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<<Navigation(children)>>
'''Index'''
<<TableOfContents>>
<<Navigation(children)>> '''Index''' <<TableOfContents>>
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              = Synopsis =
mri_watershed [<options>] invol outvol
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|| invol || input volume ||
|| outvol || output volume ||
||invol ||input volume ||
||outvol ||output volume ||
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== Required Flagged Arguments ==
None
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|| -atlas || use the atlas information to correct the segmentation.|| When the segmented brain is not correct, this option might help you. ||
|| -surf [surfname] || save the BEM surfaces.|| In order to get the surfaces consistent with tkmedit, you have to use the option -useSRAS.  ||
||
-useSRAS || use the surface RAS coordinates (not the scanner RAS) for surfaces. || ||
|| -noT1    || don't do T1 analysis. (Useful when running out of memory) || ||
|| -less || shrink the surface || ||
|| -more || expand the surface || ||
|| -wat     || use only the watershed algorithm || ||
|| -T1      || specify T1 input volume (T1 grey value = 110) || ||
|| -wat+temp  || watershed algo and first template smoothing || ||
|| -first_temp || use only the first template smoothing + local matching || ||
|| -surf_debug || visualize the surfaces onto the output volume || ||
|| -brainsurf [surfname]  || save the brain surface || ||
|| -shk_br_surf [int_h surfname] || to save the brain surface shrank inward of int_h mm || ||
|| -s [int_i int_j int_k] || add a seed point || ||
||
-c [int_i int_j int_k] || specify the center of the brain (in voxel unit) || ||
|| -r int_r || specify the radius of the brain (in voxel unit) || ||
|| -t int_threshold || change the threshold in the watershed analyze process || ||
|| -h int_hpf || precize the preflooding height (in percent) || ||
|| -n || not use the watershed analyze process || ||
|| -LABEL               || labelize the output volume into scalp, skull, csf, gray and white || ||
|| -man [int_csf int_trn int_gray] ||  to change the different parameters csf_max, transition_intensity and GM_intensity  || ||
||
-mask                || mask a volume with the brain mask || ||
|| --help || show usage message || ||
|| --version            || show the current version || ||
||-atlas ||use the atlas information to correct the segmentation. ||When the segmented brain is not correct, this option might help you. ||
||-surf [surfname] ||save the BEM surfaces. ||In order to get the surfaces consistent with tkmedit, you have to use the option -useSRAS. ||
||
-useSRAS ||use the surface RAS coordinates (not the scanner RAS) for surfaces. || ||
||-noT1 ||don't do T1 analysis. (Useful when running out of memory) || ||
||-less ||shrink the surface || ||
||-more ||expand the surface || ||
||-wat ||use only the watershed algorithm || ||
||-T1 ||specify T1 input volume (T1 grey value = 110) || ||
||-wat+temp ||watershed algo and first template smoothing || ||
||-first_temp ||use only the first template smoothing + local matching || ||
||-surf_debug ||visualize the surfaces onto the output volume || ||
||-brainsurf [surfname] ||save the brain surface || ||
||-shk_br_surf [int_h surfname] ||to save the brain surface shrank inward of int_h mm || ||
||-s [int_i int_j int_k] ||add a seed point || ||
||
-c [int_i int_j int_k] ||specify the center of the brain (in voxel unit) || ||
||-r int_r ||specify the radius of the brain (in voxel unit) || ||
||-t int_threshold ||change the threshold in the watershed analyze process || ||
||-h int_hpf ||precize the preflooding height (in percent) || ||
||-n ||not use the watershed analyze process || ||
||-LABEL ||labelize the output volume into scalp, skull, csf, gray and white || ||
||-man [int_csf int_trn int_gray] ||to change the different parameters csf_max, transition_intensity and GM_intensity || ||
||
-mask ||mask a volume with the brain mask || ||
||--help ||show usage message || ||
||--version ||show the current version || ||
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|| brainvol || skull stripped brain volume ||
|| BEMsurfaces || when you specify the option -brainsurf surfname ||
||brainvol ||skull stripped brain volume ||
||BEMsurfaces ||when you specify the option -brainsurf surfname ||
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= Description =
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mri-watershed -atlas T1 brain  mri-watershed -atlas T1 brain
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where T1 is the T1 volume and brain is the output brain volume.
When the cerebellum is cut-off from the brain or getting the left/right asymmetric brain, you should first try this -atlas
option.  
where T1 is the T1 volume and brain is the output brain volume.  When the cerebellum is cut-off from the brain or getting the left/right asymmetric brain, you should first try this -atlas  option.
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The "watershed" segmentation algorithm was used to dertermine the intensity values for white matter, grey matter, and CSF. 
A force field was then used to fit a spherical surface to the brain. The shape of the surface fit was then evaluated against a previously derived template.   If you used -atlas option, then { The template was used to correct the surface. }
The "watershed" segmentation algorithm was used to dertermine the intensity values for white matter, grey matter, and CSF.
A force field was then used to fit a spherical surface to the brain. The shape of the surface fit was then evaluated against a previously derived template.
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(Segonne 2004)  (Segonne 2004)
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{{{
First, the code is constructing a discretized distribution of the whole intensity image (300 points) -> this is what PDcurve is doing. In doing so, I remove noisy voxels by removing the one thousandth brightest voxels.
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= References =
[[References/Segonne2004]]
Then, in analyze_curve, I try to determine a meaningfull threshold (that would be SKULL_PD) of this distribution of voxels. To do so, the distribution should be peaking somewhere in the 300 points and then decreasing. In this decreasing region (that I find between 3max/4 and max/5), I do a linear least square approximation to fit the best line to this decreasing region: aX+b and then simply set SKULL_PD = -b/a, i.e. the region where the fit becomes 0.
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Needless to say that there is plenty of code regions that is not really robust and might fail.
}}}
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Report bugs to <freesurfer@nmr.mgh.harvard.edu>

