Department of Radiology and Center for Imaging Science, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, South Korea.
Department of Radiology, Veterans Health Service Medical Center, Seoul, South Korea.
PLoS One. 2020 Apr 6;15(4):e0231227. doi: 10.1371/journal.pone.0231227. eCollection 2020.
Growing evidence suggests that the efficacy of immunotherapy in non-small cell lung cancers (NSCLCs) is associated with the immune microenvironment within the tumor. We aimed to explore radiologic phenotyping using a radiomics approach to assess the immune microenvironment in NSCLC. Two independent NSCLC cohorts (training and test sets) were included. Single-sample gene set enrichment analysis was used to determine the tumor microenvironment, where type 1 helper T (Th1) cells, type 2 helper T (Th2) cells, and cytotoxic T cells were the targets for prediction with computed tomographic (CT) radiomic features. Multiple algorithms were in the modeling followed by final model selection. The training dataset comprised 89 NSCLCs and the test set included 60 cases of lung squamous cell carcinoma and adenocarcinoma. A total of 239 CT radiomic features were used. A linear discriminant analysis model was selected for the final model of Th2 cell group prediction. The area under the curve value of the final model on the test set was 0.684. Predictors of the linear discriminant analysis model were skewness (total and outer pixels), kurtosis, variance (subsampled from delta [subtraction inner pixels from outer pixels]), and informational measure of correlation. The performances of radiomics on test set of Th1 and cytotoxic T cell were not accurate enough to be predictable. A radiomics approach can be used to interrogate an entire tumor in a noninvasive manner and provide added diagnostic value to identify the immune microenvironment of NSCLC, in particular, Th2 cell signatures.
越来越多的证据表明,免疫疗法在非小细胞肺癌(NSCLC)中的疗效与肿瘤内的免疫微环境有关。我们旨在探索使用放射组学方法进行的影像学表型分析,以评估 NSCLC 中的免疫微环境。纳入了两个独立的 NSCLC 队列(训练集和测试集)。使用单样本基因集富集分析来确定肿瘤微环境,其中 1 型辅助 T(Th1)细胞、2 型辅助 T(Th2)细胞和细胞毒性 T 细胞是通过 CT 放射组学特征预测的靶点。使用多种算法进行建模,然后进行最终模型选择。训练数据集包含 89 例 NSCLC,测试集包含 60 例肺鳞癌和腺癌病例。共使用了 239 个 CT 放射组学特征。选择线性判别分析模型作为 Th2 细胞组预测的最终模型。该最终模型在测试集上的曲线下面积值为 0.684。线性判别分析模型的预测因子包括偏度(总像素和外像素)、峰度、方差(从差值中采样[从外像素中减去内像素])和信息相关度量。放射组学在 Th1 和细胞毒性 T 细胞测试集上的表现还不够准确,无法进行预测。放射组学方法可以非侵入性地对整个肿瘤进行检测,并提供额外的诊断价值,以识别 NSCLC 的免疫微环境,特别是 Th2 细胞特征。