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One Network to Solve Them All: A Sequential Multi-Task Joint Learning Network Framework for MR Imaging Pipeline

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Magnetic resonance imaging (MRI) acquisition, reconstruction, and segmentation are usually processed independently in the conventional practice of MRI workflow. It is easy to notice that there are significant relevances among these tasks and this procedure artificially cuts off these potential connections, which may lead to losing clinically important information for the final diagnosis. To involve these potential relations for further performance improvement, a sequential multi-task joint learning network model is proposed to train a combined end-to-end pipeline in a differentiable way, aiming at exploring the mutual influence among those tasks simultaneously. Our design consists of three cascaded modules: 1) deep sampling pattern learning module optimizes the $k$-space sampling pattern with predetermined sampling rate; 2) deep reconstruction module is dedicated to reconstructing MR images from the undersampled data using the learned sampling pattern; 3) deep segmentation module encodes MR images reconstructed from the previous module to segment the interested tissues. The proposed model retrieves the latently interactive and cyclic relations among those tasks, from which each task will be mutually beneficial. The proposed framework is verified on MRB dataset, which achieves superior performance on other SOTA methods in terms of both reconstruction and segmentation.

Zhiwen Wang, Wenjun Xia, Zexin Lu, Yongqiang Huang, Yan Liu, Hu Chen, Jiliu Zhou, Yi Zhang• 2021

Related benchmarks

TaskDatasetResultRank
SegmentationSKM-TEA
GED0.3741
48
SegmentationBRISC 2025
GED0.5349
44
Uncertainty CalibrationQUBIQ 2021
Expected Calibration Error (ECE)1.41
28
SegmentationQUBIQ 8x Acceleration 2021
GED0.1166
11
SegmentationQUBIQ 16x Acceleration 2021
GED0.1296
11
SegmentationQUBIQ 2x Acceleration 2021 (test)
GED0.1176
11
SegmentationQUBIQ 4x Acceleration 2021 (test)
GED0.1121
11
SegmentationQUBIQ 24x Acceleration 2021
GED0.2244
11
SegmentationQUBIQ 32x Acceleration 2021
GED0.2549
11
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