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Deep Learning Versus Classical Regression for Brain Tumor Patient Survival Prediction

机译:深度学习与脑肿瘤患者生存预测的经典回归

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Deep learning for regression tasks on medical imaging data has shown promising results. However, compared to other approaches, their power is strongly linked to the dataset size. In this study, we evaluate 3D-convolutional neural networks (CNNs) and classical regression methods with hand-crafted features for survival time regression of patients with high-grade brain tumors. The tested CNNs for regression showed promising but unstable results. The best performing deep learning approach reached an accuracy of 51.5% on held-out samples of the training set. All tested deep learning experiments were outperformed by a Support Vector Classifier (SVC) using 30 radiomic features. The investigated features included intensity, shape, location and deep features. The submitted method to the BraTS 2018 survival prediction challenge is an ensemble of SVCs, which reached a cross-validated accuracy of 72.2% on the BraTS 2018 training set, 57.1% on the validation set, and 42.9% on the testing set. The results suggest that more training data is necessary for a stable performance of a CNN model for direct regression from magnetic resonance images, and that non-imaging clinical patient information is crucial along with imaging information.
机译:对医学成像数据进行回归任务的深度学习已经显示了有希望的结果。但是,与其他方法相比,它们的功率与数据集大小密切相关。在这项研究中,我们评估3D卷积神经网络(CNNS)和经典回归方法,具有用于高级脑肿瘤患者的存活时间回归的手工制作的特征。用于回归的测试的CNN显示出现有前途但不稳定的结果。在训练集的列出样本上,表现最好的深度学习方法达到了51.5%的准确性。所有测试的深度学习实验都是通过使用30个射出物特征的支持载体分类器(SVC)表现出来。调查功能包括强度,形状,位置和深度特征。向Brats 2018生存预测挑战的提交的方法是SVC的集成,其在Brats 2018培训集中达到了72.2%的交叉验证准确性,验证集57.1%,测试集42.9%。结果表明,对于从磁共振图像的直接回归的CNN模型的稳定性能需要更多的训练数据,并且非成像临床患者信息与成像信息具有重要意义。

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