International audienceTissue segmentation and classification in MRI is a challenging task due to a lack of signal intensity standardization. MRI signal is dependent on the acquisition protocol, the coil profile, the scanner type, etc. While we can compute quantitative physical tissue properties independent of the hardware and the sequence parameters, it is still difficult to leverage these physical properties to segment and classify pelvic tissues. The proposed method integrates quantitative MRI values (T1 and T2 relaxation times and pure synthetic weighted images) and machine learning (Support Vector Machine (SVM)) to segment and classify tissues in the pelvic region, i.e.: fat, muscle, prostate, bone marrow, bladder, and air. Twenty-two m...
The T1 relaxation map shows heterogeneous values for the bladder and prostate areas, and homogeneous...
(1) Background: Segmentation of the bladder inner’s wall and outer boundaries on Magnetic Resonance ...
After obtaining the T1- and T2-weighted images (a-b) from their corresponding sequences, the body re...
International audienceTissue segmentation and classification in MRI is a challenging task due to a l...
International audienceTo segment and classify the different attenuation regions from MRI at the pelv...
Pelvic organ prolapse (POP) is a major health problem that affects women. POP is a herniation of the...
The objective of this paper, is to apply support vector machine (SVM) approach for the classificatio...
Both T1 and T2 relaxations maps show homogeneous time values within the area of each tissue: prostat...
International audienceMultiparametric-magnetic resonance imaging (mp-MRI) has demonstrated, in many ...
The diffusion-weighted (DW) MR signal sampled over a wide range of b-values potentially allows for t...
Abstract—Magnetic resonance (MR) images lack information about radiation transport—a fact which is p...
MR-Linac is a recent device combining a linear accelerator with an MRI scanner. The improved soft ti...
Purpose: We describe a public dataset with MR and CT images of patients performed in the same positi...
Tese de mestrado integrado, Engenharia Biomédica e Biofísica (Engenharia Clínica e Instrumentação Mé...
Purpose: We describe a public dataset with MR and CT images of patients performed in the same positi...
The T1 relaxation map shows heterogeneous values for the bladder and prostate areas, and homogeneous...
(1) Background: Segmentation of the bladder inner’s wall and outer boundaries on Magnetic Resonance ...
After obtaining the T1- and T2-weighted images (a-b) from their corresponding sequences, the body re...
International audienceTissue segmentation and classification in MRI is a challenging task due to a l...
International audienceTo segment and classify the different attenuation regions from MRI at the pelv...
Pelvic organ prolapse (POP) is a major health problem that affects women. POP is a herniation of the...
The objective of this paper, is to apply support vector machine (SVM) approach for the classificatio...
Both T1 and T2 relaxations maps show homogeneous time values within the area of each tissue: prostat...
International audienceMultiparametric-magnetic resonance imaging (mp-MRI) has demonstrated, in many ...
The diffusion-weighted (DW) MR signal sampled over a wide range of b-values potentially allows for t...
Abstract—Magnetic resonance (MR) images lack information about radiation transport—a fact which is p...
MR-Linac is a recent device combining a linear accelerator with an MRI scanner. The improved soft ti...
Purpose: We describe a public dataset with MR and CT images of patients performed in the same positi...
Tese de mestrado integrado, Engenharia Biomédica e Biofísica (Engenharia Clínica e Instrumentação Mé...
Purpose: We describe a public dataset with MR and CT images of patients performed in the same positi...
The T1 relaxation map shows heterogeneous values for the bladder and prostate areas, and homogeneous...
(1) Background: Segmentation of the bladder inner’s wall and outer boundaries on Magnetic Resonance ...
After obtaining the T1- and T2-weighted images (a-b) from their corresponding sequences, the body re...