Uncertainty-based quality assurance of carotid artery wall segmentation
in black-blood MRI
- URL: http://arxiv.org/abs/2308.09538v1
- Date: Fri, 18 Aug 2023 13:16:00 GMT
- Title: Uncertainty-based quality assurance of carotid artery wall segmentation
in black-blood MRI
- Authors: Elina Thibeau-Sutre, Dieuwertje Alblas, Sophie Buurman, Christoph
Brune and Jelmer M. Wolterink
- Abstract summary: We develop a fully automatic algorithm for carotid artery wall segmentation in black-blood MRI.
This method identifies nested artery walls in 3D patches centered on the carotid artery.
We investigate to what extent the uncertainty in the model predictions for the contour location can serve as a surrogate for error detection.
- Score: 3.377374929672754
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The application of deep learning models to large-scale data sets requires
means for automatic quality assurance. We have previously developed a fully
automatic algorithm for carotid artery wall segmentation in black-blood MRI
that we aim to apply to large-scale data sets. This method identifies nested
artery walls in 3D patches centered on the carotid artery. In this study, we
investigate to what extent the uncertainty in the model predictions for the
contour location can serve as a surrogate for error detection and,
consequently, automatic quality assurance. We express the quality of automatic
segmentations using the Dice similarity coefficient. The uncertainty in the
model's prediction is estimated using either Monte Carlo dropout or test-time
data augmentation. We found that (1) including uncertainty measurements did not
degrade the quality of the segmentations, (2) uncertainty metrics provide a
good proxy of the quality of our contours if the center found during the first
step is enclosed in the lumen of the carotid artery and (3) they could be used
to detect low-quality segmentations at the participant level. This automatic
quality assurance tool might enable the application of our model in large-scale
data sets.
Related papers
- Quality assurance of organs-at-risk delineation in radiotherapy [7.698565355235687]
The delineation of tumor target and organs-at-risk is critical in the radiotherapy treatment planning.
The quality assurance of the automatic segmentation is still an unmet need in clinical practice.
Our proposed model, which introduces residual network and attention mechanism in the one-class classification framework, was able to detect the various types of OAR contour errors with high accuracy.
arXiv Detail & Related papers (2024-05-20T02:32:46Z) - 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 334 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) - Weakly supervised segmentation of intracranial aneurysms using a novel 3D focal modulation UNet [0.5106162890866905]
We propose FocalSegNet, a novel 3D focal modulation UNet, to detect an aneurysm and offer an initial, coarse segmentation of it from time-of-flight MRA image patches.
We trained and evaluated our model on a public dataset, and in terms of UIA detection, our model showed a low false-positive rate of 0.21 and a high sensitivity of 0.80.
arXiv Detail & Related papers (2023-08-06T03:28:08Z) - Towards Reliable Medical Image Segmentation by utilizing Evidential Calibrated Uncertainty [52.03490691733464]
We introduce DEviS, an easily implementable foundational model that seamlessly integrates into various medical image segmentation networks.
By leveraging subjective logic theory, we explicitly model probability and uncertainty for the problem of medical image segmentation.
DeviS incorporates an uncertainty-aware filtering module, which utilizes the metric of uncertainty-calibrated error to filter reliable data.
arXiv Detail & Related papers (2023-01-01T05:02:46Z) - Application of the nnU-Net for automatic segmentation of lung lesion on
CT images, and implication on radiomic models [1.8231394717039833]
A deep-learning automatic segmentation method was applied on computed tomography images of non-small-cell lung cancer patients.
The use of manual vs automatic segmentation in the performance of survival radiomic models was assessed, as well.
arXiv Detail & Related papers (2022-09-24T15:04:23Z) - DOMINO: Domain-aware Model Calibration in Medical Image Segmentation [51.346121016559024]
Modern deep neural networks are poorly calibrated, compromising trustworthiness and reliability.
We propose DOMINO, a domain-aware model calibration method that leverages the semantic confusability and hierarchical similarity between class labels.
Our results show that DOMINO-calibrated deep neural networks outperform non-calibrated models and state-of-the-art morphometric methods in head image segmentation.
arXiv Detail & Related papers (2022-09-13T15:31:52Z) - Automated SSIM Regression for Detection and Quantification of Motion
Artefacts in Brain MR Images [54.739076152240024]
Motion artefacts in magnetic resonance brain images are a crucial issue.
The assessment of MR image quality is fundamental before proceeding with the clinical diagnosis.
An automated image quality assessment based on the structural similarity index (SSIM) regression has been proposed here.
arXiv Detail & Related papers (2022-06-14T10:16:54Z) - A Deep Learning Approach to Predicting Collateral Flow in Stroke
Patients Using Radiomic Features from Perfusion Images [58.17507437526425]
Collateral circulation results from specialized anastomotic channels which provide oxygenated blood to regions with compromised blood flow.
The actual grading is mostly done through manual inspection of the acquired images.
We present a deep learning approach to predicting collateral flow grading in stroke patients based on radiomic features extracted from MR perfusion data.
arXiv Detail & Related papers (2021-10-24T18:58:40Z) - Automated Detection of Coronary Artery Stenosis in X-ray Angiography
using Deep Neural Networks [0.0]
We propose a two-step deep-learning framework to partially automate the detection of stenosis from X-ray coronary angiography images.
We achieved a 0.97 accuracy on the task of classifying the Left/Right Coronary Artery angle view and 0.68/0.73 recall on the determination of the regions of interest, for LCA and RCA, respectively.
arXiv Detail & Related papers (2021-03-04T11:45:54Z) - 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) - Semi-supervised Medical Image Classification with Relation-driven
Self-ensembling Model [71.80319052891817]
We present a relation-driven semi-supervised framework for medical image classification.
It exploits the unlabeled data by encouraging the prediction consistency of given input under perturbations.
Our method outperforms many state-of-the-art semi-supervised learning methods on both single-label and multi-label image classification scenarios.
arXiv Detail & Related papers (2020-05-15T06:57:54Z)
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.