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Active Learning Technique for Multimodal Brain Tumor Segmentation Using Limited Labeled Images

机译:主动学习技术使用有限标记图像进行多模态脑肿瘤分割

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Image segmentation is an essential step in biomedical image analysis. In recent years, deep learning models have achieved significant success in segmentation. However, deep learning requires the availability of large annotated data to train these models, which can be challenging in biomedical imaging domain. In this paper, we aim to accomplish biomedical image segmentation with limited labeled data using active learning. We present a deep active learning framework that selects additional data points to be annotated by combining U-Net with an efficient and effective query strategy to capture the most uncertain and representative points. This algorithm decouples the representative part by first finding the core points in the unlabeled pool and then selecting the most uncertain points from the reduced pool, which are different from the labeled pool. In our experiment, only 13% of the dataset was required with active learning to outperform the model trained on the entire 2018 MICCAI Brain Tumor Segmentation (BraTS) dataset. Thus, active learning reduced the amount of labeled data required for image segmentation without a significant loss in the accuracy.
机译:图像分割是生物医学图像分析中必不可少的步骤。近年来,深度学习模型在分割方面取得了重大成功。但是,深度学习需要使用大批注数据来训练这些模型,这在生物医学成像领域可能是一个挑战。在本文中,我们旨在通过主动学习以有限的标记数据完成生物医学图像分割。我们提供了一个深度活跃的学习框架,该框架通过将U-Net与高效有效的查询策略相结合来选择要注释的其他数据点,以捕获最不确定和最具代表性的点。该算法通过首先在未标记池中找到核心点,然后从缩减池中选择最不确定点(与标记池不同)来解耦代表性零件。在我们的实验中,只有13%的数据集需要主动学习才能优于在整个2018 MICCAI脑肿瘤分割(BraTS)数据集上训练的模型。因此,主动学习减少了图像分割所需的标记数据量,而准确性没有明显损失。

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