Rethinking Convergence in Deep Learning: The Predictive-Corrective Paradigm for Anatomy-Informed Brain MRI Segmentation
- URL: http://arxiv.org/abs/2510.15439v1
- Date: Fri, 17 Oct 2025 08:51:33 GMT
- Title: Rethinking Convergence in Deep Learning: The Predictive-Corrective Paradigm for Anatomy-Informed Brain MRI Segmentation
- Authors: Feifei Zhang, Zhenhong Jia, Sensen Song, Fei Shi, Dayong Ren,
- Abstract summary: We introduce the Predictive-Corrective (PC) paradigm, a framework that decouples the modeling task to fundamentally accelerate learning.<n>PCambaNet is composed of two synergistic modules. First, the Predictive Prior Module (PPM) generates a coarse approximation at low computational cost.<n>Next, the Corrective Residual Network (CRN) learns to model the residual error, focusing the network's full capacity on refining these challenging regions.
- Score: 30.94379425064039
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Despite the remarkable success of the end-to-end paradigm in deep learning, it often suffers from slow convergence and heavy reliance on large-scale datasets, which fundamentally limits its efficiency and applicability in data-scarce domains such as medical imaging. In this work, we introduce the Predictive-Corrective (PC) paradigm, a framework that decouples the modeling task to fundamentally accelerate learning. Building upon this paradigm, we propose a novel network, termed PCMambaNet. PCMambaNet is composed of two synergistic modules. First, the Predictive Prior Module (PPM) generates a coarse approximation at low computational cost, thereby anchoring the search space. Specifically, the PPM leverages anatomical knowledge-bilateral symmetry-to predict a 'focus map' of diagnostically relevant asymmetric regions. Next, the Corrective Residual Network (CRN) learns to model the residual error, focusing the network's full capacity on refining these challenging regions and delineating precise pathological boundaries. Extensive experiments on high-resolution brain MRI segmentation demonstrate that PCMambaNet achieves state-of-the-art accuracy while converging within only 1-5 epochs-a performance unattainable by conventional end-to-end models. This dramatic acceleration highlights that by explicitly incorporating domain knowledge to simplify the learning objective, PCMambaNet effectively mitigates data inefficiency and overfitting.
Related papers
- Adapting HFMCA to Graph Data: Self-Supervised Learning for Generalizable fMRI Representations [57.054499278843856]
Functional magnetic resonance imaging (fMRI) analysis faces significant challenges due to limited dataset sizes and domain variability between studies.<n>Traditional self-supervised learning methods inspired by computer vision often rely on positive and negative sample pairs.<n>We propose adapting a recently developed Hierarchical Functional Maximal Correlation Algorithm (HFMCA) to graph-structured fMRI data.
arXiv Detail & Related papers (2025-10-05T12:35:01Z) - Bridging Foundation Models and Efficient Architectures: A Modular Brain Imaging Framework with Local Masking and Pretrained Representation Learning [7.591083752535149]
We propose a modular framework that integrates principles from foundation models (FM) with efficient, domain-specific architectures.<n>Our framework achieved mean absolute errors (MAEs) of 5.343 for age prediction and 2.940 for fluid intelligence, with Pearson correlation coefficients (PCCs) of 0.928 and 0.887, respectively.<n>This work provides a robust, interpretable alternative to LLM-based approaches for fMRI analysis, offering novel insights into brain aging and cognitive function.
arXiv Detail & Related papers (2025-08-09T08:06:01Z) - Optimizing Universal Lesion Segmentation: State Space Model-Guided Hierarchical Networks with Feature Importance Adjustment [0.0]
We introduce Mamba-Ahnet, a novel integration of State Space Model (SSM) and Advanced Hierarchical Network (AHNet) within the MAMBA framework.
Mamba-Ahnet combines SSM's feature extraction and comprehension with AHNet's attention mechanisms and image reconstruction, aiming to enhance segmentation accuracy and robustness.
arXiv Detail & Related papers (2024-04-26T08:15:43Z) - InDuDoNet+: A Model-Driven Interpretable Dual Domain Network for Metal
Artifact Reduction in CT Images [53.4351366246531]
We construct a novel interpretable dual domain network, termed InDuDoNet+, into which CT imaging process is finely embedded.
We analyze the CT values among different tissues, and merge the prior observations into a prior network for our InDuDoNet+, which significantly improve its generalization performance.
arXiv Detail & Related papers (2021-12-23T15:52:37Z) - Real-time landmark detection for precise endoscopic submucosal
dissection via shape-aware relation network [51.44506007844284]
We propose a shape-aware relation network for accurate and real-time landmark detection in endoscopic submucosal dissection surgery.
We first devise an algorithm to automatically generate relation keypoint heatmaps, which intuitively represent the prior knowledge of spatial relations among landmarks.
We then develop two complementary regularization schemes to progressively incorporate the prior knowledge into the training process.
arXiv Detail & Related papers (2021-11-08T07:57:30Z) - DFENet: A Novel Dimension Fusion Edge Guided Network for Brain MRI
Segmentation [0.0]
We propose a novel Dimension Fusion Edge-guided network (DFENet) that can meet both of these requirements by fusing the features of 2D and 3D CNNs.
The proposed model is robust, accurate, superior to the existing methods, and can be relied upon for biomedical applications.
arXiv Detail & Related papers (2021-05-17T15:43:59Z) - Learning Multi-Modal Volumetric Prostate Registration with Weak
Inter-Subject Spatial Correspondence [2.6894568533991543]
We introduce an auxiliary input to the neural network for the prior information about the prostate location in the MR sequence.
With weakly labelled MR-TRUS prostate data, we showed registration quality comparable to the state-of-the-art deep learning-based method.
arXiv Detail & Related papers (2021-02-09T16:48:59Z) - Few-shot Medical Image Segmentation using a Global Correlation Network
with Discriminative Embedding [60.89561661441736]
We propose a novel method for few-shot medical image segmentation.
We construct our few-shot image segmentor using a deep convolutional network trained episodically.
We enhance discriminability of deep embedding to encourage clustering of the feature domains of the same class.
arXiv Detail & Related papers (2020-12-10T04:01:07Z) - An Uncertainty-Driven GCN Refinement Strategy for Organ Segmentation [53.425900196763756]
We propose a segmentation refinement method based on uncertainty analysis and graph convolutional networks.
We employ the uncertainty levels of the convolutional network in a particular input volume to formulate a semi-supervised graph learning problem.
We show that our method outperforms the state-of-the-art CRF refinement method by improving the dice score by 1% for the pancreas and 2% for spleen.
arXiv Detail & Related papers (2020-12-06T18:55:07Z) - Context-Aware Refinement Network Incorporating Structural Connectivity
Prior for Brain Midline Delineation [50.868845400939314]
We propose a context-aware refinement network (CAR-Net) to refine and integrate the feature pyramid representation generated by the UNet.
For keeping the structural connectivity of the brain midline, we introduce a novel connectivity regular loss.
The proposed method requires fewer parameters and outperforms three state-of-the-art methods in terms of four evaluation metrics.
arXiv Detail & Related papers (2020-07-10T14:01:20Z)
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.