Learning normal asymmetry representations for homologous brain structures
Autor/es:
Bendersky, Mariana
Iarussi, Emmanuel
Deangeli, Duilio
Princich, Juan Pablo
Larrabide, Ignacio
Orlando, José Ignacio
Fecha:
2023Resumen
Although normal homologous brain structures are approximately symmetrical by definition, they also have shape differences due
to e.g. natural ageing. On the other hand, neurodegenerative conditions
induce their own changes in this asymmetry, making them more pronounced or altering their location. Identifying when these alterations
are due to a pathological deterioration is still challenging. Current clinical tools rely either on subjective evaluations, basic volume measurements or disease-specific deep learning models. This paper introduces a
novel method to learn normal asymmetry patterns in homologous brain
structures based on anomaly detection and representation learning. Our
framework uses a Siamese architecture to map 3D segmentations of left
and right hemispherical sides of a brain structure to a normal asymmetry embedding space, learned using a support vector data description objective. Being trained using healthy samples only, it can quantify
deviations-from-normal-asymmetry patterns in unseen samples by measuring the distance of their embeddings to the center of the learned normal space. We demonstrate in public and in-house sets that our method
can accurately characterize normal asymmetries and detect pathological
alterations due to Alzheimer’s disease and hippocampal sclerosis, even
though no diseased cases were accessed for training. Our source code is
available at https://github.com/duiliod/DeepNORHA