Publication detail

Computerised Analysis of hypomimia and hypokinetic dysarthria for improved diagnosis of Parkinson's disease

SKIBIŃSKA, J. HOŠEK, J.

Original Title

Computerised Analysis of hypomimia and hypokinetic dysarthria for improved diagnosis of Parkinson's disease

Type

journal article in Web of Science

Language

English

Original Abstract

Background and Objective: An ageing society requires easy-to-use approaches for diagnosis and monitoring of neurodegenerative disorders, such as Parkinson’s disease (PD), so that clinicians can effectively adjust a treatment policy and improve patients’ quality of life. Current methods of PD diagnosis and monitoring usually require the patients to come to a hospital, where they undergo several neurological and neuropsychological examinations. These examinations are usually time-consuming, expensive, and performed just a few times per year. Hence, this study explores the possibility of fusing computerised analysis of hypomimia and hypokinetic dysarthria (two motor symptoms manifested in the majority of PD patients) with the goal of proposing a new methodology of PD diagnosis that could be easily integrated into mHealth systems. Methods: We enrolled 73 PD patients and 46 age- and gender-matched healthy controls, who performed several speech/voice tasks while recorded by a microphone and a camera. Acoustic signals were parametrised in the fields of phonation, articulation and prosody. Video recordings of a face were analysed in terms of facial landmarks movement. Both modalities were consequently modelled by the XGBoost algorithm. Results: The acoustic analysis enabled diagnosis of PD with 77 % balanced accuracy, while in the case of the facial analysis, we observed 81 % balanced accuracy. The fusion of both modalities increased the balanced accuracy to 83 % (88 % sensitivity and 78 % specificity). The most informative speech exercise in the multimodality system turned out to be a tongue twister. Additionally, we identified muscle movements that are characteristic of hypomimia. Conclusions: The introduced methodology, which is based on the myriad of speech exercises likewise audio and video modality, allows for the detection of PD with an accuracy of up to 83 %. The speech exercise - tongue twisters occurred to be the most valuable from the clinical point of view. Additionally, the clinical interpretation of the created models is illustrated. The presented computer-supported methodology could serve as an extra tool for neurologists in PD detection and the proposed potential solution of mHealth will facilitate the patient’s and doctor’s life.

Keywords

acoustic analysis, facial analysis, hypokinetic dysarthria, hypomimia, machine learning, Parkinson’s disease

Authors

SKIBIŃSKA, J.; HOŠEK, J.

Released

23. 10. 2023

Publisher

CellPress

ISBN

2405-8440

Periodical

Heliyon

Year of study

9

Number

11

State

United States of America

Pages count

26

URL

Full text in the Digital Library

BibTex

@article{BUT184964,
  author="Justyna {Skibińska} and Jiří {Hošek}",
  title="Computerised Analysis of hypomimia and hypokinetic dysarthria for improved diagnosis of Parkinson's disease",
  journal="Heliyon",
  year="2023",
  volume="9",
  number="11",
  pages="26",
  doi="10.1016/j.heliyon.2023.e21175",
  issn="2405-8440",
  url="https://www.sciencedirect.com/science/article/pii/S2405844023083834"
}