About

Log in?

DTU users get better search results including licensed content and discounts on order fees.

Anyone can log in and get personalized features such as favorites, tags and feeds.

Log in as DTU user Log in as non-DTU user No thanks

DTU Findit

Journal article

The Quantitative Evaluation of Functional Neuroimaging Experiments: Mutual Information Learning Curves

From

Department of Informatics and Mathematical Modeling, Technical University of Denmark1

Cognitive Systems, Department of Informatics and Mathematical Modeling, Technical University of Denmark2

Learning curves are presented as an unbiased means for evaluating the performance of models for neuroimaging data analysis. The learning curve measures the predictive performance in terms of the generalization or prediction error as a function of the number of independent examples (e.g., subjects) used to determine the parameters in the model.

Cross-validation resampling is used to obtain unbiased estimates of a generic multivariate Gaussian classifier, for training set sizes from 2 to 16 subjects. We apply the framework to four different activation experiments, in this case \$\backslash\$[/sup 15/ O]water data sets, although the framework is equally valid for multisubject fMRI studies.

We demonstrate how the prediction error can be expressed as the mutual information between the scan and the scan label, measured in units of bits. The mutual information learning curve can be used to evaluate the impact of different methodological choices, e.g., classification label schemes, preprocessing choices.

Another application for the learning curve is to examine the model performance using bias/variance considerations enabling the researcher to determine if the model performance is limited by statistical bias or variance. We furthermore present the sensitivity map as a general method for extracting activation maps from statistical models within the probabilistic framework and illustrate relationships between mutual information and pattern reproducibility as derived in the NPAIRS framework described in a companion paper.

Language: English
Year: 2002
Pages: 772-786
ISSN: 10959572 and 10538119
Types: Journal article
DOI: 10.1006/nimg.2001.1033
ORCIDs: Hansen, Lars Kai

DTU users get better search results including licensed content and discounts on order fees.

Log in as DTU user

Access

Analysis