Assessing the use of Diffusion models for motion artifact correction in brain MRI
- URL: http://arxiv.org/abs/2502.01418v1
- Date: Mon, 03 Feb 2025 14:56:48 GMT
- Title: Assessing the use of Diffusion models for motion artifact correction in brain MRI
- Authors: Paolo Angella, Vito Paolo Pastore, Matteo Santacesaria,
- Abstract summary: We critically evaluate the use of diffusion models for correcting motion artifacts in 2D brain MRI scans.
We compare a diffusion model-based approach with state-of-the-art methods consisting of Unets trained in a supervised fashion on motion-affected images.
Our findings reveal mixed results: diffusion models can produce accurate predictions or generate harmful hallucinations in this context.
- Score: 0.6554326244334868
- License:
- Abstract: Magnetic Resonance Imaging generally requires long exposure times, while being sensitive to patient motion, resulting in artifacts in the acquired images, which may hinder their diagnostic relevance. Despite research efforts to decrease the acquisition time, and designing efficient acquisition sequences, motion artifacts are still a persistent problem, pushing toward the need for the development of automatic motion artifact correction techniques. Recently, diffusion models have been proposed as a solution for the task at hand. While diffusion models can produce high-quality reconstructions, they are also susceptible to hallucination, which poses risks in diagnostic applications. In this study, we critically evaluate the use of diffusion models for correcting motion artifacts in 2D brain MRI scans. Using a popular benchmark dataset, we compare a diffusion model-based approach with state-of-the-art methods consisting of Unets trained in a supervised fashion on motion-affected images to reconstruct ground truth motion-free images. Our findings reveal mixed results: diffusion models can produce accurate predictions or generate harmful hallucinations in this context, depending on data heterogeneity and the acquisition planes considered as input.
Related papers
- DiffDoctor: Diagnosing Image Diffusion Models Before Treating [57.82359018425674]
We propose DiffDoctor, a two-stage pipeline to assist image diffusion models in generating fewer artifacts.
We collect a dataset of over 1M flawed synthesized images and set up an efficient human-in-the-loop annotation process.
The learned artifact detector is then involved in the second stage to tune the diffusion model through assigning a per-pixel confidence map for each image.
arXiv Detail & Related papers (2025-01-21T18:56:41Z) - Latent Drifting in Diffusion Models for Counterfactual Medical Image Synthesis [55.959002385347645]
Scaling by training on large datasets has been shown to enhance the quality and fidelity of image generation and manipulation with diffusion models.
Latent Drifting enables diffusion models to be conditioned for medical images fitted for the complex task of counterfactual image generation.
Our results demonstrate significant performance gains in various scenarios when combined with different fine-tuning schemes.
arXiv Detail & Related papers (2024-12-30T01:59:34Z) - Motion Artifact Removal in Pixel-Frequency Domain via Alternate Masks and Diffusion Model [58.694932010573346]
Motion artifacts present in magnetic resonance imaging (MRI) can seriously interfere with clinical diagnosis.
We propose a novel unsupervised purification method which leverages pixel-frequency information of noisy MRI images to guide a pre-trained diffusion model to recover clean MRI images.
arXiv Detail & Related papers (2024-12-10T15:25:18Z) - Steerable Conditional Diffusion for Out-of-Distribution Adaptation in Medical Image Reconstruction [75.91471250967703]
We introduce a novel sampling framework called Steerable Conditional Diffusion.
This framework adapts the diffusion model, concurrently with image reconstruction, based solely on the information provided by the available measurement.
We achieve substantial enhancements in out-of-distribution performance across diverse imaging modalities.
arXiv Detail & Related papers (2023-08-28T08:47:06Z) - On Sensitivity and Robustness of Normalization Schemes to Input
Distribution Shifts in Automatic MR Image Diagnosis [58.634791552376235]
Deep Learning (DL) models have achieved state-of-the-art performance in diagnosing multiple diseases using reconstructed images as input.
DL models are sensitive to varying artifacts as it leads to changes in the input data distribution between the training and testing phases.
We propose to use other normalization techniques, such as Group Normalization and Layer Normalization, to inject robustness into model performance against varying image artifacts.
arXiv Detail & Related papers (2023-06-23T03:09:03Z) - Realistic Restorer: artifact-free flow restorer(AF2R) for MRI motion
artifact removal [3.8103327351507255]
Motion artifact severely degrades image quality, reduces examination efficiency, and makes accurate diagnosis difficult.
Previous methods often relied on implicit models for artifact correction, resulting in biases in modeling the artifact formation mechanism.
We incorporate the artifact generation mechanism to reestablish the relationship between artifacts and anatomical content in the image domain.
arXiv Detail & Related papers (2023-06-19T04:02:01Z) - The role of noise in denoising models for anomaly detection in medical
images [62.0532151156057]
Pathological brain lesions exhibit diverse appearance in brain images.
Unsupervised anomaly detection approaches have been proposed using only normal data for training.
We show that optimization of the spatial resolution and magnitude of the noise improves the performance of different model training regimes.
arXiv Detail & Related papers (2023-01-19T21:39:38Z) - Annealed Score-Based Diffusion Model for MR Motion Artifact Reduction [37.41561581618164]
Motion artifact reduction is one of the important research topics in MR imaging.
We present an annealed score-based diffusion model for MRI motion artifact reduction.
Experimental results verify that the proposed method successfully reduces both simulated and in vivo motion artifacts.
arXiv Detail & Related papers (2023-01-08T12:16:08Z) - Fast Unsupervised Brain Anomaly Detection and Segmentation with
Diffusion Models [1.6352599467675781]
We propose a method based on diffusion models to detect and segment anomalies in brain imaging.
Our diffusion models achieve competitive performance compared with autoregressive approaches across a series of experiments with 2D CT and MRI data.
arXiv Detail & Related papers (2022-06-07T17:30:43Z)
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.