[BioC] Microarray PCA/MDS/SVD
Wolfgang Huber
huber at ebi.ac.uk
Tue Dec 9 15:37:21 CET 2008
Hi Yannick
this one is a good start:
The Elements of Statistical Learning
Data Mining, Inference, and Prediction
Series: Springer Series in Statistics
Hastie, Trevor, Tibshirani, Robert, Friedman, Jerome
1st ed. 2001. Corr. 3rd printing, 2003, 552 p., Hardcover
ISBN: 978-0-387-95284-0
A second edition is coming out early next year.
Re your points - see below:
> could someone recommend a review or book on PCA/MDS/SVD/Factor Analysis
> techniques & best practices for gene expression data?
>
> I want to visualize each of my samples (3 different conditions; 20
> timepoints - no need to visualize replication because things will become
> too messy) .
I am not sure I understand: making sure that variation between
replicates is small compared to the variation between your conditions
and timepoints seems like a basic sanity test - without which anything
that follows would be waste of time.
> But I'm frankly a bit overwhelmed by the plethora of options.
>
> My doubts include:
> - when it's appropriate to use which technique
> - should I use it on my complete normalized gene expression data
> set? Or only on significant genes?
Depends on what you want to see. The two options look for different things.
Best wishes
Wolfgang
----------------------------------------------------
Wolfgang Huber, EMBL-EBI, http://www.ebi.ac.uk/huber
> Or on the covariance matrix between
> microarrays?
> - even for a simple PCA, there are an overwhelming number of
> implementations in R (ade's dudi.pca, prcomp, princomp, several in MASS,
> several in pcaMethods)
>
> thanks :o)
>
> yannick
>
>
>
> --------------------------------------------
> yannick . wurm @ unil . ch
> Ant Genomics, Ecology & Evolution @ Lausanne
> http://www.unil.ch/dee/page28685_fr.html
>
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