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- Title
Chest X-ray Images for Lung Disease Detection Using Deep Learning Techniques: A Comprehensive Survey.
- Authors
Al-qaness, Mohammed A. A.; Zhu, Jie; AL-Alimi, Dalal; Dahou, Abdelghani; Alsamhi, Saeed Hamood; Abd Elaziz, Mohamed; Ewees, Ahmed A.
- Abstract
In medical imaging, the last decade has witnessed a remarkable increase in the availability and diversity of chest X-ray (CXR) datasets. Concurrently, there has been a significant advancement in deep learning techniques, noted for their escalating accuracy. These developments have catalyzed a surge in the application of deep learning in various medical studies, particularly in detecting and classifying lung diseases. This study delves into an extensive compilation of over 200 studies from the recent five years (2018–2023), employing advanced machine learning, including deep learning methodologies to analyze CXR images. Our exploration is twofold: it categorizes these studies based on the methods used and the types of lung diseases addressed. It also presents an in-depth examination of the current limitations and prospective trajectories in this rapidly evolving field. Our findings underscore the transformative impact and continual progress of deep learning models in enhancing the accuracy and efficiency of lung disease detection using CXR images. This survey culminates by emphasizing the critical need for further technological advancement in this domain, aiming to bridge gaps in healthcare provision and improve patient outcomes. The overarching goal is to pave the way for more precise, efficient, and accessible diagnostic tools in the battle against lung diseases, reinforcing the indispensable role of technology in modern healthcare.
- Subjects
TECHNOLOGICAL innovations; LUNG diseases; MACHINE learning; X-ray imaging; CHEST X rays; DEEP learning
- Publication
Archives of Computational Methods in Engineering, 2024, Vol 31, Issue 6, p3267
- ISSN
1134-3060
- Publication type
Article
- DOI
10.1007/s11831-024-10081-y