Please see my plot below: enter image description here

my code:

 > head(data)
              X0      X1      X2       X3       X4       X5       X6        X7        X8        X9
 NM_001001144 6.52334 9.75243 5.62914 6.833650 6.789850 7.421440 8.675330 12.117600 11.551500  7.676900
 NM_001001327 1.89826 3.74708 1.48213 0.590923 2.915120 4.052600 0.758997  3.653680  1.931400  2.487570
 NM_001002267 1.70346 2.72858 2.10879 1.898050 3.063480 4.435810 7.499640  5.038870 11.128700 22.016500
 NM_001003717 6.02279 7.46547 7.39593 7.344080 4.568470 3.347250 2.230450  3.598560  2.470390  4.184450
 NM_001003920 1.06842 1.11961 1.38981 1.054000 0.833823 0.866511 0.795384  0.980946  0.731532  0.949049
 NM_001003953 7.50832 7.13316 4.10741 5.327390 2.311230 1.023050 2.573220  1.883740  3.215150  2.483410

pd <- as.data.frame(scale(t(data)))
pd$Time <- sub("_.*", "", rownames(pd))
pd.m <- melt(pd)
pd.m$variable <- as.numeric(factor(pd.m$variable, levels =     rev(as.character(unique(pd.m$variable))), ordered=F))
p <- ggplot(pd.m, aes(Time, variable))
p  + geom_tile(aes(fill = value)) + scale_fill_gradient2(low=muted("blue"), high=muted("red")) +
  scale_x_discrete(labels=c("0h", "0.25h", "0.5h","1h","2h","3h","6h","12h","24h","48h")) + 
   theme_bw(base_size=20) + theme(axis.text.x=element_text(angle=0, vjust=0.5, hjust=0, size=12),
   axis.text.y=element_text(size=12), strip.text.y=element_text(angle=0, vjust=0.5, hjust=0.5, size=12),
   strip.text.x=element_text(size=12)) + labs(y="Genes", x="Time (h)", fill="")

Is there a way to cluster the plot so that the plot displays the dynamics in the time course. I would like to use the clustering that comes out of:

 hc.cols <- hclust(dist(t(data)))

enter image description here

  • Just fyi, I think it's frowned upon on SO to add "solved" to the title of your question. I removed it. – Rich Scriven Aug 27 '14 at 15:29
  • thanks! didnt know – user3741035 Aug 27 '14 at 15:57
up vote 10 down vote accepted

You can achieve this by defining the order of Timepoints in a dendrogram after you have applied hclust to your data:

data <- scale(t(data))
ord <- hclust( dist(data, method = "euclidean"), method = "ward.D" )$order
ord
[1]  2  3  1  4  8  5  6 10  7  9

The only thing you have to do then is transforming your Time-column to a factor where the factor levels are ordered by ord:

pd <- as.data.frame( data )
pd$Time <- sub("_.*", "", rownames(pd))
pd.m <- melt( pd, id.vars = "Time", variable.name = "Gene" )

pd.m$Gene <- factor( pd.m$Gene, levels = colnames(data), labels = seq_along( colnames(data) ) )
pd.m$Time <- factor( pd.m$Time, levels = rownames(data)[ord],  labels = c("0h", "0.25h", "0.5h","1h","2h","3h","6h","12h","24h","48h") )

The rest is done by ggplot automatically:

ggplot( pd.m, aes(Time, Gene) ) +
  geom_tile(aes(fill = value)) +
  scale_fill_gradient2(low=muted("blue"), high=muted("red"))

enter image description here

  • awesome, exactly what I wonted. Looked great on the whole dataset. – user3741035 Aug 27 '14 at 14:03
  • Sorry, in the first version the data where clustered by genes. This is fixed now. But notice, that the time axis is now out of order of course. So maybe you want to cluster by gene instead of clustering by time. Unless you are not expecting recurring effects over time, this would also make more sense to me. – Beasterfield Aug 27 '14 at 14:05
  • I actually want the version where it is clustered on time. – user3741035 Aug 27 '14 at 14:11
  • Sorry for bothering again. How would you go about to add row names in the plot? – user3741035 Aug 29 '14 at 19:59
  • Since you are assigning numbers to the gene names they appear like 1,2,3 and so on. – user3741035 Aug 29 '14 at 21:08

I don't think ggplot supports this out of the box, but you can use heatmap:

 heatmap(
   as.matrix(dat), Rowv=NA,
   Colv=as.dendrogram(hclust(dist(t(as.matrix(dat)))))
 )

enter image description here

Note this won't look like yours because I'm just using the head of your data, not the whole thing.

Here we specify the clustering manually with a dendogram derived from your hclust with the Colv argument. You can specify the clustering manually too through the Colv argument if the one used by default doesn't line up with what you want.

  • How do I set Rowv like the dendrogram above. – user3741035 Aug 27 '14 at 13:32
  • Try: heatmap(as.matrix(dat), Rowv=NA, Colv=as.dendrogram(hclust(dist(t(as.matrix(dat)))))) – BrodieG Aug 27 '14 at 13:39
  • @user3741035, also, note I meant Colv, not Rowv – BrodieG Aug 27 '14 at 13:39
  • that worked fine! – user3741035 Aug 27 '14 at 13:40

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