Purpose: This study investigated the segmentation metrics of different segmentation networks trained on 730 manually annotated lateral lumbar spine X-rays to test the generalization ability and robustness which are the basis of clinical decision support algorithms. Methods: Instance segmentation networks were compared to semantic segmentation networks based on different metrics. The study cohort comprised diseased spines and postoperative images with metallic implants. Results: However, the pixel accuracies and intersection over union are similarly high for the best performing instance and semantic segmentation models; the observed vertebral recognition rates of the instance segmentation models statistically significantly outperform the sem...
The study introduces a novel method for automatic segmentation of vertebral column tissue from MRI i...
Study Design: Retrospective study.Objectives: Huge amounts of images and medical reports are being g...
Background and objective: We investigated a novel method using a 2D convolutional neural network (CN...
One of the major difficulties in medical image segmentation is the high variability of these images,...
The accurate segmentation and identification of vertebrae presents the foundations for spine analysi...
Precise segmentation and anatomical identification of the vertebrae provides the basis for automatic...
This paper addresses the central problem of automatic segmentation of lumbar spine Magnetic Resonanc...
This thesis addresses the problem of analysing clinical MRI using modern computer vision methods for...
This paper addresses the central problem of automatic segmentation of lumbar spine Magnetic Resonanc...
Automatic and accurate lumbar vertebrae detection is an essential step of image-guided minimally inv...
This paper addresses the central problem of automatic segmentation of lumbar spine Magnetic Resonan...
The size, shape, and composition of paraspinal muscles have been widely reported in disorders of the...
Machine-learning algorithms (Artificial Intel ligence) have demonstrated remarkable progress in ima...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...
The study introduces a novel method for automatic segmentation of vertebral column tissue from MRI i...
Study Design: Retrospective study.Objectives: Huge amounts of images and medical reports are being g...
Background and objective: We investigated a novel method using a 2D convolutional neural network (CN...
One of the major difficulties in medical image segmentation is the high variability of these images,...
The accurate segmentation and identification of vertebrae presents the foundations for spine analysi...
Precise segmentation and anatomical identification of the vertebrae provides the basis for automatic...
This paper addresses the central problem of automatic segmentation of lumbar spine Magnetic Resonanc...
This thesis addresses the problem of analysing clinical MRI using modern computer vision methods for...
This paper addresses the central problem of automatic segmentation of lumbar spine Magnetic Resonanc...
Automatic and accurate lumbar vertebrae detection is an essential step of image-guided minimally inv...
This paper addresses the central problem of automatic segmentation of lumbar spine Magnetic Resonan...
The size, shape, and composition of paraspinal muscles have been widely reported in disorders of the...
Machine-learning algorithms (Artificial Intel ligence) have demonstrated remarkable progress in ima...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...
The study introduces a novel method for automatic segmentation of vertebral column tissue from MRI i...
Study Design: Retrospective study.Objectives: Huge amounts of images and medical reports are being g...
Background and objective: We investigated a novel method using a 2D convolutional neural network (CN...