Author:
Guo Han,Somayajula Sai Ashish,Hosseini Ramtin,Xie Pengtao
Abstract
AbstractEndoscopy, a widely used medical procedure for examining the gastrointestinal (GI) tract to detect potential disorders, poses challenges in manual diagnosis due to non-specific symptoms and difficulties in accessing affected areas. While supervised machine learning models have proven effective in assisting clinical diagnosis of GI disorders, the scarcity of image-label pairs created by medical experts limits their availability. To address these limitations, we propose a curriculum self-supervised learning framework inspired by human curriculum learning. Our approach leverages the HyperKvasir dataset, which comprises 100k unlabeled GI images for pre-training and 10k labeled GI images for fine-tuning. By adopting our proposed method, we achieved an impressive top-1 accuracy of 88.92% and an F1 score of 73.39%. This represents a 2.1% increase over vanilla SimSiam for the top-1 accuracy and a 1.9% increase for the F1 score. The combination of self-supervised learning and a curriculum-based approach demonstrates the efficacy of our framework in advancing the diagnosis of GI disorders. Our study highlights the potential of curriculum self-supervised learning in utilizing unlabeled GI tract images to improve the diagnosis of GI disorders, paving the way for more accurate and efficient diagnosis in GI endoscopy.
Publisher
Springer Science and Business Media LLC
Reference74 articles.
1. Moore, L. E. The advantages and disadvantages of endoscopy. Clin. Tech. Small Anim. Pract. 18, 250–253. https://doi.org/10.1016/S1096-2867(03)00071-9 (2003).
2. Fattahi, Z., Khosroushahi, A. Y. & Hasanzadeh, M. Recent progress on developing of plasmon biosensing of tumor biomarkers: Efficient method towards early stage recognition of cancer. Biomed. Pharmacother. 132, 110850 (2020).
3. Ehrhart, N. & Culp, W. T. Principles of surgical oncology. In Veterinary Surgical Oncology (eds Ehrhart, N. & Culp, W. T.) 3–13 (Wiley, 2021).
4. Enlace data portal - technical notes. https://www.paho.org/en/enlace (Accessed 21 May 2023).
5. van der Sommen, F. et al. Machine learning in Gi endoscopy: Practical guidance in how to interpret a novel field. Gut 69, 2035–2045. https://doi.org/10.1136/gutjnl-2019-320466 (2020).
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