小型医学图像分割数据集的多域视觉转换器

Siyi Du, Nourhan Bayasi, G. Hamarneh, Rafeef Garbi
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引用次数: 1

摘要

尽管医学图像分割(MIS)具有临床应用价值,但由于图像固有的复杂性和可变性,它仍然是一项艰巨的任务。视觉变压器(ViTs)最近成为改善MIS的一种有前途的解决方案;然而,它们需要比卷积神经网络更大的训练数据集。为了克服这一障碍,提出了数据高效的vit,但它们通常使用单一数据源进行训练,从而忽略了可以从其他可用数据集中利用的有价值的知识。单纯地将不同领域的数据集组合在一起会导致负知识转移(NKT),即在一些具有不可忽略的领域间异质性的领域上,模型性能会下降。在本文中,我们提出了MDViT,这是第一个包含域适配器的多域ViT,通过自适应地利用多个小数据资源(域)中的知识来缓解数据饥渴和对抗NKT。此外,为了增强跨领域的表示学习,我们集成了一个相互知识蒸馏范例,该范例在通用网络(跨越所有领域)和辅助领域特定分支之间传输知识。在4个皮肤病变分割数据集上的实验表明,即使添加更多的域,MDViT在推理时也具有优越的分割性能和固定的模型大小,优于最先进的算法。我们的代码可在https://github.com/siyi-wind/MDViT上获得。
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MDViT: Multi-domain Vision Transformer for Small Medical Image Segmentation Datasets
Despite its clinical utility, medical image segmentation (MIS) remains a daunting task due to images' inherent complexity and variability. Vision transformers (ViTs) have recently emerged as a promising solution to improve MIS; however, they require larger training datasets than convolutional neural networks. To overcome this obstacle, data-efficient ViTs were proposed, but they are typically trained using a single source of data, which overlooks the valuable knowledge that could be leveraged from other available datasets. Naivly combining datasets from different domains can result in negative knowledge transfer (NKT), i.e., a decrease in model performance on some domains with non-negligible inter-domain heterogeneity. In this paper, we propose MDViT, the first multi-domain ViT that includes domain adapters to mitigate data-hunger and combat NKT by adaptively exploiting knowledge in multiple small data resources (domains). Further, to enhance representation learning across domains, we integrate a mutual knowledge distillation paradigm that transfers knowledge between a universal network (spanning all the domains) and auxiliary domain-specific branches. Experiments on 4 skin lesion segmentation datasets show that MDViT outperforms state-of-the-art algorithms, with superior segmentation performance and a fixed model size, at inference time, even as more domains are added. Our code is available at https://github.com/siyi-wind/MDViT.
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