An Empirical Study on MC Dropout--Based Uncertainty--Error Correlation in 2D Brain Tumor Segmentation
- URL: http://arxiv.org/abs/2510.15541v1
- Date: Fri, 17 Oct 2025 11:19:44 GMT
- Title: An Empirical Study on MC Dropout--Based Uncertainty--Error Correlation in 2D Brain Tumor Segmentation
- Authors: Saumya B,
- Abstract summary: This study empirically examines the relationship between MC Dropout--based uncertainty and segmentation error in 2D brain tumor MRI segmentation.<n>Findings suggest that MC Dropout uncertainty provides limited cues for boundary error localization.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate brain tumor segmentation from MRI is vital for diagnosis and treatment planning. Although Monte Carlo (MC) Dropout is widely used to estimate model uncertainty, its effectiveness in identifying segmentation errors -- especially near tumor boundaries -- remains unclear. This study empirically examines the relationship between MC Dropout--based uncertainty and segmentation error in 2D brain tumor MRI segmentation using a U-Net trained under four augmentation settings: none, horizontal flip, rotation, and scaling. Uncertainty was computed from 50 stochastic forward passes and correlated with pixel-wise errors using Pearson and Spearman coefficients. Results show weak global correlations ($r \approx 0.30$--$0.38$) and negligible boundary correlations ($|r| < 0.05$). Although differences across augmentations were statistically significant ($p < 0.001$), they lacked practical relevance. These findings suggest that MC Dropout uncertainty provides limited cues for boundary error localization, underscoring the need for alternative or hybrid uncertainty estimation methods in medical image segmentation.
Related papers
- Enhancing Neuro-Oncology Through Self-Assessing Deep Learning Models for Brain Tumor Unified Model for MRI Segmentation [1.3909388235627789]
Deep learning has advanced on benchmarks, but two issues limit clinical use: no uncertainty estimates for errors and no segmentation of healthy brain structures around tumors for surgery.<n>This study presents an uncertainty-aware framework augmenting nnUNet with a channel for voxel-wise uncertainty.<n>For whole-brain context, a unified model combines normal and cancer datasets, achieving a DSC of 0.81 for brain structures and 0.86 for tumor, with robust key-region performance.
arXiv Detail & Related papers (2025-11-16T22:13:45Z) - Towards Label-Free Brain Tumor Segmentation: Unsupervised Learning with Multimodal MRI [7.144319861722029]
Unsupervised anomaly detection (UAD) presents a complementary alternative to supervised learning for brain tumor segmentation in MRI.<n>We propose a novel Multimodal Vision Transformer Autoencoder (MViT-AE) trained exclusively on healthy brain MRIs to detect and localize tumors.<n>Our method achieves clinically meaningful tumor localization, with lesion-wise Dice Similarity Coefficient of 0.437 (Whole Tumor), 0.316 (Tumor Core), and 0.350 (Enhancing Tumor) on the test set, and an anomaly Detection Rate of 89.4% on the validation set.
arXiv Detail & Related papers (2025-10-17T14:26:30Z) - DRBD-Mamba for Robust and Efficient Brain Tumor Segmentation with Analytical Insights [54.87947751720332]
We propose an efficient 3D segmentation model that captures multi-scale long-range dependencies with minimal computational overhead.<n>We leverage a space-filling curve to preserve spatial locality during 3D-to-1D feature mapping, thereby reducing reliance on computationally expensive multi-axial feature scans.<n>Our model attains 15 times improvement in efficiency while maintaining high segmentation accuracy, highlighting its robustness and computational advantage over existing approaches.
arXiv Detail & Related papers (2025-10-16T07:31:21Z) - Uncertainty Quantified Deep Learning and Regression Analysis Framework for Image Segmentation of Skin Cancer Lesions [0.0]
Deep learning models (DLMs) frequently achieve accurate segmentation and classification of tumors from medical images.<n>DLMs lacking feedback on their image segmentation mechanisms, such as Dice coefficients and confidence in their performance, face challenges when processing previously unseen images in real-world clinical settings.<n>This study reports two DLMs, one trained from scratch and another based on transfer learning, with Monte Carlo dropout or Bayes-by-backprop uncertainty estimations to segment lesions from the publicly available The International Skin Imaging Collaboration-19 dermoscopy image database with cancerous lesions.
arXiv Detail & Related papers (2024-12-28T04:06:44Z) - Structural-Based Uncertainty in Deep Learning Across Anatomical Scales: Analysis in White Matter Lesion Segmentation [8.64414399041931]
Uncertainty quantification (UQ) is an indicator of the trustworthiness of automated deep-learning (DL) tools in the context of white matter lesion (WML) segmentation.
