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Please choose a date range between 2018 and 2020.
Author
- Albrecht, Moritz H1
- Bakula, Adam1
- Benetos, Georgios1
- Benz, Dominik C1
- Buechel, Ronny R1
- de Cecco, Carlo N1
- de Santis, Domenico1
- Eid, Marwen H1
- Fuchs, Tobias A1
- Gassenmaier, Sebastian1
- Gebhard, Catherine1
- Jacobs, Brian E1
- Kaufmann, Philipp A1
- Kudura, Ken1
- Mantini, Cesare1
- Mastrodicasa, Domenico1
- Messerli, Michael1
- Pazhenkottil, Aju P1
- Rampidis, Georgios1
- Schoepf, U Joseph1
- Sustar, Aleksandra1
- Tesche, Chris1
- van Assen, Marly1
- Varga-Szemes, Akos1
- von Felten, Elia1
Keyword
- ICA2
- Adaptive Statistical Iterative Reconstruction-Veo1
- Adaptive statistical iterative reconstruction-veo1
- ASiR-V1
- ASiR-V HD1
- ASiR-V SD1
- ASiR-V With High Definition Kernel1
- ASiR-V With Standard Definition Kernel1
- BMI1
- Body mass index1
- CAD1
- Coronary artery disease1
- Coronary Computed Tomography Angiography1
- Coronary computed tomography angiography1
- CT-derived fractional flow reserve1
- CT-FFR1
- CT-FFRML1
- CX1
- DLIR1
- DLIR at High Level1
- DLIR at Medium Level1
- DLIR-H1
- DLIR-M1
Mulitmedia Library
2 Results
- Research paper
Validation of deep-learning image reconstruction for coronary computed tomography angiography: Impact on noise, image quality and diagnostic accuracy
Journal of Cardiovascular Computed TomographyVol. 14Issue 5p444–451Published online: January 13, 2020- Dominik C. Benz
- Georgios Benetos
- Georgios Rampidis
- Elia von Felten
- Adam Bakula
- Aleksandra Sustar
- and others
Cited in Scopus: 69The present study evaluated the impact of deep-learning image reconstruction (DLIR) on noise, image quality, and diagnostic accuracy. In 43 patients who underwent clinically indicated coronary CT angiography and invasive coronary angiography, image quality was improved by up to 62% at similar noise levels. In addition, DLIR-H yielded the highest noise reduction (up to 43%) and best image quality (improvement of up to 138%). More importantly, sensitivity (92% vs. 88%), specificity (73% vs. 73%) and diagnostic accuracy (82% vs. 80%) of DLIR were at least non-inferior to ASiR-V. - Research Article
Artificial intelligence machine learning-based coronary CT fractional flow reserve (CT-FFRML): Impact of iterative and filtered back projection reconstruction techniques
Journal of Cardiovascular Computed TomographyVol. 13Issue 6p331–335Published online: October 25, 2018- Domenico Mastrodicasa
- Moritz H. Albrecht
- U. Joseph Schoepf
- Akos Varga-Szemes
- Brian E. Jacobs
- Sebastian Gassenmaier
- and others
Cited in Scopus: 18The influence of computed tomography (CT) reconstruction algorithms on the performance of machine-learning-based CT-derived fractional flow reserve (CT-FFRML) has not been investigated. CT-FFRML values and processing time of two reconstruction algorithms were compared using an on-site workstation.