Minimizing within‐experiment and within‐group effects in activation likelihood estimation meta‐analyses
California University of Pennsylvania · University of Pennsylvania Health System · +4 more institutions
Abstract
Activation Likelihood Estimation (ALE) is an objective, quantitative technique for coordinate-based meta-analysis (CBMA) of neuroimaging results that has been validated for a variety of uses. Stepwise modifications have improved ALE's theoretical and statistical rigor since its introduction. Here, we evaluate two avenues to further optimize ALE. First, we demonstrate that the maximum contribution of an experiment makes to an ALE map is related to the number of foci it reports and their proximity. We present a modified ALE algorithm that eliminates these within-experiment effects. However, we show that these effects only account for 2-3% of cumulative ALE values, and removing them has little impact on…
Citation impact
- FWCI
- 20.73
- Percentile
- 100%
- References
- 27
Authors
6- PEPeter E. TurkeltaubCorresponding
California University of Pennsylvania, University of Pennsylvania Health System, University of Pennsylvania
- SBSimon B. Eickhoff
Forschungszentrum Jülich, RWTH Aachen University
- ARAngela R. Laird
The University of Texas at San Antonio Health Science Center
- MFMick Fox
The University of Texas at San Antonio Health Science Center
- MWMartin Wiener
California University of Pennsylvania, University of Pennsylvania
Topics & keywords
- Meta-analysis
- Statistics
- Estimation
- Computer science
- Artificial intelligence
- Mathematics
- Engineering
- Medicine