MM-GAN:基于生成对抗网络的三维MRI数据增强医学图像分割

Yi Sun, Peisen Yuan, Yuming Sun
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引用次数: 24

摘要

由于标记数据集的数量有限,这阻碍了医学成像中深度架构的训练。数据增强是医学图像处理中扩展训练数据集的一种有效方法。然而,在这一过程中,主观干预是不可避免的,无论是在相关的增强,还是在非相关的增强。为了模拟真实数据的分布,并从有限数据的分布中抽取新数据来填充训练集,我们提出了一种基于生成对抗网络的MRI增强和分割(MM-GAN)架构,该架构可以将标签映射转换为3D MR图像,而无需担心违反病理。通过BRATS17数据集的肿瘤分割实验,验证了MM-GAN在数据增强和匿名化方面的有效性。我们的方法将整个肿瘤和肿瘤核心的骰子分数分别提高了0.17和0.16。我们的方法只需要29个样本就可以对用纯假数据训练的模型进行微调,达到与真实数据相当的性能,证明了对患者隐私保护的能力。此外,为了验证MM-GAN模型的可扩展性,收集了LIVER100数据集。在LIVER100上的实验结果与在BRATS17上的结果相似,验证了我们模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MM-GAN: 3D MRI Data Augmentation for Medical Image Segmentation via Generative Adversarial Networks
Due to the limited amount of the labelled dataset, which hampers the training of deep architecture in medical imaging. The data augmentation is an effective way to extend the training dataset for medical image processing. However, subjective intervention is inevitable during this process, not only in the pertinent augmentation but also the non-pertinent augmentation. In this paper, to simulate the distribution of real data and sample new data from the distribution of limited data to populate the training set, we propose a generative adversarial network based architecture for the MRI augmentation and segmentation (MM-GAN), which can translate the label maps to 3D MR images without worrying about violating the pathology. Through a series of experiments of the tumor segmentation on BRATS17 dataset, we validate the effectiveness of MM-GAN in data augmentation and anonymization. Our approach improves the dice scores of the whole tumor and the tumor core by 0.17 and 0.16 respectively. With our method, only 29 samples are used for fine-tuning the model trained with the pure fake data and achieve comparable performance to the real data, which demonstrates the ability for the patient privacy protection. Furthermore, to verify the expandability of MM-GAN model, the dataset LIVER100 is collected. Experiment results on the LIVER100 illustrate similar outcome as on BRATS17, which validates the performance of our model.
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