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  1. Research Outputs

Taming Mambas for 3D Medical Image Segmentation

Academic Article
Publication Date:
2025
Short description:
Taming Mambas for 3D Medical Image Segmentation / Lumetti, Luca; Marchesini, Kevin; Pipoli, Vittorio; Ficarra, Elisa; Grana, Costantino; Bolelli, Federico. - In: IEEE ACCESS. - ISSN 2169-3536. - 13:(2025), pp. 89748-89759. [10.1109/ACCESS.2025.3570461]
abstract:
Recently, the field of 3D medical segmentation has been dominated by deep learning models employing Convolutional Neural Networks (CNNs) and Transformer-based architectures, each with its distinctive strengths and limitations. CNNs are constrained by a local receptive field, whereas Transformer are hindered by their substantial memory requirements as well as their data hunger, making them not ideal for processing 3D medical volumes at a fine-grained level. For these reasons, fully convolutional neural networks, as nnU-Net, still dominate the scene when segmenting medical structures in large 3D medical volumes. Despite numerous advancements toward developing transformer variants with subquadratic time and memory complexity, these models still fall short in content-based reasoning. A recent breakthrough is Mamba, a Recurrent Neural Network (RNN) based on State Space Models (SSMs), outperforming Transformers in many long-context tasks (million-length sequences) on famous natural language processing and genomic benchmarks while keeping a linear complexity. In this paper, we evaluate the effectiveness of Mamba-based architectures in comparison to state-of-the-art convolutional and Transformer-based models for 3D medical image segmentation across three well-established datasets: Synapse Abdomen, MSD BrainTumor, and ACDC. Additionally, we address the primary limitations of existing Mamba-based architectures by proposing alternative architectural designs, hence improving segmentation performances. The source code is publicly available to ensure reproducibility and facilitate further research: https://github.com/LucaLumetti/TamingMambas.
Iris type:
Articolo su rivista
Keywords:
3D segmentation; Mamba; Medical imaging; RNNs; transformers; U-Net;
List of contributors:
Lumetti, Luca; Marchesini, Kevin; Pipoli, Vittorio; Ficarra, Elisa; Grana, Costantino; Bolelli, Federico
Authors of the University:
BOLELLI FEDERICO
FICARRA ELISA
GRANA Costantino
LUMETTI LUCA
MARCHESINI KEVIN
PIPOLI VITTORIO
Handle:
https://iris.unimore.it/handle/11380/1377130
Full Text:
https://iris.unimore.it//retrieve/handle/11380/1377130/925707/Taming_Mambas_for_3D_Medical_Image_Segmentation.pdf
Published in:
IEEE ACCESS
Journal
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