Multiclass fMRI data decoding and visualization using supervised self-organizing maps
Autor: | Giancarlo Valente, Elia Formisano, Lars Hausfeld |
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Přispěvatelé: | Cognitive Neuroscience, RS: FPN CN 2 |
Jazyk: | angličtina |
Rok vydání: | 2014 |
Předmět: |
SELECTION
Multivariate statistics Computer science Decoding computer.software_genre Pattern Recognition Automated User-Computer Interface Voxel Cerebral Cortex Brain Mapping fMRI HUMAN BRAIN Magnetic Resonance Imaging SUPPORT VECTOR MACHINES medicine.anatomical_structure Neurology DISTRIBUTED PATTERNS Pattern Recognition Physiological Algorithms Decoding methods SINGLE-SUBJECT Self-organizing map HUMAN AUDITORY-CORTEX Cognitive Neuroscience VENTRAL TEMPORAL CORTEX Machine learning Sensitivity and Specificity CLASSIFICATION Multiclass classification Imaging Three-Dimensional Artificial Intelligence Image Interpretation Computer-Assisted medicine Humans Self-organizing maps business.industry Reproducibility of Results Pattern recognition Visualization Support vector machine DRUG DISCOVERY Visual cortex Multivariate Analysis HUMAN VISUAL-CORTEX Artificial intelligence Nerve Net business computer Classifier (UML) |
Zdroj: | Neuroimage, 96, 54-66. Elsevier Science |
ISSN: | 1095-9572 1053-8119 |
DOI: | 10.1016/j.neuroimage.2014.02.006 |
Popis: | When multivariate pattern decoding is applied to fMRI studies entailing more than two experimental conditions, a most common approach is to transform the multiclass classification problem into a series of binary problems. Furthermore, for decoding analyses, classification accuracy is often the only outcome reported although the topology of activation patterns in the high-dimensional features space may provide additional insights into underlying brain representations. Here we propose to decode and visualize voxel patterns of fMRI datasets consisting of multiple conditions with a supervised variant of self-organizing maps (SSOMs). Using simulations and real fMRI data, we evaluated the performance of our SSOM-based approach. Specifically, the analysis of simulated fMRI data with varying signal-to-noise and contrast-to-noise ratio suggested that SSOMs perform better than a k-nearest-neighbor classifier for medium and large numbers of features (i.e. 250 to 1000 or more voxels) and similar to support vector machines (SVMs) for small and medium numbers of features (i.e. 100 to 600voxels). However, for a larger number of features (>800voxels), SSOMs performed worse than SVMs. When applied to a challenging 3-class fMRI classification problem with datasets collected to examine the neural representation of three human voices at individual speaker level, the SSOM-based algorithm was able to decode speaker identity from auditory cortical activation patterns. Classification performances were similar between SSOMs and other decoding algorithms; however, the ability to visualize decoding models and underlying data topology of SSOMs promotes a more comprehensive understanding of classification outcomes. We further illustrated this visualization ability of SSOMs with a re-analysis of a dataset examining the representation of visual categories in the ventral visual cortex (Haxby et al., 2001). This analysis showed that SSOMs could retrieve and visualize topography and neighborhood relations of the brain representation of eight visual categories. We conclude that SSOMs are particularly suited for decoding datasets consisting of more than two classes and are optimally combined with approaches that reduce the number of voxels used for classification (e.g. region-of-interest or searchlight approaches). |
Databáze: | OpenAIRE |
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