Abstract:
In an era marked by a rising prevalence of health issues, the significance of a reliable and efficient
system for disease detection is a need. With the successful integration of Transformer models in
computer vision, researchers are increasingly delving into their application in medical image segmentation.
Particularly, there’s a growing exploration of combining Transformers with convolutional
neural networks featuring coding-decoding architectures. The fusion has demonstrated remarkable
achievements in medical image segmentation. In this research, the main goal is to create
advanced algorithms that can match or even surpass the accuracies achieved by currently established
models when applied to particular datasets. Involving pushing the boundaries of existing methodologies
and techniques to enhance the performance of the segmentation process in medical imaging.
The focus will be on innovating novel approaches that can handle various challenges present in
medical image segmentation tasks, such as noise, variability in anatomy, and imaging modalities.
By developing state-of-the-art algorithms, the aim is to contribute to the advancement of the field
and potentially improve diagnostic and analytical capabilities in clinical settings. By incorporating
diverse datasets representative of different medical conditions, this research attempts to enhance the
effectiveness and generalizability of our findings. The aim is to enhance medical image segmentation
techniques and to develop robust algorithms and methodologies for accurate medical image
analysis and segmentation.