非参数数据增强改进基于深度学习的脑肿瘤分割

Hadas Ben-Atya, Ori Rajchert, L. Goshen, M. Freiman
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引用次数: 2

摘要

从磁共振成像(MRI)数据中自动分割脑肿瘤在评估肿瘤对治疗的反应和个性化治疗分层中起着重要作用。手动分割是乏味和主观的。基于深度学习的脑肿瘤分割算法具有提供客观、快速的肿瘤分割的潜力。然而,这种算法的训练需要大量的数据集,而这些数据集并不总是可用的。数据增强技术可以减少对大型数据集的需求。然而,目前的方法大多是参数化的,可能导致性能次优。介绍了两种用于脑肿瘤分割的非参数数据增强方法:混合结构正则化(MSR)和洗刷像素噪声(SPN)。我们以编码器-解码器nnU-Net架构作为分割算法,评估了MSR和SPN增强在脑肿瘤分割(BraTS) 2018挑战数据集上的附加价值。与参数高斯噪声增强相比,MSR和SPN都提高了nnU-Net的分割精度。(在肿瘤核心和全肿瘤实验中,MSR与非参数增强相比,平均骰子评分从80%提高到82%,p值分别为0.0022、0.0028。所提出的MSR和SPN增强也有可能改善神经网络在其他任务中的性能。
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Non Parametric Data Augmentations Improve Deep-Learning based Brain Tumor Segmentation
Automatic brain tumor segmentation from Magnetic Resonance Imaging (MRI) data plays an important role in assessing tumor response to therapy and personalized treatment stratification. Manual segmentation is tedious and subjective. Deep-learning based algorithms for brain tumor segmentation have the potential to provide objective and fast tumor segmentation. However, the training of such algorithms requires large datasets which are not always available. Data augmentation techniques may reduce the need for large datasets. However current approaches are mostly parametric and may result in suboptimal performance. We introduce two non-parametric methods of data augmentation for brain tumor segmentation: the mixed structure regularization (MSR) and shuffle pixels noise (SPN). We evaluated the added value of the MSR and SPN augmentation on the brain tumor segmentation (BraTS) 2018 challenge dataset with the encoder-decoder nnU-Net architecture as the segmentation algorithm. Both MSR ans SPN improve the nnU-Net segmentation accuracy compared to parametric Gaussian noise augmentation.(Mean dice score increased from 80% to 82% and p-values=0.0022, 0.0028 when comparing MSR to non parametric augmentation for the tumor core and whole tumor experiments respectively. The proposed MSR and SPN augmentations has the potential to improve neural-networks performance in other tasks as well.
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