3D Spine Shape Estimation from Single 2D DXA
- URL: http://arxiv.org/abs/2412.01504v1
- Date: Mon, 02 Dec 2024 13:58:26 GMT
- Title: 3D Spine Shape Estimation from Single 2D DXA
- Authors: Emmanuelle Bourigault, Amir Jamaludin, Andrew Zisserman,
- Abstract summary: We propose an automated framework to estimate the 3D spine shape from 2D DXA scans.
We achieve this by explicitly predicting the sagittal view of the spine from the DXA scan.
- Score: 49.53978253009771
- License:
- Abstract: Scoliosis is traditionally assessed based solely on 2D lateral deviations, but recent studies have also revealed the importance of other imaging planes in understanding the deformation of the spine. Consequently, extracting the spinal geometry in 3D would help quantify these spinal deformations and aid diagnosis. In this study, we propose an automated general framework to estimate the 3D spine shape from 2D DXA scans. We achieve this by explicitly predicting the sagittal view of the spine from the DXA scan. Using these two orthogonal projections of the spine (coronal in DXA, and sagittal from the prediction), we are able to describe the 3D shape of the spine. The prediction is learnt from over 30k paired images of DXA and MRI scans. We assess the performance of the method on a held out test set, and achieve high accuracy.
Related papers
- Swin-X2S: Reconstructing 3D Shape from 2D Biplanar X-ray with Swin Transformers [8.357602965532923]
Swin-X2S is an end-to-end deep learning method for reconstructing 3D segmentation and labeling from 2D X-ray images.
A dimension-expanding module is introduced to bridge the encoder and decoder, ensuring a smooth conversion from 2D pixels to 3D voxels.
arXiv Detail & Related papers (2025-01-10T13:41:10Z) - Predicting Spine Geometry and Scoliosis from DXA Scans [49.68543422441626]
We first train a neural network to predict the middle spine curve in the scan, and then use an integral-based method to determine the curvature along the spine curve.
We show that the maximum curvature can be used as a scoring function for ordering the severity of spinal deformation.
arXiv Detail & Related papers (2023-11-15T22:49:08Z) - On the Localization of Ultrasound Image Slices within Point Distribution
Models [84.27083443424408]
Thyroid disorders are most commonly diagnosed using high-resolution Ultrasound (US)
Longitudinal tracking is a pivotal diagnostic protocol for monitoring changes in pathological thyroid morphology.
We present a framework for automated US image slice localization within a 3D shape representation.
arXiv Detail & Related papers (2023-09-01T10:10:46Z) - Accurate Fine-Grained Segmentation of Human Anatomy in Radiographs via
Volumetric Pseudo-Labeling [66.75096111651062]
We created a large-scale dataset of 10,021 thoracic CTs with 157 labels.
We applied an ensemble of 3D anatomy segmentation models to extract anatomical pseudo-labels.
Our resulting segmentation models demonstrated remarkable performance on CXR.
arXiv Detail & Related papers (2023-06-06T18:01:08Z) - CNN-based real-time 2D-3D deformable registration from a single X-ray
projection [2.1198879079315573]
This paper presents a method for real-time 2D-3D non-rigid registration using a single fluoroscopic image.
A dataset composed of displacement fields and 2D projections of the anatomy is generated from a preoperative scan.
A neural network is trained to recover the unknown 3D displacement field from a single projection image.
arXiv Detail & Related papers (2022-12-15T09:57:19Z) - Context-Aware Transformers For Spinal Cancer Detection and Radiological
Grading [70.04389979779195]
This paper proposes a novel transformer-based model architecture for medical imaging problems involving analysis of vertebrae.
It considers two applications of such models in MR images: (a) detection of spinal metastases and the related conditions of vertebral fractures and metastatic cord compression.
We show that by considering the context of vertebral bodies in the image, SCT improves the accuracy for several gradings compared to previously published model.
arXiv Detail & Related papers (2022-06-27T10:31:03Z) - Inferring the 3D Standing Spine Posture from 2D Radiographs [5.114998342130747]
An upright spinal pose (i.e. standing) under natural weight bearing is crucial for such bio-mechanical analysis.
We propose a novel neural network architecture working vertebra-wise, termed emphTransVert, which takes 2D radiographs and infers the spine's 3D posture.
arXiv Detail & Related papers (2020-07-13T18:37:00Z) - A Convolutional Approach to Vertebrae Detection and Labelling in Whole
Spine MRI [70.04389979779195]
We propose a novel convolutional method for the detection and identification of vertebrae in whole spine MRIs.
This involves using a learnt vector field to group detected vertebrae corners together into individual vertebral bodies.
We demonstrate the clinical applicability of this method, using it for automated scoliosis detection in both lumbar and whole spine MR scans.
arXiv Detail & Related papers (2020-07-06T09:37:12Z) - Analysis of Scoliosis From Spinal X-Ray Images [17.8260780895433]
Measurement of scoliosis requires labeling and identification of vertebrae in the spine.
Scoliosis is a congenital disease in which the spine is deformed from its normal shape.
We propose an end-to-end segmentation model that provides a fully automatic and reliable segmentation of the vertebrae associated with scoliosis measurement.
arXiv Detail & Related papers (2020-04-15T05:36:28Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.