Automatic segmentation of the prostate on Magnetic Resonance Imaging (MRI) is one of the topics on which research has focused in recent years as it is a fundamental first step in the building process of a Computer aided diagnosis (CAD) system for cancer detection. Unfortunately, MRI acquired in different centers with different scanners leads to images with different characteristics. In this work, we propose an automatic algorithm for prostate segmentation, based on a U-Net applying transfer learning method in a bi-center setting. First, T2w images with and without endorectal coil from 80 patients acquired at Center A were used as training set and internal validation set. Then, T2w images without endorectal coil from 20 patients acquired at ...
Three dimensional (3D) manual segmentation of the prostate on magnetic resonance imaging (MRI) is a ...
PurposeTo develop a cascaded deep learning model trained with apparent diffusion coefficient (ADC) a...
Theoretical thesis.Bibliography: pages 77-89.1 Introduction -- 2 Background and literature review --...
Prostate cancer is the second-most frequently diagnosed cancer and the sixth leading cause of cancer...
Purpose: Accurate regional segmentation of the prostate boundaries on magnetic resonance (MR) images...
Purpose/Objective(s): Mask-RCNN is a deep structural learning algorithm that has been investigated i...
Purpose: Mask-RCNN has been proposed in other industries for structure mapping and recognition. We a...
Background: Although recent advances in multiparametric magnetic resonance imaging (MRI) led to an i...
International audienceIn this paper, we present an evaluation of four encoder–decoder CNNs in the se...
Magnetic resonance imaging (MRI) provides detailed anatomical images of the prostate and its zones. ...
Background Although recent advances in multiparametric magnetic resonance imaging (MRI) led to an in...
Volume of interest segmentation is an essential step in computer-aided detection and diagnosis (CAD)...
International audiencePurpose: An accurate zonal segmentation of the prostate is required for prosta...
The prostate cancer is the second most frequent tumor amongst men. Statistics shows that biopsy reve...
Prostate cancer (PCa) is a significant health concern for men worldwide, where early detection and e...
Three dimensional (3D) manual segmentation of the prostate on magnetic resonance imaging (MRI) is a ...
PurposeTo develop a cascaded deep learning model trained with apparent diffusion coefficient (ADC) a...
Theoretical thesis.Bibliography: pages 77-89.1 Introduction -- 2 Background and literature review --...
Prostate cancer is the second-most frequently diagnosed cancer and the sixth leading cause of cancer...
Purpose: Accurate regional segmentation of the prostate boundaries on magnetic resonance (MR) images...
Purpose/Objective(s): Mask-RCNN is a deep structural learning algorithm that has been investigated i...
Purpose: Mask-RCNN has been proposed in other industries for structure mapping and recognition. We a...
Background: Although recent advances in multiparametric magnetic resonance imaging (MRI) led to an i...
International audienceIn this paper, we present an evaluation of four encoder–decoder CNNs in the se...
Magnetic resonance imaging (MRI) provides detailed anatomical images of the prostate and its zones. ...
Background Although recent advances in multiparametric magnetic resonance imaging (MRI) led to an in...
Volume of interest segmentation is an essential step in computer-aided detection and diagnosis (CAD)...
International audiencePurpose: An accurate zonal segmentation of the prostate is required for prosta...
The prostate cancer is the second most frequent tumor amongst men. Statistics shows that biopsy reve...
Prostate cancer (PCa) is a significant health concern for men worldwide, where early detection and e...
Three dimensional (3D) manual segmentation of the prostate on magnetic resonance imaging (MRI) is a ...
PurposeTo develop a cascaded deep learning model trained with apparent diffusion coefficient (ADC) a...
Theoretical thesis.Bibliography: pages 77-89.1 Introduction -- 2 Background and literature review --...