Cognitive state classification using transformed fMRI data
Hariharan Ramasangu, Neelam Sinha

TL;DR
This paper introduces a novel method for classifying cognitive tasks using transformed fMRI data, leveraging phase information and random sieve functions to significantly improve accuracy over raw data analysis.
Contribution
The study presents a new approach that utilizes phase information in Fourier and Hilbert transformed domains, combined with random sieve functions, for enhanced cognitive task classification.
Findings
Achieved up to 97.5% accuracy with Fourier transformed data.
Significantly outperformed raw data classification accuracy.
Demonstrated effectiveness on publicly available fMRI datasets.
Abstract
One approach, for understanding human brain functioning, is to analyze the changes in the brain while performing cognitive tasks. Towards this, Functional Magnetic Resonance (fMR) images of subjects performing well-defined tasks are widely utilized for task-specific analyses. In this work, we propose a procedure to enable classification between two chosen cognitive tasks, using their respective fMR image sequences. The time series of expert-marked anatomically-mapped relevant voxels are processed and fed as input to the classical Naive Bayesian and SVM classifiers. The processing involves use of random sieve function, phase information in the data transformed using Fourier and Hilbert transformations. This processing results in improved classification, as against using the voxel intensities directly, as illustrated. The novelty of the proposed method lies in utilizing the phase…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · EEG and Brain-Computer Interfaces
MethodsSupport Vector Machine
