Abstract

Parkinson’s disease (PD) is a progressive neurodegenerative disorder associated with dysfunction of dopaminergic neurons in the brain, lack of dopamine and the formation of abnormal Lewy body protein particles. PD is an idiopathic disease of the nervous system, characterized by motor and nonmotor manifestations without a discrete onset of symptoms until a substantial loss of neurons has already occurred, enabling early diagnosis very challenging. Sensor-based platforms have gained much attention in clinical practice screening various biological signals simultaneously and allowing researchers to quickly receive a huge number of biomarkers for diagnostic and prognostic purposes. The integration of machine learning into medical systems provides the potential for optimization of data collection, disease prediction through classification of symptoms and can strongly support data-driven clinical decisions. This work attempts to examine some of the facts and current situation of sensor-based approaches in PD diagnosis and discusses ensemble techniques using sensor-based data for developing machine learning models for personalized risk prediction. Additionally, a biosensing platform combined with clinical data processing and appropriate software is proposed in order to implement a complete diagnostic system for PD monitoring.

Highlights

  • The pathophysiology of Parkinson’s disease (PD) is characterized by gradual and severe degeneration of the dopaminergic neurons of the substantia nigra

  • Have a family history of this disorder, which is caused by mutations in the LRRK2, SNCA, PARK2, PARK7 or PINK1 genes [2]

  • Mutations in the transmembrane protein 230 (TREM230) gene have been linked to the familial form of PD [3]

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Summary

A Sensor-Based Perspective in Early-Stage Parkinson’s Disease

Vrahatis 1 , Christos Tzouvelekis 1 , Dimitrios Drakoulis 2 , Foteini Papavassileiou 2 , Themis P. Exarchos 1 and Panayiotis Vlamos 1, *

Introduction
Early Detection and the Need for Sensor-Based Approaches
The Sensor Perspective
Recent Machine Learning Advancements in Sensor-Based Data
Findings
Ensemble Methods in Sensor-Based Data—Towards the Future Big Challenge
Full Text
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