Department of Radiation Oncology, Leiden University Medical Center, Leiden, the Netherlands.
Department of Gynaecologic Oncology, University Medical Center Groningen, Groningen, the Netherlands.
Cancer Immunol Res. 2020 Dec;8(12):1508-1519. doi: 10.1158/2326-6066.CIR-20-0149. Epub 2020 Sep 30.
Optimum risk stratification in early-stage endometrial cancer combines clinicopathologic factors and the molecular endometrial cancer classification defined by The Cancer Genome Atlas (TCGA). It is unclear whether analysis of intratumoral immune infiltrate improves this. We developed a machine-learning, image-based algorithm to quantify density of CD8 and CD103 immune cells in tumor epithelium and stroma in 695 stage I endometrioid endometrial cancers from the PORTEC-1 and -2 trials. The relationship between immune cell density and clinicopathologic/molecular factors was analyzed by hierarchical clustering and multiple regression. The prognostic value of immune infiltrate by cell type and location was analyzed by univariable and multivariable Cox regression, incorporating the molecular endometrial cancer classification. Tumor-infiltrating immune cell density varied substantially between cases, and more modestly by immune cell type and location. Clustering revealed three groups with high, intermediate, and low densities, with highly significant variation in the proportion of molecular endometrial cancer subgroups between them. Univariable analysis revealed intraepithelial CD8 cell density as the strongest predictor of endometrial cancer recurrence; multivariable analysis confirmed this was independent of pathologic factors and molecular subgroup. Exploratory analysis suggested this association was not uniform across molecular subgroups, but greatest in tumors with mutant p53 and absent in DNA mismatch repair-deficient cancers. Thus, this work identified that quantification of intraepithelial CD8 cells improved upon the prognostic utility of the molecular endometrial cancer classification in early-stage endometrial cancer.
早期子宫内膜癌的最佳风险分层结合了临床病理因素和癌症基因组图谱(TCGA)定义的分子子宫内膜癌分类。目前尚不清楚分析肿瘤内免疫浸润是否能改善这一点。我们开发了一种基于机器学习的图像算法,以定量分析来自 PORTEC-1 和 -2 试验的 695 例 I 期子宫内膜样子宫内膜癌肿瘤上皮和基质中 CD8 和 CD103 免疫细胞的密度。通过层次聚类和多元回归分析了免疫细胞密度与临床病理/分子因素之间的关系。通过单变量和多变量 Cox 回归分析了不同细胞类型和位置的免疫浸润的预后价值,并纳入了分子子宫内膜癌分类。肿瘤浸润免疫细胞密度在病例之间差异很大,而在免疫细胞类型和位置之间差异较小。聚类显示了三组,分别具有高、中、低密度,其中分子子宫内膜癌亚组的比例有显著差异。单变量分析显示上皮内 CD8 细胞密度是子宫内膜癌复发的最强预测因子;多变量分析证实这与病理因素和分子亚组无关。探索性分析表明,这种关联并非在所有分子亚组中都一致,但在具有突变型 p53 的肿瘤中最大,而在 DNA 错配修复缺陷型癌症中不存在。因此,这项工作表明,上皮内 CD8 细胞的定量分析提高了早期子宫内膜癌中分子子宫内膜癌分类的预后效用。