SCOLIONET: An Automated Scoliosis Cobb Angle Quantification Using Enhanced X-ray Images and Deep Learning Models

Author:

Maaliw Renato R.1ORCID

Affiliation:

1. College of Engineering, Southern Luzon State University, Lucban 4328, Quezon, Philippines

Abstract

The advancement of medical prognoses hinges on the delivery of timely and reliable assessments. Conventional methods of assessments and diagnosis, often reliant on human expertise, lead to inconsistencies due to professionals’ subjectivity, knowledge, and experience. To address these problems head-on, we harnessed artificial intelligence’s power to introduce a transformative solution. We leveraged convolutional neural networks to engineer our SCOLIONET architecture, which can accurately identify Cobb angle measurements. Empirical testing on our pipeline demonstrated a mean segmentation accuracy of 97.50% (Sorensen–Dice coefficient) and 96.30% (Intersection over Union), indicating the model’s proficiency in outlining vertebrae. The level of quantification accuracy was attributed to the state-of-the-art design of the atrous spatial pyramid pooling to better segment images. We also compared physician’s manual evaluations against our machine driven measurements to validate our approach’s practicality and reliability further. The results were remarkable, with a p-value (t-test) of 0.1713 and an average acceptable deviation of 2.86 degrees, suggesting insignificant difference between the two methods. Our work holds the premise of enabling medical practitioners to expedite scoliosis examination swiftly and consistently in improving and advancing the quality of patient care.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Graphics and Computer-Aided Design,Computer Vision and Pattern Recognition,Radiology, Nuclear Medicine and imaging

Reference36 articles.

1. (2023, June 25). Vertebrae Column. Available online: https://www.britannica.com/science/vertebra/.

2. Adolescent idiopathic scoliosis 3D vertebral morphology, progression and nomenclature: A current concepts and review;Labrom;Eur. Spine J.,2023

3. The prevalence of adult de novo scoliosis: A systematic review and meta-analysis;McAviney;Eur. Spine J.,2020

4. (2023, July 05). Scoliosis Degrees of Curvature Chart. Scoliosis Reduction Center. Available online: https://www.scoliosisreductioncenter.com/blog/scoliosis-degrees-of-curvature-chart/.

5. Comparison of ultrasound scanning for scoliosis assessment: Robotic versus manual;Victoria;Int. J. Med. Robot. Comput. Assist. Surg.,2022

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