Title
The Empirical Effect of Gaussian Noise in Undersampled MRI Reconstruction.
Abstract
In Fourier-based medical imaging, sampling below the Nyquist rate results in an underdetermined system, in which a linear reconstruction will exhibit artifacts. Another consequence is lower signal-to-noise ratio (SNR) because of fewer acquired measurements. Even if one could obtain information to perfectly disambiguate the underdetermined system, the reconstructed image could still have lower image quality than a corresponding fully sampled acquisition because of reduced measurement time. The coupled effects of low SNR and underdetermined system during reconstruction makes it difficult to isolate the impact of low SNR on image quality. To this end, we present an image quality prediction process that reconstructs fully sampled, fully determined data with noise added to simulate the SNR loss induced by a given undersampling pattern. The resulting prediction image empirically shows the effects of noise in undersampled image reconstruction without any effect from an underdetermined system. We discuss how our image quality prediction process simulates the distribution of noise for a given undersampling pattern, including variable density sampling that produces colored noise in the measurement data. An interesting consequence of our prediction model is that recovery from an underdetermined nonuniform sampling is equivalent to a weighted least squares optimization that accounts for heterogeneous noise levels across measurements. Through experiments with synthetic and in vivo datasets, we demonstrate the efficacy of the image quality prediction process and show that it provides a better estimation of reconstruction image quality than the corresponding fully sampled reference image.
Year
DOI
Venue
2016
10.18383/j.tom.2017.00019
TOMOGRAPHY
Keywords
Field
DocType
image reconstruction,noise analysis,MRI,undersampling,compressed sensing
Iterative reconstruction,Colors of noise,Pattern recognition,Underdetermined system,Computer science,Signal-to-noise ratio,Image quality,Image noise,Artificial intelligence,Nyquist rate,Gaussian noise,Machine learning
Journal
Volume
Issue
ISSN
3
4
2379-1381
Citations 
PageRank 
References 
1
0.42
3
Authors
2
Name
Order
Citations
PageRank
Patrick Virtue1101.67
Michael Lustig2146878.94