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Simultaneous truth and performance level estimation (STAPLE) is a method for estimating a image segmentation. Commonly an image is segmented from a set of raters or readers. Here, we have an image that has been segmented from 3 different readers. Each is a binary segmentation, which includes areas of lesions from one person’s image.
Here we will use STAPLE to fuse the data:
library(stapler)
images = staple_example_data()
res = staple(x = images, set_orient = TRUE)
#> Reshaping images
#> All images are niftiImage ojects
#> Warning in `orientation<-`(`*tmp*`, value = ori): Image qform and sform
#> codes are both zero, so it cannot be reoriented
#> Warning in `orientation<-`(`*tmp*`, value = ori): Image qform and sform
#> codes are both zero, so it cannot be reoriented
#> Warning in `orientation<-`(`*tmp*`, value = ori): Image qform and sform
#> codes are both zero, so it cannot be reoriented
#> There are 2 levels present
#> Removing elements where all raters agree
#> Making multiple, matrices. Hot-one encode
#> Convergence!
#> Creating output probability images/arrays
#> Creating output label image/array
print(names(res))
#> [1] "sensitivity" "specificity" "probability"
#> [4] "label" "prior" "number_iterations"
#> [7] "convergence_threshold" "convergence_value" "converged"
We use the set_orient = TRUE
argument so that if the images headers are different, then they will be set to the same orientation when run. The staple
function will read in the images, reshape the data into a matrix, compute a prior for each element (voxel, in this case), run STAPLE. The output probability image, labeled image (if probability \(\geq 0.5\)), and prior image are given in the output res
.
STAPLE works with multi-class data as well. The data do not need to be binary, but they need to be consistently labeled for each image/segmentation. Here we will
x = matrix(rbinom(5000, size = 5, prob = 0.5), ncol = 1000)
table(x)
#> x
#> 0 1 2 3 4 5
#> 144 769 1565 1605 766 151
res_mult = staple_multi_mat(x)
#> There are 6 levels present
#> Removing elements where all raters agree
#> Making multiple, matrices. Hot-one encode
#> iter: 25, diff: 3.36496935143815e-06
#> iter: 50, diff: 8.45837011542727e-10
#> iter: 75, diff: 2.07500683302442e-13
#> Convergence!
ncol(res_mult$probability)
#> [1] 6
colnames(res_mult$probability)
#> [1] "0" "1" "2" "3" "4" "5"
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.