无注释数据集的改进白质束分割

Yijia Zeng, Wan Liu, Zhiwen Liu, Chuyang Ye
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引用次数: 0

摘要

脑白质束分割有利于大脑研究,为分析大脑发育和疾病提供了有价值的工具。卷积神经网络(cnn)的引入大大提高了WM束分割的准确性。然而,cnn的训练通常需要大量的人工标注WM集,这在实际应用中往往难以获得。因此,在本研究中,我们探索了两种方法来实现在目标数据集没有人工标注WM束的情况下,基于cnn的WM束分割,并提高分割精度。第一种方法为目标数据集生成基于注册的伪标签来训练WM集分割网络。具体而言,我们将公开可用的带注释数据集的图像与未标记的目标数据集的图像进行配准,并利用配准和WM束的特性来改进二值化策略,为目标数据集生成WM束的软标签。此外,我们提出了另一种利用配准信息构造损失加权矩阵进行网络训练的方法,减少了配准误差的影响,进一步提高了分割性能。我们用两个dMRI数据集评估了所提出的方法。结果表明,在没有人工标注的情况下,本文提出的方法能够有效地提高WM集的分割性能。
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Improved White Matter Tract Segmentation for Unannotated Dataset
White matter (WM) tract segmentation is beneficial to brain research, which provides a valuable tool for analyzing brain development and disease. The introduction of convolutional neural networks (CNNs) has greatly improved the accuracy of WM tract segmentation. However, the training of CNNs usually requires extensive manual annotations of WM tracts, which are often difficult to obtain in practical applications. Therefore, in this study, we explore two methods to realize CNN-based WM tract segmentation when there are no manual annotations of WM tracts for the target dataset and improve the segmentation accuracy. The first method generates registration-based pseudo labels for the target dataset to train the WM tract segmentation network. Specifically, we register images of the publicly available annotated dataset to images of the unlabeled target dataset and improve the binarization strategy by taking advantage of the characteristics of registration and WM tracts to generate the soft labels of WM tracts for target dataset. Moreover, we propose the other method to construct loss weighted matrix for network training using the registration information, which reduces the impact of registration error and further improves the segmentation performance. We evaluated the proposed methods with two dMRI datasets. The results show that the proposed methods are effective in improving the segmentation performance of WM tracts when the manual annotations are unavailable.
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