Fully Convolutional Network Architecture for the Automation of MR Image Segmentation load data load_dicom loads all the .dcm files in a filepath into a np.ndarray load_nrrd loads a single .nrrd file from filepath into a np.ndarray optionally returns the header information Network Architecture and Ideas: Fully Convolutional Network Mark regions that are somewhat uncertain Use Seg3D2 or own simple verification application Different mask for each tissue + different mask for uncertain tissues Re-trainable with new data -> after manual verification Issues: Output format? Prevent Catastrophic Forgetting Keep lr python currentLearningRate = K.get_value(model.optimizer.lr)