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Addressing voice recording replications for tracking Parkinson's disease progression

机译:解决追踪帕金森病进展的录音复制

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摘要

Tracking Parkinson's disease symptom severity by using characteristics automatically extracted from voice recordings is a very interesting and challenging problem. In this context, voice features are automatically extracted from multiple voice recordings from the same subjects. In principle, for each subject, the features should be identical at a concrete time, but the imperfections in technology and the own biological variability result in nonidentical replicated features. The involved within-subject variability must be addressed since replicated measurements from voice recordings can not be directly used in independence-based pattern recognition methods as they have been routinely used through the scientific literature. Besides, the time plays a key role in the experimental design. In this paper, for the first time, a Bayesian linear regression approach suitable to handle replicated measurements and time is proposed. Moreover, a version favoring the best predictors and penalizing the worst ones is also presented. Computational difficulties have been avoided by developing Gibbs sampling-based approaches.
机译:跟踪帕金森的疾病症状严重程度自动从语音录制中提取的特性是一个非常有趣和具有挑战性的问题。在此上下文中,语音功能从来自同一主题的多个语音录制自动提取。原则上,对于每个受试者,该特征在具体时间应该是相同的,但技术的缺陷和自身的生物可变性导致非识别的复制特征。必须解决涉及的对象内变异性,因为从语音录制的复制测量不能直接用于基于独立的模式识别方法,因为它们已经经常通过科学文献使用。此外,时间在实验设计中发挥着关键作用。本文首次采用适合处理复制的测量和时间的贝叶斯线性回归方法。此外,还提出了一个有利于最佳预测因子和惩罚最坏的版本的版本。通过开发基于GIBBS采样的方法,已经避免了计算困难。

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