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Neural correlates and subjective experiences in meditation vs psychedelics, including ketamine (Preliminary Lit Review)

A preliminary, evolving review of the literature. (Ongoing Draft) | Psychedelic Institute of Mental Health & Family Therapy

Psychedelic Institute of Mental Health & Family Therapy
Yesterday I attended a very interesting seminar with professors Alessandra Bertoldo, Alessandro Chiusi and Marco Zorzi from #unipd , from departments of information engineering, psychology, and neuroscience.
It was mostly about popularizing #fMRI and the clinical potential of such studies.
My mind was captured by two things, #effectiveconnectivity and the use of neural networks for #FunctionalConnectivity to symptoms mapping.
The core for me was: they are not talking about using deep learning, or the most apt deep learning architecture for the problems.
For EffectiveC., they were speaking about dynamical systems modeling (which is great!); for functional connectivity they cited convolutional autoencoders on the image or matrix of functional connectivity, which I really don't like unless number of channels and more importantly kernel dimension are discussed.
Overall, we are dealing with directed and undirected weighted graphs respectively, and we have architectures for those
📃The connectivity patterns of frontal eye field and inferior frontal junction differentiate their separate roles in spatial and non-spatial top-down attention, report #CIMeC researchers Orhan Soyuhos and Daniel Baldaufb in an #MEG/#MRI study in the European Journal of Neuroscience #Brainconnectivity #neuraloscillations #brainrhythms #functionalconnectivity#FEF #IFJ
doi.org/10.1111/ejn.15936

#arxivfeed :

"CI-GNN: A Granger Causality-Inspired Graph Neural Network for Interpretable Brain Network-Based Psychiatric Diagnosis"
https://arxiv.org/abs/2301.01642

#Neuroscience #Neuro #ComputationalNeuroscience #MachineLearning #GraphNeuralNetworks #Psychiatry #FunctionalConnectivity #CausalInference

CI-GNN: A Granger Causality-Inspired Graph Neural Network for Interpretable Brain Network-Based Psychiatric Diagnosis

There is a recent trend to leverage the power of graph neural networks (GNNs) for brain-network based psychiatric diagnosis, which,in turn, also motivates an urgent need for psychiatrists to fully understand the decision behavior of the used GNNs. However, most of the existing GNN explainers are either post-hoc in which another interpretive model needs to be created to explain a well-trained GNN, or do not consider the causal relationship between the extracted explanation and the decision, such that the explanation itself contains spurious correlations and suffers from weak faithfulness. In this work, we propose a granger causality-inspired graph neural network (CI-GNN), a built-in interpretable model that is able to identify the most influential subgraph (i.e., functional connectivity within brain regions) that is causally related to the decision (e.g., major depressive disorder patients or healthy controls), without the training of an auxillary interpretive network. CI-GNN learns disentangled subgraph-level representations α and \b{eta} that encode, respectively, the causal and noncausal aspects of original graph under a graph variational autoencoder framework, regularized by a conditional mutual information (CMI) constraint. We theoretically justify the validity of the CMI regulation in capturing the causal relationship. We also empirically evaluate the performance of CI-GNN against three baseline GNNs and four state-of-the-art GNN explainers on synthetic data and three large-scale brain disease datasets. We observe that CI-GNN achieves the best performance in a wide range of metrics and provides more reliable and concise explanations which have clinical evidence.The source code and implementation details of CI-GNN are freely available at GitHub repository (https://github.com/ZKZ-Brain/CI-GNN/).

arXiv.org

#arxivfeed :

"Spatially-embedded recurrent neural networks reveal widespread links between structural and functional neuroscience findings"
https://www.biorxiv.org/content/10.1101/2022.11.17.516914v1

#Neuroscience #Neuro #Brain #NeuralNetwork #RNN #Connectivity #StructuralConnectivity #FunctionalConnectivity

For some more specific background of my work, I just published my first article on domain-specific and domain-general network engagement during human-robot interaction together with Ruud Hortensius! ✨

You can check it out in the European Journal of Neuroscience: https://onlinelibrary.wiley.com/doi/10.1111/ejn.15823

#Neuroscience #socialneuroscience #functionalconnectivity #fMRI #HRI #humanrobotinteraction