Downloads: 5
India | Computer Science amp; Engineering | Volume 14 Issue 6, June 2025 | Pages: 1325 - 1327
Medical Imaging Analysis with Deep Learning
Abstract: This paper presents a comprehensive analysis of deep learning applications in medical imaging analysis. We examine the evolution of medical image processing from traditional computer vision approaches to sophisticated deep learning solutions, highlighting the critical role of artificial intelligence in modern healthcare diagnostics. Our research encompasses multiple dimensions of medical imaging analysis, including disease detection, segmentation, classification, and automated diagnosis across various imaging modalities. Through extensive evaluation across diverse medical imaging datasets, we demonstrate significant improvements in diagnostic accuracy and efficiency. Our findings show that deep learning techniques can achieve 95% accuracy in disease detection, a 40% reduction in analysis time, 85% improvement in early diagnosis, 30% reduction in false positives, and 99.9% reproducibility in results. Key contributions include the development of novel deep learning architectures, integration of multi-modal image analysis, implementation of real-time diagnostic systems, and establishment of comprehensive validation frameworks. Our findings underscore the necessity for modern medical imaging systems to incorporate sophisticated deep learning techniques to effectively handle the complexity of disease detection and diagnosis.
Keywords: Deep Learning, Medical Imaging, Neural Networks, Computer Vision, Healthcare, Diagnostic Systems
How to Cite?: Brijesh Kannaujiya, Ayan Rajput, "Medical Imaging Analysis with Deep Learning", Volume 14 Issue 6, June 2025, International Journal of Science and Research (IJSR), Pages: 1325-1327, https://www.ijsr.net/getabstract.php?paperid=SR25617135803, DOI: https://dx.doi.org/10.21275/SR25617135803