Journal article

Improved Neurophysiological Process Imaging Through Optimization of Kalman Filter Initial Conditions

Y Zhao, F Luong, S Teshuva, A Pelentritou, W Woods, D Liley, DF Schmidt, M Boley, L Kuhlmann

International Journal of Neural Systems | WORLD SCIENTIFIC PUBL CO PTE LTD | Published : 2023

Abstract

Recent work presented a framework for space-time-resolved neurophysiological process imaging that augments existing electromagnetic source imaging techniques. In particular, a nonlinear Analytic Kalman filter (AKF) has been developed to efficiently infer the states and parameters of neural mass models believed to underlie the generation of electromagnetic source currents. Unfortunately, as the initialization determines the performance of the Kalman filter, and the ground truth is typically unavailable for initialization, this framework might produce suboptimal results unless significant effort is spent on tuning the initialization. Notably, the relation between the initialization and overall..

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Grants

Awarded by Australian Research Council


Funding Acknowledgements

We thank David Grayden, Philippa J. Karoly, Artemio Soto-Breceda and Parvin Zarei Eskikand for helpful discussions about the work, along with MASSIVE (https://www.massive.org.au) for computational resources. This work was supported by Grants from the Australian Research Council (DP200102600 and DP210100045) and Monash University.