■ QSM CHALLENGE
■ QSM CHALLENGE
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Winner of robustness category: mcTFI algorithm, Yan Wen from Cornell University
Winner of best NRMSE category: wL1L2 algorithm, Carlos Milovic from Pontificia Universidad Catolica de Chile
Honorable mention to best RMSE category: TVmpnl algorithm, Carlos Milovic from Pontificia Universidad Catolica de Chile
Honorable mention to best relative NMRSE improvement category: FINE algorithm, Jinwei Zhang from University of Cornell
Honorable mention to highest absolute RMSE improvement category: QSMInvNet algorithm, Juan Liu from the Medical College of Wisconsin
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Overall precision: Detrended and demeaned root mean squared error (“ddRMSE”) with respect to the ground truth for all voxels in the cortical gray and white matter. This metric should highlight subtle susceptibility tissue variations
Overall precision: ddRMSE with respect to the ground truth for all voxels in the deep gray matter.
Overall quantitative accuracy: Slope using all voxels in the deep gray matter
Overall precision: ddRMSE with respect to the ground truth for all voxels corresponding to veins and their immediate vicinity.
Magnetic moment: the magnetic moment of the calcification (pixel) will be compared to the magnetic moment of the ground truth (extent of calcification will be defined by a reconstruction specific thresholding)
Streaking artifact level (standard deviation in a region surrounding the calcification (after removing ground truth variance, divided by mean susceptibility within the calcification region)
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1field removal is added