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Deep Learning based Radiomics (DLR) and its usage in noninvasive IDH1 prediction for low grade glioma

机译:基于深度学习的Radiomics(DLR)及其在低级神经胶质瘤无创IDH1预测中的用途

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摘要

Deep learning-based radiomics (DLR) was developed to extract deep information from multiple modalities of magnetic resonance (MR) images. The performance of DLR for predicting the mutation status of isocitrate dehydrogenase 1 (IDH1) was validated in a dataset of 151 patients with low-grade glioma. A modified convolutional neural network (CNN) structure with 6 convolutional layers and a fully connected layer with 4096 neurons was used to segment tumors. Instead of calculating image features from segmented images, as typically performed for normal radiomics approaches, image features were obtained by normalizing the information of the last convolutional layers of the CNN. Fisher vector was used to encode the CNN features from image slices of different sizes. High-throughput features with dimensionality greater than 1.6*104 were obtained from the CNN. Paired t-tests and F-scores were used to select CNN features that were able to discriminate IDH1. With the same dataset, the area under the operating characteristic curve (AUC) of the normal radiomics method was 86% for IDH1 estimation, whereas for DLR the AUC was 92%. The AUC of IDH1 estimation was further improved to 95% using DLR based on multiple-modality MR images. DLR could be a powerful way to extract deep information from medical images.
机译:基于深度学习的放射学(DLR)可以从磁共振(MR)图像的多种形式中提取深度信息。在151例低度神经胶质瘤患者的数据集中验证了DLR预测异柠檬酸脱氢酶1(IDH1)突变状态的性能。具有6个卷积层和具有4096个神经元的完全连接层的改进的卷积神经网络(CNN)结构用于分割肿瘤。代替通常针对常规放射线学方法从分割的图像计算图像特征,而是通过归一化CNN的最后卷积层的信息来获得图像特征。 Fisher向量用于从不同大小的图像切片中编码CNN特征。从CNN获得尺寸大于1.6 * 10 4 的高通量特征。配对的t检验和F分数用于选择能够区分IDH1的CNN功能。对于相同的数据集,对于IDH1估计,常规放射线学方法的工作特征曲线(AUC)下的面积为86%,而对于DLR,AUC为92%。使用基于多模态MR图像的DLR,IDH1估计的AUC进一步提高到95%。 DLR可能是从医学图像中提取深度信息的有效方法。

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