Prediction of osteoporosis using MRI and CT scans with unimodal and multimodal deep-learning models

Küçükçiloğlu, Yasemin and Şekeroğlu, Boran and Adalı, Terin and Şentürk, Niyazi (2024) Prediction of osteoporosis using MRI and CT scans with unimodal and multimodal deep-learning models. Diagnostic and Interventional Radiology, 30 (1). pp. 9-20. ISSN 1305-3825 (Print) 1305-3612 (Online)

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Abstract

PURPOSE Osteoporosis is the systematic degeneration of the human skeleton, with consequences ranging from a reduced quality of life to mortality. Therefore, the prediction of osteoporosis reduces risks and supports patients in taking precautions. Deep-learning and specific models achieve highly accurate results using different imaging modalities. The primary purpose of this research was to develop unimodal and multimodal deep-learning-based diagnostic models to predict bone mineral loss of the lumbar vertebrae using magnetic resonance (MR) and computed tomography (CT) imaging. METHODS Patients who received both lumbar dual-energy X-ray absorptiometry (DEXA) and MRI (n = 120) or CT (n = 100) examinations were included in this study. Unimodal and multimodal convolutional neural networks (CNNs) with dual blocks were proposed to predict osteoporosis using lumbar vertebrae MR and CT examinations in separate and combined datasets. Bone mineral density values obtained by DEXA were used as reference data. The proposed models were compared with a CNN model and six benchmark pre-trained deep-learning models. RESULTS The proposed unimodal model obtained 96.54%, 98.84%, and 96.76% balanced accuracy for MRI, CT, and combined datasets, respectively, while the multimodal model achieved 98.90% balanced accuracy in 5-fold cross-validation experiments. Furthermore, the models obtained 95.68%–97.91% accuracy with a hold-out validation dataset. In addition, comparative experiments demonstrated that the proposed models yielded superior results by providing more effective feature extraction in dual blocks to predict osteoporosis. CONCLUSION This study demonstrated that osteoporosis was accurately predicted by the proposed models using both MR and CT images, and a multimodal approach improved the prediction of osteoporosis. With further research involving prospective studies with a larger number of patients, there may be an opportunity to implement these technologies into clinical practice.
Item Type: Article
Uncontrolled Keywords: deep learning; dual-energy X-ray absorptiometry; lumbar vertebrae; multimodal CNN; Osteoporosis
Divisions: Sabancı University Nanotechnology Research and Application Center
Depositing User: IC-Cataloging
Date Deposited: 07 Jun 2024 18:15
Last Modified: 07 Jun 2024 18:15
URI: https://research.sabanciuniv.edu/id/eprint/49009

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