Prediction of Successful Memory Encoding from fMRI Data
Balci SK, Sabuncu MR, Yoo J, Ghosh SS, Whitfield-Gabrieli S, Gabrieli JD, Golland P
Identifiers and access
- DOI
- 10.1901/jaba.2008.2008-97
- PubMed
- 20401334
- PMC
- PMC2855196
- Cited by
- 11
Key findings
A linear support-vector-machine classifier with general-linear-model feature extraction and t-test feature selection predicted memory-encoding success from fMRI patterns better than chance and close to subjects' own predictions, and exceeded 90% accuracy on a simple motor task.
Abstract
Source: pubmed
In this work, we explore the use of classification algorithms in predicting mental states from functional neuroimaging data. We train a linear support vector machine classifier to characterize spatial fMRI activation patterns. We employ a general linear model based feature extraction method and use the t-test for feature selection. We evaluate our method on a memory encoding task, using participants' subjective prediction about learning as a benchmark for our classifier. We show that the classifier achieves better than random predictions and the average accuracy is close to subject's own prediction performance. In addition, we validate our tool on a simple motor task where we demonstrate an average prediction accuracy of over 90%. Our experiments demonstrate that the classifier performance depends significantly on the complexity of the experimental design and the mental process of interest.
Topics
- ml-nlp-knowledge
- neuroimaging-methods
Lab authors
This record was curated from the lab's CV, NCBI MyBibliography, and OpenAlex. See PROJECTS.md for how to add or correct an entry via a pull request.