Optimizing U-Net Architecture with Feed-Forward Neural Networks for Precise Cobb Angle Prediction in Scoliosis Diagnosis
Abstract
Keywords
References
J. A. Janicki and B. Alman, "Scoliosis: Review of diagnosis and treatment," Paediatrics & child health, vol. 12, no. 9, pp. 771-776, 2007.
N. A. Makhdoomi et al., "Development of Scoliotic Spine Severity Detection using Deep Learning Algorithms," in 2022 IEEE 12th Annual Computing and Communication Workshop and Conference (CCWC), 2022: IEEE, pp. 0574-0579.
K. Watanabe, Y. Aoki, and M. Matsumoto, "An application of artificial intelligence to diagnostic imaging of spine disease: estimating spinal alignment from Moiré images," Neurospine, vol. 16, no. 4, p. 697, 2019.
P. Bernstein, J. Metzler, M. Weinzierl, C. Seifert, W. Kisel, and M. Wacker, "Radiographic scoliosis angle estimation: spline-based measurement reveals superior reliability compared to traditional COBB method," European spine journal, vol. 30, pp. 676-685, 2021.
V. Wu, T. Ungi, K. Sunderland, G. Pigeau, A. Schonewille, and G. Fichtinger, "Automatic segmentation of spinal ultrasound landmarks with U-net using multiple consecutive images for input," in Medical Imaging 2020: Image-Guided Procedures, Robotic Interventions, and Modeling, 2020, vol. 11315: SPIE, pp. 572-577.
Y. Pan et al., "Evaluation of a computer-aided method for measuring the Cobb angle on chest X-rays," European Spine Journal, vol. 28, pp. 3035-3043, 2019.
M. Horng, C. Kuok, M. Fu, C. Lin, and Y. Sun, "Cobb angle measurement of spine from X-Ray images using convolutional neural network. Comput Math Methods Med. 2019; 2019: 6357171," ed: Epub 2019/04/19. https://doi. org/10. 1155/2019/63571 71. PubMed PMID: 30996731.
Y. Sun, Y. Xing, Z. Zhao, X. Meng, G. Xu, and Y. Hai, "Comparison of manual versus automated measurement of Cobb angle in idiopathic scoliosis based on a deep learning keypoint detection technology," European Spine Journal, pp. 1-10, 2022.
Y. Ishikawa et al., "Prediction of Cobb Angle Using Deep Learning Algorithm with Three-Dimensional Depth Sensor Considering the Influence of Garment in Idiopathic Scoliosis," Journal of clinical medicine, vol. 12, no. 2, p. 499, 2023.
Z. Zhou, J. Zhu, and C. Yao, "Vertebral Center Points Locating and Cobb Angle Measurement Based on Deep Learning," Applied Sciences, vol. 13, no. 6, p. 3817, 2023.
M. Fraiwan, Z. Audat, L. Fraiwan, and T. Manasreh, "Using deep transfer learning to detect scoliosis and spondylolisthesis from X-ray images," Plos one, vol. 17, no. 5, p. e0267851, 2022.
W. Caesarendra, W. Rahmaniar, J. Mathew, and A. Thien, "Automated Cobb angle measurement for adolescent idiopathic scoliosis using convolutional neural network," Diagnostics, vol. 12, no. 2, p. 396, 2022.
T. Zhang, Y. Li, J. P. Y. Cheung, S. Dokos, and K.-Y. K. Wong, "Learning-based coronal spine alignment prediction using smartphone-acquired scoliosis radiograph images," IEEE Access, vol. 9, pp. 38287-38295, 2021.
X. Ying, "An overview of overfitting and its solutions," in Journal of physics: Conference series, 2019, vol. 1168: IOP Publishing, p. 022022.
E. Britannica. "Vertebral Column." https://www.britannica.com/science/vertebral-column [accessed 8 August 2023],
M. N. Choudhry, Z. Ahmad, and R. Verma, "Adolescent idiopathic scoliosis," The open orthopaedics journal, vol. 10, p. 143, 2016.
Z. Wang, K. Liu, J. Li, Y. Zhu, and Y. Zhang, "Various frameworks and libraries of machine learning and deep learning: a survey," Archives of computational methods in engineering, pp. 1-24, 2019.
T. Yu and H. Zhu, "Hyper-parameter optimization: A review of algorithms and applications," arXiv preprint arXiv:2003.05689, 2020.
I. Goodfellow, Y. Bengio, and A. Courville, Deep learning. MIT press, 2016.
J. Brownlee, "How to configure the learning rate when training deep learning neural networks," Machine Learning Mastery, vol. 6, 2019.
L. N. Smith, "Cyclical learning rates for training neural networks," in 2017 IEEE winter conference on applications of computer vision (WACV), 2017: IEEE, pp. 464-472.
N. Tanksale. "Finding Good Learning Rate and The One Cycle Policy." https://towardsdatascience.com/finding-good-learning-rate-and-the-one-cycle-policy-7159fe1db5d6 [accessed 8 August 2023],
N. Srivastava, G. Hinton, A. Krizhevsky, I. Sutskever, and R. Salakhutdinov, "Dropout: a simple way to prevent neural networks from overfitting," The Journal of machine learning research, vol. 15, no. 1, pp. 1929-1958, 2014.
H. Wu, C. Bailey, P. Rasoulinejad, and S. Li, "Automatic landmark estimation for adolescent idiopathic scoliosis assessment using BoostNet," in Medical Image Computing and Computer Assisted Intervention− MICCAI 2017: 20th International Conference, Quebec City, QC, Canada, September 11-13, 2017, Proceedings, Part I 20, 2017: Springer, pp. 127-135.
M. Ekman, Learning deep learning: Theory and practice of neural networks, computer vision, NLP, and transformers using TensorFlow. Addison-Wesley, 2021.
Refbacks
- There are currently no refbacks.
Indonesian Journal of Electrical Engineering and Informatics (IJEEI)
ISSN 2089-3272
This work is licensed under a Creative Commons Attribution 4.0 International License.