Publication | Open Access
Removal of nuisance signals from limited and sparse <sup>1</sup>H MRSI data using a union‐of‐subspaces model
64
Citations
40
References
2015
Year
Nuisance signals in (1) H MRSI data reside in low-dimensional subspaces. This property can be utilized for estimation and removal of nuisance signals from (1) H MRSI data even when they have limited and/or sparse coverage of (k, t)-space. The proposed method should prove useful especially for accelerated high-resolution (1) H MRSI of the brain.
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