Synthesizing images from multiple kernels using a deep convolutional neural network
Medical Physics2019Vol. 47(2), pp. 422–430
Citations Over TimeTop 10% of 2019 papers
Abstract
A deep CNN can be used combine features from CT images reconstructed with different kernels to produce a single synthesized image series that exhibits both low noise and high spatial resolution. This approach has implications for improving image quality, reducing radiation dose, and simplifying the clinical workflow for CT imaging.
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