基于循环一致对抗域自适应的归纳迁移学习方法在脑肿瘤分割中的应用

Y. Tokuoka, Shuji Suzuki, Yohei Sugawara
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引用次数: 15

摘要

随着医学图像分析应用中监督式机器学习的最新进展,各种领域的注释医学图像数据集正在广泛共享。鉴于标注需要医学专业知识,这种标注应该应用于尽可能多的学习任务。然而,每个注释图像的多模态特性使得在不同的任务之间共享注释标签变得困难。在这项工作中,我们提供了一种归纳迁移学习(ITL)方法,使用基于循环gan的无监督域自适应(UDA),将源域数据集的注释标签应用于目标域数据集的任务。为了评估ITL方法的适用性,我们将MRI图像源域数据集上的脑组织注释标签用于MRI目标域数据集上的脑肿瘤分割任务。结果证实,该方法对脑肿瘤的分割精度有明显提高。提出的ITL方法可以为医学图像分析领域做出重大贡献,因为我们开发了一个基本的工具来改进和促进使用医学图像的各种任务。
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An Inductive Transfer Learning Approach using Cycle-consistent Adversarial Domain Adaptation with Application to Brain Tumor Segmentation
With recent advances in supervised machine learning for medical image analysis applications, the annotated medical image datasets of various domains are being shared extensively. Given that the annotation labelling requires medical expertise, such labels should be applied to as many learning tasks as possible. However, the multi-modal nature of each annotated image renders it difficult to share the annotation label among diverse tasks. In this work, we provide an inductive transfer learning (ITL) approach to adopt the annotation label of the source domain datasets to tasks of the target domain datasets using Cycle-GAN based unsupervised domain adaptation (UDA). To evaluate the applicability of the ITL approach, we adopted the brain tissue annotation label on the source domain dataset of Magnetic Resonance Imaging (MRI) images to the task of brain tumor segmentation on the target domain dataset of MRI. The results confirm that the segmentation accuracy of brain tumor segmentation improved significantly. The proposed ITL approach can make significant contribution to the field of medical image analysis, as we develop a fundamental tool to improve and promote various tasks using medical images.
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