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Image Detection of Rare Orthopedic Diseases based on Explainable AI
0
Zitationen
4
Autoren
2024
Jahr
Abstract
Image detection has significant application value in medicine, especially in detecting Muller-Weiss Disease (MWD) in orthopedic X-ray images. Traditional manual interpretation methods can be influenced by subjective factors and individual experience, and they can be time-consuming and labor-intensive. In this study, by utilizing advanced object detection models like YOLOv8, we can automatically and accurately identify specific structures and abnormalities in the images, providing real-time feedback, significantly improving physicians' diagnostic accuracy. Furthermore, the use of the Grad-CAM technique to generate heatmaps enhances the interpretability of the model's decisions, helping physicians understand the basis for the model's judgments, further boosting confidence and accuracy in diagnosis. Therefore, image detection plays a critical role in medical image diagnosis, potentially improving diagnostic efficiency and enhancing healthcare quality.
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