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Is there anyway to add a reduced major axis line (and ideally CI) to a ggplot? I know I can use method="lm" to get an OLS fit, but there doesn't seem to be a default method for RMA. I can get the RMA coefs and the CI interval from package lmodel2, but adding them with geom_abline() doesn't seem to work. Here's dummy data and code. I just want to replace the OLS line and CI with a RMA line and CI:

dat <- data.frame(a=log10(rnorm(50, 30, 10)), b=log10(rnorm(50, 20, 2)))

ggplot(dat, aes(x=a, y=b) ) + 
    geom_point(shape=1) +       
    geom_smooth(method="lm") 

Edit1: the code below gets the RMA (here called SMA - standardized major axis) coefs and CIs. Package lmodel2 provides more detailed output, while package smatr returns just the coefs and CIs, if that's any help:

library(lmodel2)
fit1 <- lmodel2(b ~ a, data=dat)

library(smatr)
fit2 <- line.cis(b, a, data=dat)
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1  
please add the code for lmodel2() that you are using. –  Chase May 23 '11 at 21:54

2 Answers 2

up vote 4 down vote accepted

As Chase commented, the actual lmodel2() code and the ggplot code you are using would be helpful. But here's an example that may point you in the right direction:

dat <- data.frame(a=log10(rnorm(50, 30, 10)), b=log10(rnorm(50, 20, 2)))
mod <- lmodel2(a ~ b, data=dat,"interval", "interval", 99)

#EDIT: mod is a list, with components (data.frames) regression.results and 
#        confidence.intervals containing the intercepts+slopes for different 
#        estimation methods; just put the right values into geom_abline
ggplot(dat,aes(x=b,y=a)) + geom_point() + 
   geom_abline(intercept=mod$regression.results[4,2],
            slope=mod$regression.results[4,3],colour="blue") + 
   geom_abline(intercept=mod$confidence.intervals[4,2],
            slope=mod$confidence.intervals[4,4],colour="red") + 
   geom_abline(intercept=mod$confidence.intervals[4,3],
            slope=mod$confidence.intervals[4,5],colour="red") + 
   xlim(c(-10,10)) + ylim(c(-10,10))

Full disclosure: I know nothing about RMA regression, so I just plucked out the relevent slopes and intercepts and plopped them into geom_abline(), using some example code from lmodel2 as a guide. The CIs produced in this toy example don't seem to make much sense, since I had to force ggplot to zoom out using xlim() and ylim() in order to see the CI lines (red).

But maybe this will help you construct a working example in ggplot().

EDIT2: With OPs added code to extract the coefficients, the ggplot() would be something like this:

ggplot(dat,aes(x=b,y=a)) + geom_point() + 
geom_abline(intercept=fit2[1,1],slope=fit2[2,1],colour="blue") + 
geom_abline(intercept=fit2[1,2],slope=fit2[2,2],colour="red") + 
geom_abline(intercept=fit2[1,3],slope=fit2[2,3],colour="red")
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Exactly what I was going to write up, +1. The thing to note here is that lmodel2() returns a list, and the regression.results are a data.frame which are part of that list. From there, it's just a matter of specifying what you want to extract from that data.frame. –  Chase May 23 '11 at 22:22
    
@Chase - Edited to include your points, thanks. Annoyingly, the regression.results data.frame has some strange colnames, presumably for visual effect. The "Slope" column is really " Slope". That tripped me up briefly, and is why I ended up using "[". –  joran May 23 '11 at 22:30
    
Thanks, this works well for the actual line, though any ideas why the CIs are so weird? Also, in this package RMA=ranged major axis and SMA=reduced(standardized) major axis, so the row numbers would be 3 rather than 4. The smatr package, which i gave code for in an edit to my question, actually makes it easier to get the coefs. –  Steve May 23 '11 at 22:37
    
never mind - once I corrected the row numbers to be 3, the CIs worked fine, thanks a lot. –  Steve May 23 '11 at 22:47
    
@Steve - Haven't the foggiest notion; don't know much about this type of regression. That might be a better question for stats.stackexchange.com. –  joran May 23 '11 at 22:49

Building off Joran's answer, I think it's a little easier to pass the whole data frame to geom_abline:

library(ggplot2)
library(lmodel2)

dat <- data.frame(a=log10(rnorm(50, 30, 10)), b=log10(rnorm(50, 20, 2)))
mod <- lmodel2(a ~ b, data=dat,"interval", "interval", 99)

reg <- mod$regression.results
names(reg) <- c("method", "intercept", "slope", "angle", "p-value")

ggplot(dat) + 
  geom_point(aes(b, a)) +
  geom_abline(data = reg, aes(intercept = intercept, slope = slope, colour = method))
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