基于多模态自蒸馏的医学图像分割模态不可知学习。

Qisheng He, Nicholas Summerfield, Ming Dong, Carri Glide-Hurst
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引用次数: 0

摘要

在医学影像分割中,虽然可以进行多模态训练,但由于特定患者的所有图像类型有限,临床转化面临挑战。与典型的分割模型不同,模式识别(MAG)学习基于所有可用模式训练单一模型,但仍与输入无关,允许单一模型在任何模式组合下生成准确的分割。在本文中,我们为医学图像分割提出了一个新颖的框架--通过多模态自我提炼的 MAG 学习(MAG-MS)。MAG-MS 从多模态融合中提炼知识,并将其应用于增强单个模态的表示学习。这使其成为一种适应性强的高效解决方案,可在测试场景中处理有限的模态。我们在基准数据集上进行的大量实验证明,MAG-MS 在分割准确性、MAG 鲁棒性和效率方面都优于目前最先进的方法。
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MODALITY-AGNOSTIC LEARNING FOR MEDICAL IMAGE SEGMENTATION USING MULTI-MODALITY SELF-DISTILLATION.

In medical image segmentation, although multi-modality training is possible, clinical translation is challenged by the limited availability of all image types for a given patient. Different from typical segmentation models, modality-agnostic (MAG) learning trains a single model based on all available modalities but remains input-agnostic, allowing a single model to produce accurate segmentation given any modality combinations. In this paper, we propose a novel frame-work, MAG learning through Multi-modality Self-distillation (MAG-MS), for medical image segmentation. MAG-MS distills knowledge from the fusion of multiple modalities and applies it to enhance representation learning for individual modalities. This makes it an adaptable and efficient solution for handling limited modalities during testing scenarios. Our extensive experiments on benchmark datasets demonstrate its superior segmentation accuracy, MAG robustness, and efficiency than the current state-of-the-art methods.

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