mni_autoreg | research applications , the interpretation
kandi X-RAY | mni_autoreg Summary
kandi X-RAY | mni_autoreg Summary
mni_autoreg is a C library. mni_autoreg has no bugs, it has no vulnerabilities and it has low support. However mni_autoreg has a Non-SPDX License. You can download it from GitHub.
In both diagnostic and research applications, the interpretation of magnetic resonance (MR) images of the human brain is facilitated when different data sets can be compared by visual inspection of equivalent anatomical planes. Quantitative analysis with pre-defined atlas templates often requires the initial alignment of atlas and image planes. Unfortunately, the axial planes acquired during separate scanning sessions are often different in their relative position and orientation, and these slices are not coplanar with those in the atlas. A completely automatic method has been developed, based on multi-scale, three dimensional (3D) cross-correlation, to register a given volumetric data set to an average MRI brain (n > 300) aligned with the Talairach stereotaxic coordinate system. Once the data set is resampled by the transformation recovered by the algorithm, atlas slices can be directly super-imposed on the corresponding slices of the resampled volume (see below). The use of such a standardized space also allows the direct comparison, voxel-to-voxel, of two or more data sets brought into stereotaxic space. A Perl script (mritotal) implements the multi-resolution fitting strategy that has been used to map more than 500 brains into stereotaxic space at the Montreal Neurological Institute. At the heart of this procedure is minctracc, the program that automatically finds the best linear transformation to map one volumetric data set (stored in MINC format, see below) on to another. The program uses optimization over a user selectable number of parameters to identify the best (according to a user-selected objective function) transformation mapping voxel values of the first data set into the second.
In both diagnostic and research applications, the interpretation of magnetic resonance (MR) images of the human brain is facilitated when different data sets can be compared by visual inspection of equivalent anatomical planes. Quantitative analysis with pre-defined atlas templates often requires the initial alignment of atlas and image planes. Unfortunately, the axial planes acquired during separate scanning sessions are often different in their relative position and orientation, and these slices are not coplanar with those in the atlas. A completely automatic method has been developed, based on multi-scale, three dimensional (3D) cross-correlation, to register a given volumetric data set to an average MRI brain (n > 300) aligned with the Talairach stereotaxic coordinate system. Once the data set is resampled by the transformation recovered by the algorithm, atlas slices can be directly super-imposed on the corresponding slices of the resampled volume (see below). The use of such a standardized space also allows the direct comparison, voxel-to-voxel, of two or more data sets brought into stereotaxic space. A Perl script (mritotal) implements the multi-resolution fitting strategy that has been used to map more than 500 brains into stereotaxic space at the Montreal Neurological Institute. At the heart of this procedure is minctracc, the program that automatically finds the best linear transformation to map one volumetric data set (stored in MINC format, see below) on to another. The program uses optimization over a user selectable number of parameters to identify the best (according to a user-selected objective function) transformation mapping voxel values of the first data set into the second.
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Support
mni_autoreg has a low active ecosystem.
It has 8 star(s) with 9 fork(s). There are 7 watchers for this library.
It had no major release in the last 6 months.
There are 9 open issues and 6 have been closed. On average issues are closed in 708 days. There are no pull requests.
It has a neutral sentiment in the developer community.
The latest version of mni_autoreg is current.
Quality
mni_autoreg has no bugs reported.
Security
mni_autoreg has no vulnerabilities reported, and its dependent libraries have no vulnerabilities reported.
License
mni_autoreg has a Non-SPDX License.
Non-SPDX licenses can be open source with a non SPDX compliant license, or non open source licenses, and you need to review them closely before use.
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mni_autoreg releases are not available. You will need to build from source code and install.
Installation instructions are not available. Examples and code snippets are available.
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Currently covering the most popular Java, JavaScript and Python libraries. See a Sample of mni_autoreg
mni_autoreg Key Features
No Key Features are available at this moment for mni_autoreg.
mni_autoreg Examples and Code Snippets
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Community Discussions, Code Snippets contain sources that include Stack Exchange Network
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No vulnerabilities reported
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You can download it from GitHub.
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