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===== WEDNESDAY 18th ===== . 5:30 – [''Global''] Reproductible processing pipelines and multiverses 8:30 – '''Registration & Continental Breakfast ''' 9:15 – Richard Leahy (University of Southern California): Opening of the LA Garden 9:30 – David Shattuck (University of California, Los Angeles): Introduction and Overview of Brainsuite |
= Los Angeles, CA, USA: October 18th, 2023 = <<HTML(<img align="right" alt="cutting_lax_logo.png" class="attachment" src="/brainstorm/WorkshopLA2023?action=AttachFile&do=get&target=cutting_lax_logo.png" title="cutting_lax_logo.png" style="width: 35%;">)>> |
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10:15 ''Coffee Break'' | As part of the [[https://cuttinggardens2023.org/|CuttingGardens2023 conference]]. <<BR>> |
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10:30 – Anand Joshi (University of Southern California): Brainsuite Demo & Discussion | The Los Angeles (LA) Garden will be held at the Ming Hsieh Department of Electrical and Computer Engineering (EEB) at the University of Southern California (USC). This event is scheduled to be an in-person gathering, but there will also be an option to broadcast it to all Gardens. |
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11:00 – Richard Leahy (University of Southern California): Introduction to EEG/MEG Analysis | The LA Garden will span across two days. On the first day, we have scheduled a Brainstorm workshop and a Brainsuite Demo. The second day will feature local speakers presenting cutting-edge methods on Deep Neural Networks and Machine learning techniques applied to EEG data. |
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11:45 – Cameron Sacks (Wearable Sensing): EEG Live Demo & Discussion | Furthermore, we are arranging a live stream of the Global Program, allowing anyone interested to join remotely. External attendees are more than welcome to participate, but prior registration will be required for attendance. |
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12:00 – ''Lunch Break'' | == WEDNESDAY 18th == '''5:30 –''' [''Global''] Reproductible processing pipelines and multiverses |
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12:30–17:30 – [[https://neuroimage.usc.edu/brainstorm/WorkshopLA2023|Tutorial – Hands-On Brainstorm]] | '''8:30 – '''[[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/Local-Program_LA.pdf|Registration & Continental Breakfast]] |
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. Raymundo Cassani (McGill University) Takfarinas Medani (University of Southern California) ''12:30–13:00 '' Onsite assistance in installing the material for the training session |
'''9:15 – Richard Leahy''' (University of Southern California): |
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'' 13:00–13:30 ''Introduction to Brainstorm (lecture) | ''' [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/WelcomeCuttingEEGLAGarden__intro_leahy.pdf|Opening of the LA Garden]]''' |
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'' 13:30–14:35 ''Loading anatomy and recordings | '''9:30 – David Shattuck '''(University of California, Los Angeles): |
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'' Set anatomy '' | . Introduction and Overview of Brainsuite |
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'' Review Raw recordings'' | '''10:15''' ''Coffee Break'' |
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'' Import events'' | '''10:30 – Anand Joshi''' (University of Southern California): |
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'' 14:35–15:35 ''Pre-processing | . [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/BrainSuiteToolsGardens_joshi.pdf|Brainsuite Tools & Discussion]] |
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'' Frequency filters '' | '''11:00 – Richard Leahy''' (University of Southern California): |
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'' Artefact detections'' | . [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/BrainstormEEGOverviewCuttingGardens2023_leahy.pdf|Introduction to EEG/MEG Analysis]] |
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'' Artifact correction with SSP'' | '''11:45 –''' '''Cameron Sacks''' (Wearable Sensing): |
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'' 15:30–15:45 Coffee Break'' | . [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/wearableSensig_Cameron_compressed.pdf|EEG Live Demo & Discussion]] |
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'' 15:45–16:20 Analysis sensor level'' | '''12:00 – ''Lunch Break'' ''' |
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'' Import recording'''' <<BR>>'''''''' ''' | '''12:30–17:30 ''' – [[https://neuroimage.usc.edu/brainstorm/WorkshopLA2023|Tutorial – Hands-On Brainstorm]] |
