Article citationsMore>>
Nugroho, H.A., Ihtatho, D. and Nugroho, H. (2008) Contrast enhancement for liver tumor identification. The MIDAS Journal - Grand Challenge Liver Tumor Segmentation (MICCAI Workshop), 11 pages, private issue, July, Kitware Inc., USA, 2008.
has been cited by the following article:
-
TITLE:
In Vivo Dynamic Image Characterization of Brain Tumor Growth Using Singular Value Decomposition and Eigenvalues
AUTHORS:
Murad Shibli
KEYWORDS:
Brain cancer, Tumor Image Identification, Singular Value Decomposition
JOURNAL NAME:
Journal of Biomedical Science and Engineering,
Vol.4 No.3,
March
8,
2011
ABSTRACT: This paper presents a dynamic image approach to characterize the growth of brain cancer invasion of tumor gliomas cells using singular value decomposi-tion (SVD) technique. Such a dynamic image is identi-fied by the white and grey matter displayed by mag-netic resonance (MR) images of the patient brain taken at different times. SVD components and prop-erties have been analyzed for different brain images. It is figured out that the growth of tumor cells is quantized by the SVD eigenvalues. Since SVD geo-metrically interprets an ellipsoid transformation, then the higher the eigenvalues, the more of tumor growth is. In vivo SVD dynamic imaging offers a more pre-dictive model to assess the tumor therapy than con-ventional technologies. Furthermore, an efficient dy-namic white-black indicator of the tumor growth rate is constructed based on the change in the diagonal eigenvalues matrices of two MR images taken at dif-ferent times. Finally, SVD image processing results are demonstrated to verify the effectiveness of the applied approach that can be implemented for each individual patient.