Origin, significance, and interpretation of EEG

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  • čas přidán 23. 07. 2024
  • This video lesson is part of a complete course on neuroscience time series analyses.
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Komentáře • 22

  • @SubhashPratap
    @SubhashPratap Před 3 lety +8

    Well explained, Your way of teaching is excellent. Many Thanks .

  • @marziyehzarei3278
    @marziyehzarei3278 Před 8 měsíci +1

    I wish I had met this channel earlier. it is very helpful. Thanks a lot 🌹

  • @tobybromfield3664
    @tobybromfield3664 Před 4 lety

    In a other video you said you mentioned phase locking and evoked and induced activity ? I didn't find this. I'm very confused on the meanings and differences between these concepts.

  • @tuongminhquoc
    @tuongminhquoc Před 4 lety

    I really love your videos! Thank you!

  • @dipankardey1044
    @dipankardey1044 Před rokem

    very clear to a novice in computational neuroscience. Thanks a ton for your videos

  • @EEGucation
    @EEGucation Před 3 lety

    I enjoyed the lecture. I suspect you used an active reference on the EEG sample shown. The slow waves are identical on all channels probably related to contamination from the referential electrode.

    • @mikexcohen1
      @mikexcohen1  Před 3 lety +1

      That's an old screenshot, but I believe the reference was linked mastoids.

  • @mikhailreshetnikov3236

    Thank you very much for your videos!
    I believe there's a misunderstanding on the EEG advantages slide, as you said that in your lecture EEG = MEG, although "temporal resolution and precision" is an advantage of EEG, whereas MEG has the spatial resolution advantage.

  • @mojganehsanifard4876
    @mojganehsanifard4876 Před 3 lety

    amazing! thank you

  • @TheKrzyniu
    @TheKrzyniu Před 4 lety

    Thank you!!!

  • @muhammadadeelkhan3188
    @muhammadadeelkhan3188 Před 4 lety +1

    Thanks Mike for the nice explanations. I am curious that this course will cover the ERP and ERSP analysis or not? Besides that kindly recommend me the Machine Learning course that is most related to the physiological data. Thanks in advance!

    • @mikexcohen1
      @mikexcohen1  Před 4 lety +2

      ERSP yes. Much of the course is focused on spectral and time-frequency analyses. I do cover ERPs briefly, but only in terms of computing them, not in terms of interpreting the peaks.

  • @sirabhop.s
    @sirabhop.s Před 4 lety

    Thank you

  • @andrassarkozy1157
    @andrassarkozy1157 Před rokem

    anyonen please could share the actual sample dataset what he is working with? THX!

    • @mikexcohen1
      @mikexcohen1  Před rokem

      Hi Andras. I do share the data I use for teaching, but the screenshots in this video are just for illustration. I made these slides a long time ago and don't even know which data I used... anyway, you can check out my ANTS video series, and the data and code are on my github site.

  • @sivatejaswi5484
    @sivatejaswi5484 Před rokem

    Thank you sir 🙏

  • @sivatejaswi5484
    @sivatejaswi5484 Před rokem

    Sir will you please provide data sets for EEG signals. It is very much use full for my research .

    • @mikexcohen1
      @mikexcohen1  Před rokem

      I provide a few for my books and courses. But you can get tons of free EEG data from online data repositories. Some googling will lead you to them.