Background & aims: Body composition analysis on CT images is a valuable tool for sarcopenia assessment. We aimed to develop and validate a deep neural network applicable to whole-body CT images of PET-CT scan for the automatic volumetric segmentation of body composition. Methods: For model development, one hundred whole-body or torso 18F-fluorodeoxyglucose PET-CT scans of 100 patients were retrospectively included. Two radiologists semi-automatically labeled the following seven body components in every CT image slice, providing a total of 46,967 image slices from the 100 scans for training the 3D U-Net (training, 39,268 slices; tuning, 3116 slices; internal validation, 4583 slices): skin, bone, muscle, abdominal visceral fat, subcutaneous ...
Abstract As sarcopenia research has been gaining emphasis, the need for quantification of abdominal ...
International audiencePurpose :The purpose of this study was to build and train a deep convolutional...
Objective: To demonstrate the effectiveness of using a deep learning-based approach for a fully auto...
Background & aims: Body composition analysis on CT images is a valuable tool for sarcopenia assessme...
INTRODUCTION: Sarcopenia is a muscle disease that involves loss of muscle strength and physical func...
Objective: To develop a deep convolutional neural network (CNN) to automatically segment an axial CT...
Manual segmentation of muscle and adipose compartments from computed tomography (CT) axial images is...
Background: Muscle wasting (Sarcopenia) is associated with poor outcomes in cancer patients. Early i...
Quick, efficient, fully automated open-source programs to segment muscle and adipose tissues from co...
Background: Body composition is associated with survival outcome in oncological patients, but it is ...
Purpose To develop and validate a computer tool for automatic and simultaneous segmentation of five ...
Background: To externally evaluate the first picture archiving communications system (PACS)-integrat...
Background: Sarcopenia is an aging syndrome that increases the risks of various adverse outcomes, in...
Abstract As sarcopenia research has been gaining emphasis, the need for quantification of abdominal ...
International audiencePurpose :The purpose of this study was to build and train a deep convolutional...
Objective: To demonstrate the effectiveness of using a deep learning-based approach for a fully auto...
Background & aims: Body composition analysis on CT images is a valuable tool for sarcopenia assessme...
INTRODUCTION: Sarcopenia is a muscle disease that involves loss of muscle strength and physical func...
Objective: To develop a deep convolutional neural network (CNN) to automatically segment an axial CT...
Manual segmentation of muscle and adipose compartments from computed tomography (CT) axial images is...
Background: Muscle wasting (Sarcopenia) is associated with poor outcomes in cancer patients. Early i...
Quick, efficient, fully automated open-source programs to segment muscle and adipose tissues from co...
Background: Body composition is associated with survival outcome in oncological patients, but it is ...
Purpose To develop and validate a computer tool for automatic and simultaneous segmentation of five ...
Background: To externally evaluate the first picture archiving communications system (PACS)-integrat...
Background: Sarcopenia is an aging syndrome that increases the risks of various adverse outcomes, in...
Abstract As sarcopenia research has been gaining emphasis, the need for quantification of abdominal ...
International audiencePurpose :The purpose of this study was to build and train a deep convolutional...
Objective: To demonstrate the effectiveness of using a deep learning-based approach for a fully auto...