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Unsupervised Region-Based Anomaly Detection In Brain MRI With Adversarial Image Inpainting

机译:基于未经监督的地区的异常检测脑MRI具有对抗性形象染色

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Medical segmentation is performed to determine the bounds of regions of interest (ROI) prior to surgery. By allowing the study of growth, structure, and behaviour of the ROI in the planning phase, critical information can be obtained, increasing the likelihood of a successful operation. Usually, segmentations are performed manually or via machine learning methods trained on manual annotations. In contrast, this paper proposes a fully automatic, unsupervised inpainting-based brain tumour segmentation system for T1-weighted MRI. First, a deep convolutional neural network (DCNN) is trained to reconstruct missing healthy brain regions. Then, upon application, anomalous regions are determined by identifying areas of highest reconstruction loss. Finally, superpixel segmentation is performed to segment those regions. We show the proposed system is able to segment various sized and abstract tumours and achieves a mean and standard deviation Dice score of 0.771 and 0.176, respectively.
机译:进行医学分割以在手术前确定感兴趣区域(ROI)的范围。 通过允许研究ROI在规划阶段的生长,结构和行为,可以获得关键信息,提高成功操作的可能性。 通常,手动或通过在手动注释上培训的机器学习方法进行分割。 相比之下,本文提出了一种全自动,无监督的基于T1加权MRI的脑肿瘤分割系统。 首先,训练深卷积神经网络(DCNN)以重建缺失的健康脑区。 然后,在应用时,通过识别最高重建损失的区域来确定异常区域。 最后,执行超胶石分割以分割这些区域。 我们展示了所提出的系统能够分割各种大小和抽象肿瘤,并分别达到平均值和标准偏差分数0.771和0.176。

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