Abstract
Expression profiles have been successfully
determined by using hybridization- and tagbased technologies, even though such
approaches suffer from limits and
drawbacks and lack information about rare
RNA species, emerging as contributors to
pathological phenotypes in humans (1-8).
The introduction of next generation
sequencing (NGS) technologies, revealing
mammalian transcriptomes' complexity, has
shown that a small fraction of transcribed
sequences (<2%) is represented by mRNA
(9). However, the unprecedented level of
sensitivity in the data produced by NGS
platforms brings with it the power to make
several biological observations, at the cost
of a considerable effort in the development
of new bioinformatics tools and
computational strategies to deal with these
massive data files.
Indeed, for these large-scale
analyses, data transferring, processing and
handling may represent a computational
bottleneck. Another issue is the availability
of software required to perform one or
more downstream analysis (1).
To this purpose, in this paper we
describe the computational strategies used
to analyze different aspects of a wholetranscriptome. In particular, we illustrate
the results of the analysis performed on a
dataset obtained from a strand-specific
RNA sequenicng of ribosomal-depleted
samples, isolated from a cell type impaired
in the Down syndrome
Anno
2010
Autori IAC
Tipo pubblicazione
Altri Autori
Costa V., Angelini C., D;Apice L., Mutarelli M, Casamassimi A., Aprile M.,Esposito R.,Leone L., Donizetti A., Crispi S., De Berardinis P., Napoli, Baldini A. and Ciccodicola A.
Curatori Volume
Angelo Facchiano, Paolo Romano
Titolo Volume
Network Tools and Applications in Biology NETTAB-BBCC 2010 Biological Wikis