Exploiting Label-Independent Regularization from Spatial Dependencies for Whole Slide Image Analysis
- URL: http://arxiv.org/abs/2602.19487v1
- Date: Mon, 23 Feb 2026 04:07:08 GMT
- Title: Exploiting Label-Independent Regularization from Spatial Dependencies for Whole Slide Image Analysis
- Authors: Weiyi Wu, Xinwen Xu, Chongyang Gao, Xingjian Diao, Siting Li, Jiang Gui,
- Abstract summary: Whole slide images, with their gigapixel-scale panoramas of tissue samples, are pivotal for precise disease diagnosis.<n>Existing MIL methods face challenges due to the fundamental imbalance where a single bag-level label must guide the learning of numerous patch-level features.<n>We propose a spatially regularized MIL framework that leverages inherent spatial relationships among patch features as label-independent regularization signals.
- Score: 11.555599433797235
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Whole slide images, with their gigapixel-scale panoramas of tissue samples, are pivotal for precise disease diagnosis. However, their analysis is hindered by immense data size and scarce annotations. Existing MIL methods face challenges due to the fundamental imbalance where a single bag-level label must guide the learning of numerous patch-level features. This sparse supervision makes it difficult to reliably identify discriminative patches during training, leading to unstable optimization and suboptimal solutions. We propose a spatially regularized MIL framework that leverages inherent spatial relationships among patch features as label-independent regularization signals. Our approach learns a shared representation space by jointly optimizing feature-induced spatial reconstruction and label-guided classification objectives, enforcing consistency between intrinsic structural patterns and supervisory signals. Experimental results on multiple public datasets demonstrate significant improvements over state-of-the-art methods, offering a promising direction.
Related papers
- Representation Geometry as a Diagnostic for Out-of-Distribution Robustness [0.5978543974412219]
We propose a geometry-based diagnostic framework that constructs class-conditional mutual k-nearest-neighbor graphs from in-distribution embeddings.<n>We find that lower spectral complexity and higher mean curvature consistently predict stronger out-of-distribution (OOD) accuracy across checkpoints.<n>Our results demonstrate that representation geometry enables interpretable, label-free diagnosis and supports reliable unsupervised checkpoint selection.
arXiv Detail & Related papers (2026-02-03T19:13:36Z) - GROVER: Graph-guided Representation of Omics and Vision with Expert Regulation for Adaptive Spatial Multi-omics Fusion [8.680469644745463]
We propose Graph-guided Representation of Omics and Vision with Expert Regulation for Adaptive Spatial Multi-omics Fusion.<n> GROVER is a novel framework for adaptive integration of spatial multi-omics data.<n>We show that GROVER outperforms state-of-the-art baselines.
arXiv Detail & Related papers (2025-11-13T06:20:37Z) - Leveraging CORAL-Correlation Consistency Network for Semi-Supervised Left Atrium MRI Segmentation [14.296441810235223]
Semi-supervised learning (SSL) has been widely used to learn from both a few labeled images and many unlabeled images.
Most current SSL-based segmentation methods use pixel values directly to identify similar features in labeled and unlabeled data.
We introduce CORAL(Correlation-Aligned)-Correlation Consistency Network (CORN) to capture the global structure shape and local details of Left Atrium.
arXiv Detail & Related papers (2024-10-21T11:46:28Z) - Eye-gaze Guided Multi-modal Alignment for Medical Representation Learning [65.54680361074882]
Eye-gaze Guided Multi-modal Alignment (EGMA) framework harnesses eye-gaze data for better alignment of medical visual and textual features.
We conduct downstream tasks of image classification and image-text retrieval on four medical datasets.
arXiv Detail & Related papers (2024-03-19T03:59:14Z) - Dual-scale Enhanced and Cross-generative Consistency Learning for Semi-supervised Medical Image Segmentation [49.57907601086494]
Medical image segmentation plays a crucial role in computer-aided diagnosis.
