The RNiftyReg package is an R-native interface to the NiftyReg image registration
library. The package incorporates the library, so it does not need
to be installed separately, and it replaces the NiftyReg command-line
front-end with a direct, in-memory bridge to R, based on the RNifti
package.
This README file primarily covers version 2.0.0 of the
package and later. The interface was substantially reworked in that
version to make it more natural and less verbose, and earlier versions
are incompatible. Information on moving from prior versions of
RNiftyReg to 2.x is included at the end of this
file.
The package can be installed from CRAN, or the latest development version obtained directly from GitHub:
## install.packages("remotes")
remotes::install_github("jonclayden/RNiftyReg")The mmand
package for image processing may also be useful, and is used in some
of the examples below.
RNiftyReg may be used to register and manipulate two and
three dimensional images of any sort, although its origins are in
medical imaging. Medical images in the standard NIfTI-1 format may be
read into R using the readNifti function, which is based on
the first-party RNifti
package.
library(RNiftyReg)
image <- readNifti(system.file("extdata", "epi_t2.nii.gz", package="RNiftyReg"))This image is an R array with some additional attributes containing information such as its dimensions and the size of its pixels (or voxels, in this case, since it is a 3D image).
As mentioned above, however, images do not have to be in NIfTI-1 format. Any numeric matrix or array can be used, and standard image formats such as JPEG and PNG can be read in using additional packages. For example,
## install.packages("jpeg")
library(jpeg)
image <- readJPEG(system.file("extdata", "house_colour_large.jpg", package="RNiftyReg"))Complementary writeNifti and writeJPEG
functions are provided by the RNifti and jpeg
packages, respectively.
Once two or more images have been read into R, they can be registered. Registration is the dual operation of searching a space of transformations for the best way to align two images, and then resampling one image onto the grid of the other. The images need not be the same size or in the same orientation.
There are two main classes of transformation available: linear and nonlinear. Linear, and specifically affine, transforms can represent translation, scaling and rotation in 2D or 3D space. They have up to 12 degrees of freedom and are appropriate to capture global shifts between images. Nonlinear transformations have many more degrees of freedom, and can capture localised distortions between images, but they are more time-consuming to estimate and more complex to work with.
Some sample 3D medical images are included with the package. We begin
by registering two brain scan images, of the same person, with different
contrasts. First we read them in, and then we pass them to the package’s
core registration function, niftyreg.
source <- readNifti(system.file("extdata", "epi_t2.nii.gz", package="RNiftyReg"))
target <- readNifti(system.file("extdata", "flash_t1.nii.gz", package="RNiftyReg"))
result <- niftyreg(source, target)The last command will take a few seconds to complete. The
result is a list with a number of components, the most
important of which is the resampled source image in target space,
result$image.
By default the transformation will be an affine matrix. If we want to allow for a nonlinear transformation, with scope for local deformations between one space and the other, we can perform an additional registration as follows.
result <- niftyreg(source, target, scope="nonlinear", init=forward(result))Notice the scope argument, and also the fact that we use
the result of the previous linear registration to initialise the
nonlinear one. (The forward function extracts the forward
transformation from the previous registration.) This should result in
reduced convergence time, since the affine transformation provides a
first approximation for the nonlinear registration algorithm.
Nevertheless, this algorithm will generally take longer to complete.
Once a transformation between two images has been established through
registration, it can be extracted, applied to another image or pixel
coordinates, or manipulated. Transformations can also be read from or
written to file, or created from scratch. Registration is by default
symmetric, meaning that forward and reverse transformations are
calculated simultaneously. These can be extracted using the
forward and reverse functions.
Let’s use a simple image by way of example. We will need the
jpeg package to read it in, and the mmand
package (version 1.2.0 or later) to visualise it.
## install.packages(c("jpeg","mmand"))
library(jpeg); library(mmand)
##
## Attaching package: 'mmand'
## The following object is masked from 'package:RNiftyReg':
##
## rescale
house <- readJPEG(system.file("extdata", "house_colour_large.jpg", package="RNiftyReg"))
display(house)
Clearly this is a colour image, with red, green and blue channels.
