Model-based whole-brain perturbational landscape of neurodegenerative diseases.
Yonatan Sanz PerlSol FittipaldiCecilia Gonzalez CampoSebastián MoguilnerJosephine CruzatMatias E Fraile-VazquezRubén HerzogMorten L KringelbachGustavo DecoPavel Prado-GutierrezAgustin M IbanezEnzo TagliazucchiPublished in: eLife (2023)
The treatment of neurodegenerative diseases is hindered by lack of interventions capable of steering multimodal whole-brain dynamics towards patterns indicative of preserved brain health. To address this problem, we combined deep learning with a model capable of reproducing whole-brain functional connectivity in patients diagnosed with Alzheimer's disease (AD) and behavioral variant frontotemporal dementia (bvFTD). These models included disease-specific atrophy maps as priors to modulate local parameters, revealing increased stability of hippocampal and insular dynamics as signatures of brain atrophy in AD and bvFTD, respectively. Using variational autoencoders, we visualized different pathologies and their severity as the evolution of trajectories in a low-dimensional latent space. Finally, we perturbed the model to reveal key AD- and bvFTD-specific regions to induce transitions from pathological to healthy brain states. Overall, we obtained novel insights on disease progression and control by means of external stimulation, while identifying dynamical mechanisms that underlie functional alterations in neurodegeneration.
Keyphrases
- resting state
- functional connectivity
- white matter
- cerebral ischemia
- deep learning
- healthcare
- newly diagnosed
- ejection fraction
- machine learning
- prognostic factors
- convolutional neural network
- physical activity
- dna methylation
- risk assessment
- end stage renal disease
- health information
- mild cognitive impairment
- blood brain barrier
- chronic kidney disease