Deep learning reconstruction improves image quality of abdominal ultra-high-resolution CT
Objectives Deep learning reconstruction (DLR) is a new reconstruction method; it introduces deep convolutional neural networks into the reconstruction flow. This study was conducted in order to examine the clinical applicability of abdominal ultra-high-resolution CT (U-HRCT) exams reconstructed with...
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Veröffentlicht in: | European radiology 2019-11, Vol.29 (11), p.6163-6171 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Objectives
Deep learning reconstruction (DLR) is a new reconstruction method; it introduces deep convolutional neural networks into the reconstruction flow. This study was conducted in order to examine the clinical applicability of abdominal ultra-high-resolution CT (U-HRCT) exams reconstructed with a new DLR in comparison to hybrid and model-based iterative reconstruction (hybrid-IR, MBIR).
Methods
Our retrospective study included 46 patients seen between December 2017 and April 2018. A radiologist recorded the standard deviation of attenuation in the paraspinal muscle as the image noise and calculated the contrast-to-noise ratio (CNR) for the aorta, portal vein, and liver. The overall image quality was assessed by two other radiologists and graded on a 5-point confidence scale ranging from 1 (unacceptable) to 5 (excellent). The difference between CT images subjected to hybrid-IR, MBIR, and DLR was compared.
Results
The image noise was significantly lower and the CNR was significantly higher on DLR than hybrid-IR and MBIR images (
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ISSN: | 0938-7994 1432-1084 |
DOI: | 10.1007/s00330-019-06170-3 |