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A Baseline for Predicting Glioblastoma Patient Survival Time with Classical Statistical Models and Primitive Features Ignoring Image Information

机译:使用经典统计模型和忽略图像信息的原始特征预测胶质母细胞瘤患者生存时间的基线

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Gliomas are the most prevalent primary malignant brain tumors in adults. Until now an accurate and reliable method to predict patient survival time based on medical imaging and meta-information has not been developed [3]. Therefore, the survival time prediction task was introduced to the Multimodal Brain Tumor Segmentation Challenge (BraTS) to facilitate research in survival time prediction. Here we present our submissions to the BraTS survival challenge based on classical statistical models to which we feed the provided metadata as features. We intentionally ignore the available image information to explore how patient survival can be predicted purely by metadata. We achieve our best accuracy on the validation set using a simple median regression model taking only patient age into account. We suggest using our model as a baseline to benchmark the added predictive value of sophisticated features for survival time prediction.
机译:神经胶质瘤是成人中最普遍的原发性恶性脑肿瘤。迄今为止,尚未开发出基于医学成像和元信息来预测患者生存时间的准确可靠的方法[3]。因此,将生存时间预测任务引入了多模式脑肿瘤分割挑战赛(BraTS),以促进生存时间预测的研究。在这里,我们基于经典的统计模型向BraTS生存挑战提出了自己的建议,我们将提供的元数据作为特征提供给该统计模型。我们有意忽略了可用的图像信息,以探索如何仅通过元数据可以预测患者的存活率。我们使用简单的中值回归模型(仅考虑患者年龄)在验证集上实现了最高的准确性。我们建议使用我们的模型作为基准,以基准化复杂特征对生存时间预测的附加预测值。

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