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Protocol Optimization Considerations for Implementing Deep Learning CT Reconstruction
- Source :
- American Journal of Roentgenology. 216:1668-1677
- Publication Year :
- 2021
- Publisher :
- American Roentgen Ray Society, 2021.
-
Abstract
- OBJECTIVE. Previous advances over filtered back projection (FBP) have incorporated model-based iterative reconstruction. The purpose of this study was to characterize the latest advance in image reconstruction, that is, deep learning. The focus was on applying characterization results of a deep learning approach to decisions about clinical CT protocols. MATERIALS AND METHODS. A proprietary deep learning image reconstruction (DLIR) method was characterized against an existing advanced adaptive statistical iterative reconstruction method (ASIR-V) and FBP from the same vendor. The metrics used were contrast-to-noise ratio, spatial resolution as a function of contrast level, noise texture (i.e., noise power spectra [NPS]), noise scaling as a function of slice thickness, and CT number consistency. The American College of Radiology accreditation phantom and a uniform water phantom were used at a range of doses and slice thicknesses for both axial and helical acquisition modes. RESULTS. ASIR-V and DLIR were associated with improved contrast-to-noise ratio over FBP for all doses and slice thicknesses. No dose or contrast dependencies of spatial resolution were observed for ASIR-V or DLIR. NPS results showed DLIR maintained an FBP-like noise texture whereas ASIR-V shifted the NPS to lower frequencies. Noise changed with dose and slice thickness in the same manner for ASIR-V and FBP. DLIR slice thickness noise scaling differed from FBP, exhibiting less noise penalty with decreasing slice thickness. No clinically significant changes were observed in CT numbers for any measurement condition. CONCLUSION. In a phantom model, DLIR does not suffer from the concerns over reduction in spatial resolution and introduction of poor noise texture associated with previous methods.
- Subjects :
- Noise power
Radon transform
Phantoms, Imaging
business.industry
Image quality
General Medicine
Iterative reconstruction
Imaging phantom
030218 nuclear medicine & medical imaging
03 medical and health sciences
Noise
Deep Learning
0302 clinical medicine
030220 oncology & carcinogenesis
Hounsfield scale
Practice Guidelines as Topic
Image Processing, Computer-Assisted
Humans
Medicine
Radiology, Nuclear Medicine and imaging
Tomography, X-Ray Computed
business
Image resolution
Algorithm
Subjects
Details
- ISSN :
- 15463141 and 0361803X
- Volume :
- 216
- Database :
- OpenAIRE
- Journal :
- American Journal of Roentgenology
- Accession number :
- edsair.doi.dedup.....6f3d0617594e20d4162182e02771cb9b
- Full Text :
- https://doi.org/10.2214/ajr.20.23397