Abstract #3301
Minimum-noise Laplacian kernel for MR-based electrical properties tomography
Seung-Kyun Lee 1
1
GE Global Research, Niskayuna, NY, United
States
Noise amplification by Laplacian operation on a noisy
input RF map is an important limiting factor in the SNR
of MR-based electrical properties tomography (MREPT). We
show that among all linear Laplacian kernels, the one
based on the Savitzky-Golay second-order derivative
kernel has the least amount of noise amplification. A
method to construct such a kernel for an arbitrary
three-dimensional ROI is presented, and its performance
is compared with other Laplacian kernels used in
literature.
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