Deep learning‐based motion quantification from k‐space for fast model‐based magnetic resonance imaging motion correction
Background Intra‐scan rigid‐body motion is a costly and ubiquitous problem in clinical magnetic resonance imaging (MRI) of the head. Purpose State‐of‐the‐art methods for retrospective motion correction in MRI are often computationally expensive or in the case of image‐to‐image deep learning (DL) bas...
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Veröffentlicht in: | Medical physics (Lancaster) 2023-04, Vol.50 (4), p.2148-2161 |
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Zusammenfassung: | Background
Intra‐scan rigid‐body motion is a costly and ubiquitous problem in clinical magnetic resonance imaging (MRI) of the head.
Purpose
State‐of‐the‐art methods for retrospective motion correction in MRI are often computationally expensive or in the case of image‐to‐image deep learning (DL) based methods can be prone to undesired alterations of the image (hallucinations'). In this work we introduce a novel rigid‐body motion correction method which combines the advantages of classical model‐driven and data‐consistency (DC) preserving approaches with a novel DL algorithm, to provide fast and robust retrospective motion correction.
Methods
The proposed Motion Parameter Estimating Densenet (MoPED) retrospectively estimates subject head motion during MRI acquisitions using a DL network with DenseBlocks and multitask learning. It quantifies the 2D rigid in‐plane motion parameters slice‐wise for each echo train (ET) of a Cartesian T2‐weighted 2D Turbo‐Spin‐Echo sequence. The network receives a center patch of the motion corrupted k‐space as well as an additional motion‐free low‐resolution reference scan to provide the ground truth orientation. The supervised training utilizes motion simulations based on 28 acquisitions with subject‐wise training, validation, and test data splits of 70%, 23%, and 7%. During inference, MoPED is embedded in an iterative DC‐driven motion correction algorithm which alternatingly updates estimates of the motion parameters and motion‐corrected low‐resolution k‐space data. The estimated motion parameters are then used to reconstruct the final motion corrected image.
The mean absolute/squared error and the Pearson correlation coefficient were used to analyze the motion parameter estimation quality on in‐silico data in a quantitative evaluation. Structural similarity (SSIM), DC error and root mean squared error (RMSE) were used as metrics of image quality improvement. Furthermore, the generalization capability of the network was analyzed on two in‐vivo motion volumes with 28 slices each and on one simulated T1‐weighted volume.
Results
The motion estimation achieves a Pearson correlation of 0.968 to the simulated ground‐truth of the 2433 test data slices used. In‐silico results indicate that MoPED decreases the time for the optimization by a factor of around 27 compared to a conventional method and is able to reduce the RMSE of the reconstructions and average DC error by more than a factor of two compared to uncorrected images. In‐vivo |
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ISSN: | 0094-2405 2473-4209 |
DOI: | 10.1002/mp.16119 |