Automatic Virtual Contrast-Enhanced CT Synthesis Using Dual-Energy CT and Residual U-Net with Attention Module for Detecting Pulmonary Hilar Lymphadenopathy
  • Jeon, Uju
  • Woo, Jung Han
  • Jeong, Dong Young
  • Kim, Jong Hee
  • Cha, Yoon Ki
  • 외 1명
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초록

Rationale and Objectives To propose an automatic virtual contrast-enhanced chest computed tomography (CT) synthesis using dual-energy CT and a Residual U-Net with an attention module to detect clinically significant hilar lymphadenopathy. Materials and Methods We conducted a retrospective analysis of 2082 patients who underwent dual-energy chest CT scans. Our approach utilized a Residual U-Net combined with a Convolutional Block Attention Module (CBAM) to transform non-contrast CT images into virtual contrast-enhanced CT images. We evaluated the effectiveness of our method through quantitative and qualitative analyses and an observer study involving thoracic radiologists, focusing on the detection of significant hilar lymph nodes. Results Our method achieved an average peak signal-to-noise ratio of 25.082, a structural similarity index of 0.833, and mutual information of 1.568. The mean absolute error, mean squared error, and root mean squared error were reported as 0.040, 0.023, and 0.102, respectively. Compared to other methods, our proposed approach demonstrated superior performance across all evaluation metrics. In the observer study, our method exhibited a higher diagnostic accuracy for detecting hilar lymphadenopathy (69.2%) compared to the Residual U-Net-based GAN with CBAM (53.7%). Conclusion The integration of dual-energy computed tomography with a Residual U-Net framework augmented by CBAM presents a highly effective technique for generating synthetic contrast-enhanced chest CT images. This novel approach significantly enhances the detection of clinically significant hilar lymphadenopathy, underscoring its potential clinical utility.

키워드

Virtual contrast-enhanced CTDual-energy CTResidual U-NetAttention moduleHilar lymphadenopathy
제목
Automatic Virtual Contrast-Enhanced CT Synthesis Using Dual-Energy CT and Residual U-Net with Attention Module for Detecting Pulmonary Hilar Lymphadenopathy
저자
Jeon, UjuWoo, Jung HanJeong, Dong YoungKim, Jong HeeCha, Yoon KiChung, Myung Jin
DOI
10.1016/j.acra.2024.11.006
발행일
2025-03
유형
Journal Article
저널명
Academic Radiology
32
3
페이지
1718 ~ 1724