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''''' Review trials'' ''' | . '''Raymundo Cassani '''(McGill University) &''' Takfarinas Medani '''(University of Southern California) . |
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''''' Trial averages'' ''' | '''12:30–13:00''' Onsite assistance in installing the material for the training session |
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''''' 16:20–16:55 Source estimation'' ''' | '''13:00–13:30 '''[[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/2023_lax_tm_bst.pdf|Introduction to Brainstorm (lecture)]] - [[https://www.youtube.com/watch?v=_h-X6GfxmpE|Youtube Video]] - |
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''''' Forward Model (aka Head model)'''''''''' ''''' | '''13:30–14:35 Loading anatomy and recordings ''' |
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''' Noise covariance matrix'' ''''' | . Set anatomy |
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''' Source estimation (from EEG and MEG recording)'' ''''' | . Review Raw recordings |
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''' 16:55–17:15 Analysis source level'' ''''' | . Import events |
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''' Cortex parcellations: Atlases and scouts'''''' ''' | '''14:35–15:35 Pre-processing ''' |
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''''' Noise covariance matrix'' ''' | . Frequency filters |
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''''' Source estimation (from EEG and MEG recording)'''''''' '' | . Artefact detections |
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===== THURSDAY 19th ===== '' '' |
. Artifact correction with SSP |
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5:30 – [''Global''] Deep Neural Network (DNN) analysis for MEEG data | '''15:30–15:45 Coffee Break ''' |
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8:30 – ''' Continental Breakfast''' | '''15:45–16:20 Analysis sensor level ''' |
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9:00 – 17:30 – [''Local''] Machine Learning and EEG | . Import recording'' '' |
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. Session 1: Computational Tools and Pipelines for ML analysis; session chair: Richard Leahy . 9:00–9:25- Arnaud Delorme (University of California, San Diego): “''Machine learning and the BIDS EEG data format”'' 9:25–9:50- Tim Mullen (Intheon Labs):'' “Creating Deployable Workflows for EEG Signal Processing and ML/DL Using NeuroPype”'' 9:50–10:15''– ''Ivan Tashev (Microsoft Research)'': “Workload estimation using brain- and bio- signals for adaptive training system”'' 10:15–10:40''– ''Bin He (Carnegie Mellon University)'': “AI/ML Enhances Dynamic Brain Imaging from EEG/MEG”'' '''Coffee ''''''Break (10:40–11:00)''' Session 2: Self Supervised Leaning; session chair: Takfarinas Medani . 11:00–11:25''– ''Dominique Duncan (University of Southern California)'': “Unsupervised Multivariate Time-Series Transformers for Seizure Identification on EEG”'' 11:25–11:50''– ''Wenhui Cui (University of Southern California)'': “Neuro-GPT: A Foundation Model Pretrained on Large-Scale EEG Data”'' |
. ''Review trials '' |
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''' Lunch ''''''Break (12:00–13:00)''' | . ''Trial averages '' |
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''' Session 3: Machine Learning for brain computer interfaces; session chair: Shrikanth Narayanan''' | '''''16:20–16:55 Source estimation ''' '' |
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. 13:00–13:30- Alexander Silva (University of California, San Francisco): “A high performance neuroprosthesis for speech decoding and avatar control''“'' 13:30–14:00''– ''Maryam Shanechi (University of Southern California)'': “AI-powered next-generation neurotechnologies”'' 14:00–14:30''– ''Ludovic Bellier (University of California, Berkeley) '': “Reconstructing Pink Floyd from human auditory cortex”'' |
. ''Forward Model (aka Head model) '' |
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''' Panel Discussion''' | . ''Noise covariance matrix '' |
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. 14:40–15:10''– Moderator: ''Shrikanth Narayanan and Kristina Lerman (University of Southern California)'': “The Role of Foundational Models in Spontaneous and Event Related EEG“'' | . ''Source estimation (from EEG and MEG recording) '' |
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''' Coffee ''''''Break(15:10–15:40)''' | '''''16:55–17:15 Analysis source level ''' '' |
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''' Session 4: Machine Learning for neurological disorders; session chair: Kristina Lerman''' | . ''Cortex parcellations: Atlases and scouts '' |
