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Segmentation of Gliomas and Prediction of Patient Overall Survival: A Simple and Fast Procedure

机译:胶质瘤的分割和患者整体生存的预测:简单快速的程序

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This paper proposes, in the context of brain tumor study, a fast automatic method that segments tumors and predicts patient overall survival. The segmentation stage is implemented using a fully convolutional network based on VGG-16, pre-trained on ImageNet for natural image classification, and fine tuned with the training dataset of the MICCAI 2018 BraTS Challenge. It relies on the "pseudo-3D" method published at ICIP 2017, which allows for segmenting objects from 2D color-like images which contain 3D information of MRI volumes. With such a technique, the segmentation of a 3D volume takes only a few seconds. The prediction stage is implemented using Random Forests. It only requires a predicted segmentation of the tumor and a homemade atlas. Its simplicity allows to train it with very few examples and it can be used after any segmentation process. The presented method won the second place of the MICCAI 2018 BraTS Challenge for the overall survival prediction task. A Docker image is publicly available on https:// www.lrde.epita.fr/wiki/NeoBrainSeg.
机译:本文提出,在脑肿瘤研究的背景下,一种快速的自动方法,即细分肿瘤并预测患者的整体存活。分割阶段使用基于VGG-16的完全卷积网络来实现,预先培训,用于自然图像分类的ImageNet,并使用Miccai 2018 Brats挑战的训练数据集进行微调。它依赖于ICIP 2017发布的“伪3D”方法,这允许从包含MRI卷的3D信息的2D颜色类似图像分段对象。利用这种技术,3D卷的分割仅需要几秒钟。预测阶段使用随机林实现。它只需要肿瘤和自制地图集的预测分割。其简单性允许使用极少的示例训练它,并且可以在任何分割过程之后使用它。本方法赢得了2018年米奇2018年的第二位,对整体生存预测任务进行了挑战。在HTTPS上公开提供Docker图像:// www.lrde.epita.fr/wiki/neobrainseg。

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