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Proceedings ArticleDOI

Recent machine learning advancements in sensor-based mobility analysis: Deep learning for Parkinson's disease assessment

TLDR
This paper compared standard machine learning pipelines with deep learning based on convolutional neural networks and showed that deep learning outperformed other state-of-the-art machine learning algorithms in terms of classification rate.
Abstract
The development of wearable sensors has opened the door for long-term assessment of movement disorders. However, there is still a need for developing methods suitable to monitor motor symptoms in and outside the clinic. The purpose of this paper was to investigate deep learning as a method for this monitoring. Deep learning recently broke records in speech and image classification, but it has not been fully investigated as a potential approach to analyze wearable sensor data. We collected data from ten patients with idiopathic Parkinson's disease using inertial measurement units. Several motor tasks were expert-labeled and used for classification. We specifically focused on the detection of bradykinesia. For this, we compared standard machine learning pipelines with deep learning based on convolutional neural networks. Our results showed that deep learning outperformed other state-of-the-art machine learning algorithms by at least 4.6 % in terms of classification rate. We contribute a discussion of the advantages and disadvantages of deep learning for sensor-based movement assessment and conclude that deep learning is a promising method for this field.

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A Multi-layer Gaussian Process for Motor Symptom Estimation in People with Parkinson's Disease.

TL;DR: The proposed method for monitoring Parkinson's disease by stochastically modeling the relationships between wrist movements during unscripted daily activities and corresponding annotations about clinical displays of movement abnormalities produces promising results in objective monitoring ofmovement abnormalities of PD in the presence of arbitrary and unknown voluntary motions.
Journal ArticleDOI

A Multi-Layer Gaussian Process for Motor Symptom Estimation in People With Parkinson's Disease

TL;DR: In this paper, a method for monitoring Parkinson's disease (PwP) by stochastically modeling the relationships between wrist movements during unscripted daily activities and corresponding annotations about clinical displays of movement abnormalities is proposed.
Journal ArticleDOI

Automated Classification of Postural Control for Individuals With Parkinson's Disease Using a Machine Learning Approach: A Preliminary Study.

TL;DR: In conclusion, participants with PD exhibited impaired postural stability and their postural sway features could be identified by machine learning algorithms.
Posted Content

Inertial Sensing Meets Artificial Intelligence: Opportunity or Challenge?

TL;DR: This article reviews the research on using AI technology to enhance inertial sensing from various aspects, including sensor design and selection, calibration and error modeling, navigation and motion-sensing algorithms, multi-sensor information fusion, system evaluation, and practical application and summarizes nine advantages and nine challenges.
Journal ArticleDOI

Neurologic Dysfunction Assessment in Parkinson Disease Based on Fundus Photographs Using Deep Learning.

TL;DR: In this paper , a convolutional neural network was used to predict Hoehn and Yahr (H-Y) scale and Unified Parkinson's Disease Rating Scale part III (UPDRS-III) score using fundus photography among patients with PD.
References
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How Companies Are Using machine learning and deep learning to improve human experience?

Our results showed that deep learning outperformed other state-of-the-art machine learning algorithms by at least 4.6 % in terms of classification rate.