# Coordinate-based meta-analysis

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Coordinate-based meta-analysis | |

Abbreviations: | CBMA |

Variations: |
Coordinate-based voxel-wise meta-analysis |

Category: | Coordinate-based meta-analysis |

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**Coordinate-based meta-analysis** (CBMA) analyzes the distribution of coordinates from brain activation studies (Talairach coordinates).
This is usually done with kernel density estimation.
It is sometimes—more narrowly—refered to as *Functional Volumes Modeling* (FVM),^{[1]} *Activations Likelihood Estimation* (ALE), *Kernel Density Analysis* (KDA), *Multi-level Kernel Density Analysis* (MKDA) or *coordinate-based voxel-wise meta-analysis* (CVM).^{[2]}
The different approaches have been compared with image-based meta-analysis.^{[3]}

The method is implemented in the Brede Toolbox and in the Sleuth program associated with the BrainMap database. A surface-oriented method is implemented in VAMCA.

## Contents |

## [edit] Papers

### [edit] Review

### [edit] Methodological papers

- A Bayesian hierarchical spatial point process model for multi-type neuroimaging meta-analysis
- A parametric approach to voxel-based meta-analysis
- Coordinate-based activation likelihood estimation meta-analysis of neuroimaging data: a random-effects approach based on empirical estimates of spatial uncertainty
- Evaluating the consistency and specificity of neuroimaging data using meta-analysis
- Functional coactivation map of the human brain
- Functional volumes modeling using kernel density estimation
- Heterogeneity of coordinate-based meta-analyses of neuroimaging data: an example from studies in OCD
- Mass meta-analysis in Talairach space
- Meta analysis of functional neuroimaging data via Bayesian spatial point processes
- Minimizing within-experiment and within-group effects in activation likelihood estimation meta-analyses
- Mining for associations between text and brain activation in a functional neuroimaging database
- Modeling of activation data in the BrainMap(TM): detection of outliers
- Pooling fMRI data: meta-analysis, mega-analysis and multi-center studies
- Spatial Bayesian latent factor regression modeling of coordinate-based meta-analysis data
- Testing for difference between two groups of functional neuroimaging experiments
- Visualizing data mining results with the Brede tools

### [edit] Meta-analyses

- A meta-analytic study of changes in brain activation in depression
- Anatomy of bipolar disorder and schizophrenia: a meta-analysis
- Different brain structures related to self- and external-agency attribution: a brief review and meta-analysis
- Gray matter alterations in obsessive-compulsive disorder: an anatomic likelihood estimation meta-analysis
- Left inferior frontal gyrus is critical for response inhibition
- Meta-analysis of gray matter anomalies in schizophrenia: application of anatomic likelihood estimation and network analysis
- Meta-analysis of 41 functional neuroimaging studies of executive function in schizophrenia
- N-back working memory paradigm: a meta-analysis of normative functional neuroimaging studies
- Neural representation of abstract and concrete concepts: a meta-analysis of neuroimaging studies
- Neuroimaging studies of mental rotation: a meta-analysis and review
- Provocation of obsessive-compulsive symptoms: a quantitative voxel-based meta-analysis of functional neuroimaging studies
- The social evaluation of faces: a meta-analysis of functional neuroimaging studies
- Where is the semantic system? a critical review and meta-analysis of 120 functional neuroimaging studies

### [edit] Connectivity

- Identifying functional co-activation patterns in neuroimaging studies via poisson graphical models
- Metaanalytic connectivity modeling: Delineating the functional connectivity of the human amygdala

## [edit] Reference

- ↑ Finn Årup Nielsen, Lars Kai Hansen (2000 january).
*Functional Volumes Modeling using Kernel Density Estimation*. - ↑ Peter T. Fox, Angela R. Laird, Jack L. Lancaster (2005). "Coordinate-based voxel-wise meta-analysis: dividends of spatial normalization. report of a virtual workshop".
*Human Brain Mapping***25**: 1-5. doi: 10.1002/hbm.20139. - ↑ Gholamreza Salimi-Khorshidi, Stephen M. Smith, John R. Keltner, Tor D. Wager, Thomas E. Nichols (2009). "Meta-analysis of neuroimaging data: a comparison of image-based and coordinate-based pooling of studies".
*NeuroImage***45**: 810-823. doi: 10.1016/j.neuroimage.2008.12.039.