Abstract

BackgroundWith the growing number of the aged population, the number of Parkinson’s disease (PD) affected people is also mounting. Unfortunately, due to insufficient resources and awareness in underdeveloped countries, proper and timely PD detection is highly challenged. Besides, all PD patients’ symptoms are neither the same nor they all become pronounced at the same stage of the illness. Therefore, this work aims to combine more than one symptom (rest tremor and voice degradation) by collecting data remotely using smartphones and detect PD with the help of a cloud-based machine learning system for telemonitoring the PD patients in the developing countries.MethodThis proposed system receives rest tremor and vowel phonation data acquired by smartphones with built-in accelerometer and voice recorder sensors. The data are primarily collected from diagnosed PD patients and healthy people for building and optimizing machine learning models that exhibit higher performance. After that, data from newly suspected PD patients are collected, and the trained algorithms are evaluated to detect PD. Based on the majority-vote from those algorithms, PD-detected patients are connected with a nearby neurologist for consultation. Upon receiving patients’ feedback after being diagnosed by the neurologist, the system may update the model by retraining using the latest data. Also, the system requests the detected patients periodically to upload new data to track their disease progress.ResultThe highest accuracy in PD detection using offline data was 98.3% from voice data and 98.5% from tremor data when used separately. In both cases, k-nearest neighbors (kNN) gave the highest accuracy over support vector machine (SVM) and naive Bayes (NB). The application of maximum relevance minimum redundancy (MRMR) feature selection method showed that by selecting different feature sets based on the patient’s gender, we could improve the detection accuracy. This study’s novelty is the application of ensemble averaging on the combined decisions generated from the analysis of voice and tremor data. The average accuracy of PD detection becomes 99.8% when ensemble averaging was performed on majority-vote from kNN, SVM, and NB.ConclusionThe proposed system can detect PD using a cloud-based system for computation, data preserving, and regular monitoring of voice and tremor samples captured by smartphones. Thus, this system can be a solution for healthcare authorities to ensure the older population’s accessibility to a better medical diagnosis system in the developing countries, especially in the pandemic situation like COVID-19, when in-person monitoring is minimal.

Highlights

  • IntroductionParkinson’s disease (PD) is the second most common age-related neurodegenerative disorder (after Alzheimer’s), affecting about 7 to 10 million people worldwide

  • Parkinson’s disease (PD) is the second most common age-related neurodegenerative disorder, affecting about 7 to 10 million people worldwide

  • The proposed system can detect PD using a cloud-based system for computation, data preserving, and regular monitoring of voice and tremor samples captured by smartphones

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Summary

Introduction

Parkinson’s disease (PD) is the second most common age-related neurodegenerative disorder (after Alzheimer’s), affecting about 7 to 10 million people worldwide. Studies have found that males are 1.5 times more likely to be affected by Parkinson’s than females [2], which calls for the necessity of a gender-based detection system for better screening This disease affects patients’ quality of life, makes social interaction more difficult for them, and worsens their financial condition with extravagant medical expenses [3]. All the patients do not develop changes in their speech at the same stage of the disease either [5] For those who are affected, the voice may get softer, breathier, or hoarse over time. As a result of this, the patient gradually finds verbal communication very difficult, and people who listen to them need to ask them to repeat the sentences quiet often [6] In medical terms, these problems are known as dysarthria, hypophonia, tachyphemia, etc. This work aims to combine more than one symptom (rest tremor and voice degradation) by collecting data remotely using smartphones and detect PD with the help of a cloud-based machine learning system for telemonitoring the PD patients in the developing countries

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