基于潜扩散模型的无监督三维超分布检测

M. Graham, W. H. Pinaya, P. Wright, Petru-Daniel Tudosiu, Y. Mah, J. Teo, H. Jäger, D. Werring, P. Nachev, S. Ourselin, M. Cardoso
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引用次数: 0

摘要

对于任何现实世界的临床深度学习系统来说,基于3D数据的分布外(OOD)检测方法都是至关重要的组成部分。经典的去噪扩散概率模型(ddpm)最近被提出作为在2D数据集上执行基于重建的OOD检测的鲁棒方法,但不能简单地扩展到3D数据。在这项工作中,我们建议使用潜在扩散模型(ldm),这使得ddpm能够缩放到高分辨率的3D医疗数据。我们在近ood和远ood数据集上验证了所提出的方法,并将其与最近提出的使用潜在变压器模型(ltm)的3d方法进行了比较。提出的基于ldm的方法不仅在统计上取得了更好的性能,而且对潜在表示的敏感性更低,更有利的记忆缩放,并产生更好的空间异常图。代码可从https://github.com/marksgraham/ddpm-ood获得
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Unsupervised 3D out-of-distribution detection with latent diffusion models
Methods for out-of-distribution (OOD) detection that scale to 3D data are crucial components of any real-world clinical deep learning system. Classic denoising diffusion probabilistic models (DDPMs) have been recently proposed as a robust way to perform reconstruction-based OOD detection on 2D datasets, but do not trivially scale to 3D data. In this work, we propose to use Latent Diffusion Models (LDMs), which enable the scaling of DDPMs to high-resolution 3D medical data. We validate the proposed approach on near- and far-OOD datasets and compare it to a recently proposed, 3D-enabled approach using Latent Transformer Models (LTMs). Not only does the proposed LDM-based approach achieve statistically significant better performance, it also shows less sensitivity to the underlying latent representation, more favourable memory scaling, and produces better spatial anomaly maps. Code is available at https://github.com/marksgraham/ddpm-ood
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