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Improved detection of aortic dissection in non-contrast-enhanced chest CT using an attention-based deep learning model
10
Zitationen
7
Autoren
2024
Jahr
Abstract
Incorporating the CBAM attention mechanism into a deep learning model can significantly improve AD detection in non-contrast-enhanced chest CT. This approach may aid radiologists in the timely and accurate diagnosis of AD, which is important for improving patient outcomes.
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