Anthropomorphic model observer performance in three-dimensional detection task for low-contrast computed tomography.

Details

Serval ID
serval:BIB_594D03728086
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Anthropomorphic model observer performance in three-dimensional detection task for low-contrast computed tomography.
Journal
Journal of Medical Imaging (bellingham, Wash.)
Author(s)
Ba A., Eckstein M.P., Racine D., Ott J.G., Verdun F., Kobbe-Schmidt S., Bochud F.O.
ISSN
2329-4302 (Print)
ISSN-L
2329-4302
Publication state
Published
Issued date
2016
Peer-reviewed
Oui
Volume
3
Number
1
Pages
011009
Language
english
Notes
The last two authors contributed equally to this work
Abstract
X-ray medical imaging is increasingly becoming three-dimensional (3-D). The dose to the population and its management are of special concern in computed tomography (CT). Task-based methods with model observers to assess the dose-image quality trade-off are promising tools, but they still need to be validated for real volumetric images. The purpose of the present work is to evaluate anthropomorphic model observers in 3-D detection tasks for low-contrast CT images. We scanned a low-contrast phantom containing four types of signals at three dose levels and used two reconstruction algorithms. We implemented a multislice model observer based on the channelized Hotelling observer (msCHO) with anthropomorphic channels and investigated different internal noise methods. We found a good correlation for all tested model observers. These results suggest that the msCHO can be used as a relevant task-based method to evaluate low-contrast detection for CT and optimize scan protocols to lower dose in an efficient way.
Pubmed
Create date
30/11/2015 15:41
Last modification date
20/08/2019 14:12
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