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I am trying to make a circular plot of several angles' occurrences in one graph similar to these ones: enter image description here

The idea is to represent the distribution of each torsional angle (alpha, beta, etc.) with one circle. The higher the occurrence of that angle the darker the line within that circle.

My input file looks like this:

  1.00   14.01  171.64  -17.49  168.69 -150.94   10.27  -20.86  145.12  145.05   -7.43 -161.90   -5.87
  2.00   18.15 -172.52   -7.12  162.23  164.93   11.60   -1.73  154.66  158.51  -27.71 -174.80    0.62
  3.00    4.94 -167.07   -3.86  144.74 -164.88   -2.33  -19.91  145.94  148.27   -5.93  175.08  -12.85
  4.00  -15.02 -150.01  -12.18  155.77 -143.32    2.34  -12.78  137.45  142.44  -18.65  165.76   14.60
  5.00  -11.59 -154.16   -3.87  145.04 -170.26   11.28   -2.69  152.88  162.17  -28.51 -168.32   -9.84

First column is just index number and columns 2-12 are the distributions of 12 angles I want to plot. My angle values go from -180:180. I can easily change my input data depending on what I need for r. I am new to r and trying to do this using ggplot2. My main problem is I am not sure what is the best way to represent the distribution data in this case. One way that I thought of is to make 12 circles by ylim(c(1,12)) and represent each angle distribution by a rectangle with min and max distribution values as coordinates for that rectangle (so first column (or first angle) will be represented by a rectangle with ymin=1 and ymax=2, xmin=min(of column 1) and xmax=max(of column 1), etc.):

data = read.table("myinputfile")
ggplot(data, aes(xvar=-180:180,y=data$V2)) +
  ylim(c(1,13)) +
  geom_rect(aes(ymin=1, ymax=2, xmin=min(data$V2), xmax=max(data$V2))) +
  coord_polar()

This way I just tried to do one angle (column) to see if it will work, but it did not. I have also tried using geom_point or geom_boxplot (which are better to represent distribution data than geom_rect) but was unsuccessful.

Any insights, ideas, comments are greatly appreciated!

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This is interesting but could you provide your data with dput()? –  Paulo Cardoso May 10 at 21:50

1 Answer 1

up vote 2 down vote accepted

One possibility may be to use geom_segment. First you need to melt your data to a ggplot-able long format. Let the angle values represent x and xend values. Then create y and yend values which put the different types of angles on separate circles. Here's something to begin with:

library(reshape2)
library(ggplot2)

df2 <- melt(df, id.var = "V1")

df2$xend <- df2$value
df2$y <- as.numeric(as.factor(df2$variable))
df2$yend <- df2$y + 1

ggplot(data = df2, aes(x = value, xend = xend, y = y, yend = yend)) +
  geom_segment() +
  coord_polar() +
  scale_x_continuous(breaks = seq(-180, 180, 45)) +
  scale_y_continuous(breaks = min(df2$y):max(df2$yend)) +
  theme_bw()

enter image description here

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Thanks a lot @Henrik, this is very useful for me. –  user3290846 May 11 at 15:59
    
@user3290846 Great that you found my answer useful! –  Henrik May 11 at 16:01

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