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. 15:40–16:05''– ''Srikantan Nagarajan (University of California, San Francisco)'': “Machine learning algorithms for electromagnetic brain imaging in dementia”'' 16:05–16:30''– ''Dimitrios Pantazis (Massachusetts Institute of Technology)'': “Graph representation learning of MEG signals opens a window to aging trajectories and Alzheimer’s disease”'' 16:30–16:55''– ''Jason da Silva Castanheira (McGill University)'': “Inter-individual differences in neurophysiology vary with age and disease”'' |
. ''Noise covariance matrix '' |
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''' Closing and final remarks''' | . ''Source estimation (from EEG and MEG recording) '' == THURSDAY 19th == '''5:30 –''' [''Global''] Deep Neural Network (DNN) analysis for MEEG data '' '' '''8:30 –''' ''' Continental Breakfast''' '' '' '''9:00 – 17:30 –''' [''Local''] Machine Learning and EEG '' '' '''Session 1: Computational Tools and Pipelines for ML analysis; session chair: Richard Leahy.'' '' ''' . '''9:00–9:25- Arnaud Delorme '''(University of California, San Diego): “''[[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/BIDS_ml_usc_delorme.pdf|Machine learning and the BIDS EEG data format]]”'' . '''9:25–9:50- Tim Mullen''' (Intheon Labs):'' '' . ''“Creating Deployable Workflows for EEG Signal Processing and ML/DL Using NeuroPype”'' '' '' . '''9:50–10:15''– ''Ivan Tashev''' (Microsoft Research)'':'' . '' [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/2023_Garden_WorkloadEstimation_IvanTashev_final.pdf|“Workload estimation using brain- and bio- signals for adaptive training system”]]'' '' '' . '''10:15–10:40''– ''Bin He''' (Carnegie Mellon University)'':'' . '' “AI/ML Enhances Dynamic Brain Imaging from EEG/MEG”'' . . '''Coffee '''''' Break (10:40–11:00)''' '' '' '''Session 2: Self Supervised Leaning; session chair: Takfarinas Medani '' '' ''' . '''11:00–11:25''– ''Dominique Duncan''' (University of Southern California)'':'' . '' [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/Cutting_EEG_2023_Duncan.pdf|“Unsupervised Multivariate Time-Series Transformers for Seizure Identification on EEG”]]'' '' '' . '''11:25–11:50''– ''Wenhui Cui '''(University of Southern California)'':'' . '' [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/eeg_foundation_model_talk_Cui.pdf|“Neuro-GPT: A Foundation Model Pretrained on Large-Scale EEG Data”]]'' Lunch Break (12:00–13:00)''' '' '' ''' '''Session 3: Machine Learning for brain computer interfaces; session chair: Shrikanth Narayanan '' '' ''' . '''13:00–13:30- Alexander Silva '''(University of California, San Francisco): . [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/USCsymposium_Alex_Silva.pdf|“A high performance neuroprosthesis for speech decoding and avatar control]]''[[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/USCsymposium_Alex_Silva.pdf|“]] '' . '''''13:30–14:00''''''''– ''Maryam Shanechi '''''(University of Southern California)'':'' '' ''' ''''' . ''“AI-powered next-generation neurotechnologies”'' '' '' '' ''' ''''' . '''14:00–14:30''– ''Ludovic Bellier '(University of California, Berkeley) '': '' '' ''''' . [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/CuttingEEG20231029_LBellier.pdf|“Reconstructing Pink Floyd from human auditory cortex”]] '''Panel Discussion'' ''''' . '''14:40–15:10''– Moderator: ''Shrikanth Narayanan and Kristina Lerman''' (University of Southern California)'':'' '' ''' ''''' . ''“The Role of Foundational Models in Spontaneous and Event-Related EEG“'' '' '' '' ''' ''''' Coffee Break(15:10–15:40) '''Session 4: Machine Learning for neurological disorders; session chair: Kristina Lerman''''' '' . 15:40–16:05''– ''Srikantan Nagarajan '(University of California, San Francisco)'':'' '' '' . ''[[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/USCTalk_Oct2023_v3_Sri.pdf|“Machine learning algorithms for electromagnetic brain imaging in dementia”]]'' '' '' '' '' . '''16:05–16:30''''''''– ''Dimitrios Pantazis''''' (Massachusetts Institute of Technology)'':'' '' ''' ''' . [[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/CuttingEEG_GardenLA2023_Pantazis.pdf|“Graph representation learning of MEG signals opens a window to aging trajectories and Alzheimer’s disease”]] . '''''16:30–16:55''– ''Jason da Silva Castanheira (McGill University)'':''''' '' ''' ''' . ''[[https://neuroimage.usc.edu/resources/CuttingEEG2023finalSlides/Cutting_Gardens_daSilvaCastanheira_short.pdf|“Inter-individual differences in neurophysiology vary with age and disease”]] '' ''' ''' '''Closing and final remarks''' |
Los Angeles, CA, USA: October 18th, 2023
As part of the CuttingGardens2023 conference.
