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A fast and non‐invasive artificial intelligence olfactory‐like system that aids diagnosis of Parkinson's disease.

Authors :
Cao, Yina
Jiang, Lina
Zhang, Jingxin
Fu, Yanlu
Li, Qiwei
Fu, Wei
Zhu, Junjiang
Xiang, Xiaohui
Zhao, Guohua
Kong, Dongdong
Chen, Xing
Fang, Jiajia
Source :
European Journal of Neurology. Mar2024, Vol. 31 Issue 3, p1-10. 10p.
Publication Year :
2024

Abstract

Background and purpose: Several previous studies have shown that skin sebum analysis can be used to diagnose Parkinson's disease (PD). The aim of this study was to develop a portable artificial intelligence olfactory‐like (AIO) system based on gas chromatographic analysis of the volatile organic compounds (VOCs) in patient sebum and explore its application value in the diagnosis of PD. Methods: The skin VOCs from 121 PD patients and 129 healthy controls were analyzed using the AIO system and three classic machine learning models were established, including the gradient boosting decision tree (GBDT), random forest and extreme gradient boosting, to assist the diagnosis of PD and predict its severity. Results: A 20‐s time series of AIO system data were collected from each participant. The VOC peaks at a large number of time points roughly concentrated around 5–12 s were significantly higher in PD subjects. The gradient boosting decision tree model showed the best ability to differentiate PD from healthy controls, yielding a sensitivity of 83.33% and a specificity of 84.00%. However, the system failed to predict PD progression scored by Hoehn−Yahr stage. Conclusions: This study provides a fast, low‐cost and non‐invasive method to distinguish PD patients from healthy controls. Furthermore, our study also indicates abnormal sebaceous gland secretion in PD patients, providing new evidence for exploring the pathogenesis of PD. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
13515101
Volume :
31
Issue :
3
Database :
Academic Search Index
Journal :
European Journal of Neurology
Publication Type :
Academic Journal
Accession number :
175327058
Full Text :
https://doi.org/10.1111/ene.16167