Uploaded by sibgrapi2011vf on Jul 25, 2011
Segmentation of brain lesions from medical images is a difficult task to be mastered by the specialist. This is due to the presence of noise, partial volume effects and susceptibility artifacts in the images. These images also contain abnormalities in the distribution of the intensities of the white matter, gray matter and cerebrospinal fluid. All these problems can interfere with the results when manual segmentation is used. Manual segmentation uses local anatomical information based on the user experience; that implies the necessity of constant human intervention. Deformable model approaches (geometric and parametric) attempt to reduce these shortcomings by outlining the region of interest in a semi-automatic manner. These methods have been shown to be effective in the extraction of the lesion borders in brain MR images with reduced user intervention. However, due to the restrictions of the deformable models when dealing with regions without well defined edges, the proposal of this work is to apply the Mumford-Shah model via level set methods represented as geometrical deformable models, in order to segment multi-sequence magnetic resonance (MR) images of the brain composed of FLAIR (Fluid Attenuated Inversion Recovery), T1 and $T2-weighted images. Results showed that segmentation using multi-sequence images provides superior results than using each sequence alone. As a part of this work, a software with a minimal human intervention has been developed to visualize and segment the brain lesions that appear as hyperintensities in MR images. As a consequence, medical doctors can exploit the segmentation results to follow up their patients by assessing the evolution or involution of the brain lesions.
Category: Technical Videos
Category:
Tags:
License:
Standard YouTube License
-
1 likes, 0 dislikes
2:30
Level Set for medical image segmentationby weizhuoshi2,654 views
1:40
"Anatomy and Physiology", The Brain Series, A Frontal Segmentationby MyCyberCollege461 views
0:29
Level set methodby TheRealMacklin011,258 views
2:38
Semi-Automatic Medical Image Segmentationby ChimaeraGmbH643 views
7:03
3D Slicer CT 3D Modelling Tutorial (muted)by schwabse2,066 views
0:34
MRI Bone Segmentation Using Deformable Models and Shape Priorsby SpringerVideos98 views
0:10
Pelvis segmentation with springls in OpenCLby imgsci153 views
9:05
muliple brain lesions.wmvby amzanes1,787 views
0:06
Surface Representation using the level set methodby elizabethkeil764 views
8:33
Geometric Sequence - Real life exampleby ibpodcasting513 views
1:46
Robust segmentation of anatomical structures with deformable surfaces and marching cubesby VisualComputingLab285 views
4:12
Symptoms of Brain Tumorsby neuroorthoinstitute55,922 views
6:19
Application of Sequenceby TenMarksInstructor120 views
1:52
Coherent Propagattion VS Conventional Sparse Field Level set methodby chunliangwang131 views
5:01
Audible Simplex (Minimal Electro House)by TheElectrikSound421 views
0:07
Liver with vessel system - Leber mit Gefäßsystemby BedatecMP11,591 views
5:31
Descent From Digitana Sequencesby JeffreyPlaide1,253 views
0:21
Multiscale Mumford-Shah Without and With Topology-Preserveby JDJ457594 views
0:03
Diminished Reality 1: Moving Cameraby OzzybanOswald10,282 views
10:15
PM12 - 10.1 Geometric Sequences - part 4by ebalzarini150 views
- Loading more suggestions...
Link to this comment:
All Comments (0)