Semi-automatic Method for Low-Grade Gliomas Segmentation in Magnetic Resonance Imaging - 22/03/18
, A. Belaid a, S. Aloui a, B. Solaiman b, L. Lecornu b, c, D. Ben Salem d, e, S. Tliba f| pagine | 13 |
| Iconografia | 11 |
| Video | 0 |
| Altro | 0 |
Abstract |
Background: Analyzing MR scans of low-grade glioma, with highly accurate segmentation will have an enormous potential in neurosurgery for diagnosis and therapy planning. Low-grade gliomas are mainly distinguished by their infiltrating character and irregular contours, which make the analysis, and therefore the segmentation task, more difficult. Moreover, MRI images show some constraints such as intensity variation and the presence of noise.
Methods: To tackle these issues, a novel segmentation method built from the local properties of image is presented in this paper. Phase-based edge detection is estimated locally by the monogenic signal using quadrature filters. This way of detecting edges is, from a theoretical point of view, intensity invariant and responds well to the MR images. To strengthen the tumor detection process, a region-based term is designated locally in order to achieve a local maximum likelihood segmentation of the region of interest. A Gaussian probability distribution is considered to model local images intensities.
Results: The proposed model is evaluated using a set of real subjects and synthetic images derived from the Brain Tumor Segmentation challenge –BraTS 2015. In addition, the obtained results are compared to the manual segmentation performed by two experts. Quantitative evaluations are performed using the proposed approach with regard to four related existing methods.
Conclusion: The comparison of the proposed method, shows more accurate results than the four existing methods.
Il testo completo di questo articolo è disponibile in PDF.Graphical abstract |
Highlights |
• | Local phase information is intensity invariant. |
• | Local phase information is integrated instead the gradient of intensity. |
• | Region based term enhanced the proposed segmentation approach. |
• | The obtained results seem promising for both real and BRATS 2015 challenge. |
Keywords : Low-grade gliomas, Segmentation, Level set, Local phase information, Local maximum likelihood
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Vol 39 - N° 2
P. 116-128 - aprile 2018 Ritorno al numeroBenvenuto su EM|consulte, il riferimento dei professionisti della salute.
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