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A multi-task learning approach for the extraction of single-trial evoked potentials

机译:用于提取单次审判诱发电位的多任务学习方法

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摘要

Evoked potentials (EPs) are of great interest in neuroscience, but their measurement is difficult as they are embedded in background spontaneous electroencephalographic (EEG) activity which has a much larger amplitude. The widely used averaging technique requires the delivery of a large number of identical stimuli and yields only an " average" EP which does not allow the investigation of the possible variability of single-trial EPs. In the present paper, we propose the use of a multi-task learning method (MTL) for the simultaneous extraction of both the average and the N single-trial EPs from N recorded sweeps. The technique is developed within a Bayesian estimation framework and uses flexible stochastic models to describe the average response and the N shifts between the single-trial EPs and this average. Differently from other single-trial estimation approaches proposed in the literature, MTL can provide estimates of both the average and the N single-trial EPs in a single stage. In the present paper, MTL is successfully assessed on both synthetic (100 simulated recording sessions with N=20 sweeps) and real data (11 subjects with N=20 sweeps) relative to a cognitive task carried out for the investigation of the P300 component of the EP.
机译:诱发电位(EPs)在神经科学中引起了极大的兴趣,但是由于它们被嵌入到背景自发性脑电图(EEG)活动中,因此具有很大的幅度,因此很难对其进行测量。广泛使用的平均技术需要传递大量相同的刺激,并且仅产生“平均” EP,这不允许研究单次试验EP的可能变异性。在本文中,我们建议使用多任务学习方法(MTL)从N个记录的扫描中同时提取平均EP和N个单项EP。该技术是在贝叶斯估计框架内开发的,并使用灵活的随机模型来描述平均响应以及单次尝试EP与该平均值之间的N位移。与文献中提出的其他单项评估方法不同,MTL可以在单个阶段中提供平均和N个单项EP的评估。在本文中,相对于为研究P300组件的P300成分而执行的认知任务,在合成(100次模拟记录会话,每次扫描N = 20次)和真实数据(11个对象,N = 20次扫描)上成功地评估了MTL。 EP。

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