4.7 Article

ARTIST: A fully automated artifact rejection algorithm for single-pulse TMS-EEG data

期刊

HUMAN BRAIN MAPPING
卷 39, 期 4, 页码 1607-1625

出版社

WILEY
DOI: 10.1002/hbm.23938

关键词

artifact rejection; electroencephalogram; transcranial magnetic stimulation

资金

  1. Big Idea in Neuroscience research funds from the Stanford Neurosciences Institute
  2. National Key Research and Development Plan of China [2017YFB1002505]
  3. National Natural Science Foundation of China [61403144, 61633010, 91420302]
  4. Tip-Top Scientific and Technical Innovative Youth Talents of Guangdong Special Support Program [2015TQ01X361]
  5. Alpha Omega Alpha Postgraduate Research Award
  6. Stanford Society of Physician Scholars Collaborative Research Fellowship

向作者/读者索取更多资源

Concurrent single-pulse TMS-EEG (spTMS-EEG) is an emerging noninvasive tool for probing causal brain dynamics in humans. However, in addition to the common artifacts in standard EEG data, spTMS-EEG data suffer from enormous stimulation-induced artifacts, posing significant challenges to the extraction of neural information. Typically, neural signals are analyzed after a manual time-intensive and often subjective process of artifact rejection. Here we describe a fully automated algorithm for spTMS-EEG artifact rejection. A key step of this algorithm is to decompose the spTMS-EEG data into statistically independent components (ICs), and then train a pattern classifier to automatically identify artifact components based on knowledge of the spatio-temporal profile of both neural and artefactual activities. The autocleaned and hand-cleaned data yield qualitatively similar group evoked potential waveforms. The algorithm achieves a 95% IC classification accuracy referenced to expert artifact rejection performance, and does so across a large number of spTMS-EEG data sets (n=90 stimulation sites), retains high accuracy across stimulation sites/subjects/populations/montages, and outperforms current automated algorithms. Moreover, the algorithm was superior to the artifact rejection performance of relatively novice individuals, who would be the likely users of spTMS-EEG as the technique becomes more broadly disseminated. In summary, our algorithm provides an automated, fast, objective, and accurate method for cleaning spTMS-EEG data, which can increase the utility of TMS-EEG in both clinical and basic neuroscience settings.

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