Détail du document
Identifiant

oai:HAL:hal-02887913v1

Sujet
Quantification of physiological pa... [SPI.AUTO]Engineering Sciences [ph...
Auteur
Ushirobira, Rosane Efimov, Denis Casiez, Géry Fernandez, Laure Olsson, Fredrik Medvedev, Alexander
Langue
en
Editeur

HAL CCSD

Catégorie

CNRS - Centre national de la recherche scientifique

Année

2020

Date de référencement

07/10/2023

Mots clés
parkinson detection
Métrique

Résumé

International audience; In this paper, we study the problem of detecting early signs of Parkinson's disease during an indirect human-computer interaction via a computer mouse activated by a user.

The experimental setup provides a signal determined by the screen pointer position.

An appropriate choice of segments in the cursor position raw data provides a filtered signal from which a number of quantifiable criteria can be obtained.

These dynamical features are derived based on control theory methods.

Thanks to these indicators, a subsequent analysis allows the detection of users with tremor.

Real-life data from patients with Parkinson's and healthy controls are used to illustrate our detection method.

Ushirobira, Rosane,Efimov, Denis,Casiez, Géry,Fernandez, Laure,Olsson, Fredrik,Medvedev, Alexander, 2020, Detection of signs of Parkinson's disease using dynamical features via an indirect pointing device, HAL CCSD

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