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I am using R to create size frequency histograms for diseased and healthy individuals with fitted normal distribution lines. I have 2 issues that I'm seeking advice on.

  1. How do I create a histogram from aggregated data? The example table below has the summarized number of diseased and healthy individuals within each size.


'structure(list(Size = c(25L, 28L, 31L, 45L, 60L), diseased = c(0L, 
22L, 10L, 5L, 2L), healthy = c(55L, 40L, 15L, 7L, 2L)), .Names = c("Size", 
"diseased", "healthy"), class = "data.frame", row.names = c(NA, 

2.How do I overlay both histograms into 1 figure with fitted normal distribution lines.

I have tried the following code for aggregated data ggplot(data,aes(x=Size,y=diseased))+geom_bar(stat='identity'), which works well, but I can't figure out how to add the histogram for the healthy individuals.

I have also tried using the following text to revert the summarized data (called "data") to the original raw format: raw <- data[rep(1:data, times=data$diseased), "Size", drop=FALSE]

I get the following error message: Error in rep(1:data, times=data$diseased) : invalid 'times' argument. From previous comments, it appears that the rep function can't handle "0"

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marked as duplicate by Arun, Justin, mnel, Steven Penny, Neolisk Feb 26 '13 at 1:40

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

Does this post help?… or maybe better this:… – jasonflaherty Feb 25 '13 at 17:15
Can you make your data reproducible by showing the result of dput(data) or dput(head(data))? Also, how can your columns have different numbers of rows? – David Robinson Feb 25 '13 at 17:16
@DavidRobinson, I believe it is an exact duplicate of the post linked by buildakicker. – Arun Feb 25 '13 at 17:21
@Arun: It's possible, though I'm a bit unsure without more clarification from the OP. – David Robinson Feb 25 '13 at 17:23
yes, possibly. number of values in Size don't match that of disease and healthy. And the OP has given a data.frame as input in ggplot but taken the trouble to provide separate data... – Arun Feb 25 '13 at 17:25

So, I'm in a hurry and I kind of hacked together the normal curve, but you can use this to plot two "histogram-style" plots on top of each other.

It would be easier to get the curves if we had the full data set and not just summaries, of course. I kind of fudged them together, but I think it's enough to get the general idea here.

I'm not totally clear on why you would want to do this, but you can...

library(SDMTools) # Use this to get weighted means

testdata <- structure(list(Size=c(25L, 28L, 31L, 45L, 60L),
                           diseased=c(0L, 22L, 10L, 5L, 2L),
                           healthy=c(55L, 40L, 15L, 7L, 2L)),
                      .Names = c("Size", "diseased", "healthy"),
                      class = "data.frame",
                      row.names = c(NA, -5L))

        names.arg=paste("                 ",testdata$Size),
        col="light blue",

healthy_mean <- wt.mean(x=testdata$healthy,wt=testdata$Size)
healthy_sd <-$healthy,wt=testdata$Size)
diseased_mean <- wt.mean(x=testdata$diseased,wt=testdata$Size)
diseased_sd <-$diseased,wt=testdata$Size)

yfit_healthy <-$healthy),
names(yfit_healthy) <- "y"
yfit_diseased <-$diseased),
names(yfit_diseased) <- "y"

yfit_healthy$x <- seq(0,6,length.out=length(yfit_healthy$y))
yfit_diseased$x <- seq(0,6,length.out=length(yfit_diseased$y))



This code gets me:

Not Exactly My Finest Graph

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