SS-DRPL: self-supervised deep representation pattern learning for voice-based Parkinson's disease detection

IF 2.1 4区 医学 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Frontiers in Computational Neuroscience Pub Date : 2024-06-12 DOI:10.3389/fncom.2024.1414462
Tae Hoon Kim, Moez Krichen, Stephen Ojo, Gabriel Avelino R. Sampedro, Meznah A. Alamro
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Abstract

Parkinson's disease (PD) is a globally significant health challenge, necessitating accurate and timely diagnostic methods to facilitate effective treatment and intervention. In recent years, self-supervised deep representation pattern learning (SS-DRPL) has emerged as a promising approach for extracting valuable representations from data, offering the potential to enhance the efficiency of voice-based PD detection. This research study focuses on investigating the utilization of SS-DRPL in conjunction with deep learning algorithms for voice-based PD classification. This study encompasses a comprehensive evaluation aimed at assessing the accuracy of various predictive models, particularly deep learning methods when combined with SS-DRPL. Two deep learning architectures, namely hybrid Long Short-Term Memory and Recurrent Neural Networks (LSTM-RNN) and Deep Neural Networks (DNN), are employed and compared in terms of their ability to detect voice-based PD cases accurately. Additionally, several traditional machine learning models are also included to establish a baseline for comparison. The findings of the study reveal that the incorporation of SS-DRPL leads to improved model performance across all experimental setups. Notably, the LSTM-RNN architecture augmented with SS-DRPL achieves the highest F1-score of 0.94, indicating its superior ability to detect PD cases using voice-based data effectively. This outcome underscores the efficacy of SS-DRPL in enabling deep learning models to learn intricate patterns and correlations within the data, thereby facilitating more accurate PD classification.
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SS-DRPL:基于语音的帕金森病检测的自我监督深度表征模式学习
帕金森病(Parkinson's disease,PD)是一项全球性的重大健康挑战,需要准确及时的诊断方法来促进有效的治疗和干预。近年来,自监督深度表征模式学习(SS-DRPL)已成为从数据中提取有价值表征的一种有前途的方法,有望提高基于语音的帕金森病检测效率。本研究主要探讨如何将 SS-DRPL 与深度学习算法相结合,用于基于语音的 PD 分类。本研究包括一项综合评估,旨在评估各种预测模型,特别是深度学习方法与 SS-DRPL 结合使用时的准确性。研究采用了两种深度学习架构,即混合长短期记忆和递归神经网络(LSTM-RNN)和深度神经网络(DNN),并比较了它们准确检测基于语音的 PD 病例的能力。此外,还采用了几种传统的机器学习模型,以建立比较基线。研究结果表明,在所有实验设置中,SS-DRPL 的加入都提高了模型的性能。值得注意的是,添加了 SS-DRPL 的 LSTM-RNN 架构的 F1 分数最高,达到了 0.94,这表明该架构具有利用语音数据有效检测 PD 病例的卓越能力。这一结果凸显了 SS-DRPL 在使深度学习模型学习数据中错综复杂的模式和相关性方面的功效,从而有助于更准确地进行 PD 分类。
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来源期刊
Frontiers in Computational Neuroscience
Frontiers in Computational Neuroscience MATHEMATICAL & COMPUTATIONAL BIOLOGY-NEUROSCIENCES
CiteScore
5.30
自引率
3.10%
发文量
166
审稿时长
6-12 weeks
期刊介绍: Frontiers in Computational Neuroscience is a first-tier electronic journal devoted to promoting theoretical modeling of brain function and fostering interdisciplinary interactions between theoretical and experimental neuroscience. Progress in understanding the amazing capabilities of the brain is still limited, and we believe that it will only come with deep theoretical thinking and mutually stimulating cooperation between different disciplines and approaches. We therefore invite original contributions on a wide range of topics that present the fruits of such cooperation, or provide stimuli for future alliances. We aim to provide an interactive forum for cutting-edge theoretical studies of the nervous system, and for promulgating the best theoretical research to the broader neuroscience community. Models of all styles and at all levels are welcome, from biophysically motivated realistic simulations of neurons and synapses to high-level abstract models of inference and decision making. While the journal is primarily focused on theoretically based and driven research, we welcome experimental studies that validate and test theoretical conclusions. Also: comp neuro
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