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mia-2dmyoica-nonrigid2(1) | General Commands Manual | mia-2dmyoica-nonrigid2(1) |
NAME¶
('mia\-2dmyoica\-nonrigid2',) - Run a registration of a series of 2D images.SYNOPSIS¶
mia-2dmyoica-nonrigid2 -i <in-file> -o <out-file> [options]DESCRIPTION¶
mia-2dmyoica-nonrigid2 This program runs the non-rigid registration of an perfusion image series.In each pass, first an ICA analysis is run to estimate and eliminate the periodic movement and create reference images with intensities similar to the corresponding original image. Then non-rigid registration is run using the an "ssd + divcurl" cost model. The B-spline c-rate and the divcurl cost weight are changed in each pass according to given parameters.In the first pass a bounding box around the LV myocardium may be extractedto speed up computation Special note to this implemnentation: the registration is always run from the original images to avoid the accumulation of interpolation errors.OPTIONS¶
File-IO¶
- -i --in-file=(input, required); string
- input perfusion data set
- -o --out-file=(output, required); string
- output perfusion data set
- -r --registered=reg
- file name base for registered fiels
- --save-cropped=
- save cropped set to this file
- --save-feature=
- save segmentation feature images and initial ICA mixing matrix
ICA¶
- --fastica=internal
- FastICA implementationto be used For supported plugins see PLUGINS:fastica/implementation
- -C --components=0
- ICA components 0 = automatic estimation
- --normalize
- don't normalized ICs
- --no-meanstrip
- don't strip the mean from the mixing curves
- -s --segscale=0
- segment and scale the crop box around the LV (0=no segmentation)
- -k --skip=0
- skip images at the beginning of the series e.g. because as they are of other modalities
- -m --max-ica-iter=400
- maximum number of iterations in ICA
- -E --segmethod=features
- Segmentation method
delta-peak ‐ difference of the peak
enhancement images
features ‐ feature images
delta-feature ‐ difference of the feature
images
Registration¶
- -O --optimizer=gsl:opt=gd,step=0.1
- Optimizer used for minimization For supported plugins see PLUGINS:minimizer/singlecost
- -a --start-c-rate=32
- start coefficinet rate in spines, gets divided by --c-rate-divider with every pass
- --c-rate-divider=4
- cofficient rate divider for each pass
- -d --start-divcurl=20
- start divcurl weight, gets divided by --divcurl-divider with every pass
- --divcurl-divider=4
- divcurl weight scaling with each new pass
- -w --imageweight=1
- image cost weight
- -p --interpolator=bspline:d=3
- image interpolator kernel For supported plugins see PLUGINS:1d/splinekernel
- -l --mg-levels=3
- multi-resolution levels
- -P --passes=3
- registration passes
Help & Info¶
- -V --verbose=warning
- verbosity of output, print messages of given level and higher priorities. Supported priorities starting at lowest level are:
info ‐ Low level messages
trace ‐ Function call trace
fail ‐ Report test failures
warning ‐ Warnings
error ‐ Report errors
debug ‐ Debug output
message ‐ Normal messages
fatal ‐ Report only fatal errors
- --copyright
- print copyright information
- -h --help
- print this help
- -? --usage
- print a short help
- --version
- print the version number and exit
Processing¶
- --threads=-1
- Maxiumum number of threads to use for processing,This number should be lower or equal to the number of logical processor cores in the machine. (-1: automatic estimation).
PLUGINS: 1d/splinekernel¶
- bspline
- B-spline kernel creation , supported parameters are:
d = 3; int in [0, 5]
Spline degree.
- omoms
- OMoms-spline kernel creation, supported parameters are:
d = 3; int in [3, 3]
Spline degree.
PLUGINS: fastica/implementation¶
- internal
- This is the MIA implementation of the FastICA algorithm.
(no parameters)
- itpp
- This is the IT++ implementation of the FastICA algorithm.
(no parameters)
PLUGINS: minimizer/singlecost¶
- gdas
- Gradient descent with automatic step size correction., supported parameters are:
ftolr = 0; double in [0, inf)
Stop if the relative change of the criterion is below..
max-step = 2; double in (0, inf)
Maximal absolute step size.
maxiter = 200; uint in [1, inf)
Stopping criterion: the maximum number of iterations.
min-step = 0.1; double in (0, inf)
Minimal absolute step size.
xtola = 0.01; double in [0, inf)
Stop if the inf-norm of the change applied to x is below
this value..
