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基于卷积神经网络、放射组学和语义学的多模态模型预测胶质母细胞瘤分子亚型和预后

Predicting glioblastoma molecular subtypes and prognosis with a multimodal model integrating convolutional neural network, radiomics, and semantics.

机构信息

1Department of Neurosurgery and Neuro-Oncology, State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou, China.

2Department of Cancer Biology, Dana-Farber Cancer Institute, Boston, Massachusetts.

出版信息

J Neurosurg. 2022 Dec 2;139(2):305-314. doi: 10.3171/2022.10.JNS22801. Print 2023 Aug 1.

Abstract

OBJECTIVE

The aim of this study was to build a convolutional neural network (CNN)-based prediction model of glioblastoma (GBM) molecular subtype diagnosis and prognosis with multimodal features.

METHODS

In total, 222 GBM patients were included in the training set from Sun Yat-sen University Cancer Center (SYSUCC) and 107 GBM patients were included in the validation set from SYSUCC, Xuanwu Hospital Capital Medical University, and the First Hospital of Jilin University. The multimodal model was trained with MR images (pre- and postcontrast T1-weighted images and T2-weighted images), corresponding MRI impression, and clinical patient information. First, the original images were segmented using the Multimodal Brain Tumor Image Segmentation Benchmark toolkit. Convolutional features were extracted using 3D residual deep neural network (ResNet50) and convolutional 3D (C3D). Radiomic features were extracted using pyradiomics. Report texts were converted to word embedding using word2vec. These three types of features were then integrated to train neural networks. Accuracy, precision, recall, and F1-score were used to evaluate the model performance.

RESULTS

The C3D-based model yielded the highest accuracy of 91.11% in the prediction of IDH1 mutation status. Importantly, the addition of semantics improved precision by 11.21% and recall in MGMT promoter methylation status prediction by 14.28%. The areas under the receiver operating characteristic curves of the C3D-based model in the IDH1, ATRX, MGMT, and 1-year prognosis groups were 0.976, 0.953, 0.955, and 0.976, respectively. In external validation, the C3D-based model showed significant improvement in accuracy in the IDH1, ATRX, MGMT, and 1-year prognosis groups, which were 88.30%, 76.67%, 85.71%, and 85.71%, respectively (compared with 3D ResNet50: 83.51%, 66.67%, 82.14%, and 70.79%, respectively).

CONCLUSIONS

The authors propose a novel multimodal model integrating C3D, radiomics, and semantics, which had a great performance in predicting IDH1, ATRX, and MGMT molecular subtypes and the 1-year prognosis of GBM.

摘要

目的

本研究旨在构建基于卷积神经网络(CNN)的胶质母细胞瘤(GBM)分子亚型诊断和预后预测模型,利用多模态特征。

方法

共纳入中山大学肿瘤防治中心(SYSUCC)222 例 GBM 患者作为训练集,SYSUCC、首都医科大学宣武医院和吉林大学第一医院 107 例 GBM 患者作为验证集。使用 MR 图像(增强前后 T1 加权像和 T2 加权像)、相应的 MRI 印象和临床患者信息对多模态模型进行训练。首先,使用多模态脑肿瘤图像分割基准工具包对原始图像进行分割。使用 3D 残差深度神经网络(ResNet50)和卷积 3D(C3D)提取卷积特征。使用 pyradiomics 提取放射组学特征。报告文本使用 word2vec 转换为单词嵌入。然后将这三种类型的特征整合到神经网络中进行训练。使用准确率、精确率、召回率和 F1 评分来评估模型性能。

结果

基于 C3D 的模型在 IDH1 突变状态的预测中准确率最高,为 91.11%。重要的是,语义的加入将 MGMT 启动子甲基化状态预测的准确率提高了 11.21%,召回率提高了 14.28%。基于 C3D 的模型在 IDH1、ATR、MGMT 和 1 年预后组中的受试者工作特征曲线下面积分别为 0.976、0.953、0.955 和 0.976。在外部验证中,基于 C3D 的模型在 IDH1、ATR、MGMT 和 1 年预后组中的准确率均有显著提高,分别为 88.30%、76.67%、85.71%和 85.71%(与 3D ResNet50 相比:83.51%、66.67%、82.14%和 70.79%)。

结论

作者提出了一种新的多模态模型,该模型结合了 C3D、放射组学和语义学,在预测 IDH1、ATR 和 MGMT 分子亚型以及 GBM 的 1 年预后方面具有良好的性能。

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