A deep learning approach for parkinson’s disease severity assessment

Author:

Aşuroğlu TunçORCID,Oğul HasanORCID

Abstract

Abstract Purpose Parkinson’s Disease comes on top among neurodegenerative diseases affecting 10 million worldwide. To detect Parkinson’s Disease in a prior state, gait analysis is an effective choice. However, monitoring of Parkinson’s Disease using gait analysis is time consuming and exhaustive for patients and physicians. To assess severity of symptoms, a rating scale called Unified Parkinson's Disease Rating Scale is used. It determines mild and severe cases. Today, Parkinson’s Disease severity assessment is made in gait laboratories and by manual examination. These are time consuming and it is costly for health institutions to build and maintain laboratories. By using low-cost wearables and an effective model, aforementioned problems can be solved. Methods We provide a computerized solution for quantifiable assessment of Parkinson’s Disease symptoms severity. By using wearable sensors, our framework can predict exact symptom values to assess Parkinson’s Disease severity. We propose a deep learning approach that utilizes Ground Reaction Force sensors. From sensor signals, features are extracted and fed to a hybrid deep learning model. This model is the combination of Convolutional Neural Networks and Locally Weighted Random Forest. Results Proposed framework achieved 0.897, 3.009, 4.556 in terms of Correlation Coefficient, Mean Absolute Error and Root Mean Square Error, respectively. Proposed framework outperformed other machine and deep learning models. We also evaluated classification performance for disease detection. We outperformed most of the previous studies, achieving 99.5% accuracy, 98.7% sensitivity and 99.1% specificity. Conclusion This is the first study to use a deep learning regression approach to predict exact symptom value of Parkinson’s Disease patients. Results show that this approach can be effectively employed as a disease severity assessment tool using wearable sensors.

Publisher

Springer Science and Business Media LLC

Subject

Biomedical Engineering,Applied Microbiology and Biotechnology,Bioengineering,Biotechnology

Reference51 articles.

1. Parkinson J. An essay on the shaking palsy. J Neuropsychiatry Clin Neurosci. 2002;14(2):223–36.

2. Lombardo JM, Lopez MA, Miron F, López M, León M, Arambarri J, Álvarez D. MOBEEZE Natural Interaction Technologies, Virtual Reality and Artificial Intelligence for Gait Disorders Analysis and Rehabilitation in Patients with Parkinson’s Disease. Int J Interact Multi Artif Intell. 2019;5:54–62.

3. Mack S. Removing Unclassified Hand Tremor Motion from Computer Mouse Input with Neural Networks. Int J Interact Multi Artif Intell. 2018;5:56–60.

4. Xu S, Pan Z. A novel ensemble of random forest for assisting diagnosis of Parkinson's disease on small handwritten dynamics dataset. Int J Med Inform. 2020;144:104283, 12.

5. Delva A, Van Weehaeghe D, Koole M, Van Laere K, Vandenberghe W. Loss of Presynaptic Terminal Integrity in the Substantia Nigra in Early Parkinson’s Disease. Mov Disord. 2020;35:1977–86.

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