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arxiv 1909.08942 v1 pith:BGP6K7WY submitted 2019-09-19 eess.IV cs.CV

Synthetic CT Generation from MRI Using Improved DualGAN

classification eess.IV cs.CV
keywords syntheticimagesgenerationscanswereaddedadversarialarchitecture
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Synthetic CT image generation from MRI scan is necessary to create radiotherapy plans without the need of co-registered MRI and CT scans. The chosen baseline adversarial model with cycle consistency permits unpaired image-to-image translation. Perceptual loss function term and coordinate convolutional layer were added to improve the quality of translated images. The proposed architecture was tested on paired MRI-CT dataset, where the synthetic CTs were compared to corresponding original CT images. The MAE between the synthetic CT images and the real CT scans is 61 HU computed inside of the true CTs body shape.

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