异常噪声和多阶段扩散:医学图像中无监督异常检测的新方法

IF 11.8 1区 医学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yuan Bi , Lucie Huang , Ricarda Clarenbach , Reza Ghotbi , Angelos Karlas , Nassir Navab , Zhongliang Jiang
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引用次数: 0

摘要

医学成像中的异常检测在识别各种成像方式(如脑MRI、肝脏CT和颈动脉超声(US))的病理区域方面起着至关重要的作用。然而,训练完全监督分割模型经常受到专家注释的缺乏和不同解剖结构的复杂性的阻碍。为了解决这些问题,我们提出了一种基于扩散模型的新型无监督异常检测框架,该模型结合了合成异常(Synomaly)噪声函数和多阶段扩散过程。在训练过程中,异常噪声将合成异常引入健康图像,使模型能够有效地学习异常去除。引入多阶段扩散过程对图像进行逐步去噪,在保留细节的同时提高无异常重建的质量。生成的高保真反事实健康图像可以进一步增强分割模型的可解释性,并为评估异常程度和支持临床决策提供可靠的基线。值得注意的是,无监督异常检测模型完全是在健康图像上训练的,不需要异常训练样本和像素级注释。我们在脑MRI,肝脏CT数据集和颈动脉US上验证了所提出的方法。实验结果表明,所提出的框架优于现有的最先进的无监督异常检测方法,其性能可与美国数据集中的完全监督分割模型相媲美。消融研究进一步强调了异常噪声和多阶段扩散过程对改善异常分割的贡献。这些发现强调了我们的方法作为医学异常检测的鲁棒性和注释效率替代方案的潜力。代码:https://github.com/yuan-12138/Synomaly。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synomaly noise and multi-stage diffusion: A novel approach for unsupervised anomaly detection in medical images
Anomaly detection in medical imaging plays a crucial role in identifying pathological regions across various imaging modalities, such as brain MRI, liver CT, and carotid ultrasound (US). However, training fully supervised segmentation models is often hindered by the scarcity of expert annotations and the complexity of diverse anatomical structures. To address these issues, we propose a novel unsupervised anomaly detection framework based on a diffusion model that incorporates a synthetic anomaly (Synomaly) noise function and a multi-stage diffusion process. Synomaly noise introduces synthetic anomalies into healthy images during training, allowing the model to effectively learn anomaly removal. The multi-stage diffusion process is introduced to progressively denoise images, preserving fine details while improving the quality of anomaly-free reconstructions. The generated high-fidelity counterfactual healthy images can further enhance the interpretability of the segmentation models, as well as provide a reliable baseline for evaluating the extent of anomalies and supporting clinical decision-making. Notably, the unsupervised anomaly detection model is trained purely on healthy images, eliminating the need for anomalous training samples and pixel-level annotations. We validate the proposed approach on brain MRI, liver CT datasets, and carotid US. The experimental results demonstrate that the proposed framework outperforms existing state-of-the-art unsupervised anomaly detection methods, achieving performance comparable to fully supervised segmentation models in the US dataset. Ablation studies further highlight the contributions of Synomaly noise and the multi-stage diffusion process in improving anomaly segmentation. These findings underscore the potential of our approach as a robust and annotation-efficient alternative for medical anomaly detection. Code: https://github.com/yuan-12138/Synomaly.
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来源期刊
Medical image analysis
Medical image analysis 工程技术-工程:生物医学
CiteScore
22.10
自引率
6.40%
发文量
309
审稿时长
6.6 months
期刊介绍: Medical Image Analysis serves as a platform for sharing new research findings in the realm of medical and biological image analysis, with a focus on applications of computer vision, virtual reality, and robotics to biomedical imaging challenges. The journal prioritizes the publication of high-quality, original papers contributing to the fundamental science of processing, analyzing, and utilizing medical and biological images. It welcomes approaches utilizing biomedical image datasets across all spatial scales, from molecular/cellular imaging to tissue/organ imaging.
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