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. 2023 Feb 1;24(3):2794. doi: 10.3390/ijms24032794.
This study aimed to identify a distant-recurrence image biomarker in NSCLC by investigating correlations between heterogeneity functional gene expression and fluorine-18-2-fluoro-2-deoxy-D-glucose positron emission tomography (F-FDG PET) image features of NSCLC patients. RNA-sequencing data and F-FDG PET images of 53 patients with NSCLC (19 with distant recurrence and 34 without recurrence) from The Cancer Imaging Archive and The Cancer Genome Atlas Program databases were used in a combined analysis. Weighted correlation network analysis was performed to identify gene groups related to distant recurrence. Genes were selected for functions related to distant recurrence. In total, 47 image features were extracted from PET images as radiomics. The relationship between gene expression and image features was estimated using a hypergeometric distribution test with the Pearson correlation method. The distant recurrence prediction model was validated by a random forest (RF) algorithm using image texture features and related gene expression. In total, 37 gene modules were identified by gene-expression pattern with weighted gene co-expression network analysis. The gene modules with the highest significance were selected (-value < 0.05). Nine genes with high protein-protein interaction and area under the curve (AUC) were identified as hub genes involved in the proliferation function, which plays an important role in distant recurrence of cancer. Four image features (GLRLM_SRHGE, GLRLM_HGRE, SUVmean, and GLZLM_GLNU) and six genes were identified to be correlated (-value < 0.1). AUCs (accuracy: 0.59, AUC: 0.729) from the 47 image texture features and AUCs (accuracy: 0.767, AUC: 0.808) from hub genes were calculated using the RF algorithm. AUCs (accuracy: 0.783, AUC: 0.912) from the four image texture features and six correlated genes and AUCs (accuracy: 0.738, AUC: 0.779) from only the four image texture features were calculated using the RF algorithm. The four image texture features validated by heterogeneity group gene expression were found to be related to cancer heterogeneity. The identification of these image texture features demonstrated that advanced prediction of NSCLC distant recurrence is possible using the image biomarker.
本研究旨在通过研究非小细胞肺癌(NSCLC)患者的异质性功能基因表达与氟-18-2-氟-2-脱氧-D-葡萄糖正电子发射断层扫描(F-FDG PET)图像特征之间的相关性,确定 NSCLC 的远处复发图像生物标志物。使用来自癌症成像档案和癌症基因组图谱计划数据库的 53 名 NSCLC 患者(19 名有远处复发和 34 名无复发)的 RNA 测序数据和 F-FDG PET 图像进行联合分析。采用加权相关网络分析(WGCNA)识别与远处复发相关的基因群。选择与远处复发相关功能的基因。共从 PET 图像中提取 47 个图像特征作为放射组学。使用超几何分布检验和 Pearson 相关方法估计基因表达与图像特征之间的关系。使用随机森林(RF)算法基于图像纹理特征和相关基因表达对远处复发预测模型进行验证。通过加权基因共表达网络分析(WGCNA)对基因表达模式进行识别,共确定了 37 个基因模块。选择具有最高意义的基因模块(-值<0.05)。确定了 9 个具有高蛋白质-蛋白质相互作用和曲线下面积(AUC)的基因作为与增殖功能相关的枢纽基因,该功能在癌症的远处复发中起着重要作用。确定了 4 个图像特征(GLRLM_SRHGE、GLRLM_HGRE、SUVmean 和 GLZLM_GLNU)和 6 个基因与增殖功能相关(-值<0.1)。使用 RF 算法计算了 47 个图像纹理特征的 AUC(准确性:0.59,AUC:0.729)和 6 个枢纽基因的 AUC(准确性:0.767,AUC:0.808)。使用 RF 算法计算了 4 个图像纹理特征和 6 个相关基因的 AUC(准确性:0.783,AUC:0.912)和仅 4 个图像纹理特征的 AUC(准确性:0.738,AUC:0.779)。通过异质性组基因表达验证的 4 个图像纹理特征与癌症异质性有关。这些图像纹理特征的鉴定表明,使用图像生物标志物可以对 NSCLC 的远处复发进行早期预测。