Automatic segmentation of bones in computed tomography (CT) images is used for instance in beam hardening correction algorithms where it improves the accuracy of resulting CT numbers. Of special interest are pelvic bones, which—because of their strong attenuation—affect the accuracy of brachytherapy in this region. This work evaluated the performance of the JJ2016 algorithm with the performance of MK2014v2 and JS2018 algorithms; all these algorithms were developed by authors. Visual comparison, and, in the latter case, also Dice similarity coefficients derived from the ground truth were used. It was found that the 3D-based JJ2016 performed better than the 2D-based MK2014v2, mainly because of the more accurate hole filling that benefitted fr...
BACKGROUND: Pelvimetry is an important part of the obstetric examination for predicting a mismatch b...
We present a protocol for the evaluation of the geometric accuracy of bone segmentation algorithms i...
Background and objective: We investigated a novel method using a 2D convolutional neural network (CN...
Automatic segmentation of bones in computed tomography (CT) images is used for instance in beam hard...
Advanced model-based iterative reconstruction algorithms in quantitative computed tomography (CT) pe...
Automatic segmentation of human organs allows more accurate calculation of organ doses in radiationt...
International audienceObjectives: Bone segmentation can help bone disease diagnosis or post treatmen...
The paper is focused on automatic segmentation task of bone structures out of CT data series of pelv...
In brachytherapy, radiation therapy is performed by placing the radiation source into or very close ...
Abstract Background Bone segmentation is important in computed tomography (CT) imaging of the pelvis...
Purpose: The aim of this study was to develop a deep learning-based method for segmentation of bones...
In recent decades, more types and quantities of medical data have been collected due to advanced tec...
Abstract Background Accurate segmentation of pelvic bones is an initial step to achieve accurate det...
Deep learning algorithms have improved the speed and quality of segmentation for certain tasks in me...
Pelvic bone segmentation is a vital step in analyzing pelvic CT images, which assists physicians wit...
BACKGROUND: Pelvimetry is an important part of the obstetric examination for predicting a mismatch b...
We present a protocol for the evaluation of the geometric accuracy of bone segmentation algorithms i...
Background and objective: We investigated a novel method using a 2D convolutional neural network (CN...
Automatic segmentation of bones in computed tomography (CT) images is used for instance in beam hard...
Advanced model-based iterative reconstruction algorithms in quantitative computed tomography (CT) pe...
Automatic segmentation of human organs allows more accurate calculation of organ doses in radiationt...
International audienceObjectives: Bone segmentation can help bone disease diagnosis or post treatmen...
The paper is focused on automatic segmentation task of bone structures out of CT data series of pelv...
In brachytherapy, radiation therapy is performed by placing the radiation source into or very close ...
Abstract Background Bone segmentation is important in computed tomography (CT) imaging of the pelvis...
Purpose: The aim of this study was to develop a deep learning-based method for segmentation of bones...
In recent decades, more types and quantities of medical data have been collected due to advanced tec...
Abstract Background Accurate segmentation of pelvic bones is an initial step to achieve accurate det...
Deep learning algorithms have improved the speed and quality of segmentation for certain tasks in me...
Pelvic bone segmentation is a vital step in analyzing pelvic CT images, which assists physicians wit...
BACKGROUND: Pelvimetry is an important part of the obstetric examination for predicting a mismatch b...
We present a protocol for the evaluation of the geometric accuracy of bone segmentation algorithms i...
Background and objective: We investigated a novel method using a 2D convolutional neural network (CN...