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Abstract
This study aimed to evaluate a deep learning model for generating synthetic contrast-enhanced CT (sCECT) from non-contrast chest CT (NCCT). A deep learning model was applied to generate sCECT from NCCT. We collected three separate data sets, the development set (n = 25) for model training and tuning, test set 1 (n = 25) for technical evaluation, and test set 2 (n = 12) for clinical utility evaluation. In test set 1, image similarity metrics were calculated. In test set 2, the lesion contrast-to-noise ratio of the mediastinal lymph nodes was measured, and an observer study was conducted to compare lesion conspicuity. Comparisons were performed using the paired t-test or Wilcoxon signed-rank test. In test set 1, sCECT showed a lower mean absolute error (41.72 vs 48.74; P < .001), higher peak signal-to-noise ratio (17.44 vs 15.97; P < .001), higher multiscale structural similarity index measurement (0.84 vs 0.81; P < .001), and lower learned perceptual image patch similarity metric (0.14 vs 0.15; P < .001) than NCCT. In test set 2, the contrast-to-noise ratio of the mediastinal lymph nodes was higher in the sCECT group than in the NCCT group (6.15 ± 5.18 vs 0.74 ± 0.69; P < .001). The observer study showed for all reviewers higher lesion conspicuity in NCCT with sCECT than in NCCT alone (P ≤ .001). Synthetic CECT generated from NCCT improves the depiction of mediastinal lymph nodes.
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Details
1 Seoul National University Hospital, Department of Radiology, Seoul, Korea (GRID:grid.412484.f) (ISNI:0000 0001 0302 820X); Seoul National University College of Medicine, Department of Radiology, Seoul, Korea (GRID:grid.31501.36) (ISNI:0000 0004 0470 5905)
2 Gyeongsang National University Changwon Hospital, Department of Radiology, Changwon, Korea (GRID:grid.256681.e) (ISNI:0000 0001 0661 1492)
3 Seoul National University Hospital, Department of Radiology, Seoul, Korea (GRID:grid.412484.f) (ISNI:0000 0001 0302 820X)
4 Seoul National University Hospital, Department of Radiology, Seoul, Korea (GRID:grid.412484.f) (ISNI:0000 0001 0302 820X); Seoul National University College of Medicine, Department of Radiology, Seoul, Korea (GRID:grid.31501.36) (ISNI:0000 0004 0470 5905); Seoul National University Medical Research Center, Institute of Radiation Medicine, Seoul, Korea (GRID:grid.412484.f) (ISNI:0000 0001 0302 820X)