Andrej Studen @ VBOX 7dad40c53c Removing minor errors in NPZ routines | 8 mēneši atpakaļ | |
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Resources | 4 gadi atpakaļ | |
dicomUtils | 4 gadi atpakaļ | |
pythonScripts | 8 mēneši atpakaļ | |
segmentation | 1 gadu atpakaļ | |
slicerModules | 3 gadi atpakaļ | |
templates | 1 gadu atpakaļ | |
README.md | 4 gadi atpakaļ | |
setup.json.template | 4 gadi atpakaļ |
Manage images and data related to irAE project.
A Slicer module was created to assist Radiology and Nuclear Medicine phsicians in reviewing the images. The following lists the installation, setup and usage of the module.
Here is the installation video that shows required steps.
Download the code and dependencies. Unzip. To
have Slicer know where the files are, open Slicer, and under Edit->Application settings
select Modules section. Under Paths, click on Add and navigate to newly unzipped
directories. We need labkeyBrowser
and DICOMtools
from SlcierLabkeyExtension
and
slicerModule
from iraeMM
code. After clicking OK
, Slicer will and has to
be restarted.
To access LabKey, the Slicer tools must be configured. Do that by selecting LabKey->labkeyBrowser module from module list and fill appropriate fields.
For accessing OIL internal site, the settings are:
The rest needn't be changed.
Once the data is entered, click on Init to check whether LabKey can be accessed. If
the button turns green, you are OK. Do Save configuration
.
See video of module use, illustrating steps below. Old version here.
Use Labkey->iraemmBrowser module. The Patients
section lets you select the patient
and corresponding visit. On Load
the data gets loaded from the server.
The segmentations on server are stored as label maps, which have to be
converted to segments for Slicer. To do that, select Segmentations
module
from the drop-down menu. Under Active segmentations, a new segmentation must
be created by selecting Create new segmentation
option from the pull down menu. Scroll down
to Export/import models and labelmaps
and change the mode to Import
by
moving the radio button selection. The Input type should be set to labelmap
. Input
node should match selected patient/visit pair and should end in Segm
. Click on Import
button further down.
The source labelmap volume will obscure other volumes, so we should delete it. Do that
by selecting Volumes
module and rotating˛Active volume
to point to labelmap
used in segmentation creation. Once selected, select Delete current volume
from
the same pull down menu next to Active volume.
Labelmap was converted to a set of Segments, which are listed in the Segmentations
module. By clicking on the open/closed eye icon, a segment can be made visible or invisible
on the windows. Further setup can be made in the View controls
module, where
visibility and mode of each volume can be adjusted. For the segmentations, which
appear in the top layer, either continuous, continuous with sharpened edges or edge
only mode are available by clicking on display icon.
The module has a review section. Select LabKey->iraemmBrowser and navigate to review secion. Four levels of agreement can be selected and an addition Comments field is available. Once filled, review is submitted by clicking on Submit button. Choices can be changed any time and new values can be pushed to database with further clicks of the button.
Once done, a patient should be cleared to minimize interference in segmentation
evaluation. Do that by pressing Clear
in Patients
section of the iraeMMBrowser
module.
To access LabKey, the python API was used. Anonymization and NIfTI conversion are based on phenomenal nibabel tools. Data storage is provided by Orthanc with associated interface.
Anonymization must be run as a tomcat8
user for access to data files. Check setup
in the anonymization.py
and run it with runPython.sh anonymization.py
.