We apply modified diffusion entropy analysis (MDEA) to assess multifractal dimensions of ON time series (ONTS) and complexity synchronization (CS) analysis to infer information transfer among ONs that are part of a network of organ networks (NoONs). The purpose of this paper is to advance the validation, standardization, and repeatability of MDEA and CS analysis of heterogeneous neurophysiological time series data. Results from processing these datasets show that the complexity of brain, heart, and lung ONTS significantly co-vary over time during cognitive task performance but that certain principles, guidelines, and strategies for the application of MDEA analysis need consideration.
@article{arxiv.2411.14602,
title = {Complexity synchronization analysis of neurophysiological data: Theory and methods},
author = {Ioannis Schizas and Sabrina Sullivan and Scott E. Kerick and Korosh Mahmoodi and J. Cortney Bradford and David L. Boothe and Piotr J. Franaszczuk and Paolo Grigolini and Bruce J. West},
journal= {arXiv preprint arXiv:2411.14602},
year = {2024}
}