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Using machine learning to diagnose Parkinson's disease from voice recordings

机译:使用机器学习从录音中诊断帕金森病

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Parkinson's Disease (PD) is a debilitating neurodegenerative disease which cannot be diagnosed through standardized blood tests, so a faster, cheaper diagnostic tool is essential. Using machine learning algorithms to analyze the variations in voice patterns is a novel method of predicting the existence of PD in patients. This paper proposes a predictive model that effectively diagnoses PD with maximum accuracy using a dataset that consists of extrapolated data from voice recordings of Parkinson's patients and unaffected subjects. The results of experimental testing showed that a Boosted Decision Tree, which is an ensemble model made from gradient boosted regression trees, was the best model to use on the data, with an accuracy score of 91-95%. It was also discovered through filter-based feature detection that the strongest weighted features were spreadl, spread2, and PPE, all three nonlinear measures of fundamental frequency variation in the voice recordings. These findings can be applied to PD, other motor disorders, or even vocal biometrics.
机译:帕金森病(PD)是一种衰弱的神经退行性疾病,不能通过标准化血液测试诊断,因此更快,更便宜的诊断工具至关重要。使用机器学习算法来分析语音模式的变化是预测患者PD存在的新方法。本文提出了一种预测模型,其有效地使用来自帕金森患者和未受影响的受试者的语音记录的外推数据组成的数据集,有效地诊断PD。实验测试的结果表明,一种升压决策树,该决策树是由渐变提升的回归树制成的集合模型,是在数据上使用的最佳模型,精度得分为91-95 %。还通过基于滤波器的特征检测发现,最强的加权特征是Spreadl,Spare2和PPE,语音录制中的所有三个非线性测量。这些发现可以应用于PD,其他电机障碍,甚至声学生物识别性。

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