The Los Angeles (LA) Garden will be held at the Ming Hsieh Department of Electrical and Computer Engineering (EEB) at the University of Southern California (USC). This event is scheduled to be an in-person gathering, but there will also be an option to broadcast it to all Gardens.
The LA Garden will span across two days. On the first day, we have scheduled a Brainstorm workshop and a Brainsuite Demo. The second day will feature local speakers presenting cutting-edge methods on Deep Neural Networks and Machine learning techniques applied to EEG data.
Furthermore, we are arranging a live stream of the Global Program, allowing anyone interested to join remotely. External attendees are more than welcome to participate, but prior registration will be required for attendance.
WEDNESDAY 18th
5:30 – [Global] Reproductible processing pipelines and multiverses
8:30 – Registration & Continental Breakfast
9:15 – Richard Leahy (University of Southern California):
9:30 – David Shattuck (University of California, Los Angeles):
- Introduction and Overview of Brainsuite
10:15 Coffee Break
10:30 – Anand Joshi (University of Southern California):
11:00 – Richard Leahy (University of Southern California):
11:45 – Cameron Sacks (Wearable Sensing):
12:00 – Lunch Break
12:30–17:30 – Tutorial – Hands-On Brainstorm
Raymundo Cassani (McGill University) & Takfarinas Medani (University of Southern California)
12:30–13:00 Onsite assistance in installing the material for the training session
13:00–13:30 Introduction to Brainstorm (lecture) - Youtube Video -
13:30–14:35 Loading anatomy and recordings
- Set anatomy
- Review Raw recordings
- Import events
14:35–15:35 Pre-processing
- Frequency filters
- Artefact detections
- Artifact correction with SSP
15:30–15:45 Coffee Break
15:45–16:20 Analysis sensor level
Import recording
Review trials
Trial averages
16:20–16:55 Source estimation
Forward Model (aka Head model)
Noise covariance matrix
Source estimation (from EEG and MEG recording)
16:55–17:15 Analysis source level
Cortex parcellations: Atlases and scouts
Noise covariance matrix
Source estimation (from EEG and MEG recording)
THURSDAY 19th
5:30 – [Global] Deep Neural Network (DNN) analysis for MEEG data
8:30 – Continental Breakfast
9:00 – 17:30 – [Local] Machine Learning and EEG
Session 1: Computational Tools and Pipelines for ML analysis; session chair: Richard Leahy.
9:00–9:25- Arnaud Delorme (University of California, San Diego): “Machine learning and the BIDS EEG data format”
9:25–9:50- Tim Mullen (Intheon Labs):
“Creating Deployable Workflows for EEG Signal Processing and ML/DL Using NeuroPype”
9:50–10:15– Ivan Tashev (Microsoft Research):
“Workload estimation using brain- and bio- signals for adaptive training system”
10:15–10:40– Bin He (Carnegie Mellon University):
“AI/ML Enhances Dynamic Brain Imaging from EEG/MEG”
Coffee Break (10:40–11:00)
Session 2: Self Supervised Leaning; session chair: Takfarinas Medani
11:00–11:25– Dominique Duncan (University of Southern California):
“Unsupervised Multivariate Time-Series Transformers for Seizure Identification on EEG”
11:25–11:50– Wenhui Cui (University of Southern California):
“Neuro-GPT: A Foundation Model Pretrained on Large-Scale EEG Data”
Lunch Break (12:00–13:00)
Session 3: Machine Learning for brain computer interfaces; session chair: Shrikanth Narayanan
13:00–13:30- Alexander Silva (University of California, San Francisco):
“A high performance neuroprosthesis for speech decoding and avatar control“
13:30–14:00– Maryam Shanechi (University of Southern California):
“AI-powered next-generation neurotechnologies”
14:00–14:30– Ludovic Bellier '(University of California, Berkeley) :
Panel Discussion
14:40–15:10– Moderator: Shrikanth Narayanan and Kristina Lerman (University of Southern California):
“The Role of Foundational Models in Spontaneous and Event-Related EEG“
Coffee Break(15:10–15:40)
Session 4: Machine Learning for neurological disorders; session chair: Kristina Lerman
15:40–16:05– Srikantan Nagarajan '(University of California, San Francisco):
“Machine learning algorithms for electromagnetic brain imaging in dementia”
16:05–16:30– Dimitrios Pantazis (Massachusetts Institute of Technology):
16:30–16:55– Jason da Silva Castanheira (McGill University):
“Inter-individual differences in neurophysiology vary with age and disease”
Closing and final remarks