An F-ratio-Based Method for Estimating the Number of Active Sources in MEG
Amita Giri, John C. Mosher, Amir Adler, Dimitrios Pantazis

TL;DR
This paper presents a robust F-ratio-based statistical method for accurately estimating the number of active sources in MEG recordings, outperforming existing approaches by effectively handling noise, correlations, and modeling inaccuracies.
Contribution
The study introduces a formal F-ratio-based procedure with threshold tuning for improved source number estimation in MEG, validated across simulated and real data.
Findings
Threshold selection critically affects performance.
Method outperforms AIC and MDL in accuracy.
Robust across different source correlations and anatomies.
Abstract
Magnetoencephalography (MEG) is a powerful technique for studying the human brain function. However, accurately estimating the number of sources that contribute to the MEG recordings remains a challenging problem due to the low signal-to-noise ratio (SNR), the presence of correlated sources, inaccuracies in head modeling, and variations in individual anatomy. To address these issues, our study introduces a robust method for accurately estimating the number of active sources in the brain based on the F-ratio statistical approach, which allows for a comparison between a full model with a higher number of sources and a reduced model with fewer sources. Using this approach, we developed a formal statistical procedure that sequentially increases the number of sources in the multiple dipole localization problem until all sources are found. Our results revealed that the selection of thresholds…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced MRI Techniques and Applications · Blind Source Separation Techniques
