Machine Learning Laboratory, Berlin Institute of Technology, D-10587 Berlin, Germany. DFG Research Training Group 'Sensory Computation in Neural Systems' (GRK 1589/1), D-10587 Berlin, Germany.
J Neural Eng. 2013 Oct;10(5):056003. doi: 10.1088/1741-2560/10/5/056003. Epub 2013 Jul 31.
Assessing speech quality perception is a challenge typically addressed in behavioral and opinion-seeking experiments. Only recently, neuroimaging methods were introduced, which were used to study the neural processing of quality at group level. However, our electroencephalography (EEG) studies show that the neural correlates of quality perception are highly individual. Therefore, it became necessary to establish dedicated machine learning methods for decoding subject-specific effects.
The effectiveness of our methods is shown by the data of an EEG study that investigates how the quality of spoken vowels is processed neurally. Participants were asked to indicate whether they had perceived a degradation of quality (signal-correlated noise) in vowels, presented in an oddball paradigm.
We find that the P3 amplitude is attenuated with increasing noise. Single-trial analysis allows one to show that this is partly due to an increasing jitter of the P3 component. A novel classification approach helps to detect trials with presumably non-conscious processing at the threshold of perception. We show that this approach uncovers a non-trivial confounder between neural hits and neural misses.
The combined use of EEG signals and machine learning methods results in a significant 'neural' gain in sensitivity (in processing quality loss) when compared to standard behavioral evaluation; averaged over 11 subjects, this amounts to a relative improvement in sensitivity of 35%.
评估语音质量感知是行为和意见寻求实验中通常解决的挑战。直到最近,才引入了神经影像学方法,用于在群体水平上研究质量的神经处理。然而,我们的脑电图 (EEG) 研究表明,质量感知的神经相关性具有高度个体性。因此,有必要为解码特定于个体的效果建立专门的机器学习方法。
我们的方法的有效性通过一项研究语音元音质量的神经处理的 EEG 研究的数据来证明。参与者被要求指示他们是否感知到元音质量(与信号相关的噪声)下降,以奇数范式呈现。
我们发现 P3 幅度随噪声的增加而减弱。单次试验分析表明,这部分是由于 P3 分量的抖动增加所致。一种新的分类方法有助于检测到在感知阈值处可能无意识处理的试验。我们表明,这种方法揭示了神经命中和神经错过之间的一个非平凡的混杂因素。
与标准行为评估相比,脑电图信号和机器学习方法的结合使用导致灵敏度(在处理质量损失方面)有显著的“神经”提高;平均 11 个受试者,这相当于灵敏度提高了 35%。