
doi: 10.1155/2010/853916
pmid: 20625424
pmc: PMC2896904
handle: 20.500.14243/144707 , 11367/81678 , 11367/81364
doi: 10.1155/2010/853916
pmid: 20625424
pmc: PMC2896904
handle: 20.500.14243/144707 , 11367/81678 , 11367/81364
In recent years, the introduction of massively parallel sequencing platforms for Next Generation Sequencing (NGS) protocols, able to simultaneously sequence hundred thousand DNA fragments, dramatically changed the landscape of the genetics studies. RNA-Seq for transcriptome studies, Chip-Seq for DNA-proteins interaction, CNV-Seq for large genome nucleotide variations are only some of the intriguing new applications supported by these innovative platforms. Among them RNA-Seq is perhaps the most complex NGS application. Expression levels of specific genes, differential splicing, allele-specific expression of transcripts can be accurately determined by RNA-Seq experiments to address many biological-related issues. All these attributes are not readily achievable from previously widespread hybridization-based or tag sequence-based approaches. However, the unprecedented level of sensitivity and the large amount of available data produced by NGS platforms provide clear advantages as well as new challenges and issues. This technology brings the great power to make several new biological observations and discoveries, it also requires a considerable effort in the development of new bioinformatics tools to deal with these massive data files. The paper aims to give a survey of the RNA-Seq methodology, particularly focusing on the challenges that this application presents both from a biological and a bioinformatics point of view.
Genome, Sequence Analysis, RNA, Gene Expression Profiling, Computational Biology, Review Article, NUCLEOTIDE RESOLUTION, CELL TRANSCRIPTOME, Gene Expression Regulation, EUKARYOTIC TRANSCRIPTOME, Animals, Humans, RNA, GENOME-WIDE ANALYSIS, GENE-EXPRESSION
Genome, Sequence Analysis, RNA, Gene Expression Profiling, Computational Biology, Review Article, NUCLEOTIDE RESOLUTION, CELL TRANSCRIPTOME, Gene Expression Regulation, EUKARYOTIC TRANSCRIPTOME, Animals, Humans, RNA, GENOME-WIDE ANALYSIS, GENE-EXPRESSION
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