- gdsq
- Gradient descent with quadratic step estimation, supported parameters are:
ftolr = 0; double in [0, inf)
Stop if the relative change of the criterion is below..
gtola = 0; double in [0, inf)
Stop if the inf-norm of the gradient is below this
value..
maxiter = 100; uint in [1, inf)
Stopping criterion: the maximum number of iterations.
scale = 2; double in (1, inf)
Fallback fixed step size scaling.
step = 0.1; double in (0, inf)
Initial step size.
xtola = 0; double in [0, inf)
Stop if the inf-norm of x-update is below this value..
- gsl
- optimizer plugin based on the multimin optimizers of the GNU Scientific Library (GSL) https://www.gnu.org/software/gsl/, supported parameters are:
eps = 0.01; double in (0, inf)
gradient based optimizers: stop when |grad| < eps,
simplex: stop when simplex size < eps..
iter = 100; uint in [1, inf)
maximum number of iterations.
opt = gd; dict
Specific optimizer to be used.. Supported values are:
bfgs ‐
Broyden-Fletcher-Goldfarb-Shann
bfgs2 ‐ Broyden-Fletcher-Goldfarb-Shann
(most efficient version)
cg-fr ‐ Flecher-Reeves conjugate gradient
algorithm
gd ‐ Gradient descent.
simplex ‐ Simplex algorithm of Nelder and
Mead
cg-pr ‐ Polak-Ribiere conjugate gradient
algorithm
step = 0.001; double in (0, inf)
initial step size.
tol = 0.1; double in (0, inf)
some tolerance parameter.
- nlopt
- Minimizer algorithms using the NLOPT library, for a description of the optimizers please see 'http://ab-initio.mit.edu/wiki/index.php/NLopt_Algorithms', supported parameters are:
ftola = 0; double in [0, inf)
Stopping criterion: the absolute change of the objective
value is below this value.
ftolr = 0; double in [0, inf)
Stopping criterion: the relative change of the objective
value is below this value.
higher = inf; double
Higher boundary (equal for all parameters).
local-opt = none; dict
local minimization algorithm that may be required for the
main minimization algorithm.. Supported values are:
gn-orig-direct-l ‐ Dividing Rectangles
(original implementation, locally biased)
gn-direct-l-noscal ‐ Dividing Rectangles
(unscaled, locally biased)
gn-isres ‐ Improved Stochastic Ranking
Evolution Strategy
ld-tnewton ‐ Truncated Newton
gn-direct-l-rand ‐ Dividing Rectangles
(locally biased, randomized)
ln-newuoa ‐ Derivative-free Unconstrained
Optimization by Iteratively Constructed Quadratic Approximation
gn-direct-l-rand-noscale ‐ Dividing
Rectangles (unscaled, locally biased, randomized)
gn-orig-direct ‐ Dividing Rectangles
(original implementation)
ld-tnewton-precond ‐ Preconditioned
Truncated Newton
ld-tnewton-restart ‐ Truncated Newton with
steepest-descent restarting
gn-direct ‐ Dividing Rectangles
ln-neldermead ‐ Nelder-Mead simplex
algorithm
ln-cobyla ‐ Constrained Optimization BY
Linear Approximation
gn-crs2-lm ‐ Controlled Random Search with
Local Mutation
ld-var2 ‐ Shifted Limited-Memory
Variable-Metric, Rank 2
ld-var1 ‐ Shifted Limited-Memory
Variable-Metric, Rank 1
ld-mma ‐ Method of Moving Asymptotes
ld-lbfgs-nocedal ‐ None
ld-lbfgs ‐ Low-storage BFGS
gn-direct-l ‐ Dividing Rectangles (locally
biased)
none ‐ don't specify algorithm
ln-bobyqa ‐ Derivative-free
Bound-constrained Optimization
ln-sbplx ‐ Subplex variant of
Nelder-Mead
ln-newuoa-bound ‐ Derivative-free
Bound-constrained Optimization by Iteratively Constructed Quadratic
Approximation
ln-praxis ‐ Gradient-free Local
Optimization via the Principal-Axis Method
gn-direct-noscal ‐ Dividing Rectangles
(unscaled)
ld-tnewton-precond-restart ‐ Preconditioned
Truncated Newton with steepest-descent restarting
lower = -inf; double
Lower boundary (equal for all parameters).
