[HTML][HTML] Opportunistic screening techniques for analysis of CT scans
Abstract Purpose of Review Opportunistic screening is a combination of techniques to
identify subjects of high risk for osteoporotic fracture using routine clinical CT scans …
identify subjects of high risk for osteoporotic fracture using routine clinical CT scans …
[HTML][HTML] Deep learning-based medical images segmentation of musculoskeletal anatomical structures: a survey of bottlenecks and strategies
L Bonaldi, A Pretto, C Pirri, F Uccheddu, CG Fontanella… - Bioengineering, 2023 - mdpi.com
By leveraging the recent development of artificial intelligence algorithms, several medical
sectors have benefited from using automatic segmentation tools from bioimaging to segment …
sectors have benefited from using automatic segmentation tools from bioimaging to segment …
Attractive deep morphology-aware active contour network for vertebral body contour extraction with extensions to heterogeneous and semi-supervised scenarios
Automatic vertebral body contour extraction (AVBCE) from heterogeneous spinal MRI is
indispensable for the comprehensive diagnosis and treatment of spinal diseases. However …
indispensable for the comprehensive diagnosis and treatment of spinal diseases. However …
[HTML][HTML] Automated detection and classification of acute vertebral body fractures using a convolutional neural network on computed tomography
Background Acute vertebral fracture is usually caused by low-energy injury with
osteoporosis and high-energy trauma. The AOSpine thoracolumbar spine injury …
osteoporosis and high-energy trauma. The AOSpine thoracolumbar spine injury …
A deep learning framework for vertebral morphometry and Cobb angle measurement with external validation
Purpose To propose a fully automated deep learning (DL) framework for the vertebral
morphometry and Cobb angle measurement from three-dimensional (3D) computed …
morphometry and Cobb angle measurement from three-dimensional (3D) computed …
A spine segmentation method under an arbitrary field of view based on 3d swin transformer
Y Zhang, X Ji, W Liu, Z Li, J Zhang, S Liu… - … Journal of Intelligent …, 2023 - Wiley Online Library
High‐precision image segmentation of the spine in computed tomography (CT) images is
important for the diagnosis of spinal diseases and surgical path planning. Manual …
important for the diagnosis of spinal diseases and surgical path planning. Manual …
[HTML][HTML] VertXNet: an ensemble method for vertebral body segmentation and identification from cervical and lumbar spinal X-rays
Y Chen, Y Mo, A Readie, G Ligozio, I Mandal… - Scientific Reports, 2024 - nature.com
Accurate annotation of vertebral bodies is crucial for automating the analysis of spinal X-ray
images. However, manual annotation of these structures is a laborious and costly process …
images. However, manual annotation of these structures is a laborious and costly process …
A Critical Analysis on Vertebra Identification and Cobb Angle Estimation Using Deep Learning for Scoliosis Detection
R Kumar, M Gupta, A Abraham - IEEE Access, 2024 - ieeexplore.ieee.org
Scoliosis is a complicated spinal deformity, and millions of people are suffering from this
disease worldwide. Early detection and accurate scoliosis assessment are vital for effective …
disease worldwide. Early detection and accurate scoliosis assessment are vital for effective …
Spinopelvic measurements of sagittal balance with deep learning: systematic review and critical evaluation
T Vrtovec, B Ibragimov - European Spine Journal, 2022 - Springer
Purpose To summarize and critically evaluate the existing studies for spinopelvic
measurements of sagittal balance that are based on deep learning (DL). Methods Three …
measurements of sagittal balance that are based on deep learning (DL). Methods Three …
Vertebrae localization, segmentation and identification using a graph optimization and an anatomic consistency cycle
Vertebrae localization, segmentation and identification in CT images is key to numerous
clinical applications. While deep learning strategies have brought to this field significant …
clinical applications. While deep learning strategies have brought to this field significant …