Time topological analysis of EEG using signature theory
Chrétien, Stéphane, Gao, Ben, Thebault-Guiochon, Astrid, Vaucher, Rémi
Anomaly detection in multivariate signals is a task of paramount importance in many disciplines (epidemiology, finance, cognitive sciences and neurosciences, oncology, etc.). In this perspective, Topological Data Analysis (TDA) offers a battery of "shape" invariants that can be exploited for the implementation of an effective detection scheme. Our contribution consists of extending the constructions presented in \cite{chretienleveraging} on the construction of simplicial complexes from the Signatures of signals and their predictive capacities, rather than the use of a generic distance as in \cite{petri2014homological}. Signature theory is a new theme in Machine Learning arXiv:1603.03788 stemming from recent work on the notions of Rough Paths developed by Terry Lyons and his team \cite{lyons2002system} based on the formalism introduced by Chen \cite{chen1957integration}. We explore in particular the detection of changes in topology, based on tracking the evolution of homological persistence and the Betti numbers associated with the complex introduced in \cite{chretienleveraging}. We apply our tools for the analysis of brain signals such as EEG to detect precursor phenomena to epileptic seizures.
Apr-6-2024
- Country:
- Europe
- France (0.14)
- United Kingdom > England (0.14)
- Europe
- Genre:
- Research Report (0.64)
- Industry:
- Health & Medicine > Therapeutic Area > Neurology > Epilepsy (0.34)
- Technology: