Improved Image Fusion in PET/CT Using Hybrid Image Reconstruction and Super‐Resolution
Author(s) -
John A. Kennedy,
Ora Israel,
Alex Frenkel,
Rachel BarShalom,
Haim Azhari
Publication year - 2006
Publication title -
international journal of biomedical imaging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.626
H-Index - 41
eISSN - 1687-4196
pISSN - 1687-4188
DOI - 10.1155/2007/46846
Subject(s) - image fusion , computer science , image (mathematics) , computer vision , artificial intelligence , fusion , resolution (logic) , iterative reconstruction , data mining , philosophy , linguistics
Purpose . To provide PET/CT image fusion with an improved PET resolution and better contrast ratios than standard reconstructions. Method . Using a super-resolution algorithm, several PET acquisitions were combined to improve the resolution. In addition, functional PET data was smoothed with a hybrid computed tomography algorithm (HCT), in which anatomical edge information taken from the CT was employed to retain sharper edges. The combined HCT and super-resolution technique were evaluated in phantom and patient studies using a clinical PET scanner. Results . In the phantom studies, 3 mm 18 F-FDG sources were resolved. PET contrast ratios improved (average: 54%, range: 45%–69%) relative to the standard reconstructions. In the patient study, target-to-background ratios also improved (average: 34%, range: 17%–47%). Given corresponding anatomical borders, sharper edges were depicted. Conclusion . A new method incorporating super-resolution and HCT for fusing PET and CT images has been developed and shown to provide higher-resolution metabolic images.
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