Types of Scaling Session scaling; global mean scaling; block effect; mean intensity scaling Purpose – remove intensity differences between runs (i.e.,

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Presentation transcript:

Types of Scaling Session scaling; global mean scaling; block effect; mean intensity scaling Purpose – remove intensity differences between runs (i.e., the mean of the whole time series). whole time series may have different mean value – must compensate for between run variance Usually scaled to mean of 100 (or 50 or similar).

Types of Scaling Global scaling; proportional scaling; scaling i.e. dividing the intensity values for each scan by the mean value for all voxels (or the global brain mean intensity) for this scan. Purpose: remove global drifts and improve sensitivity. Danger to applying global scaling. The global brain mean must be independent of the task activity (i.e., does not correlate with it). If violated, applying global scaling can dramatically the outcome of the statistical analysis, and can be the cause of multiple Type I and Type II errors.

Proportional Scaling Consider voxel1: a voxel of no interest that is not influenced by the task. If the global brain mean correlates with the task and voxels1 is divided by it, then voxel1/global, the transformed voxel's timecourse, would appear to negatively correlate with the task and its significant deactivation may lead us to identify it as a voxel of interest (Type I error).

Proportional Scaling Consider voxel2, a voxel of interest that correlates with the task, and that we would like to identify. If the global brain mean correlates with the task and voxels2 is divided by it, then voxel2/global, the transformed voxel's timecourse, would no longer correlate with the task (in fact, it would look more like a flat line) and we would therefore fail to identify it (Type II error).

Proportional Scaling Example Condition Pearson's R p value rhyme letter line.20.23

Proportional Scaling Example

Proportional Scaling abc FIG. 1. SPM{t}’s for target responses a) no scaling, b) proportional scaling, and c) adjusted proportional scaling. SPM{t}’s are set at a corrected voxel-level threshold of p < 0.05.

Proportional Scaling abc FIG. 2. SPM{t}’s for novel activations with a) no scaling, b) proportional scaling, and c) adjusted proportional scaling.

Proportional Scaling abc FIG. 4. SPM{t}’s for target deactivations obtained from analyses with a) no scaling, b) proportional scaling, and c) adjusted proportional scaling.

Proportional Scaling abc FIG. 5. SPM{t}’s for novel responses relative to target responses with a) no scaling, b) proportional scaling, and c) adjusted proportional scaling.

Proportional Scaling FIG. 3. Global signal and adjusted global signal of a representative session from Experiment 1. The standard deviation of the global signal is 0.157% of the mean. These figures illustrate that the component of the global signal that was removed by orthogonalization with respect to the non-constant covariates of interest was small relative to the variations about the mean: the standard deviation of the difference between the global signal and the adjusted global signal is only %

Table 1. Representative Z-scores from Experiment 1. Z-scores from analyses of target responses relative to baseline: Location [x y z] no scaling proportional scaling adjusted proportional scaling Right Anterior Temporal Lobe [ ] Left Anterior Temporal Lobe [ ] Supplementary Motor Area [ ] Right Cerebellum [ ]

References Macey,PM, et al (2004) A method for removal of global effects from fMRI time series. NeuroImage Aguirre, G. K., Zarahn, E., & D'Esposito, M. (1998). The inferential impact of global signal covariates in functional neuroimaging analyses. Neuroimage, 8(3), Andersson, J. L. (1997). How to estimate global activity independent of changes in local activity. Neuroimage, 6(4), Andersson, J. L., Ashburner, J., & Friston, K. (2001). A global estimator unbiased by local changes. Neuroimage, 13(6 Pt 1), Desjardins, A. E., Kiehl, K. A., & Liddle, P. F. (2001). Removal of confounding effects of global signal in functional magnetic resonance imaging analyses. Neuroimage, 13,