Simulation-based Inference on Virtual Brain Models of Disorders (SBI-VBMs)
Virtual Brain Models imply latent nonlinear state space models driven by noise and network input, necessitating advanced probabilistic machinelearning techniques for widely applicable Bayesian estimation. Here we present Simulation-based Inference on Virtual Brain Models (SBI-VBMs), and demonstrate that training deep neural networks on both spatio-temporal and functional features allows for accurate estimation of generative parameters in brain disorders. Code:
Ref: https://iopscience.iop.org/article/10.1088/2632-2153/ad6230