Close
Help




JOURNAL

Evolutionary Bioinformatics

TRUFA: A User-Friendly Web Server for de novo RNA-seq Analysis Using Cluster Computing

Submit a Paper


Evolutionary Bioinformatics 2015:11 97-104

Technical Advance

Published on 24 May 2015

DOI: 10.4137/EBO.S23873


Further metadata provided in PDF



Sign up for email alerts to receive notifications of new articles published in Evolutionary Bioinformatics

Abstract

Application of next-generation sequencing (NGS) methods for transcriptome analysis (RNA-seq) has become increasingly accessible in recent years and are of great interest to many biological disciplines including, eg, evolutionary biology, ecology, biomedicine, and computational biology. Although virtually any research group can now obtain RNA-seq data, only a few have the bioinformatics knowledge and computation facilities required for transcriptome analysis. Here, we present TRUFA (TRanscriptome User-Friendly Analysis), an open informatics platform offering a web-based interface that generates the outputs commonly used in de novo RNA-seq analysis and comparative transcriptomics. TRUFA provides a comprehensive service that allows performing dynamically raw read cleaning, transcript assembly, annotation, and expression quantification. Due to the computationally intensive nature of such analyses, TRUFA is highly parallelized and benefits from accessing high-performance computing resources. The complete TRUFA pipeline was validated using four previously published transcriptomic data sets. TRUFA’s results for the example datasets showed globally similar results when comparing with the original studies, and performed particularly better when analyzing the green tea dataset. The platform permits analyzing RNA-seq data in a fast, robust, and user-friendly manner. Accounts on TRUFA are provided freely upon request at https://trufa.ifca.es.



Downloads

PDF  (1.32 MB PDF FORMAT)

RIS citation   (ENDNOTE, REFERENCE MANAGER, PROCITE, REFWORKS)

Supplementary Files 1  (1.71 KB CSV FORMAT)

BibTex citation   (BIBDESK, LATEX)

XML

PMC HTML


External Resources

TRUFA


Sharing


What Your Colleagues Say About Evolutionary Bioinformatics
I must say publishing with Evolutionary Bioinformatics was a great and partially unexpected experience.  It allowed me to understand the name 'Libertas Academica' is not just a name but a real issue.  The reviewers offered us stringent, rigorous but totally unprejudiced comments, the editor supported us and the paper visibility was very good.  Thank you again.
Dr Alessandro Giuliani (Istituto Superiore di Sanità, Roma, Italy)
More Testimonials

Quick Links


New article and journal news notification services
Email Alerts RSS Feeds
Facebook Google+ Twitter
Pinterest Tumblr YouTube