Manifold-Aware Local Feature Modeling for Semi-Supervised Medical Image Segmentation
Achieving precise medical image segmentation is vital for effective treatment planning and accurate disease diagnosis. Traditional fully-supervised deep learning methods, though highly precise, are heavily reliant on large volumes of labeled data, which are often difficult to obtain due to the exper...
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Zusammenfassung: | Achieving precise medical image segmentation is vital for effective treatment
planning and accurate disease diagnosis. Traditional fully-supervised deep
learning methods, though highly precise, are heavily reliant on large volumes
of labeled data, which are often difficult to obtain due to the expertise
required for medical annotations. This has led to the rise of semi-supervised
learning approaches that utilize both labeled and unlabeled data to mitigate
the label scarcity issue. In this paper, we introduce the Manifold-Aware Local
Feature Modeling Network (MANet), which enhances the U-Net architecture by
incorporating manifold supervision signals. This approach focuses on improving
boundary accuracy, which is crucial for reliable medical diagnosis. To further
extend the versatility of our method, we propose two variants: MA-Sobel and
MA-Canny. The MA-Sobel variant employs the Sobel operator, which is effective
for both 2D and 3D data, while the MA-Canny variant utilizes the Canny
operator, specifically designed for 2D images, to refine boundary detection.
These variants allow our method to adapt to various medical image modalities
and dimensionalities, ensuring broader applicability. Our extensive experiments
on datasets such as ACDC, LA, and Pancreas-NIH demonstrate that MANet
consistently surpasses state-of-the-art methods in performance metrics like
Dice and Jaccard scores. The proposed method also shows improved generalization
across various semi-supervised segmentation networks, highlighting its
robustness and effectiveness. Visual analysis of segmentation results confirms
that MANet offers clearer and more accurate class boundaries, underscoring the
value of manifold information in medical image segmentation. |
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DOI: | 10.48550/arxiv.2410.10287 |