TL;DR
CurvNet introduces a novel framework for automatic Cobb angle measurement from X-ray images, utilizing latent contour representation and an iterative data engine to improve accuracy and generate a large, private dataset.
Contribution
The paper presents a new latent contour-based method combined with an iterative data engine for improved curvature angle estimation and dataset creation.
Findings
Achieves state-of-the-art Cobb angle estimation performance.
Generates the largest private scoliosis X-ray dataset, Spinal-AI2024.
Demonstrates robustness across multiple datasets.
Abstract
Curvature angle is a quantitative measurement of a curve, in which Cobb angle is customized for spinal curvature. Automatic Cobb angle measurement from X-ray images is crucial for scoliosis screening and diagnosis. However, most existing regression-based and segmentation-based methods struggle with inaccurate spine representations or mask connectivity and fragmentation issues. Besides, landmark-based methods suffer from insufficient training data and annotations. To address these challenges, we propose a novel curvature angle estimation framework named CurvNet including latent contour representation based contour detection and iterative data engine based image self-generation. Specifically, we propose a parameterized spine contour representation in latent space, which enables eigen-spine decomposition and spine contour reconstruction. Latent contour coefficient regression is combined…
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