英国生物银行白质高强度分割的全监督域对抗训练

V. Sundaresan, N. Dinsdale, M. Jenkinson, L. Griffanti
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引用次数: 1

摘要

白质高信号(WMHs,或病变)在t2加权和FLAIR脑MR图像上表现为高信号,局部区域。由于受试者水平(例如,局部强度/对比度)和人群水平(例如,人口统计学,扫描仪相关)的变化,病变特征的异质性使其分割极具挑战性。在这里,我们提出了一个框架,用于将最先进的高精度WMH分割方法从小型标记源数据(MICCAI WMH分割挑战2017训练数据)调整到更大的数据集(如UK Biobank),而不需要额外的手动训练标签,使用领域对抗训练和全监督学习。考虑到众所周知的wmh与年龄的关联,该方法采用多任务模型同时学习病变分割、领域适应和年龄预测。在UK Biobank数据集的一个子集上,与从预训练的最先进基线方法获得的0.75、0.49和0.80的值相比,所提出的方法分别实现了病变级召回、病变级f1测量和Dice重叠值分别为0.95、0.65和0.84。该方法的代码可从https://github.com/v-sundaresan/omnisup_agepred_semidann获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Omni-Supervised Domain Adversarial Training for White Matter Hyperintensity Segmentation in the UK Biobank
White matter hyperintensities (WMHs, or lesions) appear as hyperintense, localized regions on T2-weighted and FLAIR brain MR images. The heterogeneity in lesion characteristics due to subject-level (e.g., local intensity/contrast) and population-level (e.g., demographic, scanner-related) variations make their segmentation highly challenging. Here, we propose a framework for adapting a state-of-the-art WMH segmentation method with high accuracy from a small, labeled source data (MICCAI WMH segmentation challenge 2017 training data) to a larger dataset such as the UK Biobank without the need of additional manual training labels, using domain adversarial training with omni-supervised learning. Given the well-known association of WMHs with age, the proposed method uses a multi-tasking model for learning lesion segmentation, domain adaptation and age prediction simultaneously. On a subset of the UK Biobank dataset, the proposed method achieves a lesion-level recall, lesion-level F1-measure and Dice overlap value of 0.95, 0.65 and 0.84 respectively, when compared to values of 0.75, 0.49 and 0.80 obtained from the pretrained state-of-the-art baseline method. The code for the method is available at https://github.com/v-sundaresan/omnisup_agepred_semidann.
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