Multi-Field De-interlacing Using Deformable Convolution Residual Blocks and Self-Attention
Ronglei Ji, A. Murat Tekalp
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Deep learning denoising methods have been found to be effective for noise suppression in reduced-dose studies in medical imaging applications. in this work, we investigate the feasibility of improving the generalizability of a denoising network by using a dose-blind training approach, in which the network is trained with a loss function defined to accommodate the varying data statistics associated with multiple reduced-dose levels. in the experiments, we demonstrated this approach on quarter- and eighth-dose data from a set of 895 clinical cardiac SPECT perfusion imaging acquisitions. The quantitative results show that a dose-blind denoising network could generalize well over both dose levels, and outperformed dose-specific training in detection of perfusion defects at both quarter- and eighth-dose data (p-values