Learning normal asymmetry representations for homologous brain structures
Duilio Deangeli, Emmanuel Iarussi, Juan Pablo Princich, Mariana, Bendersky, Ignacio Larrabide, Jos\'e Ignacio Orlando

TL;DR
This paper presents a novel deep learning method using a Siamese network to learn normal brain asymmetry patterns, enabling detection of pathological changes related to neurodegenerative diseases without using diseased training data.
Contribution
It introduces a new anomaly detection framework for brain asymmetry using representation learning, trained solely on healthy samples, to identify deviations indicating disease.
Findings
Accurately characterizes normal brain asymmetries.
Detects pathological asymmetry alterations in Alzheimer's and hippocampal sclerosis.
Works without diseased training data.
Abstract
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…
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Taxonomy
TopicsMorphological variations and asymmetry · Health, Environment, Cognitive Aging · Dementia and Cognitive Impairment Research
