IVCVJan 23, 2025

Unraveling Normal Anatomy via Fluid-Driven Anomaly Randomization

arXiv:2501.13370v16 citationsh-index: 6Has CodeCVPR
Originality Highly original
AI Analysis

This addresses the challenge of applying general-purpose models to diseased images in clinical settings, enabling large-scale analysis of uncurated data with pathology.

The paper tackles the problem of limited generalizability in medical image analysis due to modality and resolution constraints, introducing UNA, a modality-agnostic approach for normal brain anatomy reconstruction that handles both healthy and pathological scans, achieving effective reconstruction and anomaly detection on CT and MRI datasets.

Data-driven machine learning has made significant strides in medical image analysis. However, most existing methods are tailored to specific modalities and assume a particular resolution (often isotropic). This limits their generalizability in clinical settings, where variations in scan appearance arise from differences in sequence parameters, resolution, and orientation. Furthermore, most general-purpose models are designed for healthy subjects and suffer from performance degradation when pathology is present. We introduce UNA (Unraveling Normal Anatomy), the first modality-agnostic learning approach for normal brain anatomy reconstruction that can handle both healthy scans and cases with pathology. We propose a fluid-driven anomaly randomization method that generates an unlimited number of realistic pathology profiles on-the-fly. UNA is trained on a combination of synthetic and real data, and can be applied directly to real images with potential pathology without the need for fine-tuning. We demonstrate UNA's effectiveness in reconstructing healthy brain anatomy and showcase its direct application to anomaly detection, using both simulated and real images from 3D healthy and stroke datasets, including CT and MRI scans. By bridging the gap between healthy and diseased images, UNA enables the use of general-purpose models on diseased images, opening up new opportunities for large-scale analysis of uncurated clinical images in the presence of pathology. Code is available at https://github.com/peirong26/UNA.

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