Department of Laboratory Diagnostics, Changhai Hospital, Navy Medical University, Shanghai, China.
Department of Clinical Laboratory, Air Force Hospital of Eastern Theater Command, Nanjing, China.
Int J Biol Markers. 2023 Jun;38(2):89-98. doi: 10.1177/03936155231166721. Epub 2023 Apr 5.
Dysbiosis commonly occurs in pancreatic cancer, but its specific characteristics and interactions with pancreatic cancer remain obscure.
The 16S rRNA sequencing method was used to analyze multisite (oral and gut) microbiota characteristics of pancreatic cancer, chronic pancreatitis, and healthy controls. Differential analysis was used to identify the pancreatic cancer-associated genera and pathways. A random forest algorithm was adopted to establish the diagnostic models for pancreatic cancer.
The chronic pancreatitis group exhibited the lowest microbial diversity, while no significant difference was found between the pancreatic cancer group and healthy controls group. Diagnostic models based on the characteristics of the oral (area under the curve (AUC) 0.916, 95% confidence interval (CI) 0.832-1) or gut (AUC 0.856; 95% CI 0.74, 0.972) microbiota effectively discriminate the pancreatic cancer samples in this study, suggesting saliva as a superior sample type in terms of detection efficiency and clinical compliance. Oral pathogenic genera (, , , , etc.) and gut opportunistic genera (, , , , , etc.), were significantly enriched in pancreatic cancer. The 16S function prediction analysis revealed that inflammation, immune suppression, and barrier damage pathways were involved in the course of pancreatic cancer.
This study comprehensively described the microbiota characteristics of pancreatic cancer and suggested potential microbial markers as non-invasive tools for pancreatic cancer diagnosis.
胰腺癌常发生菌群失调,但具体特征及其与胰腺癌的相互作用仍不清楚。
采用 16S rRNA 测序方法分析胰腺癌、慢性胰腺炎和健康对照者多部位(口腔和肠道)微生物群落特征。采用差异分析鉴定与胰腺癌相关的属和途径。采用随机森林算法建立胰腺癌诊断模型。
慢性胰腺炎组的微生物多样性最低,而胰腺癌组与健康对照组之间无显著差异。基于口腔(曲线下面积(AUC)0.916,95%置信区间(CI)0.832-1)或肠道(AUC 0.856;95%CI 0.74,0.972)微生物特征的诊断模型可有效区分本研究中的胰腺癌样本,提示唾液作为一种具有较高检测效率和临床依从性的样本类型。口腔致病性属(、、、、等)和肠道机会性属(、、、、、等)在胰腺癌中显著富集。16S 功能预测分析显示,炎症、免疫抑制和屏障损伤途径参与了胰腺癌的发生过程。
本研究全面描述了胰腺癌的微生物群落特征,并提出了潜在的微生物标志物作为胰腺癌非侵入性诊断工具。