Deep learning automates Cobb angle measurement compared with multi-expert observers
Keyu Li, Hanxue Gu, Roy Colglazier, Robert Lark, Elizabeth Hubbard,, Robert French, Denise Smith, Jikai Zhang, Erin McCrum, Anthony Catanzano,, Joseph Cao, Leah Waldman, Maciej A. Mazurowski, Benjamin Alman

TL;DR
This paper presents a fully automated deep learning software for Cobb angle measurement in scoliosis, demonstrating high accuracy and reliability compared to expert assessments, with improved interpretability and reproducibility.
Contribution
The study introduces a novel deep learning-based tool that automates Cobb angle measurement with visual explanations, outperforming manual methods in accuracy and consistency.
Findings
Mean deviation of 4.17 degrees in Cobb angle measurement
ICC exceeding 0.96 indicating high reliability
Pearson correlation above 0.944 showing strong agreement
Abstract
Scoliosis, a prevalent condition characterized by abnormal spinal curvature leading to deformity, requires precise assessment methods for effective diagnosis and management. The Cobb angle is a widely used scoliosis quantification method that measures the degree of curvature between the tilted vertebrae. Yet, manual measuring of Cobb angles is time-consuming and labor-intensive, fraught with significant interobserver and intraobserver variability. To address these challenges and the lack of interpretability found in certain existing automated methods, we have created fully automated software that not only precisely measures the Cobb angle but also provides clear visualizations of these measurements. This software integrates deep neural network-based spine region detection and segmentation, spine centerline identification, pinpointing the most significantly tilted vertebrae, and direct…
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Taxonomy
TopicsInertial Sensor and Navigation
