4.6 Article

AI-Based Aortic Stenosis Classification in MRI Scans

期刊

ELECTRONICS
卷 12, 期 23, 页码 -

出版社

MDPI
DOI: 10.3390/electronics12234835

关键词

MRI imaging; aortic disease classification; aortic stenosis; artificial intelligence; deep learning; MRI classification; convolutional neural networks (CNN); transfer learning; data augmentation

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This study investigates the efficacy of five CNN models combined with transfer learning and data augmentation techniques in accurately classifying AS. The VGG16 model achieves high recall and F1-score, and various data augmentation techniques are implemented to improve the model's robustness. The validation results confirm the clinical applicability of the model in real cases.
Aortic stenosis (AS) is a critical cardiovascular condition that necessitates precise diagnosis for effective patient care. Despite a limited dataset comprising only 202 images, our study employs transfer learning to investigate the efficacy of five convolutional neural network (CNN) models, coupled with advanced computer vision techniques, in accurately classifying AS. The VGG16 model stands out among the tested models, achieving 95% recall and F1-score. To fortify the model's robustness and generalization, we implement various data augmentation techniques, including translation, rotation, flip, and brightness adjustment. These techniques aim to capture real-world image variations encountered in clinical settings. Validation, conducted using authentic data from Hospital Santa Maria, not only affirms the clinical applicability of our model but also highlights the potential to develop robust models with a limited number of images. The models undergo training after the images undergo a series of computer vision and data augmentation techniques, as detailed in this paper. These techniques augment the size of our dataset, contributing to improved model performance. In conclusion, our study illuminates the potential of AI-driven AS detection in MRI scans. The integration of transfer learning, CNN models, and data augmentation yields high accuracy rates, even with a small dataset, as validated in real clinical cases.

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