Unknown

Dataset Information

0

Evaluating methods for isolating total RNA and predicting the success of sequencing phylogenetically diverse plant transcriptomes.


ABSTRACT: Next-generation sequencing plays a central role in the characterization and quantification of transcriptomes. Although numerous metrics are purported to quantify the quality of RNA, there have been no large-scale empirical evaluations of the major determinants of sequencing success. We used a combination of existing and newly developed methods to isolate total RNA from 1115 samples from 695 plant species in 324 families, which represents >900 million years of phylogenetic diversity from green algae through flowering plants, including many plants of economic importance. We then sequenced 629 of these samples on Illumina GAIIx and HiSeq platforms and performed a large comparative analysis to identify predictors of RNA quality and the diversity of putative genes (scaffolds) expressed within samples. Tissue types (e.g., leaf vs. flower) varied in RNA quality, sequencing depth and the number of scaffolds. Tissue age also influenced RNA quality but not the number of scaffolds ? 1000 bp. Overall, 36% of the variation in the number of scaffolds was explained by metrics of RNA integrity (RIN score), RNA purity (OD 260/230), sequencing platform (GAIIx vs HiSeq) and the amount of total RNA used for sequencing. However, our results show that the most commonly used measures of RNA quality (e.g., RIN) are weak predictors of the number of scaffolds because Illumina sequencing is robust to variation in RNA quality. These results provide novel insight into the methods that are most important in isolating high quality RNA for sequencing and assembling plant transcriptomes. The methods and recommendations provided here could increase the efficiency and decrease the cost of RNA sequencing for individual labs and genome centers.

SUBMITTER: Johnson MT 

PROVIDER: S-EPMC3504007 | biostudies-literature | 2012

REPOSITORIES: biostudies-literature

altmetric image

Publications

Evaluating methods for isolating total RNA and predicting the success of sequencing phylogenetically diverse plant transcriptomes.

Johnson Marc T J MT   Carpenter Eric J EJ   Tian Zhijian Z   Bruskiewich Richard R   Burris Jason N JN   Carrigan Charlotte T CT   Chase Mark W MW   Clarke Neil D ND   Covshoff Sarah S   Depamphilis Claude W CW   Edger Patrick P PP   Goh Falicia F   Graham Sean S   Greiner Stephan S   Hibberd Julian M JM   Jordon-Thaden Ingrid I   Kutchan Toni M TM   Leebens-Mack James J   Melkonian Michael M   Miles Nicholas N   Myburg Henrietta H   Patterson Jordan J   Pires J Chris JC   Ralph Paula P   Rolf Megan M   Sage Rowan F RF   Soltis Douglas D   Soltis Pamela P   Stevenson Dennis D   Stewart C Neal CN   Surek Barbara B   Thomsen Christina J M CJ   Villarreal Juan Carlos JC   Wu Xiaolei X   Zhang Yong Y   Deyholos Michael K MK   Wong Gane Ka-Shu GK  

PloS one 20121121 11


Next-generation sequencing plays a central role in the characterization and quantification of transcriptomes. Although numerous metrics are purported to quantify the quality of RNA, there have been no large-scale empirical evaluations of the major determinants of sequencing success. We used a combination of existing and newly developed methods to isolate total RNA from 1115 samples from 695 plant species in 324 families, which represents >900 million years of phylogenetic diversity from green al  ...[more]

Similar Datasets

| S-EPMC3497085 | biostudies-literature
| S-EPMC7168108 | biostudies-literature
2020-03-02 | GSE130377 | GEO
| S-EPMC6874649 | biostudies-literature
| S-EPMC2893488 | biostudies-literature
| S-EPMC4214555 | biostudies-literature
| S-EPMC4139339 | biostudies-literature
| S-EPMC7144016 | biostudies-literature
2023-09-30 | GSE242613 | GEO
2024-06-01 | GSE237659 | GEO