The aim of this project is to predict the progression of depression and schizophrenia in individual patients using neuroimaging data. Our focus for this ‘personalised psychiatry’ approach is on combining the advanced computational models of brain function developed and used at the Translational Neuromodeling Unit with modern machine learning techniques. The advantage of basing this approach on computational models is that, by virtue of their reduction of the neuroimaging data to a small number of informative mechanistic parameters, they should make our predictions more accurate, more interpretable and better suited for treatment guidance.