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Medical imaging plays a pivotal role in modern healthcare, enabling accurate and timely diagnoses for a myriad of medical conditions. Computed Tomography (CT) imaging, with its ability to provide detailed cross-sectional images of the human body, has become a cornerstone in diagnostic medicine. However, the inherent trade-off between image resolution and radiation dose poses a challenge for achieving optimal diagnostic precision. In this study, we propose an innovative approach to enhance CT imaging by leveraging the cutting-edge Super-Resolution Swin Transformer (SR-Swin) and Attention Networks. The Super-Resolution Swin Transformer, a state-of-the-art deep learning architecture, demonstrates superior performance in image reconstruction tasks. We integrate SR-Swin into the CT imaging pipeline to improve spatial resolution and enhance the fine details crucial for accurate diagnosis. Additionally, we incorporate Attention Networks to focus on relevant regions of interest, further refining the diagnostic precision by emphasizing critical anatomical structures or abnormalities. The methodology involves training the SR-Swin Transformer and Attention Networks on a diverse dataset of medical CT scans, encompassing various pathologies and anatomical regions. The model is fine-tuned to learn the intricacies of medical images and optimize the trade-off between resolution enhancement and computational efficiency. To evaluate the effectiveness of our proposed approach, we conduct extensive quantitative and qualitative assessments using benchmark datasets and real-world clinical cases. The results demonstrate a significant improvement in image resolution, with enhanced visibility of subtle structures and abnormalities. Moreover, the attention mechanism aids in highlighting diagnostically relevant regions, empowering radiologists with a more focused and comprehensive analysis. This study presents a novel framework for advancing medical CT imaging, combining the power of Super-Resolution Swin Transformer and Attention Networks. The integration of these technologies holds immense potential for improving diagnostic accuracy, thereby contributing to enhanced patient outcomes and more informed clinical decision-making in the field of medical diagnostics.
Ms. K. Parvathavarthini (Thu,) studied this question.
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