We propose a novel Dual-scale Enhanced and Cross-generative consistency learning framework for semi-supervised medical image (DEC-Seg)
arXiv Detail & Related papers (2023-12-26T12:56:31Z) - Improving Multiple Sclerosis Lesion Segmentation Across Clinical Sites:
A Federated Learning Approach with Noise-Resilient Training [75.40980802817349]
Deep learning models have shown promise for automatically segmenting MS lesions, but the scarcity of accurately annotated data hinders progress in this area.
We introduce a Decoupled Hard Label Correction (DHLC) strategy that considers the imbalanced distribution and fuzzy boundaries of MS lesions.
We also introduce a Centrally Enhanced Label Correction (CELC) strategy, which leverages the aggregated central model as a correction teacher for all sites.
arXiv Detail & Related papers (2023-08-31T00:36:10Z) - Unsupervised Visible-Infrared Person ReID by Collaborative Learning with Neighbor-Guided Label Refinement [53.044703127757295]
Unsupervised learning visible-infrared person re-identification (USL-VI-ReID) aims at learning modality-invariant features from unlabeled cross-modality dataset.
We propose a Dual Optimal Transport Label Assignment (DOTLA) framework to simultaneously assign the generated labels from one modality to its counterpart modality.
The proposed DOTLA mechanism formulates a mutual reinforcement and efficient solution to cross-modality data association, which could effectively reduce the side-effects of some insufficient and noisy label associations.
arXiv Detail & Related papers (2023-05-22T04:40:30Z) - Semi-supervised Domain Adaptive Structure Learning [72.01544419893628]
Semi-supervised domain adaptation (SSDA) is a challenging problem requiring methods to overcome both 1) overfitting towards poorly annotated data and 2) distribution shift across domains.
We introduce an adaptive structure learning method to regularize the cooperation of SSL and DA.
arXiv Detail & Related papers (2021-12-12T06:11:16Z) - POPCORN: Progressive Pseudo-labeling with Consistency Regularization and
Neighboring [3.4253416336476246]
Semi-supervised learning (SSL) uses unlabeled data to compensate for the scarcity of images and the lack of method generalization to unseen domains.
We propose POPCORN, a novel method combining consistency regularization and pseudo-labeling designed for image segmentation.
arXiv Detail & Related papers (2021-09-13T23:36:36Z) - Learning from Partially Overlapping Labels: Image Segmentation under
Annotation Shift [68.6874404805223]
We propose several strategies for learning from partially overlapping labels in the context of abdominal organ segmentation.
We find that combining a semi-supervised approach with an adaptive cross entropy loss can successfully exploit heterogeneously annotated data.
arXiv Detail & Related papers (2021-07-13T09:22:24Z) - Semi-supervised Anatomical Landmark Detection via Shape-regulated
Self-training [37.691539309804426]
Well-annotated medical images are costly and sometimes even impossible to acquire, hindering landmark detection accuracy to some extent.
We propose a model-agnostic shape-regulated self-training framework for semi-supervised landmark detection.
Our framework is flexible and can be used as a plug-and-play module integrated into most supervised methods to improve performance further.
arXiv Detail & Related papers (2021-05-28T05:23:07Z) - Weakly-Supervised Cross-Domain Adaptation for Endoscopic Lesions
Segmentation [79.58311369297635]
We propose a new weakly-supervised lesions transfer framework, which can explore transferable domain-invariant knowledge across different datasets.
A Wasserstein quantified transferability framework is developed to highlight widerange transferable contextual dependencies.
A novel self-supervised pseudo label generator is designed to equally provide confident pseudo pixel labels for both hard-to-transfer and easy-to-transfer target samples.
arXiv Detail & Related papers (2020-12-08T02:26:03Z) - Heteroskedastic and Imbalanced Deep Learning with Adaptive
Regularization [55.278153228758434]
Real-world datasets are heteroskedastic and imbalanced.
Addressing heteroskedasticity and imbalance simultaneously is under-explored.
We propose a data-dependent regularization technique for heteroskedastic datasets.
arXiv Detail & Related papers (2020-06-29T01:09:50Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.