Radiological and Medico-Oncological Sciences, University of Science and Technology, Daejeon 34113, Republic of Korea.
Division of RI-Convergence Research, Korea Institute of Radiological and Medical Sciences, Seoul 07812, Republic of Korea.
Int J Mol Sci. 2024 Jan 5;25(2):698. doi: 10.3390/ijms25020698.
The image texture features obtained from F-fluorodeoxyglucose positron emission tomography/computed tomography (F-FDG PET/CT) images of non-small cell lung cancer (NSCLC) have revealed tumor heterogeneity. A combination of genomic data and radiomics may improve the prediction of tumor prognosis. This study aimed to predict NSCLC metastasis using a graph neural network (GNN) obtained by combining a protein-protein interaction (PPI) network based on gene expression data and image texture features. F-FDG PET/CT images and RNA sequencing data of 93 patients with NSCLC were acquired from The Cancer Imaging Archive. Image texture features were extracted from F-FDG PET/CT images and area under the curve receiver operating characteristic curve (AUC) of each image feature was calculated. Weighted gene co-expression network analysis (WGCNA) was used to construct gene modules, followed by functional enrichment analysis and identification of differentially expressed genes. The PPI of each gene module and genes belonging to metastasis-related processes were converted via a graph attention network. Images and genomic features were concatenated. The GNN model using PPI modules from WGCNA and metastasis-related functions combined with image texture features was evaluated quantitatively. Fifty-five image texture features were extracted from F-FDG PET/CT, and radiomic features were selected based on AUC (n = 10). Eighty-six gene modules were clustered by WGCNA. Genes (n = 19) enriched in the metastasis-related pathways were filtered using DEG analysis. The accuracy of the PPI network, derived from WGCNA modules and metastasis-related genes, improved from 0.4795 to 0.5830 ( < 2.75 × 10). Integrating PPI of four metastasis-related genes with F-FDG PET/CT image features in a GNN model elevated its accuracy over a without image feature model to 0.8545 (95% CI = 0.8401-0.8689, -value < 0.02). This model demonstrated significant enhancement compared to the model using PPI and F-FDG PET/CT derived from WGCNA (-value < 0.02), underscoring the critical role of metastasis-related genes in prediction model. The enhanced predictive capability of the lymph node metastasis prediction GNN model for NSCLC, achieved through the integration of comprehensive image features with genomic data, demonstrates promise for clinical implementation.
非小细胞肺癌(NSCLC)的 F-氟代脱氧葡萄糖正电子发射断层扫描/计算机断层扫描(F-FDG PET/CT)图像的纹理特征揭示了肿瘤异质性。基因组数据和放射组学的结合可能会改善肿瘤预后的预测。本研究旨在通过结合基于基因表达数据的蛋白质-蛋白质相互作用(PPI)网络和图像纹理特征,使用图神经网络(GNN)来预测 NSCLC 转移。从癌症影像档案中获取了 93 名 NSCLC 患者的 F-FDG PET/CT 图像和 RNA 测序数据。从 F-FDG PET/CT 图像中提取图像纹理特征,并计算每个图像特征的曲线下面积(AUC)。使用加权基因共表达网络分析(WGCNA)构建基因模块,然后进行功能富集分析和差异表达基因鉴定。通过图注意力网络将每个基因模块的 PPI 和属于转移相关过程的基因进行转换。将图像和基因组特征进行连接。使用 WGCNA 的 PPI 模块和与图像纹理特征相结合的转移相关功能的 GNN 模型进行定量评估。从 F-FDG PET/CT 中提取了 55 个纹理特征,并根据 AUC 选择了放射组学特征(n = 10)。WGCNA 聚类得到 86 个基因模块。使用 DEG 分析筛选出与转移相关途径相关的基因(n = 19)。WGCNA 模块和转移相关基因衍生的 PPI 网络的准确性从 0.4795 提高到 0.5830(<2.75×10)。将四个转移相关基因的 PPI 与 GNN 模型中的 F-FDG PET/CT 图像特征相结合,使模型的准确性提高到 0.8545(95%CI=0.8401-0.8689,<2 值<0.02)。与不使用图像特征的模型相比,该模型使用来自 WGCNA 的 PPI 和 F-FDG PET/CT 显示出显著提高(<2 值<0.02),这突显了转移相关基因在预测模型中的关键作用。通过整合全面的图像特征和基因组数据,增强了 NSCLC 淋巴结转移预测 GNN 模型的预测能力,这为临床应用提供了希望。