IVCVJul 12, 2024

Symmetry Awareness Encoded Deep Learning Framework for Brain Imaging Analysis

arXiv:2407.08948v14 citationsh-index: 12Has Code
Originality Incremental advance
AI Analysis

This addresses the problem of limited annotated data and heterogeneity in brain imaging for medical diagnosis, representing a domain-specific advancement.

The study tackled the challenge of analyzing brain imaging for neurological conditions by leveraging anatomical symmetry, resulting in a model that outperformed state-of-the-art methods in classification and segmentation tasks.

The heterogeneity of neurological conditions, ranging from structural anomalies to functional impairments, presents a significant challenge in medical imaging analysis tasks. Moreover, the limited availability of well-annotated datasets constrains the development of robust analysis models. Against this backdrop, this study introduces a novel approach leveraging the inherent anatomical symmetrical features of the human brain to enhance the subsequent detection and segmentation analysis for brain diseases. A novel Symmetry-Aware Cross-Attention (SACA) module is proposed to encode symmetrical features of left and right hemispheres, and a proxy task to detect symmetrical features as the Symmetry-Aware Head (SAH) is proposed, which guides the pretraining of the whole network on a vast 3D brain imaging dataset comprising both healthy and diseased brain images across various MRI and CT. Through meticulous experimentation on downstream tasks, including both classification and segmentation for brain diseases, our model demonstrates superior performance over state-of-the-art methodologies, particularly highlighting the significance of symmetry-aware learning. Our findings advocate for the effectiveness of incorporating symmetry awareness into pretraining and set a new benchmark for medical imaging analysis, promising significant strides toward accurate and efficient diagnostic processes. Code is available at https://github.com/bitMyron/sa-swin.

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