Deep-Learning-Based Image Denoising in Imaging of Urolithiasis: Assessment of Image Quality and Comparison to State-of-the-Art Iterative Reconstructions

被引:2
|
作者
Terzis, Robert [1 ]
Reimer, Robert Peter [1 ]
Nelles, Christian [1 ]
Celik, Erkan [1 ]
Caldeira, Liliana [1 ]
Heidenreich, Axel [2 ]
Storz, Enno [2 ]
Maintz, David [1 ]
Zopfs, David [1 ]
Hokamp, Nils Grosse [1 ]
机构
[1] Univ Hosp Cologne, Inst Diagnost & Intervent Radiol, D-50937 Cologne, Germany
[2] Univ Hosp Cologne, Dept Urol, Uro Oncol, Robot Assisted & Specialized Urol Surger, D-50937 Cologne, Germany
关键词
deep learning; diagnostic imaging; image enhancement; kidney calculi; tomography; X-ray computed; TUBE CURRENT MODULATION; COMPUTED-TOMOGRAPHY; CT;
D O I
10.3390/diagnostics13172821
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
This study aimed to compare the image quality and diagnostic accuracy of deep-learning-based image denoising reconstructions (DLIDs) to established iterative reconstructed algorithms in low-dose computed tomography (LDCT) of patients with suspected urolithiasis. LDCTs (CTDI-vol, 2 mGy) of 76 patients (age: 40.3 +/- 5.2 years, M/W: 51/25) with suspected urolithiasis were retrospectively included. Filtered-back projection (FBP), hybrid iterative and model-based iterative reconstruction (HIR/MBIR, respectively) were reconstructed. FBP images were processed using a Food and Drug Administration (FDA)-approved DLID. ROIs were placed in renal parenchyma, fat, muscle and urinary bladder. Signal- and contrast-to-noise ratios (SNR/CNR, respectively) were calculated. Two radiologists evaluated image quality on five-point Likert scales and urinary stones. The results showed a progressive decrease in image noise from FBP, HIR and DLID to MBIR with significant differences between each method (p < 0.05). SNR and CNR were comparable between MBIR and DLID, while it was significantly lower in HIR followed by FBP (e.g., SNR: 1.5 +/- 0.3; 1.4 +/- 0.4; 1.0 +/- 0.3; 0.7 +/- 0.2, p < 0.05). Subjective analysis confirmed best image quality in MBIR, followed by DLID and HIR, both being superior to FBP (p < 0.05). Diagnostic accuracy for urinary stone detection was best using MBIR (0.94), lowest using FBP (0.84) and comparable between DLID (0.90) and HIR (0.90). Stone size measurements were consistent between all reconstructions and showed excellent correlation (r(2) = 0.958-0.975). In conclusion, MBIR yielded the highest image quality and diagnostic accuracy, with DLID producing better results than HIR and FBP in image quality and matching HIR in diagnostic precision.
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页数:11
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