Deep learning for medical imaging is limited by data scarcity and domain shift, which lead to biased training sets that do not accurately represent deployment conditions. A related practical problem is cross-modal segmentation where the objective is to segment unlabelled domains using previously labelled images from other modalites, which is the context of the MICCAI CrossMoDA 2022 challenge on vestibular schwannoma (VS) segmentation. In this context, we propose a VS segmentation method that leverages conventional image-to-image translation and segmentation using iterative self training combined to a dedicated data augmentation technique called Generative Blending Augmentation (GBA). GBA is based on a one-shot 2D SinGAN generative model that allows to realistically diversify target tumor appearances in a downstream segmentation model, improving its generalization power at test time. Our solution ranked first on the VS segmentation task during the validation and test phase of the CrossModa 2022 challenge.
翻译:医学成像的深度学习受到数据稀缺和域漂移的限制,这导致训练集出现偏差,而无法准确地代表部署条件。相关的实际问题是跨模态分割,其目标是使用来自其他模式的先前标记图像分割未标记领域,这是MICCAI CrossMoDA 2022关于前庭小神经瘤(VS)分割的上下文。在这种情况下,我们提出了一种利用常规图像到图像转换和分割的方法,结合专用的数据增强技术——生成混合增强(GBA)的VS分割方法。GBA基于一种一次性的2D SinGAN生成模型,允许在下游分割模型中实现真实多样化的目标肿瘤外观,提高其在测试时间的推广能力。我们的解决方案在CrossModa 2022挑战赛的VS分割任务中排名第一。