maxiter = 100; int in [1, inf)
Stopping criterion: the maximum number of iterations.
opt = ld-lbfgs; dict
main minimization algorithm. Supported values are:
gn-orig-direct-l ‐ Dividing Rectangles
(original implementation, locally biased)
g-mlsl-lds ‐ Multi-Level Single-Linkage
(low-discrepancy-sequence, require local gradient based optimization and
bounds)
gn-direct-l-noscal ‐ Dividing Rectangles
(unscaled, locally biased)
gn-isres ‐ Improved Stochastic Ranking
Evolution Strategy
ld-tnewton ‐ Truncated Newton
gn-direct-l-rand ‐ Dividing Rectangles
(locally biased, randomized)
ln-newuoa ‐ Derivative-free Unconstrained
Optimization by Iteratively Constructed Quadratic Approximation
gn-direct-l-rand-noscale ‐ Dividing
Rectangles (unscaled, locally biased, randomized)
gn-orig-direct ‐ Dividing Rectangles
(original implementation)
ld-tnewton-precond ‐ Preconditioned
Truncated Newton
ld-tnewton-restart ‐ Truncated Newton with
steepest-descent restarting
gn-direct ‐ Dividing Rectangles
auglag-eq ‐ Augmented Lagrangian algorithm
with equality constraints only
ln-neldermead ‐ Nelder-Mead simplex
algorithm
ln-cobyla ‐ Constrained Optimization BY
Linear Approximation
gn-crs2-lm ‐ Controlled Random Search with
Local Mutation
ld-var2 ‐ Shifted Limited-Memory
Variable-Metric, Rank 2
ld-var1 ‐ Shifted Limited-Memory
Variable-Metric, Rank 1
ld-mma ‐ Method of Moving Asymptotes
ld-lbfgs-nocedal ‐ None
g-mlsl ‐ Multi-Level Single-Linkage
(require local optimization and bounds)
ld-lbfgs ‐ Low-storage BFGS
gn-direct-l ‐ Dividing Rectangles (locally
biased)
ln-bobyqa ‐ Derivative-free
Bound-constrained Optimization
ln-sbplx ‐ Subplex variant of
Nelder-Mead
ln-newuoa-bound ‐ Derivative-free
Bound-constrained Optimization by Iteratively Constructed Quadratic
Approximation
auglag ‐ Augmented Lagrangian
algorithm
ln-praxis ‐ Gradient-free Local
Optimization via the Principal-Axis Method
gn-direct-noscal ‐ Dividing Rectangles
(unscaled)
ld-tnewton-precond-restart ‐ Preconditioned
Truncated Newton with steepest-descent restarting
ld-slsqp ‐ Sequential Least-Squares
Quadratic Programming
step = 0; double in [0, inf)
Initial step size for gradient free methods.
stop = -inf; double
Stopping criterion: function value falls below this
value.
xtola = 0; double in [0, inf)
Stopping criterion: the absolute change of all x-values
is below this value.
xtolr = 0; double in [0, inf)
Stopping criterion: the relative change of all x-values
is below this value.
EXAMPLE¶
Register the perfusion series given in 'segment.set' by using automatic ICA estimation. Skip two images at the beginning and otherwiese use the default parameters. Store the result in 'registered.set'.mia-2dmyoica-nonrigid2 -i segment.set -o registered.set -k 2
AUTHOR(s)¶
Gert WollnyCOPYRIGHT¶
This software is Copyright (c) 1999‐2015 Leipzig, Germany and Madrid, Spain. It comes with ABSOLUTELY NO WARRANTY and you may redistribute it under the terms of the GNU GENERAL PUBLIC LICENSE Version 3 (or later). For more information run the program with the option '--copyright'.v2.4.6 | USER COMMANDS |