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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Apr 27, 2023
Date Accepted: May 30, 2024

The final, peer-reviewed published version of this preprint can be found here:

A Computed Tomography–Based Fracture Prediction Model With Images of Vertebral Bones and Muscles by Employing Deep Learning: Development and Validation Study

Kong SH, Cho W, Park SB, Choo J, Kim JH, Kim SW, Shin CS

A Computed Tomography–Based Fracture Prediction Model With Images of Vertebral Bones and Muscles by Employing Deep Learning: Development and Validation Study

J Med Internet Res 2024;26:e48535

DOI: 10.2196/48535

PMID: 38995678

PMCID: 11282387

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Computed Tomography Imaging of Spinal Muscle Improves the Prediction Power of Vertebral Fractures Using Deep-Learning Algorithm

  • Sung Hye Kong; 
  • Wonwoo Cho; 
  • Sung Bae Park; 
  • Jaegul Choo; 
  • Jung Hee Kim; 
  • Sang Wan Kim; 
  • Chan Soo Shin

ABSTRACT

Background:

Along with the progressively aging populations, the use of opportunistic computed tomography (CT) scanning is increasing, which could be a valuable method to acquire information on both muscles and bones.

Objective:

We aimed to develop and externally validate opportunistic CT-based fracture prediction model using images of bones and muscles by employing a deep learning method.

Methods:

The model was developed based on a retrospective longitudinal cohort study of 1,359 patients with abdominal CT images at Seoul National University Bundang Hospital between 2010 and 2019. The model was externally validated in 495 patients from Seoul National University Boramae Hospital. The primary outcome of the study was the incidence of vertebral fracture events within 5 years of follow-up. The image model was developed using an attention convolutional neural network-recurrent neural network model for images of the bone and paravertebral muscles.

Results:

The mean age was 72 years, and 69.4% were females. In the development set, the areas under the receiver operator curve (AUROC) for predicting vertebral fractures were superior in images of the bone and paravertebral muscle than in those of the bone-only (0.736±0.003 vs. 0.688±0.001; p<0.001). In the validation cohort, the AUROC for the images of the bone-only and the images of the bone and paravertebral muscle were 0.698±0.001 and 0.729±0.002, respectively; p<0.001). For the clinical models using age, sex, body mass index, use of steroids, smoking status, and secondary osteoporosis, AUROC values for the developmental and validation cohorts were 0.635±0.002 and 0.698±0.021, respectively, significantly lower than those of the image model using bone and muscle (p<0.001). In conclusion, the deep learning model of the convolutional neural network-recurrent neural network structure based on CT images of the muscles and bones could better predict the risk of vertebral fractures than the clinical models.

Conclusions:

The model using the images of bone and muscle showed better performance than that using the images of the bone-only. Opportunistic CT screening may contribute to identifying patients with a high fracture risk in the future.


 Citation

Please cite as:

Kong SH, Cho W, Park SB, Choo J, Kim JH, Kim SW, Shin CS

A Computed Tomography–Based Fracture Prediction Model With Images of Vertebral Bones and Muscles by Employing Deep Learning: Development and Validation Study

J Med Internet Res 2024;26:e48535

DOI: 10.2196/48535

PMID: 38995678

PMCID: 11282387

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