A residual dense network assisted sparse view reconstruction for breast computed tomography

Author:

Fu Zhiyang,Tseng Hsin Wu,Vedantham Srinivasan,Karellas Andrew,Bilgin Ali

Abstract

AbstractTo develop and investigate a deep learning approach that uses sparse-view acquisition in dedicated breast computed tomography for radiation dose reduction, we propose a framework that combines 3D sparse-view cone-beam acquisition with a multi-slice residual dense network (MS-RDN) reconstruction. Projection datasets (300 views, full-scan) from 34 women were reconstructed using the FDK algorithm and served as reference. Sparse-view (100 views, full-scan) projection data were reconstructed using the FDK algorithm. The proposed MS-RDN uses the sparse-view and reference FDK reconstructions as input and label, respectively. Our MS-RDN evaluated with respect to fully sampled FDK reference yields superior performance, quantitatively and visually, compared to conventional compressed sensing methods and state-of-the-art deep learning based methods. The proposed deep learning driven framework can potentially enable low dose breast CT imaging.

Funder

Technology and Research Initiative Fund (TRIF) Improving Health Initiative

National Cancer Institute of the National Institutes of Health

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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