Left Atrial Segmentation with nnU-Net Using MRI
- URL: http://arxiv.org/abs/2511.04071v1
- Date: Thu, 06 Nov 2025 05:23:45 GMT
- Title: Left Atrial Segmentation with nnU-Net Using MRI
- Authors: Fatemeh Hosseinabadi, Seyedhassan Sharifi,
- Abstract summary: Deep learning methods have recently demonstrated superior performance in medical image segmentation tasks.<n>In this study, we applied the nnU-Net framework, an automated, self-configuring deep learning segmentation architecture, to the Left Atrial Challenge 2013 dataset.<n>The network exhibited robust generalization across variations in left atrial shape, pulmonary contrast, and image quality, accurately delineating both the atrial body and proximal veins.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate segmentation of the left atrium (LA) from cardiac MRI is critical for guiding atrial fibrillation (AF) ablation and constructing biophysical cardiac models. Manual delineation is time-consuming, observer-dependent, and impractical for large-scale or time-sensitive clinical workflows. Deep learning methods, particularly convolutional architectures, have recently demonstrated superior performance in medical image segmentation tasks. In this study, we applied the nnU-Net framework, an automated, self-configuring deep learning segmentation architecture, to the Left Atrial Segmentation Challenge 2013 dataset. The dataset consists of thirty MRI scans with corresponding expert-annotated masks. The nnU-Net model automatically adapted its preprocessing, network configuration, and training pipeline to the characteristics of the MRI data. Model performance was quantitatively evaluated using the Dice similarity coefficient (DSC), and qualitative results were compared against expert segmentations. The proposed nnUNet model achieved a mean Dice score of 93.5, demonstrating high overlap with expert annotations and outperforming several traditional segmentation approaches reported in previous studies. The network exhibited robust generalization across variations in left atrial shape, contrast, and image quality, accurately delineating both the atrial body and proximal pulmonary veins.
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