Litcius/Paper detail

State space methods for phase amplitude coupling analysis

Hugo Soulat, Emily P. Stephen, Amanda M. Beck, Patrick L. Purdon

2022Scientific Reports30 citationsDOIOpen Access PDF

Abstract

Phase amplitude coupling (PAC) is thought to play a fundamental role in the dynamic coordination of brain circuits and systems. There are however growing concerns that existing methods for PAC analysis are prone to error and misinterpretation. Improper frequency band selection can render true PAC undetectable, while non-linearities or abrupt changes in the signal can produce spurious PAC. Current methods require large amounts of data and lack formal statistical inference tools. We describe here a novel approach for PAC analysis that substantially addresses these problems. We use a state space model to estimate the component oscillations, avoiding problems with frequency band selection, nonlinearities, and sharp signal transitions. We represent cross-frequency coupling in parametric and time-varying forms to further improve statistical efficiency and estimate the posterior distribution of the coupling parameters to derive their credible intervals. We demonstrate the method using simulated data, rat local field potentials (LFP) data, and human EEG data.

Topics & Concepts

Spurious relationshipCoupling (piping)Computer scienceParametric statisticsAmplitudeInferenceSIGNAL (programming language)Statistical inferenceState spaceField (mathematics)Local field potentialBiological systemAlgorithmPhysicsArtificial intelligenceMachine learningMathematicsStatisticsNeurosciencePure mathematicsEngineeringMechanical engineeringQuantum mechanicsProgramming languageBiologyNeural dynamics and brain functionNeuroscience and Neuropharmacology ResearchFunctional Brain Connectivity Studies