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A voice analysis approach for recognizing Parkinson’s disease patterns

机译:识别帕金森病模式的语音分析方法

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摘要

Many of the patients diagnosed with Parkinson’s disease (PD) do not know they have it until the most severe symptoms appear, sometimes they must wait months or even years to get the correct diagnosis, so detection in its early stage is important to improve the quality of life of patients and families. We propose the creation of a model based on supervised learning, to learn the patterns associated with the voice of PD patients. We used 1400 voice recordings of PD patients and controls which were preprocessed, further were obtained 70 features for each recording, and then we used a supervised learning algorithms such as a Multilayer Perceptron (MLP), Random Forest (RF), Logistic Regression (LR), and Support Vector Machines (SVM) to classify the data between patients and controls. From all machine learning models evaluated the SVM model showed the best performance, with an accuracy of 88%. This work presents the possibility to incorporate the voice analysis as digital biomarker to facilitate diagnosis in PD.
机译:许多患者诊断出帕金森病(PD)不知道它们在出现最严重的症状之前,有时他们必须等待几个月甚至几年来获得正确的诊断,所以在早期的早期检测是提高质量的重要性患者和家庭的生活。我们提出了基于监督学习的模型的创建,以了解与PD患者的声音相关的模式。我们使用了1400个PD患者的录音和预处理的控制,进一步获得了每个录音的70个特征,然后我们使用了一个监督的学习算法,例如多层的Perceptron(MLP),随机森林(RF),Logistic回归(LR ),并支持向量机(SVM)来对患者和控制之间的数据进行分类。从所有机器学习模型评估SVM模型显示最佳性能,精度为88%。这项工作提出了将语音分析纳入数字生物标志物的可能性,以便于PD诊断。

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