cs.AI updates on arXiv.org 09月17日
基于DINOv2的3D医学图像异常检测框架
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本文提出一种针对3D医学图像异常分类的注意力全局聚合框架,利用DINOv2模型作为预训练特征提取器,通过软注意力机制分配自适应切片重要性权重,并结合复合损失函数解决数据稀缺问题,在ADNI数据集和头痛队列上验证了其性能。

arXiv:2509.12512v1 Announce Type: cross Abstract: Anomaly detection and classification in medical imaging are critical for early diagnosis but remain challenging due to limited annotated data, class imbalance, and the high cost of expert labeling. Emerging vision foundation models such as DINOv2, pretrained on extensive, unlabeled datasets, offer generalized representations that can potentially alleviate these limitations. In this study, we propose an attention-based global aggregation framework tailored specifically for 3D medical image anomaly classification. Leveraging the self-supervised DINOv2 model as a pretrained feature extractor, our method processes individual 2D axial slices of brain MRIs, assigning adaptive slice-level importance weights through a soft attention mechanism. To further address data scarcity, we employ a composite loss function combining supervised contrastive learning with class-variance regularization, enhancing inter-class separability and intra-class consistency. We validate our framework on the ADNI dataset and an institutional multi-class headache cohort, demonstrating strong anomaly classification performance despite limited data availability and significant class imbalance. Our results highlight the efficacy of utilizing pretrained 2D foundation models combined with attention-based slice aggregation for robust volumetric anomaly detection in medical imaging. Our implementation is publicly available at https://github.com/Rafsani/DinoAtten3D.git.

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相关标签

DINOv2 医学图像 异常检测 注意力机制 数据稀缺
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