2018 JRNL PP Wei Yang - 1.pdf
Terbatas  Irwan Sofiyan
» Gedung UPT Perpustakaan
Terbatas  Irwan Sofiyan
» Gedung UPT Perpustakaan
Attenuation correction for positron-emission
tomography (PET)/magnetic resonance(MR) hybridimaging
systems and dose planning for MR-based radiation therapy
remain challenging due to insufficient high-energy photon
attenuation information. We present a novel approach that
uses the learned nonlinear local descriptors and feature
matching to predict pseudo computed tomography (pCT)
images from T1-weighted and T2-weighted magnetic resonance
imaging (MRI) data. The nonlinear local descriptors
are obtained by projecting the linear descriptors into the
nonlinear high-dimensional space using an explicit feature
map and low-rank approximation with supervised manifold
regularization. The nearest neighbors of each local descriptor
in the input MR images are searched in a constrained
spatial range of the MR images among the training dataset.
Then the pCT patches are estimated through-nearest neighbor
regression. The proposed method for pCT prediction
is quantitatively analyzed on a dataset consisting of paired
brain MRI and CT images from 13 subjects. Our method
generates pCT images with a mean absolute error (MAE)
of 75.25 ± 18.05 Hounsfield units, a peak signal-to-noise
ratio of 30.87 ± 1.15 dB, a relative MAE of 1.56 ± 0.5% in
PET attenuation correction, and a dose relative structure
volume difference of 0.055 ± 0.107% in D98%, as compared
with true CT. The experimental results also show that our
method outperforms four state-of-the-art methods.