Transcriptomics

Dataset Information

0

Evaluating the Impact of Sequencing Depth on Transcriptome Profiling in Human Adipose


ABSTRACT: Recent advances in RNA sequencing (RNA-Seq) have enabled the discovery of novel transcriptomic variations that are not possible with traditional microarray-based methods. Tissue and cell specific transcriptome changes during pathophysiological stress, in disease cases versus controls and in response to therapies are of particular interest to investigators studying cardiometabolic diseases. Thus, knowledge on the relationships between sequencing depth and detection of transcriptomic variation is needed for designing RNA-Seq experiments and for interpreting results of analyses. Using deeply sequenced RNA-Seq data derived from adipose of a healthy individual before and after systemic administration of endotoxin (LPS), we investigated the sequencing depths needed for studies of gene expression and alternative splicing (AS). We found that to detect expressed genes and AS events, ~100 million (M) filtered reads were needed. However, the requirement on sequencing depth for the detection of LPS modulated differential expression (DE) and differential alternative splicing (DAS) was much higher. To detect 80% of events, ~300M filtered reads were needed for DE analysis whereas at least 400M filtered reads were necessary for detecting DAS. Although the majority of expressed genes and AS events can be detected with modest sequencing depths (~100M filtered reads), the estimated gene expression levels and exon/intron inclusion levels were less accurate. We report the first study that evaluates the relationship between RNA-Seq depth and the ability to detect DE and DAS in human adipose. Our results suggest that a much higher sequencing depth is needed to reliably identify DAS events than for DE genes.

ORGANISM(S): Homo sapiens

PROVIDER: GSE46323 | GEO | 2013/07/12

SECONDARY ACCESSION(S): PRJNA198737

REPOSITORIES: GEO

Dataset's files

Source:
Action DRS
Other
Items per page:
1 - 1 of 1

Similar Datasets

2013-07-12 | E-GEOD-46323 | biostudies-arrayexpress
2014-01-07 | E-GEOD-51403 | biostudies-arrayexpress
2014-01-07 | GSE51403 | GEO
2014-01-07 | E-GEOD-53762 | biostudies-arrayexpress
2014-07-29 | E-GEOD-57326 | biostudies-arrayexpress
2011-05-09 | GSE29158 | GEO
2024-12-27 | GSE246294 | GEO
2018-11-25 | E-MTAB-7351 | biostudies-arrayexpress
2013-04-16 | E-GEOD-42980 | biostudies-arrayexpress
2015-12-31 | E-GEOD-64651 | biostudies-arrayexpress