# R: Using the segments function to plot a map of stacked lines

I have written a function that plots a number of lines along an axis, stacking them where they overlap. Below is the code, a sample table, and the image that it produces.

The plot is mostly exactly what I was looking for but for a few things (in order of importance):

1. Plotting the segments is an extremely slow process: about 1 segment every 0.5 seconds. Considering they are just lines I expected something much faster. I don't know the cause of this. I know that explicit loops can be slow in R so it might be this, or should I be plotting off-screen somehow and then pushing the plot to screen afterwards? Finding a time efficient method for plotting this kind of map is important because my tables can easily be tens of thousands of rows long.

2. I can't find any way of specifying the gap between y positions to be a fixed distance regardless of the number of Y positions. At the extreme, plotting just two segments produces a plot with the segments very far apart from each other.

Can anyone help me with either of these points (or indeed, anything else I could be doing better)?

(In this code reads == segments)

The function:

``````viewReads <- function(reads){
# sort by start

#---
# In the first iteration we work out the y-axis
# positions that segments should be plotted on
# segments should be plotted on the next availible
# y position without merging with another segment
#---
yread <- c(); #keeps track of the x space that is used up by segments

# get x axis limits
minstart <- min(sorted\$start);
maxend <- max(sorted\$end);

ypos <- c(); #holds the y pos of the ith segment

for (r in 1:nrow(sorted)){
placed <- FALSE;

# iterate through yread to find the next availible
# y pos at this x pos (start)
y <- 1;
while(!placed){

ypos[r] <- y;
placed <- TRUE;
}

# current y pos is used by another segment, increment
y <- y + 1;
# initialize another y pos if we're at the end of the list
}
}
}

# find the maximum y pos that is used to size up the plot
sorted\$ypos <- ypos;

# Now we have all the information, start the plot
plot.new();
plot.window(xlim=c(minstart, maxend+((maxend-minstart)/10)), ylim=c(1,maxy));
axis(3);

#---
# This second iteration plots the segments using the found y pos and
# the start and end values
#---
for (r in 1:nrow(sorted)){
# colour dependent on strand type
color = 'blue'
}else{
color = 'red'
}
#plot this segment!
}
}
``````

Sample code:

``````start   end strand
86  115 +
87  115 +
91  116 +
88  117 +
91  117 +
98  125 -
104 131 +
104 131 +
106 132 -
104 134 +
104 134 +
104 134 +
106 134 +
106 134 +
106 134 +
106 134 +
106 134 +
106 135 +
106 135 +
106 135 +
106 135 +
106 135 +
106 135 +
106 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
108 135 +
109 135 +
116 135 -
106 136 +
106 136 +
106 136 +
108 136 +
108 136 +
108 136 +
108 136 +
108 136 +
108 136 +
108 136 +
108 136 +
108 136 +
108 137 +
108 137 +
109 137 -
108 138 +
108 138 +
108 138 +
108 138 +
112 138 +
112 139 +
119 141 +
116 143 +
121 145 +
127 145 -
119 146 +
121 148 +
142 169 -
142 169 -
160 185 -
162 185 -
165 185 -
``````

result:

-
Can you check your copy+paste of your function? There's a premature closing } after `placed <- TRUE`. –  joran Mar 7 '12 at 19:12
Oh god, something went bad in the middle. Sorry, I'll have that fixed in a minute! –  Mattrition Mar 7 '12 at 19:14
Sounds like what happened to that sandwich I left in the fridge a few days ago. –  joran Mar 7 '12 at 19:17
Fixed! I think I must have slipped on my mouse and accidentally deleted a chunk :/ –  Mattrition Mar 7 '12 at 19:18
you could just prepare the arguments to `segments()` before hand, and make a single call to `segments()`, passing all arguments as vectors. This post includes an example of doing so: stackoverflow.com/questions/9202998/… –  tim riffe Mar 7 '12 at 19:53
Sorry, I don't have time for a worked-through example, but `segments()` (as well as other functions, like `polygons()`, `points()`, etc can take their arguments as vectors, such that you can do all of your drawing in a single function call. Often preparing the arguments prior to plotting (`apply()`ing or looping if necessary) can be way faster than repeated calls to these drawing functions. The answer in this post: Plotting a rather complex chart using R and axis break() gives a complete example of this approach. You'll definitely be able to apply this to your situation. Good luck! (and thanks for telling me to answer)