Background PET-based tumor delineation is an error prone and labor intensive part of image analysis. Especially for patients with advanced disease showing bulky tumor FDG load, segmentations are challenging. Reducing the amount of user-interaction in the segmentation might help to facilitate segmentation tasks especially when labeling bulky and complex tumors. Therefore, this study reports on segmentation workflows/strategies that may reduce the inter-observer variability for large tumors with complex shapes with different levels of user-interaction. Methods Twenty PET images of bulky tumors were delineated independently by six observers using four strategies: (I) manual, (II) interactive threshold-based, (III) interactive threshold-based s...
In the treatment of Non-Hodgkin lymphoma (NHL), multiple therapeutic options are available. Improvin...
Tumor functional volume (FV) and its mean activity concentration (mAC) are the quantities derived fr...
International audienceIntroduction: Automatic functional volume segmentation in PET images is a chal...
Background PET-based tumor delineation is an error prone and labor intensive part of image analysis....
BACKGROUND: PET-based tumor delineation is an error prone and labor intensive part of image analysis...
Tumor functional volume (FV) and its mean activity concentration (mAC) are the quantities derived fr...
<p>The use of positron emission tomography (PET) in radiation therapy has continued to grow, especia...
The primary goal of this is research is to build a statistical framework for automated PET image ana...
Historically, anatomical CT and MR images were used to delineate the gross tumour volumes (GTVs) for...
Purpose: Several methods have been proposed for the segmentation of 18F-FDG uptake in PET. In this s...
International audienceAbstract:Purpose: This study aimed to evaluate the impact of consensus algorit...
PET is widely adopted in clinical oncology to investigate the biochemical characteristics of maligna...
Background: [18F]FDG PET-based metabolic tumor volume (MTV) is a promising prognostic marker for lym...
In the treatment of Non-Hodgkin lymphoma (NHL), multiple therapeutic options are available. Improvin...
Tumor functional volume (FV) and its mean activity concentration (mAC) are the quantities derived fr...
International audienceIntroduction: Automatic functional volume segmentation in PET images is a chal...
Background PET-based tumor delineation is an error prone and labor intensive part of image analysis....
BACKGROUND: PET-based tumor delineation is an error prone and labor intensive part of image analysis...
Tumor functional volume (FV) and its mean activity concentration (mAC) are the quantities derived fr...
<p>The use of positron emission tomography (PET) in radiation therapy has continued to grow, especia...
The primary goal of this is research is to build a statistical framework for automated PET image ana...
Historically, anatomical CT and MR images were used to delineate the gross tumour volumes (GTVs) for...
Purpose: Several methods have been proposed for the segmentation of 18F-FDG uptake in PET. In this s...
International audienceAbstract:Purpose: This study aimed to evaluate the impact of consensus algorit...
PET is widely adopted in clinical oncology to investigate the biochemical characteristics of maligna...
Background: [18F]FDG PET-based metabolic tumor volume (MTV) is a promising prognostic marker for lym...
In the treatment of Non-Hodgkin lymphoma (NHL), multiple therapeutic options are available. Improvin...
Tumor functional volume (FV) and its mean activity concentration (mAC) are the quantities derived fr...
International audienceIntroduction: Automatic functional volume segmentation in PET images is a chal...