MB-DECTNet: A Model-Based Unrolled Network for Accurate 3D DECT Reconstruction
Tao Ge, Maria Medrano, Rui Liao, David G. Politte, Jeffrey F., Williamson, Bruce R. Whiting, and Joseph A. O'Sullivan

TL;DR
This paper introduces MB-DECTNet, a deep learning unrolled network that accelerates 3D dual-energy CT reconstruction while maintaining high accuracy, outperforming traditional iterative methods in noise reduction and resolution.
Contribution
The paper presents a novel end-to-end trainable unrolled network for 3D DECT reconstruction that combines model-based iterative algorithms with deep learning for faster convergence.
Findings
Significantly reduces noise in reconstructed images
Increases resolution compared to traditional methods
Achieves accurate attenuation coefficient estimation with lower computational cost
Abstract
Numerous dual-energy CT (DECT) techniques have been developed in the past few decades. Dual-energy CT (DECT) statistical iterative reconstruction (SIR) has demonstrated its potential for reducing noise and increasing accuracy. Our lab proposed a joint statistical DECT algorithm for stopping power estimation and showed that it outperforms competing image-based material-decomposition methods. However, due to its slow convergence and the high computational cost of projections, the elapsed time of 3D DECT SIR is often not clinically acceptable. Therefore, to improve its convergence, we have embedded DECT SIR into a deep learning model-based unrolled network for 3D DECT reconstruction (MB-DECTNet) that can be trained in an end-to-end fashion. This deep learning-based method is trained to learn the shortcuts between the initial conditions and the stationary points of iterative algorithms…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Radiation Dose and Imaging · Medical Imaging Techniques and Applications
MethodsTest · *Communicated@Fast*How Do I Communicate to Expedia? · Dropout · Convolution · Layer Normalization · Concatenated Skip Connection · Residual Connection · Max Pooling · U-Net · MLP-Mixer Layer
