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TP CNN: Two-Phase Patch-Based Convolutional Neural Network for Automatic Brain Tumor Segmentation and Survival Prediction

机译:TP CNN:基于两相贴剂的卷积神经网络,用于自动脑肿瘤分割和生存预测

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The aim of this paper is to integrate some advanced statistical methods with modern deep learning methods for tumor segmentation and survival time prediction in the BraTS 2017 challenge. The goals of the BraTS 2017 challenge are to utilize multi-institutional pre-operative MRI scans to segment out different tumor subregions and then to use tumor information to predict patient's overall survival. We build a two-phase patch-based convolutional neural network (TPCNN) model to classify all the pixels in the brain and further refine the segmentation results by using XGBoost and a post-processing procedure. The segmentation results are then used to extract various informative radiomic features for prediction of the survival time by using the XGBoost method.
机译:本文的目的是将一些高级统计方法与现代深层学习方法集成在肿瘤分割和生存时间预测中的现代深层学习方法。 Brats 2017挑战的目标是利用多机构前术前MRI扫描来分割出不同的肿瘤次级区域,然后使用肿瘤信息来预测患者的整体生存。我们构建了一个基于补丁的卷积神经网络(TPCNN)模型,用于对大脑中的所有像素进行分类,并通过使用XGBoost和后处理程序进一步细化分段结果。然后使用分段结果来提取各种信息的射线特征,以通过使用XGBoost方法预测存活时间。

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