Medical image segmentation is essential for detecting and localizing tumors in medical image analysis. Image segmentation involves the identification of anatomical structures in images. Medical image segmentation starts with manual segmentation using Atlas methods, then auto-segmentation, facilitated by deep learning algorithms. Deep learning-based medical image segmentation retains a significant pledge in reducing treatment planning, radiation-related toxicities, and side effects. This study provides a complete overview of deep-learning medical image segmentation models. We review various deep-learning models and architectures applied to medical image segmentation, including fully convolutional networks, U-Net, and attention-based models. This literature review discusses using different loss functions, data augmentation techniques, and transfer learning in deep learning-based medical image segmentation and several types of medical image modality. Evaluation analysis encloses benchmark datasets for human body organs such as the brain, lungs, chest, and liver. Finally, we summarize the challenges and future directions of deep learning for medical image segmentation.
مختار, مى, عبد الجليل, هالة, & خوريبه, غادة. (2024). Deep Learning Medical Image Segmentation Methods: A Survey. النشرة المعلوماتية في الحاسبات والمعلومات, 6(1), 1-10. doi: 10.21608/fcihib.2024.189094.1079
MLA
مى مختار; هالة عبد الجليل; غادة خوريبه. "Deep Learning Medical Image Segmentation Methods: A Survey", النشرة المعلوماتية في الحاسبات والمعلومات, 6, 1, 2024, 1-10. doi: 10.21608/fcihib.2024.189094.1079
HARVARD
مختار, مى, عبد الجليل, هالة, خوريبه, غادة. (2024). 'Deep Learning Medical Image Segmentation Methods: A Survey', النشرة المعلوماتية في الحاسبات والمعلومات, 6(1), pp. 1-10. doi: 10.21608/fcihib.2024.189094.1079
VANCOUVER
مختار, مى, عبد الجليل, هالة, خوريبه, غادة. Deep Learning Medical Image Segmentation Methods: A Survey. النشرة المعلوماتية في الحاسبات والمعلومات, 2024; 6(1): 1-10. doi: 10.21608/fcihib.2024.189094.1079