Machine Learning SIG: Difference between revisions

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==Relevant Papers==
==Relevant Papers==


[[Intro1 : https://direct.mit.edu/jocn/article-abstract/29/4/677/28605/Decoding-Dynamic-Brain-Patterns-from-Evoked?redirectedFrom=fulltext]]
[https://direct.mit.edu/jocn/article-abstract/29/4/677/28605/Decoding-Dynamic-Brain-Patterns-from-Evoked?redirectedFrom=fulltext Intro1]


[[Intro2 : https://hal.archives-ouvertes.fr/hal-01848442/document ]]
[https://hal.archives-ouvertes.fr/hal-01848442/document Intro2]


[[Language : https://www.biorxiv.org/content/10.1101/2020.04.04.025684v2]]
[https://www.biorxiv.org/content/10.1101/2020.04.04.025684v2 Language Decoding]

Revision as of 16:03, 8 November 2021

Objectives

Advance general knowledge of machine learning techniques within the MEG community. Discuss journal articles, replicate techniques on NIH data, advance ML techniques at NIH.

Format

  1. Specific Projects (Weekly)
    1. Code Review
    2. Project updates
    3. Questions and Answers Clinic for users
  2. General (Monthly)
    1. Journal Club
    2. Hackathons – implement novel technique from JC with provided data
    3. Tutorial Workshops - instruct worked out examples with provided code/data
    4. General ML training
      1. Parameter tuning
      2. Model optimization
      3. Techniques
      4. Toolbox tutorials (Scikit-learn / keras)

Analysis Types

  1. Decoding
    1. Multivariate time series classification between conditions
    2. Realtime - Brain computer interface / neurofeedback
  2. Subject classification –
    1. eg. Healthy Control vs Major Depressive Disorder
    2. What are the significant features (brain regions, Hz)
  3. Prediction of future condition / Biomarkers
    1. What signals predict conversion from mild cognitive impairment to Alzheimer
    2. What signals predict recovery from traumatic brain injury
    3. What signals predict poor outcome for epilepsy surgery
  4. Multimodal Integration
    1. Timing derived from MEG / localization from fMRI – joint ICA (??)
    2. Signal comparison between naturalistic viewing data MEG/fMRI
  5. Signal classification
    1. Artifact
    2. Signal of interest – Spike detection for epilepsy
    3. Signal/sequence predicts correct response
  6. Temporal learning models – RNN DL / markov model
    1. Inferences from deep learning models
    2. CNN on images vs. CNN of brain responses to same images

Preliminary Resources

MNE Python Decoding MNE Python Decoding at Source
SciKit Learn
Keras

Relevant Papers

Intro1

Intro2

Language Decoding