RNiftyReg can work with it in this format, but internally
the channels will be averaged before the registration starts. This step
performs a colour-to-greyscale conversion equivalent to
house_bw <- apply(house, 1:2, mean)
display(house_bw)
Now, instead of registering the image to another image, let’s create a simple affine transformation that applies a skew to the image.
affine <- buildAffine(skews=0.1, source=house)
print(affine)
## NiftyReg affine matrix:
## 1.0 -0.1 0.0 0.0
## 0.0 1.0 0.0 0.0
## 0.0 0.0 1.0 0.0
## 0.0 0.0 0.0 1.0
## Source origin: (1, 1, 1)
## Target origin: (1, 1, 1)So, this is a diagonal matrix with just a single off-diagonal
element, which produces the skew effect. (The sign is negative because
NiftyReg actually represents transforms from target to source space, not
the more intuitive reverse.) Let’s apply it to the image using the
important applyTransform function, and see the effect.
house_skewed <- applyTransform(affine, house)
display(house_skewed)
Moreover, we can transform a pixel coordinate into the space of the skewed image:
applyTransform(affine, c(182,262,1))
## [1] 208.1 262.0 1.0Notice that the skew changes the first coordinate (in the up-down direction), but not the second (in the left-right direction) or third (the colour channel number).
Finally, we can register the original image to the skewed one, to recover the transformation:
result <- niftyreg(house, house_skewed, scope="affine")
print(forward(result))
## NiftyReg affine matrix:
## 1.0008598566 -0.0992648527 0.0000000000 -0.2597596645
## -0.0009524839 0.9996437430 0.0000000000 0.3225949407
## 0.0000000000 0.0000000000 1.0000000000 0.0000000000
## 0.0000000000 0.0000000000 0.0000000000 1.0000000000
## Source origin: (1, 1, 1)
## Target origin: (1, 1, 1)Notice that the estimated transformation closely approximates the generative one, with the element in row 1, column 2 being very close to -0.1. We can decompose this estimated transformation and recover the skew component:
decomposeAffine(forward(result))$skews
## xy xz yz
## 0.1001419 0.0000000 0.0000000Two other manipulations can be helpful to know about. The first is calculating a half-transform, which can be used to transform the image into a space halfway to the target. For example, using our registration result from above,
half_xfm <- halfTransform(forward(result))
display(applyTransform(half_xfm, house))
This results in half of the skew effect being applied. Finally, the
composeTransforms function allows the effects of two
transforms to be combined together. Combining a half-transform with
itself will result in the original full transform.
all.equal(forward(result), composeTransforms(half_xfm,half_xfm), check.attributes=FALSE)
## [1] TRUEThe package provides a group of convenience
functions—translate, rescale,
skew and rotate—which can be used to quickly
apply simple transformations to an image. For example, the skew
operation applied above can be more compactly written as
house_skewed <- skew(house, 0.1)
display(house_skewed)
Since these take the image as their first argument, they are
compatible with the chaining operator from the popular
magrittr package. However, because such a chain applies
multiple transformations to an image, there may be a loss of precision,
or of data, compared to a single more complex operation. For example,
while
library(magrittr)
house_transformed <- house %>% rotate(pi/4, anchor="centre") %>% translate(30)
display(house_transformed)
is much more readable than
xfm <- composeTransforms(buildAffine(angles=pi/4, anchor="centre", source=house), buildAffine(translation=30, source=house))
house_transformed <- applyTransform(xfm, house)
display(house_transformed)
the latter avoids the creation of a black band across the top of the final image, since it has access to the full content of the original image, rather than just the truncated version produced by the rotation.
RNiftyReg 2.0.0 is a more-or-less complete rewrite of
the package, with the goals of simplifying both the package’s
dependencies and its usage. The upstream NiftyReg code has also been
updated. However, it should still be possible to read and use
transformations created using RNiftyReg 1.x.
The core changes are
oro.nifti package is no longer needed, nor used for
reading and writing NIfTI files (RNiftyReg now offers
readNifti and writeNifti, which are much
faster). However, objects of S4 class nifti can still be
used with the package if desired. Functions return either plain R arrays
with attributes or bare-bones internalImage objects, which
contain only some basic metadata and a pointer to a C-level data
structure.halfTransform), composing two transforms
(composeTransforms), and building an affine transform from
scratch (buildAffine).niftyreg function, and its linear and
nonlinear special cases, have changed in both name and defaults. See
?niftyreg and related help pages for details.applyAffine, applyControlPoints,
transformWithAffine and
transformWithControlPoints functions is done by the
flexible new applyTransform function. The forward and
reverse transforms can always be obtained from a registration using the
new forward and reverse functions, no matter
what their type is. However, some affine-only functions, such as
decomposeAffine, retain their names.affineType attribute has gone, and
convertAffine is no longer a user-visible function. All
affine matrices are stored using the NiftyReg convention. FSL-FLIRT
affines can still be read in, but they are converted to NiftyReg
convention immediately. In addition, source and target image information
is attached to the transforms in attributes, and so does not need to be
specified in most function calls.