analysis. Brief Bioinform. 2013;14(6):671–83. doi: 10.1093/bib/bbs046.
    1. Lander ES, Linton LM, Birren B, Nusbaum C, Zody MC, et al. Initial sequencing and analysis of the human genome. Nature. 2001;409(6822):860–921. doi: 10.1038/35057062.
    1. Li B, Ruotti V, Stewart RM, Thomson JA, Dewey CN. RNA-Seq gene expression estimation with read mapping uncertainty. Bioinformatics. 2010;26(4):493–500. doi: 10.1093/bioinformatics/btp692.
    1. Galperin MY, Fernández-Suárez XM. The 2012 nucleic acids research database issue and the online molecular biology database collection. Nucleic Acids Res. 2012;40(Database issue):D1–8. doi: 10.1093/nar/gkr1196.
    1. Schefe JH, Lehmann KE, Buschmann IR, Unger T, Funke-Kaiser H. Quantitative real-time RT-PCR data analysis: current concepts and the novel “gene expression’s CT difference” formula. J Mol Med (Berl) 2006;84(11):901–10. doi: 10.1007/s00109-006-0097-6.
    1. Edgar R, Domrachev M, Lash AE. Gene expression omnibus: NCBI gene expression and hybridization array data repository. Nucleic Acids Res. 2002;30(1):207–10. doi: 10.1093/nar/30.1.207.
    1. Langmead B, Trapnell C, Pop M, Salzberg SL. Ultrafast and memory-efficient alignment of short DNA sequences to the human genome. Genome Biol. 2009;10(3):R25. doi: 10.1186/gb-2009-10-3-r25.
    1. Smyth GK. Limma: linear models for microarray data. 2005. pp. 397–420.
    1. Rehrauer H, Opitz L, Tan G, Sieverling L, Schlapbach R. Blind spots of quantitative RNA-Seq: the limits for assessing abundance, differential expression, and isoform switching. BMC Bioinformatics. 2013;14:370. doi: 10.1186/1471-2105-14-370.
    1. Hauke J, Kossowski T. Comparison of values of Pearson‘s and Spearman’s correlation coefficients on the same sets of data. Quaestiones Geographicae. 2011;30(2):87–93. doi: 10.2478/v10117-011-0021-1.

Source: PubMed

3
Tilaa