Advancements in Parkinson’s Disease Diagnosis: A Comprehensive Survey on Biomarker Integration and Machine Learning

This comprehensive review explores the advancements in machine learning algorithms in the diagnosis of Parkinson’s disease (PD) utilizing different biomarkers. It addresses the challenges in the assessment of PD for accurate diagnosis, treatment decisions, and patient care due to difficulties in ear...

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Main Authors: Ruchira Pratihar, Ravi Sankar
Format: Article
Language:English
Published: MDPI AG 2024-11-01
Series:Computers
Subjects:
Online Access:https://www.mdpi.com/2073-431X/13/11/293
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author Ruchira Pratihar
Ravi Sankar
author_facet Ruchira Pratihar
Ravi Sankar
author_sort Ruchira Pratihar
collection DOAJ
description This comprehensive review explores the advancements in machine learning algorithms in the diagnosis of Parkinson’s disease (PD) utilizing different biomarkers. It addresses the challenges in the assessment of PD for accurate diagnosis, treatment decisions, and patient care due to difficulties in early and differential diagnosis, subjective clinical assessments, symptom variability, limited objective biomarkers, comorbidity impacts, uneven access to specialized care, and gaps in clinical research. This review provides a detailed review of ongoing biomarker research, technological advancements for objective assessment, and enhanced healthcare infrastructure. It presents a comprehensive evaluation of the use of diverse biomarkers for diagnosing Parkinson’s disease (PD) across various datasets, utilizing machine learning models. Recent research findings are summarized in tables, showcasing key methodologies such as data preprocessing, feature selection, and classification techniques. This review also explores the performance, benefits, and limitations of different diagnostic approaches, providing valuable insights into their effectiveness in PD diagnosis. Moreover, the review addresses the integration of multimodal biomarkers, combining data from different sources to enhance diagnostic accuracy, and disease monitoring. Challenges such as data heterogeneity, variability in symptom progression, and model generalizability are discussed alongside emerging trends and future directions in the field. Ultimately, the application of machine learning (ML) in leveraging diverse biomarkers offers promising avenues for advancing PD diagnosis, paving the way for personalized treatment strategies and improving patient outcomes.
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spelling doaj-art-5c50dfedf37f4a3c8becebf293b828222025-08-20T02:08:14ZengMDPI AGComputers2073-431X2024-11-01131129310.3390/computers13110293Advancements in Parkinson’s Disease Diagnosis: A Comprehensive Survey on Biomarker Integration and Machine LearningRuchira Pratihar0Ravi Sankar1iCONS Lab, Department of Electrical Engineering, University of South Florida, Tampa, FL 33630, USAiCONS Lab, Department of Electrical Engineering, University of South Florida, Tampa, FL 33630, USAThis comprehensive review explores the advancements in machine learning algorithms in the diagnosis of Parkinson’s disease (PD) utilizing different biomarkers. It addresses the challenges in the assessment of PD for accurate diagnosis, treatment decisions, and patient care due to difficulties in early and differential diagnosis, subjective clinical assessments, symptom variability, limited objective biomarkers, comorbidity impacts, uneven access to specialized care, and gaps in clinical research. This review provides a detailed review of ongoing biomarker research, technological advancements for objective assessment, and enhanced healthcare infrastructure. It presents a comprehensive evaluation of the use of diverse biomarkers for diagnosing Parkinson’s disease (PD) across various datasets, utilizing machine learning models. Recent research findings are summarized in tables, showcasing key methodologies such as data preprocessing, feature selection, and classification techniques. This review also explores the performance, benefits, and limitations of different diagnostic approaches, providing valuable insights into their effectiveness in PD diagnosis. Moreover, the review addresses the integration of multimodal biomarkers, combining data from different sources to enhance diagnostic accuracy, and disease monitoring. Challenges such as data heterogeneity, variability in symptom progression, and model generalizability are discussed alongside emerging trends and future directions in the field. Ultimately, the application of machine learning (ML) in leveraging diverse biomarkers offers promising avenues for advancing PD diagnosis, paving the way for personalized treatment strategies and improving patient outcomes.https://www.mdpi.com/2073-431X/13/11/293Parkinson’s diseasemultimodal biomarkersmachine learningbiomarker integration
spellingShingle Ruchira Pratihar
Ravi Sankar
Advancements in Parkinson’s Disease Diagnosis: A Comprehensive Survey on Biomarker Integration and Machine Learning
Computers
Parkinson’s disease
multimodal biomarkers
machine learning
biomarker integration
title Advancements in Parkinson’s Disease Diagnosis: A Comprehensive Survey on Biomarker Integration and Machine Learning
title_full Advancements in Parkinson’s Disease Diagnosis: A Comprehensive Survey on Biomarker Integration and Machine Learning
title_fullStr Advancements in Parkinson’s Disease Diagnosis: A Comprehensive Survey on Biomarker Integration and Machine Learning
title_full_unstemmed Advancements in Parkinson’s Disease Diagnosis: A Comprehensive Survey on Biomarker Integration and Machine Learning
title_short Advancements in Parkinson’s Disease Diagnosis: A Comprehensive Survey on Biomarker Integration and Machine Learning
title_sort advancements in parkinson s disease diagnosis a comprehensive survey on biomarker integration and machine learning
topic Parkinson’s disease
multimodal biomarkers
machine learning
biomarker integration
url https://www.mdpi.com/2073-431X/13/11/293
work_keys_str_mv AT ruchirapratihar advancementsinparkinsonsdiseasediagnosisacomprehensivesurveyonbiomarkerintegrationandmachinelearning
AT ravisankar advancementsinparkinsonsdiseasediagnosisacomprehensivesurveyonbiomarkerintegrationandmachinelearning