Spinal Misalignment is a chronic disease that is widespread across the world. It causes different diseases such as Stenosis, Scoliosis, Osteoporotic Fractures, Thoracolumbar fractures, Disc degeneration, etc. The diagnosis of such disease is generally done by analyzing the Magnetic Resonance Imaging (MRI) scan of the lumbar spine region. MRI analysis is done by well experienced medical professionals (radiologists and orthopedists). The flip side to this inspection is that it is time consuming and may be subjected to a lack of accuracy. The manual segmentation of MRI scans from a large number of scan images is a tedious and time - consuming process. Thus, there is a need for automatic segmentation and analysis of spine MRI scans to improve c...
We propose a new deep learning network capable of successfully segmenting intervertebral discs and t...
We propose a new deep learning network capable of successfully segmenting intervertebral discs and t...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...
Spinal Misalignment is a chronic disease that is widespread across the world. It causes different di...
Spinal Misalignment is a chronic disease that is widespread across the world. It causes different di...
Background and Objectives: Intervertebral disc degeneration (IDD) is a common cause of symptomatic a...
The objective of this thesis is the automation of radiological gradings in spinal lumbar Magnetic Re...
[[abstract]]Background: Lumbar disc herniation (LDH) is among the most common causes of lower back p...
Purpose: We present an automated method for extracting anatomical parameters from biplanar radiograp...
BACKGROUND: Magnetic resonance imaging (MRI) is used to detect degenerative changes of the lumbar sp...
The accurate segmentation and identification of vertebrae presents the foundations for spine analysi...
BackgroundModic changes (MCs) are the most prevalent classification system for describing magnetic r...
Automatic localization and identification of vertebrae in medical images of the spine are core requi...
PurposeTo improve the performance of less experienced clinicians in the diagnosis of benign and mali...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...
We propose a new deep learning network capable of successfully segmenting intervertebral discs and t...
We propose a new deep learning network capable of successfully segmenting intervertebral discs and t...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...
Spinal Misalignment is a chronic disease that is widespread across the world. It causes different di...
Spinal Misalignment is a chronic disease that is widespread across the world. It causes different di...
Background and Objectives: Intervertebral disc degeneration (IDD) is a common cause of symptomatic a...
The objective of this thesis is the automation of radiological gradings in spinal lumbar Magnetic Re...
[[abstract]]Background: Lumbar disc herniation (LDH) is among the most common causes of lower back p...
Purpose: We present an automated method for extracting anatomical parameters from biplanar radiograp...
BACKGROUND: Magnetic resonance imaging (MRI) is used to detect degenerative changes of the lumbar sp...
The accurate segmentation and identification of vertebrae presents the foundations for spine analysi...
BackgroundModic changes (MCs) are the most prevalent classification system for describing magnetic r...
Automatic localization and identification of vertebrae in medical images of the spine are core requi...
PurposeTo improve the performance of less experienced clinicians in the diagnosis of benign and mali...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...
We propose a new deep learning network capable of successfully segmenting intervertebral discs and t...
We propose a new deep learning network capable of successfully segmenting intervertebral discs and t...
We propose a methodology to aid clinicians in performing lumbar spinal stenosis detection through se...