# Chord diagram in R

Is there any package in cran which could plot a chord layout like this: (this visualization is also called chord diagram)

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I'm looking for a native way to do this in R (preferably ggplot2) as well. Would be great if someone wrote a function for it. – Chris May 6 '13 at 17:14

I wrote the following several years ago, but never really used it: feel free to adapt it to your needs, or even turn it into a full-fledged package.

``````# Return a line in the Poincare disk, i.e.,
# a circle arc, perpendicular to the unit circle, through two given points.
poincare_segment <- function(u1, u2, v1, v2) {
# Check that the points are sufficiently different
if( abs(u1-v1) < 1e-6 && abs(u2-v2) < 1e-6 )
return( list(x=c(u1,v1), y=c(u2,v2)) )
# Check that we are in the circle
stopifnot( u1^2 + u2^2 - 1 <= 1e-6 )
stopifnot( v1^2 + v2^2 - 1 <= 1e-6 )
# Check it is not a diameter
if( abs( u1*v2 - u2*v1 ) < 1e-6 )
return( list(x=c(u1,v1), y=c(u2,v2)) )
# Equation of the line: x^2 + y^2 + ax + by + 1 = 0 (circles orthogonal to the unit circle)
a <- ( u2 * (v1^2+v2^2) - v2 * (u1^2+u2^2) + u2 - v2 ) / ( u1*v2 - u2*v1 )
b <- ( u1 * (v1^2+v2^2) - v1 * (u1^2+u2^2) + u1 - v1 ) / ( u2*v1 - u1*v2 ) # Swap 1's and 2's
# Center and radius of the circle
cx <- -a/2
cy <- -b/2
radius <- sqrt( (a^2+b^2)/4 - 1 )
# Which portion of the circle should we draw?
theta1 <- atan2( u2-cy, u1-cx )
theta2 <- atan2( v2-cy, v1-cx )
if( theta2 - theta1 > pi )
theta2 <- theta2 - 2 * pi
else if( theta2 - theta1 < - pi )
theta2 <- theta2 + 2 * pi
theta <- seq( theta1, theta2, length=100 )
x <- cx + radius * cos( theta )
y <- cy + radius * sin( theta )
list( x=x, y=y )
}

# Sample data
n <- 10
m <- 7
segment_weight <- abs(rnorm(n))
segment_weight <- segment_weight / sum(segment_weight)
d <- matrix(abs(rnorm(n*n)),nr=n, nc=n)
diag(d) <- 0 # No loops allowed
# The weighted graph comes from two quantitative variables
d[1:m,1:m] <- 0
d[(m+1):n,(m+1):n] <- 0
ribbon_weight <- t(d) / apply(d,2,sum) # The sum of each row is 1; use as ribbon_weight[from,to]
ribbon_order <- t(apply(d,2,function(...)sample(1:n))) # Each row contains sample(1:n); use as ribbon_order[from,i]
segment_colour <- rainbow(n)
segment_colour <- brewer.pal(n,"Set3")
transparent_segment_colour <- rgb(t(col2rgb(segment_colour)/255),alpha=.5)
ribbon_colour <- matrix(rainbow(n*n), nr=n, nc=n) # Not used, actually...
ribbon_colour[1:m,(m+1):n] <- transparent_segment_colour[1:m]
ribbon_colour[(m+1):n,1:m] <- t(ribbon_colour[1:m,(m+1):n])

# Plot
gap <- .01
x <- c( segment_weight[1:m], gap, segment_weight[(m+1):n], gap )
x <- x / sum(x)
x <- cumsum(x)
segment_start <- c(0,x[1:m-1],x[(m+1):n])
segment_end   <- c(x[1:m],x[(m+2):(n+1)])
start1 <- start2 <- end1 <- end2 <- ifelse(is.na(ribbon_weight),NA,NA)
x <- 0
for (from in 1:n) {
x <- segment_start[from]
for (i in 1:n) {
to <- ribbon_order[from,i]
y <- x + ribbon_weight[from,to] * ( segment_end[from] - segment_start[from] )
if( from < to ) {
start1[from,to] <- x
start2[from,to] <- y
} else if( from > to ) {
end1[to,from] <- x
end2[to,from] <- y
} else {
# no loops allowed
}
x <- y
}
}

par(mar=c(1,1,2,1))
plot(
0,0,
xlim=c(-1,1),ylim=c(-1,1), type="n", axes=FALSE,
main="Two qualitative variables in polar coordinates", xlab="", ylab="")
for(from in 1:n) {
for(to in 1:n) {
if(from<to) {
u <- start1[from,to]
v <- start2[from,to]
x <- end1  [from,to]
y <- end2  [from,to]
if(!is.na(u*v*x*y)) {
r1 <- poincare_segment( cos(2*pi*v), sin(2*pi*v), cos(2*pi*x), sin(2*pi*x) )
r2 <- poincare_segment( cos(2*pi*y), sin(2*pi*y), cos(2*pi*u), sin(2*pi*u) )
th1 <- 2*pi*seq(u,v,length=20)
th2 <- 2*pi*seq(x,y,length=20)
polygon(
c( cos(th1), r1\$x, rev(cos(th2)), r2\$x ),
c( sin(th1), r1\$y, rev(sin(th2)), r2\$y ),
col=transparent_segment_colour[from], border=NA
)
}
}
}
}
for(i in 1:n) {
theta <- 2*pi*seq(segment_start[i], segment_end[i], length=100)
r1 <- 1
r2 <- 1.05
polygon(
c( r1*cos(theta), rev(r2*cos(theta)) ),
c( r1*sin(theta), rev(r2*sin(theta)) ),
col=segment_colour[i], border="black"
)
}
``````

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The RCircos package can do this

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In case that you are not looking to particularly plot genomic data, but data from any domain, I think that the recently published package circlize: Circular Visualization in R provides a more straightforward approach than RCircos.

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That looks very much like a Circos plot. Circos is implemented in Perl, but you could use R to shape your data so you can feed it into Circos. There is a related question at BioStar though: http://www.biostars.org/p/17728/

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yea i could do it in d3 also. But didnt wanted to move from R. – FUD Jan 30 '13 at 8:11

if you are familiar with ggplot, then ggbio is the way to go.

Documentation is available here: http://www.tengfei.name/ggbio/

The function to plot circular plots is layout_circle(). Another very useful function to plot genomic data is layout_karyogram().

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