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Early diagnosis of Parkinson's disease via machine learning on speech data

机译:通过语音数据的机器学习对帕金森氏病进行早期诊断

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Using two distinct data sets (from the USA and Germany) of healthy controls and patients with early or mild stages of Parkinson's disease, we show that machine learning tools can be used for the early diagnosis of Parkinson's disease from speech data. This could potentially be applicable before physical symptoms appear. In addition, we show that while the training phase of machine learning process from one country can be reused in the other; different features dominate in each country; presumably because of languages differences. Three results are presented: (i) separate training and testing by each country (close to 85% range); (ii) pooled training and testing (about 80% range) and (iii) cross-country (training in one and testing in the other) (about 75% ranges). We discovered that different feature sets were needed for each country (language).
机译:使用健康对照和帕金森氏病早期或轻度患者的两个不同数据集(来自美国和德国),我们证明了机器学习工具可用于根据语音数据对帕金森氏病进行早期诊断。这可能在出现物理症状之前适用。此外,我们表明,虽然来自一个国家的机器学习过程的培训阶段可以在另一个国家重复使用;每个国家都有不同的特征;大概是因为语言差异。提出了三个结果:(i)每个国家分别进行培训和测试(范围接近85%); (ii)集中训练和测试(大约80%的范围)和(iii)越野训练(一个训练和另一个测试)(大约75%的范围)。我们发现每个国家(语言)需要不同的功能集。

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