We describe a method for mining a neuroimaging database for associations between text and brain locations. The objective is to discover association rules between words indicative of cognitive function as described in abstracts of neuroscience papers and sets of reported stereotactic Talairach coordinates. We invoke a simple probabilistic framework in which kernel density estimates are used to model distributions of brain activation foci conditioned on words in a given abstract. The principal associations are found in the joint probability density between words and voxels. We show that the statistically motivated associations are well aligned with general neuroscientific knowledge.</p
Human neuroimaging research aims to find mappings between brain activity and broad cognitive states....
Abstract—We propose a statistical learning model for classify-ing cognitive processes based on distr...
We propose a statistical learning model for classifying cognitive processes based on distributed pat...
We present a data mining process for discovering associa-tions between structures and functions of t...
The ability to computationally extract mentions of neuroanatomical regions from the literature ...
Neuroimaging research has largely focused on the identification of associations between brain activa...
The curation of neuroscience entities is crucial to ongoing efforts in neuroinformatics and computat...
Understanding the complex connectivity structure of the brain is a major challenge in neuroscience. ...
Cognitive neuroscience, as a discipline, links the biological systems studied by neuroscience to the...
We propose the application of text mining methods for the neuroscience literature. Specifically, we ...
We propose the application of text mining methods for the neuroscience literature. Specifically, we ...
Data mining in brain imaging is proving to be an effective methodology for disease prognosis and pre...
We report here initial experiments with a method for generating text from functional brain images. T...
Recent progress in functional neuroimaging has prompted studies of brain activation during various c...
Recent progress in functional neuroimaging has prompted studies of brain activation during various c...
Human neuroimaging research aims to find mappings between brain activity and broad cognitive states....
Abstract—We propose a statistical learning model for classify-ing cognitive processes based on distr...
We propose a statistical learning model for classifying cognitive processes based on distributed pat...
We present a data mining process for discovering associa-tions between structures and functions of t...
The ability to computationally extract mentions of neuroanatomical regions from the literature ...
Neuroimaging research has largely focused on the identification of associations between brain activa...
The curation of neuroscience entities is crucial to ongoing efforts in neuroinformatics and computat...
Understanding the complex connectivity structure of the brain is a major challenge in neuroscience. ...
Cognitive neuroscience, as a discipline, links the biological systems studied by neuroscience to the...
We propose the application of text mining methods for the neuroscience literature. Specifically, we ...
We propose the application of text mining methods for the neuroscience literature. Specifically, we ...
Data mining in brain imaging is proving to be an effective methodology for disease prognosis and pre...
We report here initial experiments with a method for generating text from functional brain images. T...
Recent progress in functional neuroimaging has prompted studies of brain activation during various c...
Recent progress in functional neuroimaging has prompted studies of brain activation during various c...
Human neuroimaging research aims to find mappings between brain activity and broad cognitive states....
Abstract—We propose a statistical learning model for classify-ing cognitive processes based on distr...
We propose a statistical learning model for classifying cognitive processes based on distributed pat...