Generative Models for Periodicity Detection in Noisy Signals.

algorithm generative models periodic leg movements during sleep periodicity periodicity detection

Journal

Clocks & sleep
ISSN: 2624-5175
Titre abrégé: Clocks Sleep
Pays: Switzerland
ID NLM: 101736579

Informations de publication

Date de publication:
23 Jul 2024
Historique:
received: 29 05 2024
revised: 06 07 2024
accepted: 17 07 2024
medline: 27 8 2024
pubmed: 27 8 2024
entrez: 27 8 2024
Statut: epublish

Résumé

We present the Gaussian Mixture Periodicity Detection Algorithm (GMPDA), a novel method for detecting periodicity in the binary time series of event onsets. The GMPDA addresses the periodicity detection problem by inferring parameters of a generative model. We introduce two models, the Clock Model and the Random Walk Model, which describe distinct periodic phenomena and provide a comprehensive generative framework. The GMPDA demonstrates robust performance in test cases involving single and multiple periodicities, as well as varying noise levels. Additionally, we evaluate the GMPDA on real-world data from recorded leg movements during sleep, where it successfully identifies expected periodicities despite high noise levels. The primary contributions of this paper include the development of two new models for generating periodic event behavior and the GMPDA, which exhibits high accuracy in detecting multiple periodicities even in noisy environments.

Identifiants

pubmed: 39189192
pii: clockssleep6030025
doi: 10.3390/clockssleep6030025
doi:

Types de publication

Journal Article

Langues

eng

Pagination

359-388

Auteurs

Ezekiel Barnett (E)

NNAISENSE, 6900 Lugano, Switzerland.

Olga Kaiser (O)

NNAISENSE, 6900 Lugano, Switzerland.

Jonathan Masci (J)

NNAISENSE, 6900 Lugano, Switzerland.

Ernst C Wit (EC)

Institute of Computing, Università della Svizzera Italiana, 6962 Lugano, Switzerland.

Stephany Fulda (S)

Sleep Medicine Unit, Neurocenter of Southern Switzerland, EOC, 6900 Lugano, Switzerland.

Classifications MeSH