Author/Authors :
G. and Thireou، نويسنده , , Trias and Rubio Guivernau، نويسنده , , José Luis and Atlamazoglou، نويسنده , , Vassilis and Ledesma، نويسنده , , Maria Jesْs and Pavlopoulos، نويسنده , , Sotiris and Santos، نويسنده , , Andrés and Kontaxakis، نويسنده , , George، نويسنده ,
Abstract :
A realistic dynamic positron-emission tomography (PET) thoracic study was generated, using the 4D NURBS-based (non-uniform rational B-splines) cardiac-torso (NCAT) phantom and a sophisticated model of the PET imaging process, simulating two solitary pulmonary nodules. Three data reduction and blind source separation methods were applied to the simulated data: principal component analysis, independent component analysis and similarity mapping. All methods reduced the initial amount of image data to a smaller, comprehensive and easily managed set of parametric images, where structures were separated based on their different kinetic characteristics and the lesions were readily identified. The results indicate that the above-mentioned methods can provide an accurate tool for the support of both visual inspection and subsequent detailed kinetic analysis of the dynamic series via compartmental or non-compartmental models.
Keywords :
Dynamic positron-emission tomography , Principal component analysis , Similarity mapping , Independent Component Analysis