Exon Arrays Vs Rna-Seq
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13.1 years ago
Travis ★ 2.8k

Hi all,

I am wondering if anyone has experience (or has read something relevant) in the area of comparing the pros and cons of RNA-Seq vs Exon arrays.

As a starter, RNA-Seq enables a hypothesis neutral approach whilst exon arrays are more mature/validated etc.

Further thoughts would be appreciated.

rna next-gen sequencing exon • 6.7k views
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13.1 years ago
Neilfws 49k

Quite a few articles have appeared recently on this topic.

They state that RNA-Seq has quite a high error rate for genes with low expression levels.

Just to add more complexity, they employ proteomics as a third measure and state that RNA-Seq agrees better with protein levels.

They suggest that compared with RNA-Seq, exon arrays have a systematic error which leads to over-estimation of alternative transcripts.

Poster from Applied Biosystems: concludes that both approaches are useful and complementary.

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Each have pros and cons for sure. If AB can't even manage to slate exon arrays then they must be ok :)

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13.1 years ago
brentp 24k

Have a look at this recent paper Human transcriptome array for high-throughput clinical studies

It gives a favorable view of the 6.9 million feature chip and weighs the pros and cons.

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12.8 years ago

This thread describes the: Expected correlation between Exon Array and RNA-Seq.

The paper Alternative expression analysis by RNA sequencing contains a variety of comparisons between Affymetrix Exon arrays, custom NimbleGen arrays, and RNA-seq. The paper RNA-seq: An assessment of technical reproducibility and comparison with gene expression arrays also seems relevant.

As someone who has worked with both microarrays (including custom designed arrays), and RNA-seq I think you hit the nail on the head with your comment about the hypothesis neutral approach of RNA-seq. IMHO, being locked to extant information at design time is a significant limitation of microarrays (one that is impractical to overcome).

Other pros of RNA-seq over microarrays include: theoretically unlimited dynamic range and better signal-to-noise ratio. Probably the clincher though is the diversity of information your can simultaneously obtain (with appropriate analyses of course): gene expression, alternative isoform detection and quantification, mutation detection, allele specific expression, gene fusion discovery and quantification, RNA editing, etc.

One pro of microarrays is that they have arguably more robust strand specific assays currently. Another is that they are less influenced by a wide expression distribution/range (the difference in copy number between the lowest and highest expressed transcripts in the cell). This is both the blessing and the curse of the finite dynamic range in microarrays. In RNA-seq, the random sampling nature of the assay means that you can burn a large percentage of your data sequencing the top N% of expressed genes. I have seen libraries where >75% of sequenced reads corresponded to the top 5 genes. Microarrays do not suffer from this phenomenon, although you can improve signal by enriching for polyA+ RNA or otherwise removing rRNA species.

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