Investigating the Extension of Self Supervised Learning Algorithms to 3D Medical and Dental Image Applications
Аннотация
This study examines how self-supervised learning may improve 3D medical imaging performance and readability by enhancing feature models and grouping. The recommended strategy combines supervised and unsupervised learning. It improves representations by combining classification problems with unsupervised feature learning. Regularization approaches reduce overfitting and increase similarity measures for better feature alignments, which is crucial for contrastive learning tasks.A grouping step reduces cluster gaps, improving feature order. By updating the proximity measure and calculating the centroid, we can improve feature correlations, which in turn helps the model distinguish data points. This boosts accuracy, precision, recall, and more complicated segmentation metrics like the Dice Similarity Coefficient and Intersection over Union.The model performs better in medical imaging segmentation and classification when optimized and grouped. It reacts immediately to fresh information, making it ideal for clinical circumstances requiring rapid and precise conclusions. This method's strong learning framework and flexibility may improve self-supervised learning algorithms in 3D medical imaging applications, resulting in improved assessments and treatment suggestions.