MEG Decoding Across Subjects
Emanuele Olivetti, Seyed Mostafa Kia, Paolo Avesani

TL;DR
This paper addresses the challenge of decoding brain activity across different subjects in MEG experiments by applying transfer learning and ensemble methods, leading to more accurate group-level predictions.
Contribution
It formally characterizes the decoding across subjects problem as transductive transfer learning and introduces an ensemble approach to improve classifier stability and accuracy.
Findings
Proposed method outperforms standard approaches in accuracy
Ensemble learning enhances classifier stability across subjects
Transfer learning effectively accounts for inter-subject variability
Abstract
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 magnetoencephalographic (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…
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Taxonomy
TopicsNeural dynamics and brain function · Blind Source Separation Techniques · Functional Brain Connectivity Studies
