ResNCT: A Deep Learning Model for the Synthesis of Nephrographic Phase Images in CT Urography
Syed Jamal Safdar Gardezi (1), Lucas Aronson (1), Peter Wawrzyn (2),, Hongkun Yu (2), E. Jason Abel (3), Daniel D. Shapiro (3), Meghan G. Lubner, (1), Joshua Warner (1), Giuseppe Toia (1), Lu Mao (4), Pallavi Tiwari (1,2),, Andrew L. Wentland (1,2,5) ((1) Department of Radiology

TL;DR
This study introduces ResNCT, a transformer-based deep learning model that synthesizes nephrographic phase images in CT urography, potentially reducing radiation exposure by eliminating the need for this phase.
Contribution
The paper presents a novel ResNCT model that accurately synthesizes nephrographic phase images from unenhanced and urographic phases, reducing radiation dose in CT urography.
Findings
ResNCT achieved high SSIM (0.88) and NCC (0.98) in image synthesis.
The model reduced radiation dose by approximately 33%.
Synthesized images closely matched ground truth images.
Abstract
Purpose: To develop and evaluate a transformer-based deep learning model for the synthesis of nephrographic phase images in CT urography (CTU) examinations from the unenhanced and urographic phases. Materials and Methods: This retrospective study was approved by the local Institutional Review Board. A dataset of 119 patients (mean SD age, 65 12 years; 75/44 males/females) with three-phase CT urography studies was curated for deep learning model development. The three phases for each patient were aligned with an affine registration algorithm. A custom model, coined Residual transformer model for Nephrographic phase CT image synthesis (ResNCT), was developed and implemented with paired inputs of non-contrast and urographic sets of images trained to produce the nephrographic phase images, that were compared with the corresponding ground truth nephrographic phase images. The…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Advanced X-ray Imaging Techniques · Medical Imaging Techniques and Applications
MethodsMasked autoencoder
