An overview of deep learning in medical imaging
Imran Ul Haq

TL;DR
This paper reviews the rapid development and application of deep learning techniques in medical imaging, highlighting recent advances, key models, and future challenges in the field.
Contribution
It provides a comprehensive overview of deep learning models, their use in medical image analysis, and discusses future directions and resources for researchers.
Findings
Deep learning models significantly improve medical image analysis.
Various applications include classification, detection, segmentation, and registration.
The paper outlines challenges and future prospects in DL for medical imaging.
Abstract
Machine learning (ML) has seen enormous consideration during the most recent decade. This success started in 2012 when an ML model accomplished a remarkable triumph in the ImageNet Classification, the world's most famous competition for computer vision. This model was a kind of convolutional neural system (CNN) called deep learning (DL). Since then, researchers have started to participate efficiently in DL's fastest developing area of research. These days, DL systems are cutting-edge ML systems spanning a broad range of disciplines, from human language processing to video analysis, and commonly used in the scholarly world and enterprise sector. Recent advances can bring tremendous improvement to the medical field. Improved and innovative methods for data processing, image analysis and can significantly improve the diagnostic technologies and medicinal services gradually. A quick review…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · COVID-19 diagnosis using AI · AI in cancer detection
