跨主体脑磁图解码

E. Olivetti, S. M. Kia, P. Avesani
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引用次数: 36

摘要

脑解码是一种神经成像实验的数据分析范式,它基于从同时发生的大脑活动中预测呈现给受试者的刺激。为了在组水平上进行推理,一种简单但有时不成功的方法是在一组受试者的试验上训练分类器,然后在来自新受试者的未见试验上对其进行测试。这种极端的困难与不同学科的结构和功能差异有关。我们称这种方法为跨主题解码。在这项工作中,我们解决了脑磁图(MEG)实验的跨主题解码问题,我们提供了以下贡献:首先,我们正式描述了这个问题,并表明它属于机器学习的子领域,称为传导转移学习(TTL)。其次,我们建议使用一种简单的TTL技术来解释训练数据和测试数据之间的差异。第三,我们建议使用集成学习,特别是堆叠泛化,来解决训练数据中不同主题的可变性,目的是产生更稳定的分类器。在一个包含16个受试者的面部与乱抢任务的MEG数据集上,我们比较了不模拟受试者差异的标准方法和结合TTL和集成学习的建议方法。我们表明,所提出的方法始终比标准方法更准确。
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MEG decoding across subjects
Brain decoding is a data analysis paradigm for neuroimaging experiments that is based on predicting the stimulus presented to the subject from the concurrent brain activity. In order to make inference at the group level, a straightforward but sometimes unsuccessful approach is to train a classifier on the trials of a group of subjects and then to test it on unseen trials from new subjects. The extreme difficulty is related to the structural and functional variability across the subjects. We call this approach decoding across subjects. In this work, we address the problem of decoding across subjects for magnetoen-cephalographic (MEG) experiments and we provide the following contributions: first, we formally describe the problem and show that it belongs to a machine learning sub-field called transductive transfer learning (TTL). Second, we propose to use a simple TTL technique that accounts for the differences between train data and test data. Third, we propose the use of ensemble learning, and specifically of stacked generalization, to address the variability across subjects within train data, with the aim of producing more stable classifiers. On a face vs. scramble task MEG dataset of 16 subjects, we compare the standard approach of not modelling the differences across subjects, to the proposed one of combining TTL and ensemble learning. We show that the proposed approach is consistently more accurate than the standard one.
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