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Explainable artificial intelligence in deep learning–based detection of aortic elongation on chest X-ray images
6
Zitationen
5
Autoren
2024
Jahr
Abstract
Our study presents a comprehensive strategy for analysing CXR images by integrating aortic elongation detection models with explainable artificial intelligence techniques. By enhancing the interpretability and understanding of the models' decisions, this approach holds promise for aiding clinicians in timely and accurate diagnosis, potentially improving patient outcomes in clinical practice.
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