Exploring the Potential of Deep Learning in the Classification and Early Detection of Parkinson's Disease

Q2 Computer Science
V. S. Bakkialakshmi, V. Arulalan, Gowdham Chinnaraju, Hritwik Ghosh, Irfan Sadiq Rahat, Ankit Saha
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引用次数: 0

Abstract

INTRODUCTION: Parkinson's Disease (PD) is a progressive neurological disorder affecting a significant portion of the global population, leading to profound impacts on daily life and imposing substantial burdens on healthcare systems. Early identification and precise classification are crucial for effectively managing this disease. This research investigates the potential of deep learning techniques in facilitating early recognition and accurate classification of PD. OBJECTIVES: The primary objective of this study is to leverage advanced deep learning techniques for the early detection and precise classification of Parkinson's Disease. By utilizing a rich dataset comprising speech signal features extracted from 3000 PD patients, including Time Frequency Features, Mel Frequency Cepstral Coefficients (MFCCs), Wavelet Transform based Features, Vocal Fold Features, and TWQT features, this research aims to evaluate the performance of various deep learning models in PD classification. METHODS: The dataset containing diverse speech signal features from PD patients' recordings serves as the foundation for training and evaluating five different deep learning models: ResNet50, VGG16, Inception v2, AlexNet, and VGG19. Each model undergoes training and assessment to determine its capability in accurately classifying PD patients. Performance metrics such as accuracy are employed to evaluate the models' effectiveness. RESULTS: The results demonstrate promising potential, with overall accuracies ranging from 89% to 95% across the different deep learning models. Notably, AlexNet emerges as the top-performing model, achieving an accuracy of 95% and demonstrating balanced performance in accurately identifying both true and false PD cases. CONCLUSION: This research highlights the significant potential of deep learning in facilitating the early detection and classification of Parkinson's Disease. Leveraging speech signal features offers a non-invasive and cost-effective approach to PD assessment. The findings contribute to the growing body of evidence supporting the integration of artificial intelligence in healthcare, particularly in the realm of neurodegenerative disorders. Further exploration into the application of deep learning in this domain holds promise for advancing PD diagnosis and management.
探索深度学习在帕金森病分类和早期检测中的潜力
简介:帕金森病(Parkinson's Disease,PD)是一种渐进性神经系统疾病,影响着全球相当一部分人口,给日常生活带来深远影响,并给医疗保健系统带来沉重负担。早期识别和精确分类对于有效控制这种疾病至关重要。本研究探讨了深度学习技术在促进早期识别和准确分类脊髓灰质炎方面的潜力。目的:本研究的主要目的是利用先进的深度学习技术对帕金森病进行早期检测和精确分类。通过利用从 3000 名帕金森病患者中提取的语音信号特征组成的丰富数据集,包括时间频率特性、梅尔频率倒频谱系数(MFCC)、基于小波变换的特征、声带折叠特征和 TWQT 特征,本研究旨在评估各种深度学习模型在帕金森病分类中的性能。方法:数据集包含来自 PD 患者录音的各种语音信号特征,是训练和评估五种不同深度学习模型的基础:ResNet50、VGG16、Inception v2、AlexNet 和 VGG19。每个模型都要经过训练和评估,以确定其准确分类帕金森病患者的能力。采用准确率等性能指标来评估模型的有效性。结果:结果表明,不同深度学习模型的总体准确率从 89% 到 95% 不等,潜力巨大。值得注意的是,AlexNet 是表现最好的模型,准确率达到 95%,在准确识别真假 PD 病例方面表现均衡。结论:这项研究凸显了深度学习在促进帕金森病早期检测和分类方面的巨大潜力。利用语音信号特征为帕金森病评估提供了一种无创、经济高效的方法。越来越多的证据支持将人工智能整合到医疗保健领域,尤其是神经退行性疾病领域,这些研究成果为支持人工智能整合医疗保健领域做出了贡献。进一步探索深度学习在这一领域的应用,有望推进帕金森病的诊断和管理。
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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