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BACON: A tool for reverse inference in brain activation and alteration

Authors :
Mario Ferraro
Andrea Nani
Jordi Manuello
Jack L. Lancaster
Peter T. Fox
Tommaso Costa
Donato Liloia
Franco Cauda
Source :
Human Brain Mapping
Publication Year :
2021
Publisher :
Wiley, 2021.

Abstract

Over the past decades, powerful MRI‐based methods have been developed, which yield both voxel‐based maps of the brain activity and anatomical variation related to different conditions. With regard to functional or structural MRI data, forward inferences try to determine which areas are involved given a mental function or a brain disorder. A major drawback of forward inference is its lack of specificity, as it suggests the involvement of brain areas that are not specific for the process/condition under investigation. Therefore, a different approach is needed to determine to what extent a given pattern of cerebral activation or alteration is specifically associated with a mental function or brain pathology. In this study, we present a new tool called BACON (Bayes fACtor mOdeliNg) for performing reverse inference both with functional and structural neuroimaging data. BACON implements the Bayes' factor and uses the activation likelihood estimation derived‐maps to obtain posterior probability distributions on the evidence of specificity with regard to a particular mental function or brain pathology.<br />We present a new tool called BACON (Bayes fACtor mOdeliNg) for performing reverse inference both with functional and structural neuroimaging data. BACON implements the Bayes' factor and uses the activation likelihood estimation derived‐maps to obtain posterior probability distributions on the evidence of specificity with regard to a particular mental function or brain pathology.

Details

ISSN :
10970193 and 10659471
Volume :
42
Database :
OpenAIRE
Journal :
Human Brain Mapping
Accession number :
edsair.doi.dedup.....f42a1a542b0ecefac422b7e58632d6fc
Full Text :
https://doi.org/10.1002/hbm.25452