rna sequencing of formalin-fixed, paraffin-embedded specimens for gene expression quantification and data mining

rna sequencing of formalin-fixed, paraffin-embedded specimens for gene expression quantification and data mining

;Yan Guo;Jie Wu;Shilin Zhao;Fei Ye;Yinghao Su;Travis Clark;Quanhu Sheng;Brian Lehmann;Xiao-ou Shu;Qiuyin Cai
balıkesir medical journal 2016 Vol. 2016 pp. -
161
guo2016internationalrna

Abstract

Background. Proper rRNA depletion is crucial for the successful utilization of FFPE specimens when studying gene expression. We performed a study to evaluate two major rRNA depletion methods: Ribo-Zero and RNase H. RNAs extracted from 4 samples were treated with the two rRNA depletion methods in duplicate and sequenced (N=16). We evaluated their reducibility, ability to detect RNA, and ability to molecularly subtype these triple negative breast cancer specimens. Results. Both rRNA depletion methods produced consistent data between the technical replicates. We found that the RNase H method produced higher quality RNAseq data as compared to the Ribo-Zero method. In addition, we evaluated the RNAseq data generated from the FFPE tissue samples for noncoding RNA, including lncRNA, enhancer/super enhancer RNA, and single nucleotide variation (SNV). We found that the RNase H is more suitable for detecting high-quality, noncoding RNAs as compared to the Ribo-Zero and provided more consistent molecular subtype identification between replicates. Unfortunately, neither method produced reliable SNV data. Conclusions. In conclusion, for FFPE specimens, the RNase H rRNA depletion method performed better than the Ribo-Zero. Neither method generates data sufficient for SNV detection.

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234538
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10.1155/2016/9837310
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