Figure 1: Example of axial T2W images without (A) and with (B) motion artifacts. In the case of (B), patient motion led to artifacts and non-diagnostic image quality.
Figure 2: Standard sampling (A) and shuffle encoded sampling (B) are shown. Shuffle encoded sampling (B) exhibits lower motion artifacts compared to standard sampling (A) for in-vivo scanning (red arrows).
Figure 3: Architecture of the complex residual U-Net used for ML. The residual U-Net combines 3D residual block processing with the U-Net architecture to enable motion artifact suppression.
Figure 4: Coronal T2W image acquired in the presence of motion. Reconstructions are shown without IMC (A), with ML processing only (B), with IMC without ML (C), and with IMC (D). ML-only processing did not produce good image quality. Main features are blurred out (red arrowheads). The model-based method has remaining residual motion artifacts (red arrows). Combining model-based and ML processing produced the best IQ. (E)-(H) shows the zoomed-in image of a small region (indicated by the dashed red box in (A)) for (A)-(D) respectively.
Figure 5: Axial T2W brain images processed without and with IMC. Without IMC (A), the image has artifacts because of patient motion (red arrows). Using IMC (B), IQ is restored, and the image is of diagnostic quality.
Figure 6: Axial T1W brain images processed without and with IMC. Without IMC (A), the image has artifacts because of patient motion (red arrows). IMC (B) significantly resolves the motion artifacts, leading to a diagnostic quality image.
Figure 7: Sagittal STIR C-spine images without and with IMC. Without IMC (A), the image has artifacts due to motion during the scan (red arrows). IMC (B) significantly resolves the motion artifacts, leading to a diagnostic quality image.
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© CANON MEDICAL SYSTEMS INDIA PRIVATE LIMITED
© CANON MEDICAL SYSTEMS INDIA PRIVATE LIMITED