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基于影像组学的胶质母细胞瘤总生存预测模型

Radiogenomics model for overall survival prediction of glioblastoma.

机构信息

Department of Biomedical Engineering, National University of Singapore, Singapore, Singapore.

Department of Electronics and Telecommunications, University of Moratuwa, Moratuwa, Sri Lanka.

出版信息

Med Biol Eng Comput. 2020 Aug;58(8):1767-1777. doi: 10.1007/s11517-020-02179-9. Epub 2020 Jun 3.

DOI:10.1007/s11517-020-02179-9
PMID:32488372
Abstract

Glioblastoma multiforme (GBM) is a very aggressive and infiltrative brain tumor with a high mortality rate. There are radiomic models with handcrafted features to estimate glioblastoma prognosis. In this work, we evaluate to what extent of combining genomic with radiomic features makes an impact on the prognosis of overall survival (OS) in patients with GBM. We apply a hypercolumn-based convolutional network to segment tumor regions from magnetic resonance images (MRI), extract radiomic features (geometric, shape, histogram), and fuse with gene expression profiling data to predict survival rate for each patient. Several state-of-the-art regression models such as linear regression, support vector machine, and neural network are exploited to conduct prognosis analysis. The Cancer Genome Atlas (TCGA) dataset of MRI and gene expression profiling is used in the study to observe the model performance in radiomic, genomic, and radiogenomic features. The results demonstrate that genomic data are correlated with the GBM OS prediction, and the radiogenomic model outperforms both radiomic and genomic models. We further illustrate the most significant genes, such as IL1B, KLHL4, ATP1A2, IQGAP2, and TMSL8, which contribute highly to prognosis analysis. Graphical Abstract Our Proposed fully automated "Radiogenomic"" approach for survival prediction overview. It fuses geometric, intensity, volumetric, genomic and clinical information to predict OS.

摘要

胶质母细胞瘤(GBM)是一种侵袭性和浸润性很强的脑肿瘤,死亡率很高。有一些基于手工特征的放射组学模型可以估计胶质母细胞瘤的预后。在这项工作中,我们评估了将基因组与放射组学特征相结合对胶质母细胞瘤患者总生存期(OS)预后的影响程度。我们应用基于超列的卷积网络从磁共振图像(MRI)中分割肿瘤区域,提取放射组学特征(几何形状、形状、直方图),并与基因表达谱数据融合,以预测每位患者的生存率。我们利用了几种最先进的回归模型,如线性回归、支持向量机和神经网络,来进行预后分析。本研究使用了癌症基因组图谱(TCGA)的 MRI 和基因表达谱数据集,以观察模型在放射组学、基因组学和放射基因组学特征中的性能。结果表明,基因组数据与 GBM OS 预测相关,放射基因组模型优于放射组学和基因组模型。我们进一步说明了对预后分析贡献最大的一些基因,如 IL1B、KLHL4、ATP1A2、IQGAP2 和 TMSL8 等。

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