Thanks a lot, Michael! I cc to R-help, where this question really belongs {as the 'Subject' suggests itself...} -- please drop 'bioconductor' from CC'ing further replies.
>>>>> "michael" == michael watson (IAH-C) <[EMAIL PROTECTED]> >>>>> on Thu, 17 Jun 2004 09:16:59 +0100 writes: michael> OK, admittedly it is not incredibly simple, but it michael> is not *that* difficult. michael> If you are familiar with R, it should take you an michael> hour or two; if unfamiliar, perhaps a day or two. michael> The commands you want (and need to read the help on) are: michael> hclust michael> plclust michael> cutree and I would add identify.hclust() {and rect.hclust()} a very neat but not known / used enough function a link to which I have just added to the help(hclust) page. Look at its examples {not with example() since they are "dontrun"} correcting the extraneous "." in the last (and coolest!) example! michael> dendrogram michael> as.dendrogram michael> heatmap where you use "dendrogram"s produced from "hclust" objects via as.dendrogram(<hc-obj>) or also "twins" objects produced from package cluster's agnes() or diana() via as.dendrogram(as.hclust( <twins-obj> ) ) help(dendrogram) also mentions "[[" (and shows examples) and cut() for cutting dendrograms and shows how you can depict dendrograms into its parts. michael> With intelligent use of hclust -> cutree -> subsetting -> hclust michael> (in that order) you will be able to drill down michael> into your dendrogram and create sub-trees - until michael> you get to the level where you can see your gene michael> names. or also hclust -> as.dendrogram -> cut -> .. -> [[ -> Note that there also is reorder.dendrogram() for reordering dendrogram nodes ``sensibly'' --- something that heatmap() does, but you can play with quite a bit. Further, note Catherine Hurley's "gclus" package which orders/reorders 'hclust' objects directly, but with a more interesting algorithm. Note that I'd strongly recommend to use R 1.9.1 beta for these, since I know which bugs in the dendrogram code I have fixed since R 1.9.0... michael> An important message to take home here is that if michael> you have 14000 genes and therefore 14000 labels, michael> it's going to be difficult to display your tree in michael> ANY software, including the expensive commercial products. not showing the labels and using identify.hclust() and the command line to extract the indices of observations in clusters (and subclusters) and visualize them in other, non-dendrogram plots, might well be feasible. michael> Let me know how you get on michael> Thanks michael> Mick michael> -----Original Message----- michael> From: [EMAIL PROTECTED] [mailto:[EMAIL PROTECTED] michael> Sent: 16 June 2004 21:26 michael> To: [EMAIL PROTECTED] michael> Subject: [BioC] Clustering in R >> Dear list members, >> I'm an undergrad and I work in a lab at Brandeis. >> I am trying to cluster around 14,000 genes across 6 >> microarray experiments. Two of these experiments >> are replicates. I have decided to use R since it >> seems to be the most complete and flexible software >> package for normalization and clustering of >> microarray data. >> The problem is that I am new to clustering and to >> R. Just to mention of a few of the problems I'm >> having: the dendrogram that is drawn by R from the >> agnes object is far too dense to see any of the >> gene names; kmeans won't work, returning an error >> saying that my data has NAs in it (there weren't >> any missing values in the original table though); >> I'd like to be able to see a heatmap or a >> cumulative plot of expression profiles for genes >> that are clustered together or are on the same >> branch of the dendrogram. >> I know that these questions are probably very >> simple, but I can't seem to find the answer to them >> online or in the documentation. If anyone can >> answer these questions or direct me toward >> resources that deal with clustering in R or >> BioConductor, a basic tutorial that takes a >> practical approach to it, I would really appreciate >> it. Any other reading material that isn't too >> heavy on statistics that deals with clustering for >> that matter, would be very helpful. >> Thank you in advance, >> Wayne Mak ______________________________________________ [EMAIL PROTECTED] mailing list https://www.stat.math.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide! http://www.R-project.org/posting-guide.html