Intelligent Medical Diagnostic System for Osteoarthritis using Deep Learning
DOI:
https://doi.org/10.32628/IJSRST25121214Keywords:
Osteoarthritis, deep learning, medical imaging, MRI, diagnostic system, joint health, frailty, cartilage deterioration, feature extraction, classification methods, research directionsAbstract
Osteoarthritis (OA) is a prevalent joint disorder, particularly impacting older and overweight individuals, leading to diminished quality of life and increased frailty. This review paper focuses on the current diagnostic methods for OA, which primarily rely on clinical examinations and imaging techniques. However, these approaches may lack efficiency and precision, prompting the need for advanced diagnostic systems. This paper proposes an Intelligent Medical Diagnostic System for Osteoarthritis utilizing deep learning and medical imaging. By integrating deep features with medical images, the system aims to accurately detect and classify OA, particularly in the knee joint. Challenges such as irrelevant feature selection and managing large image datasets are addressed, alongside an exploration of Magnetic Resonance Imaging (MRI) techniques for OA detection and classification. The review provides a comprehensive discussion on location strategies, feature extraction techniques, and classification methods pertinent to OA diagnosis, highlighting recent advancements and future research directions.
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Rahul, Singh., Neeraj, Sharma., Mana, Saleh, Al, Reshan., Sheifali, Gupta., Asadullah, Shaikh. (2023). A Convolution Neural Network Design for Knee Osteoarthritis Diagnosis Using X-ray Images. International Journal of Online Engineering (ijoe), doi: 10.3991/ijoe. v19i07.40161
Jianzhong, Zhou. (2023). A novel computer-assisted diagnosis method of knee osteoarthritis based on multivariate information and deep learning model. Digital signal processing, doi: 10.1016/j.dsp.2022.103863
Pauline, Shan, Qing, Yeoh., Khin, Wee, Lai., S., Goh., Khairunnisa, Hasikin., Xiang, Wu., Peiyuan, Li. (2023). Transfer learning-assisted 3D deep learning models for knee osteoarthritis detection: Data from the osteoarthritis initiative. Frontiers in Bioengineering and Biotechnology, doi: 10.3389/fbioe.2023.1164655
(2023). Osteoarthritis Detection and Classification in Knee X-Ray Images Using Particle Swarm Optimization with Deep Neural Network. Internet of things, doi: 10.1007/978-3-031-08637-3_5
Xianfeng, Yang., Quanbo, Ji., Ming, Ni., Guoqiang, Zhang., Yan, Wang. (2022). Automatic assessment of knee osteoarthritis severity in portable devices based on deep learning. Journal of Orthopaedic Surgery and Research, doi: 10.1186/s13018-022-03429-2
Rosline, Mary. (2023). Knee Osteoarthritis Radiology Assistant. International research journal of computer science, doi: 10.26562/irjcs. 2023.v1004.07
Huthaifa, A., Ahmed., Emad, A., Mohammed. (2022). Detection and Classification of the Osteoarthritis in Knee Joint Using Transfer Learning with Convolutional Neural Networks (CNNs). Iraqi journal of science, doi: 10.24996/ijs.2022.63.11.40
(2022). Automatic Assessment of Knee Osteoarthritis Severity in Portable Devices based on Deep Learning. doi: 10.21203/rs.3.rs-2145895/v1
Wei, Li., Zhong, Xiao., Jin, Liu., Jiaxin, Feng., Dantian, Zhu., Jianwei, Liao., Wenjun, Yu., Baoxin, Qian., Xiaojun, Chen., Shaolin, Li. (2023). Deep learning-assisted knee osteoarthritis automatic grading on plain radiographs: the value of multiview X-ray images and prior knowledge. Quantitative imaging in medicine and surgery, doi: 10.21037/qims-22-1250
Zhe, Wang., Aladine, Chetouani., Rachid, Jennane. (2023). A Confident Labelling Strategy Based on Deep Learning for Improving Early Detection of Knee OsteoArthritis. arXiv.org, doi: 10.48550/arXiv.2303.13203
Sajeev, Ram, Arumugam., Rebecca, Balakrishna., V., Rajeshram., Sheela, Gowr., Sankarapandian, Karuppasamy., S., Premnath. (2022). Prediction of severity of Knee Osteoarthritis on X-ray images using deep learning. doi: 10.1109/NKCon56289.2022.10126934
Patrick, J., Antonio., Jen, Aldwayne, B., Delmo., Rovenson, V., Sevilla., Michael, Angelo, D., Ligayo., Dolores, L., Montesines. (2022). Deep Transfer Network of Knee Osteoarthritis Progression Rate Classification in MR Imaging for Medical Imaging Support System. doi: 10.1109/DASA54658.2022.9765065
Anastasis, Alexopoulos., Jukka, Hirvasniemi., Nazli, Tumer. (2022). Early detection of knee osteoarthritis using deep learning on knee magnetic resonance images.
Anjali, Tiwari., Murali, Poduval., Vaibhav, Bagaria. (2022). Evaluation of artificial intelligence models for osteoarthritis of the knee using deep learning algorithms for orthopedic radiographs. World journal of orthopedics, doi: 10.5312/wjo. v13.i6.603
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