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Glioma Prognosis: Segmentation of the Tumor and Survival Prediction Using Shape, Geometric and Clinical Information

机译:胶质瘤预后:使用形状,几何和临床信息进行肿瘤和生存预测的分割

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Segmentation of brain tumor from magnetic resonance imaging (MRI) is a vital process to improve diagnosis, treatment planning and to study the difference between subjects with tumor and healthy subjects. In this paper, we exploit a convolutional neural network (CNN) with hypercolumn technique to segment tumor from healthy brain tissue. Hypercolumn is the concatenation of a set of vectors which form by extracting convolutional features from multiple layers. Proposed model integrates batch normalization (BN) approach with hypercolumn. BN layers help to alleviate the internal covariate shift during stochastic gradient descent (SGD) training by zero-mean and unit variance of each mini-batch. Survival Prediction is done by first extracting features (Geometric, Fractal, and Histogram) from the segmented brain tumor data. Then, the number of days of overall survival is predicted by implementing regression on the extracted features using an artificial neural network (ANN). Our model achieves a mean dice score of 89.78%, 82.53% and 76.54% for the whole tumor, tumor core and enhancing tumor respectively in segmentation task and 67.9% in overall survival prediction task with the validation set of BraTS 2018 challenge. It obtains a mean dice accuracy of 87.315%, 77.04% and 70.22% for the whole tumor, tumor core and enhancing tumor respectively in the segmentation task and a 46.8% in overall survival prediction task in the BraTS 2018 test data set.
机译:从磁共振成像(MRI)的脑肿瘤的分割是一个重要的过程,以提高诊断,治疗计划和研究与肿瘤和健康的受试者之间的差异。在本文中,我们利用与hypercolumn技术从健康脑组织卷积神经网络(CNN)到段肿瘤。 Hypercolumn是一组由从多个层中提取卷积特征形成矢量的串联。提出的模型集成批标准化(BN)与hypercolumn方法。 BN层有助于缓解由每个小批量的零均值和单位方差期间随机梯度下降(SGD)训练内部协变量移位。存活预测通过从分段脑瘤数据第一提取特征(几何,分形和直方图)来完成。然后,整体存活的天数通过使用人工神经网络(ANN)执行所提取的特征的回归预测。我们的模型实现了平均骰子得分的89.78%,82.53%和76.54%,为整个肿瘤,肿瘤核心,分别在细分任务,并与验证组臭小子2018挑战的总生存期预测任务67.9%提高肿瘤。它获得的87.315%,77.04%和70.22%,为整个肿瘤,肿瘤核心和分别在分割任务增强肿瘤和46.8%的总体生存预测任务在臭小子2018测试数据集的平均骰子精度。

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