TL;DR
This paper introduces a probabilistic programming approach to enhance coordinate-based meta-analysis of fMRI data, enabling complex, multi-term queries with improved scalability and accuracy over existing methods.
Contribution
It develops a probabilistic domain-specific language and scalable query algorithms for more expressive and reliable meta-analyses of neuroimaging data.
Findings
Effective probabilistic query processing on simulated data
Successful application to Neurosynth database
Improved accuracy for multi-term queries
Abstract
With the growing number of published functional magnetic resonance imaging (fMRI) studies, meta-analysis databases and models have become an integral part of brain mapping research. Coordinate-based meta-analysis (CBMA) databases are built by automatically extracting both coordinates of reported peak activations and term associations using natural language processing (NLP) techniques. Solving term-based queries on these databases make it possible to obtain statistical maps of the brain related to specific cognitive processes. However, with tools like Neurosynth, only singleterm queries lead to statistically reliable results. When solving richer queries, too few studies from the database contribute to the statistical estimations. We design a probabilistic domain-specific language (DSL) standing on Datalog and one of its probabilistic extensions, CP-Logic, for expressing and solving rich…
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