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基于特征空间变换的迁移学习:一种跨扫描仪的海马体分割方法。

Transfer learning by feature-space transformation: A method for Hippocampus segmentation across scanners.

机构信息

Biomedical Imaging Group Rotterdam, Department of Medical Informatics and Radiology, Erasmus MC - University Medical Center Rotterdam, 3000, CA, Rotterdam, the Netherlands.

Biomedical Imaging Group Rotterdam, Department of Medical Informatics and Radiology, Erasmus MC - University Medical Center Rotterdam, 3000, CA, Rotterdam, the Netherlands.

出版信息

Neuroimage Clin. 2018 Aug 14;20:466-475. doi: 10.1016/j.nicl.2018.08.005. eCollection 2018.

Abstract

Many successful approaches in MR brain segmentation use supervised voxel classification, which requires manually labeled training images that are representative of the test images to segment. However, the performance of such methods often deteriorates if training and test images are acquired with different scanners or scanning parameters, since this leads to differences in feature representations between training and test data. In this paper we propose a feature-space transformation (FST) to overcome such differences in feature representations. The proposed FST is derived from unlabeled images of a subject that was scanned with both the source and the target scan protocol. After an affine registration, these images give a mapping between source and target voxels in the feature space. This mapping is then used to map all training samples to the feature representation of the test samples. We evaluated the benefit of the proposed FST on hippocampus segmentation. Experiments were performed on two datasets: one with relatively small differences between training and test images and one with large differences. In both cases, the FST significantly improved the performance compared to using only image normalization. Additionally, we showed that our FST can be used to improve the performance of a state-of-the-art patch-based-atlas-fusion technique in case of large differences between scanners.

摘要

许多成功的磁共振脑分割方法都采用了有监督的体素分类,这需要手动标记训练图像,这些图像需要代表要分割的测试图像。然而,如果训练和测试图像是使用不同的扫描仪或扫描参数采集的,那么这些方法的性能通常会下降,因为这会导致训练数据和测试数据之间的特征表示存在差异。在本文中,我们提出了一种特征空间变换(FST)来克服这种特征表示的差异。所提出的 FST 是从使用源和目标扫描协议扫描的受试者的未标记图像中得出的。在进行仿射配准后,这些图像在特征空间中给出了源和目标体素之间的映射。然后,使用该映射将所有训练样本映射到测试样本的特征表示。我们评估了所提出的 FST 在海马体分割中的益处。在两个数据集上进行了实验:一个数据集训练图像和测试图像之间的差异较小,另一个数据集的差异较大。在两种情况下,与仅使用图像归一化相比,FST 都显著提高了性能。此外,我们还表明,在扫描仪之间存在较大差异的情况下,我们的 FST 可用于提高基于斑块的图谱融合技术的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1329/6098216/4ce4719c9ba4/ga1.jpg

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