What is the best similarity measure for motion correction in fMRI time series?

被引:300
|
作者
Freire, L [1 ]
Roche, A
Mangin, JF
机构
[1] CEA, Serv Hosp Frederic Joliot, F-91401 Orsay, France
[2] FCUL, Dept Biofis & Engn Biomed, P-1749016 Lisbon, Portugal
[3] FML, Inst Nucl Med, P-1649028 Lisbon, Portugal
[4] INRIA, Epidaure Project, Sophia Antipolis, France
[5] Univ Oxford, Med Vis Lab, Oxford OX2 7BZ, England
关键词
artifact; fMRI; motion correction; robust registration; spurious activation;
D O I
10.1109/TMI.2002.1009383
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
It has been shown that the difference of squares cost function used by standard realignment packages (SENT and AIR) can lead to the detection of spurious activations, because the motion parameter estimations are biased by the activated areas. Therefore, this paper describes several experiments aiming at selecting a better similarity measure to drive functional magnetic resonance image registration. The behaviors of the Geman-McClure (GM) estimator, of the correlation ratio, and of the mutual information (MI) relative to activated areas are studied using simulated time series and actual data stemming from a 3T magnet. It is shown that these methods are more robust than the usual difference of squares measure. The results suggest also that the measures built from robust metrics like the GM estimator may be the best choice, while MI is also an interesting solution. Some more work, however, is required to compare the various robust metrics proposed in the literature.
引用
收藏
页码:470 / 484
页数:15
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