Total RNA Sequencing (Total RNA-Seq) is a comprehensive RNA sequencing method that profiles all types of RNA molecules in a sample, including coding RNAs (mRNA) and non-coding RNAs (ncRNAs) such as long non-coding RNAs (lncRNAs), ribosomal RNA (rRNA), small nucleolar RNAs (snoRNAs), and circular RNAs (circRNAs).
By capturing both polyadenylated and non-polyadenylated transcripts, Total RNA-Seq offers a global view of the transcriptome, making it ideal for gene expression analysis, transcript discovery, and studying non-coding RNA function.
Purpose: Capture the full RNA transcriptome, both coding and non-coding
Input: Total RNA extracted from cells or tissues
RNA Types: mRNA, lncRNA, snoRNA, circRNA, rRNA (optional removal), etc.
Output: Quantitative and qualitative data on all RNA transcripts
Applications: Transcriptomics, biomarker discovery, disease research, RNA biotype analysis
RNA Extraction
High-quality total RNA is extracted from biological samples.
rRNA Depletion or Globin Removal
Ribosomal RNAs (which constitute ~80–90% of RNA) are depleted using methods like Ribo-Zero to enrich meaningful transcripts.
Fragmentation & cDNA Synthesis
RNA is fragmented and reverse-transcribed into complementary DNA (cDNA).
Library Preparation
cDNA is prepared into sequencing libraries with adapters for NGS.
Sequencing
Libraries are sequenced using platforms like Illumina, ONT, or PacBio, producing short or long reads.
Data Analysis
Reads are aligned to the reference genome or transcriptome for quantification, differential expression, splicing analysis, and novel transcript discovery.
Whole Transcriptome Profiling
Capture both coding and non-coding RNAs to understand transcriptional complexity.
Gene Expression Quantification
Measure expression levels of genes across conditions, time points, or treatments.
Non-Coding RNA Discovery
Identify lncRNAs, snoRNAs, antisense RNAs, and circular RNAs.
Alternative Splicing Analysis
Detect isoforms, exon skipping, and other splicing events.
Disease Biomarker Discovery
Uncover RNA-based signatures for cancer, neurological disorders, infections, etc.
Functional Genomics
Explore gene regulation, RNA decay, and chromatin-associated RNA functions.
Unbiased Transcriptome View
Captures both poly-A and non-poly-A RNAs, including pre-mRNA and lncRNAs.
Comprehensive
Includes coding, non-coding, spliced, and unspliced RNA species.
Flexible rRNA Removal
Allows targeting specific rRNA species or globin mRNA in blood-derived samples.
Suitable for Degraded RNA
Especially useful for FFPE samples or low-quality RNA inputs.
Customizable Protocols
Compatible with single-cell, strand-specific, or long-read platforms.
Feature | Description |
---|---|
Full Transcriptome Capture | Profiles both coding and non-coding RNAs |
rRNA Depletion Options | Ribo-Zero, RNase H, or globin reduction methods available |
Strand-Specific Libraries | Preserves directionality of transcription |
Multi-Species Compatible | Works with human, animal, plant, microbial, and mixed samples |
Reads Novel Transcripts | Ideal for discovering new genes and splicing isoforms |
Data Complexity
Requires more advanced bioinformatics due to the wide variety of RNA types.
Cost and Depth
Higher sequencing depth is often needed to cover less abundant transcripts.
rRNA Contamination
Incomplete depletion can reduce effective data output.
Batch Effects
Sensitive to library preparation and sample processing variations.
Requires High-Quality RNA
Degraded RNA can affect transcript detection unless specifically adapted for.
FastQC / MultiQC – Quality control
STAR / HISAT2 – Read alignment
featureCounts / HTSeq – Gene-level read counting
DESeq2 / EdgeR / limma-voom – Differential expression analysis
StringTie / Cufflinks – Transcript assembly and quantification
GSEA / GO / KEGG – Functional enrichment and pathway analysis
IGV / UCSC Genome Browser – Visualization of read alignments