Data Integration with Fusion Searchlight: Classifying Brain States from Resting-state fMRI
Spontaneous neural activity observed in resting-state fMRI is characterized by complex spatio-temporal dynamics. Different measures related to local and global brain connectivity and fluctuations in low-frequency amplitudes can quantify individual aspects of these neural dynamics. Even though such m...
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Zusammenfassung: | Spontaneous neural activity observed in resting-state fMRI is characterized
by complex spatio-temporal dynamics. Different measures related to local and
global brain connectivity and fluctuations in low-frequency amplitudes can
quantify individual aspects of these neural dynamics. Even though such measures
are derived from the same functional signals, they are often evaluated
separately, neglecting their interrelations and potentially reducing the
analysis sensitivity. In our study, we present a fusion searchlight (FuSL)
framework to combine the complementary information contained in different
resting-state fMRI metrics and demonstrate how this can improve the decoding of
brain states. Moreover, we show how explainable AI allows us to reconstruct the
differential impact of each metric on the decoding, which additionally
increases spatial specificity of searchlight analysis. In general, this
framework can be adapted to combine information derived from different imaging
modalities or experimental conditions, offering a versatile and interpretable
tool for data fusion in neuroimaging. |
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DOI: | 10.48550/arxiv.2412.10161 |