Department of Pathology, Children's Hospital of Los Angeles, Los Angeles, CA, USA.
Sylvester Comprehensive Cancer Center, Miami, FL, USA.
Cancer Res Commun. 2022 Jun;2(6):447-455. doi: 10.1158/2767-9764.CRC-22-0075. Epub 2022 Jun 16.
The human microbiome has been strongly correlated with disease pathology and outcomes, yet remains relatively underexplored in patients with malignant endometrial disease. In this study, vaginal microbiome samples were prospectively collected at the time of hysterectomy from 61 racially and ethnically diverse patients from three disease conditions: 1) benign gynecologic disease (controls, n=11), 2) low-grade endometrial carcinoma (n=30), and 3) high-grade endometrial carcinoma (n=20). Extracted DNA underwent shotgun metagenomics sequencing, and microbial α and β diversities were calculated. Hierarchical clustering was used to describe community state types (CST), which were then compared by microbial diversity and grade. Differential abundance was calculated, and machine learning utilized to assess the predictive value of bacterial abundance to distinguish grade and histology. Both α- and β-diversity were associated with patient tumor grade. Four vaginal CST were identified that associated with grade of disease. Different histologies also demonstrated variation in CST within tumor grades. Using supervised clustering algorithms, critical microbiome markers at the species level were used to build models that predicted benign vs carcinoma, high-grade carcinoma versus benign, and high-grade versus low-grade carcinoma with high accuracy. These results confirm that the vaginal microbiome segregates not just benign disease from endometrial cancer, but is predictive of histology and grade. Further characterization of these findings in large, prospective studies is needed to elucidate their potential clinical applications.
人类微生物组与疾病病理和结果密切相关,但在患有恶性子宫内膜疾病的患者中,其仍然相对未得到充分探索。在这项研究中,从来自三种疾病状况的 61 名具有不同种族和民族背景的患者中,在子宫切除时前瞻性地收集了阴道微生物组样本:1)良性妇科疾病(对照组,n=11),2)低级别子宫内膜癌(n=30)和 3)高级别子宫内膜癌(n=20)。提取的 DNA 进行了 shotgun 宏基因组测序,并计算了微生物 α 和 β多样性。使用层次聚类描述群落状态类型(CST),然后通过微生物多样性和等级来比较它们。计算了差异丰度,并利用机器学习来评估细菌丰度区分等级和组织学的预测价值。α-多样性和β-多样性均与患者肿瘤的等级相关。确定了与疾病等级相关的四个阴道 CST。不同的组织学也在肿瘤等级内表现出 CST 的变化。使用监督聚类算法,在物种水平上使用关键微生物群标记来构建模型,这些模型可以高精度地预测良性与癌、高级别癌与良性以及高级别与低级别癌之间的差异。这些结果证实,阴道微生物组不仅可以区分良性疾病与子宫内膜癌,而且可以预测组织学和等级。需要在大型前瞻性研究中进一步表征这些发现,以阐明它们的潜在临床应用。