At present many people are agonizing over many diseases and also they are facing problems to know the characteristics of diseases. In these types of cases, deep learning approaches are exceedingly beneficial for easily identifying diseases. Brain illness identification is currently focused on research in the cooperation of neuroscience and computerized reasoning. MRI takes pictures of cerebrum structure and representing presence of growths, cancers, terminal states, and primary anomalies, which can be used for disease predictions and treatment plans. The assessment of functional connectivity (FC) can yield huge biomarkers that guide clinical determination and is the central procedure for the quantitative examination of functional magnetic resonance imaging. EEG is a basic, minimal expense, harmless technique that can give data about changes in the cerebral cortex during the stroke recuperation process. Trained Deep Learning models are concentrated on dynamic element portrayals in the made of low-high order FC designs to do accurate diagnosis.