We develop measures for quantifying uncertainty at lesion and patient scales, derived from structural prediction discrepancies.
The results from a multi-centric MRI dataset of 444 patients demonstrate that our proposed measures more effectively capture model errors at the lesion and patient scales.
arXiv Detail & Related papers (2023-11-15T13:04:57Z) - Prediction of brain tumor recurrence location based on multi-modal
fusion and nonlinear correlation learning [55.789874096142285]
We present a deep learning-based brain tumor recurrence location prediction network.
We first train a multi-modal brain tumor segmentation network on the public dataset BraTS 2021.
Then, the pre-trained encoder is transferred to our private dataset for extracting the rich semantic features.
Two decoders are constructed to jointly segment the present brain tumor and predict its future tumor recurrence location.
arXiv Detail & Related papers (2023-04-11T02:45:38Z) - Towards Reliable Medical Image Segmentation by Modeling Evidential Calibrated Uncertainty [57.023423137202485]
Concerns regarding the reliability of medical image segmentation persist among clinicians.<n>We introduce DEviS, an easily implementable foundational model that seamlessly integrates into various medical image segmentation networks.<n>By leveraging subjective logic theory, we explicitly model probability and uncertainty for medical image segmentation.
arXiv Detail & Related papers (2023-01-01T05:02:46Z) - Novel structural-scale uncertainty measures and error retention curves:
application to multiple sclerosis [9.295643448425182]
This paper focuses on the uncertainty estimation for white matter lesions (WML) segmentation in magnetic resonance imaging (MRI)
On one side, voxel-scale segmentation errors cause the erroneous delineation of the lesions; on the other side, lesion-scale detection errors lead to wrong lesion counts.
This work aims to compare the ability of different voxel- and lesion-scale uncertainty measures to capture errors related to segmentation and lesion detection, respectively.
arXiv Detail & Related papers (2022-11-09T11:53:29Z) - Inconsistency-aware Uncertainty Estimation for Semi-supervised Medical
Image Segmentation [92.9634065964963]
We present a new semi-supervised segmentation model, namely, conservative-radical network (CoraNet) based on our uncertainty estimation and separate self-training strategy.
Compared with the current state of the art, our CoraNet has demonstrated superior performance.
arXiv Detail & Related papers (2021-10-17T08:49:33Z) - Deep Learning with Uncertainty Quantification for Predicting the Segmentation Dice Coefficient of Prostate Cancer Biopsy Images [0.7499722271664147]
Deep learning models (DLMs) can achieve state-of-the-art performance in histopathology image segmentation and classification.<n>Uncertainty estimates of DLMs can increase trust by identifying predictions and images that need further review.<n>This study reports DLMs trained with uncertainty estimations, using randomly weights and Monte Carlo dropout, to segment tumors from microscopic Hematoxylin and Eosin dye stained prostate core biopsy histology RGB images.
arXiv Detail & Related papers (2021-08-31T23:38:17Z) - Controlling False Positive/Negative Rates for Deep-Learning-Based
Prostate Cancer Detection on Multiparametric MR images [58.85481248101611]
We propose a novel PCa detection network that incorporates a lesion-level cost-sensitive loss and an additional slice-level loss based on a lesion-to-slice mapping function.
Our experiments based on 290 clinical patients concludes that 1) The lesion-level FNR was effectively reduced from 0.19 to 0.10 and the lesion-level FPR was reduced from 1.03 to 0.66 by changing the lesion-level cost.
arXiv Detail & Related papers (2021-06-04T09:51:27Z) - Bayesian Uncertainty Estimation of Learned Variational MRI
Reconstruction [63.202627467245584]
We introduce a Bayesian variational framework to quantify the model-immanent (epistemic) uncertainty.
We demonstrate that our approach yields competitive results for undersampled MRI reconstruction.
arXiv Detail & Related papers (2021-02-12T18:08:14Z) - Segmentation of the Myocardium on Late-Gadolinium Enhanced MRI based on
2.5 D Residual Squeeze and Excitation Deep Learning Model [55.09533240649176]
The aim of this work is to develop an accurate automatic segmentation method based on deep learning models for the myocardial borders on LGE-MRI.
A total number of 320 exams (with a mean number of 6 slices per exam) were used for training and 28 exams used for testing.
The performance analysis of the proposed ensemble model in the basal and middle slices was similar as compared to intra-observer study and slightly lower at apical slices.
arXiv Detail & Related papers (2020-05-27T20:44:38Z)
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.