The automatic visualization and quantitative analysis of cardiac SPECT data requires the ability to automatically segment and extract voxels representing the heart. The attributes of the 3D data make this task quite challenging. The authors attempt to address these issues and propose an algorithm which successfully detects the voxels belonging to the left ventricle (LV) of the heart and filters out the noise and all other interfering organs. The algorithm relies on various image processing and pattern analysis techniques as well as the constraints put forward by the anatomy. The final outcome of this algorithm is a segmented 3D dataset containing voxels pertaining only to the LV. This filtered dataset is then employed for automatic determination of LV orientation. The results show that this methodology is a very promising approach to segmentation of cardiac SPECT imagery.<<ETX>>
[1]
Matt A. King,et al.
SPECT volume quantitation: influence of spatial resolution, source size and shape, and voxel size.
,
1991,
Medical physics.
[2]
D. Kennedy,et al.
Anatomic segmentation and volumetric calculations in nuclear magnetic resonance imaging.
,
1989,
IEEE transactions on medical imaging.
[3]
Anil K. Jain.
Fundamentals of Digital Image Processing
,
2018,
Control of Color Imaging Systems.
[4]
M A King,et al.
Comparative evaluation of image segmentation methods for volume quantitation in SPECT.
,
1992,
Medical physics.
[5]
Norberto F. Ezquerra,et al.
3D Visualization of Pose Determination: Application to SPECT Imaging
,
1992
.