Deep Learning for Medical Image Analysis: Challenges and Opportunities

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Avinash M. Pawar
Nitin Sherje

Abstract

Deep learning has emerged as a powerful tool for medical image analysis, offering the potential to revolutionize the way healthcare professionals interpret diagnostic images. This paper provides a comprehensive review of the applications, challenges, and opportunities associated with deep learning in the field of medical image analysis. The authors explore various deep learning architectures, such as convolutional neural networks (CNNs), and their implementation in tasks including classification, segmentation, and detection of abnormalities. Despite the promise of deep learning models, several challenges remain, such as the need for large annotated datasets, model interpretability, and the integration of these systems into clinical workflows. Furthermore, the paper discusses the current state of research, highlights key advancements, and provides insights into future directions for improving deep learning-based solutions in medical imaging, emphasizing the importance of collaboration between researchers, clinicians, and engineers. This review aims to serve as a foundation for further developments in deep learning applications in healthcare.

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How to Cite
Pawar, A. M., & Sherje, N. (2023). Deep Learning for Medical Image Analysis: Challenges and Opportunities. International Journal of Recent Advances in Engineering and Technology, 12(1), 16–23. Retrieved from https://journals.mriindia.com/index.php/ijraet/article/view/118
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