Open HussainAther opened 2 years ago
Hi @brainhackorg/project-monitors my project is ready!
For Twitter:
Interested in harnessing the power of AI and finding solutions to problems in precision medicine? Join our team during Brainhack 2021 where we use the Deep Visualization Toolbox to do just that! Gain skills in simulation and data analysis that can be applied anywhere.
A great article on explainable AI: https://towardsdatascience.com/opening-the-black-box-an-explanation-of-explainable-ai-7024d8b1f6b3
From fig. 1 here: (https://www.researchgate.net/publication/337930045_Explainable_Artificial_Intelligence_for_Neuroscience_Behavioral_Neurostimulation/figures?lo=1)
FIGURE 1 | An XAI-enabled closed-loop neurostimulation process can be described in four phases: (1) System-level recording of brain signals (e.g., spikes, LFPs, ECoG, EEG, neuromodulators, optical voltage/calcium indicators), (2) Multimodal fusion of neural data and dense behavioral/cognitive assessment measures. (3) XAI algorithm using unbiasedly discovered biomarkers to provide mechanistic explanations on how to improve behavioral/cognitive performance and reject stimulation artifacts. (4) Complex XAI-derived spatio-temporal brain stimulation patterns (e.g., TMS, ECT, DBS, ECoG, VNS, TDCS, ultrasound, optogenetics) that will validate the model and affect subsequent recordings. ADC, Analog to Digital Converter; AMP, Amplifier; CTRL, Control; DAC, Digital to Analog Converter; DNN, Deep Neural Network. XRay picture courtesy Ned T. Sahin. Diagram modified from Zhou et al. (2018).
Title
Using Explainable Artificial Intelligence (XAI) to create a real-time closed-loop stimulation
Leaders
Syed Hussain Ather (Twitter: @SHussainAther)
Collaborators
No response
Brainhack Global 2021 Event
BrainHack Toronto
Project Description
Like similar work in other fields (e.g., computer vision, ML, etc.) on established datasets, we propose a project to create a pipeline explainable artificial intelligence (XAI) on a neurostimulation experimental and theoretical procedure. Given input recording of brain signals from some source (EEG data most likely), there's research geared toward using existing or novel XAI techniques to a known neurostimulation paradigm to provide explanatory power to close-loop neurobehavioral modulation (e.g., counter-factual probes). We hope this can be a step toward more innovative future work in creating a real time, closed-loop stimulation for deep brain stimulation (DBS). We hope to use this pipeline in improving research that can be used to modulate neural activity in real time. These types of frameworks can be used to advance work in intelligent computational approaches able to sense, interpret, and modulate a large amount of data from behaviorally relevant neural circuits at the speed of thoughts.
The use of Artificial Intelligence and machine learning in basic research and clinical neuroscience is increasing. AI methods enable the interpretation of large multimodal datasets that can provide unbiased insights into the fundamental principles of brain function, potentially paving the way for earlier and more accurate detection of brain disorders and better-informed intervention protocols. Despite AI’s ability to create accurate predictions and classifications, in most cases, it lacks the ability to provide a mechanistic understanding of how inputs and outputs relate to each other. Explainable Artificial Intelligence (XAI) is a new set of techniques that attempts to provide such an understanding, here we report on some of these practical approaches.
Using one of these GUI tools (https://github.com/anguyen8/XAI-papers, most likely DeepVis), we hope to create a functioning pipeline that provides this explanatory power. Create a working model just like Figure 2. (https://www.frontiersin.org/files/Articles/490966/fnins-13-01346-HTML-r1/image_m/fnins-13-01346-g002.jpg)
Install them as required by Deep Visualization (https://github.com/yosinski/deep-visualization-toolbox) there are
Link to project repository/sources
https://github.com/HussainAther/XAI
Goals for Brainhack Global
Goal: Create a functional, working pipeline that follows the three steps (pre-modelling, modelling, and post-modelling steps) from Figure 2 of Fellous et al., (https://www.frontiersin.org/files/Articles/490966/fnins-13-01346-HTML-r1/image_m/fnins-13-01346-g002.jpg)
Good first issues
Issue one:
issue two:
Communication channels
https://mattermost.brainhack.org/brainhack/channels/brainhack-toronto
Skills
Onboarding documentation
No response
What will participants learn?
I imagine that, at Brainhack 2021, like other or previous Brainhacks, we all learn skills in collaboration, organization, communication, team and project management, and other areas that can benefit any researcher interested in AI or similar fields related to programming and data.
Data to use
No response
Number of collaborators
3
Credit to collaborators
Project contributors are listed on the project README using all-contributors github bot.
Image
Leave this text if you don't have an image yet.
Type
pipeline_development
Development status
0_concept_no_content
Topic
data_visualisation
Tools
other
Programming language
Python
Modalities
fMRI
Git skills
0_no_git_skills
Anything else?
No response
Things to do after the project is submitted and ready to review.
Hi @brainhackorg/project-monitors my project is ready!