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Evaluation of a deep learning architecture for MR imaging prediction of ATRX in glioma patients

机译:评估神经胶质瘤患者ATRX MR影像的深度学习架构的评估

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Predicting mutation/loss of alpha-thalassemia/mental retardation syndrome X-linked (ATRX) gene utilizing MR imaging is of high importance since it is a predictor of response and prognosis in brain tumors. In this study, we compare a deep neural network approach based on a residual deep neural network (ResNet) architecture and one based on a classical machine learning approach and evaluate their ability in predicting ATRX mutation status without the need for a distinct tumor segmentation step. We found that the ResNetSO (50 layers) architecture, pre trained on ImageNet data was the best performing model, achieving an accuracy of 0.91 for the test set (classification of a slice as no tumor, ATRX mutated, or mutated) in terms of fl score in a test set of 35 cases. The SVM classifier achieved 0.63 for differentiating the Flair signal abnormality regions from the test patients based on their mutation status. We report a method that alleviates the need for extensive preprocessing and acts as a proof of concept that deep neural network architectures can be used to predict molecular biomarkers from routine medical images.
机译:利用MR成像预测α地中海贫血/智力低下综合征X连锁(ATRX)基因的突变/缺失非常重要,因为它是脑肿瘤反应和预后的预测因子。在这项研究中,我们比较了基于残差深层神经网络(ResNet)架构的深层神经网络方法和基于经典机器学习方法的深层神经网络方法,并评估了它们预测ATRX突变状态的能力,而无需进行明显的肿瘤分割步骤。我们发现,对ImageNet数据进行预训练的ResNetSO(50层)架构是性能最佳的模型,其测试集(切片的分类为无肿瘤,ATRX突变或突变)的精度为0.91。在35个案例的测试集中得分。 SVM分类器达到0.63,可根据突变状态将Flair信号异常区域与测试患者区分开。我们报告了一种方法,该方法可以减轻对大量预处理的需求,并可以作为一种概念证明,可以使用深层神经网络体系结构从常规医学图像中预测分子生物标志物。

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