=
Author/s =
YasunariTosa
Report bugs to < freesurfer@nmr.mgh.harvard.edu > YasunariTosa

Index

Name

mri_watershed - strip skull and other outer non-brain tissue

Arguments

Positional Arguments

invol

input volume

outvol

output volume

Optional Flagged Arguments

-atlas

use the atlas information to correct the segmentation.

When the segmented brain is not correct, this option might help you.

-surf [surfname]

save the BEM surfaces.

In order to get the surfaces consistent with tkmedit, you have to use the option -useSRAS.

-useSRAS

use the surface RAS coordinates (not the scanner RAS) for surfaces.

-noT1

don't do T1 analysis. (Useful when running out of memory)

-less

shrink the surface

-more

expand the surface

-wat

use only the watershed algorithm

-T1

specify T1 input volume (T1 grey value = 110)

-wat+temp

watershed algo and first template smoothing

-first_temp

use only the first template smoothing + local matching

-surf_debug

visualize the surfaces onto the output volume

-brainsurf [surfname]

save the brain surface

-shk_br_surf [int_h surfname]

to save the brain surface shrank inward of int_h mm

-s [int_i int_j int_k]

add a seed point

-c [int_i int_j int_k]

specify the center of the brain (in voxel unit)

-r int_r

specify the radius of the brain (in voxel unit)

-t int_threshold

change the threshold in the watershed analyze process

-h int_hpf

precize the preflooding height (in percent)

-n

not use the watershed analyze process

-LABEL

labelize the output volume into scalp, skull, csf, gray and white

-man [int_csf int_trn int_gray]

to change the different parameters csf_max, transition_intensity and GM_intensity

-mask

mask a volume with the brain mask

--help

show usage message

--version

show the current version

Outputs

brainvol

skull stripped brain volume

BEMsurfaces

when you specify the option -brainsurf surfname

Produce the brain volume from T1 volume or the scanned volume.

Examples

Example 1

mri-watershed -atlas T1 brain

where T1 is the T1 volume and brain is the output brain volume. When the cerebellum is cut-off from the brain or getting the left/right asymmetric brain, you should first try this -atlas option.

Example 2

mri-watershed T1 brain

The same as the first example, but no correction is applied to the intermediate result.

Bugs

None

See Also

mri_normalize

Links

FreeSurfer, FsFast

Methods Description

The "watershed" segmentation algorithm was used to dertermine the intensity values for white matter, grey matter, and CSF.
A force field was then used to fit a spherical surface to the brain. The shape of the surface fit was then evaluated against a previously derived template.

The finely grained sphere was fit to the brain.

(Segonne 2004)

First, the code is constructing a discretized distribution of the whole intensity image (300 points) -> this is what PDcurve is doing. In doing so, I remove noisy voxels by removing the one thousandth brightest voxels.

Then, in analyze_curve, I try to determine a meaningfull threshold (that would be SKULL_PD) of this distribution of voxels. To do so, the distribution should be peaking somewhere in the 300 points and then decreasing. In this decreasing region (that I find between 3max/4 and max/5), I do a linear least square approximation to fit the best line to this decreasing region: aX+b and then simply set SKULL_PD = -b/a, i.e. the region where the fit becomes 0.

Needless to say that there is plenty of code regions that is not really robust and might fail.

Reporting Bugs

Report bugs to < freesurfer@nmr.mgh.harvard.edu > YasunariTosa

mri_watershed (last edited 2018-01-04 10:17:45 by MorganFogarty)