Affiliation:
1. GITA Lab, Faculty of Engineering, University of Antioquia, Medellín 050010, Colombia
2. LME Lab, University of Erlangen, 91054 Erlangen, Germany
Abstract
Parkinson’s disease (PD) is the second most prevalent neurodegenerative disorder in the world, and it is characterized by the production of different motor and non-motor symptoms which negatively affect speech and language production. For decades, the research community has been working on methodologies to automatically model these biomarkers to detect and monitor the disease; however, although speech impairments have been widely explored, language remains underexplored despite being a valuable source of information, especially to assess cognitive impairments associated with non-motor symptoms. This study proposes the automatic assessment of PD patients using different methodologies to model speech and language biomarkers. One-dimensional and two-dimensional convolutional neural networks (CNNs), along with pre-trained models such as Wav2Vec 2.0, BERT, and BETO, were considered to classify PD patients vs. Healthy Control (HC) subjects. The first approach consisted of modeling speech and language independently. Then, the best representations from each modality were combined following early, joint, and late fusion strategies. The results show that the speech modality yielded an accuracy of up to 88%, thus outperforming all language representations, including the multi-modal approach. These results suggest that speech representations better discriminate PD patients and HC subjects than language representations. When analyzing the fusion strategies, we observed that changes in the time span of the multi-modal representation could produce a significant loss of information in the speech modality, which was likely linked to a decrease in accuracy in the multi-modal experiments. Further experiments are necessary to validate this claim with other fusion methods using different time spans.
Funder
UdeA
School of Engineering at UdeA and the Pratech Group S.A.S.
Reference45 articles.
1. Prevalence of Parkinson’s disease in Europe: A collaborative study of population-based cohorts. Neurologic Diseases in the Elderly Research Group;Launer;Neurology,2000
2. Risk factors for non-motor symptoms in Parkinson’s disease;Marinus;Lancet Neurol.,2018
3. Nissar, I., Mir, W.A., and Shaikh, T.A. (2021, January 19–20). Machine Learning Approaches for Detection and Diagnosis of Parkinson’s Disease-A Review. Proceedings of the 2021 7th International Conference on Advanced Computing and Communication Systems (ICACCS), Coimbatore, India.
4. Rhythmic performance in hypokinetic dysarthria: Relationship between reading, spontaneous speech and diadochokinetic tasks;Lowit;J. Commun. Disord.,2018
5. Current methods and new trends in signal processing and pattern recognition for the automatic assessment of motor impairments: The case of Parkinson’s disease;Proceedings of the Neurological Disorders and Imaging Physics. Institute of Physics,2020
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