Deep Learning for Osteoporosis Diagnosis Using Magnetic Resonance Images of Lumbar Vertebrae

被引:0
作者
Mousavinasab, Seyed-Mohammadali [1 ,2 ]
Hedyehzadeh, Mohammadreza [1 ]
Mousavinasab, Seyed-Taha [3 ]
机构
[1] Islamic Azad Univ, Dept Biomed Engn, Dezful Branch, Dezful, Iran
[2] Jundi Shapur Univ Med Sci Ahwaz, Golestan Hosp, Ahwaz, Iran
[3] Iran Univ Sci & Technol, Dept Math, Tehran, Iran
来源
JOURNAL OF IMAGING INFORMATICS IN MEDICINE | 2025年
关键词
Osteoporosis; Magnetic resonance images (MRI); Bone mineral densitometry (BMD); Deep learning; Convolution neural network (CNN); ARTIFICIAL NEURAL-NETWORK; BONE-MINERAL DENSITY; TRABECULAR BONE; HIP; CLASSIFICATION; INDEX; FEMUR; DXA;
D O I
10.1007/s10278-025-01547-x
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
This work uses T1, STIR, and T2 MRI sequences of the lumbar vertebrae and BMD measurements to identify osteoporosis using deep learning. An analysis of 1350 MRI images from 50 individuals who had simultaneous BMD and MRI scans was performed. The accuracy of a custom convolution neural network for osteoporosis categorization was assessed using deep learning. T2-weighted MRIs were most diagnostic. The suggested model outperformed T1 and STIR sequences with 88.5% accuracy, 88.9% sensitivity, and 76.1% F1-score. Modern deep learning models like GoogleNet, EfficientNet-B3, ResNet50, InceptionV3, and InceptionResNetV2 were compared to its performance. These designs performed well, but our model was more sensitive and accurate. This research shows that T2-weighted MRI is the best sequence for osteoporosis diagnosis and that deep learning overcomes BMD-based approaches by reducing ionizing radiation. These results support clinical use of deep learning with MRI for safe, accurate, and quick osteoporosis diagnosis.
引用
收藏
页数:13
相关论文
共 32 条
[1]  
Al-shayea Q.K., 2011, International Journal of Computer Science Issues, V8, P150
[2]  
Amato F., 2013, Artificial neural networks in medical diagnosis, V11, P47
[3]  
[Anonymous], 2000, Artificial neural networks in biomedicine
[4]   Deep learning predicts hip fracture using confounding patient and healthcare variables [J].
Badgeley, Marcus A. ;
Zech, John R. ;
Oakden-Rayner, Luke ;
Glicksberg, Benjamin S. ;
Liu, Manway ;
Gale, William ;
McConnell, Michael, V ;
Percha, Bethany ;
Snyder, Thomas M. ;
Dudley, Joel T. .
NPJ DIGITAL MEDICINE, 2019, 2 (1)
[5]   Fractal analysis of radiographic trabecular bone texture and bone mineral density: Two complementary parameters related to osteoporotic fractures [J].
Benhamou, CL ;
Poupon, S ;
Lespessailles, E ;
Loiseau, S ;
Jennane, R ;
Siroux, V ;
Ohley, W ;
Pothuaud, L .
JOURNAL OF BONE AND MINERAL RESEARCH, 2001, 16 (04) :697-704
[6]  
Devikanniga D., 2021, Intelligence in Big Data Technologies-Beyond the Hype. Proceedings of ICBDCC 2019. Advances in Intelligent Systems and Computing (AISC 1167), P607, DOI 10.1007/978-981-15-5285-4_61
[7]   Classification of osteoporosis by artificial neural network based on monarch butterfly optimisation algorithm [J].
Devikanniga, D. ;
Raj, R. Joshua Samuel .
HEALTHCARE TECHNOLOGY LETTERS, 2018, 5 (02) :70-75
[8]   Application of Entropy-Based Attribute Reduction and an Artificial Neural Network in Medicine: A Case Study of Estimating Medical Care Costs Associated with Myocardial Infarction [J].
Du, Qingyun ;
Nie, Ke ;
Wang, Zhensheng .
ENTROPY, 2014, 16 (09) :4788-4800
[9]   Artificial intelligence, osteoporosis and fragility fractures [J].
Ferizi, Uran ;
Honig, Stephen ;
Chang, Gregory .
CURRENT OPINION IN RHEUMATOLOGY, 2019, 31 (04) :368-375
[10]  
Gonzalez G., 2018, SPIE, V10574, P372