Zhang Dengyong, Li Xinrui, Wang Zhonglin, Fan Jingyuan, Yang Yuhang, Han Sophia, Sun Wanliang, Wang Dongdong, Zhou Shuo, Liu Zhong, Chen Shihao, Yang Yan, Zhu Yan, Lu Zheng
Department of General Surgery, The First Affiliated Hospital of Bengbu Medical University, Bengbu, Anhui, China.
Biology Department, Bates College, Lewiston, ME, United States.
Front Immunol. 2025 Jun 16;16:1614683. doi: 10.3389/fimmu.2025.1614683. eCollection 2025.
The treatment of cholangiocarcinoma (CCA) continues to face numerous clinical challenges, including the prediction of sensitivity to immunotherapy and the development of preoperative diagnostic models.
In this study, we aimed to address these challenges by collecting bile samples from CCA patients for metabolomic and microbiomic analyses. We also performed immunofluorescence (IF) staining on tissue formalin-fixed, paraffin-embedded (FFPE) blocks to assess the expression of relevant biomarkers. Additionally, we followed up with patients to analyze prognostic indicators based on their survival times. Using advanced machine learning techniques, specifically LASSO regression, we constructed a predictive model to determine the effectiveness of programmed cell death protein 1 (PD-1) inhibitors in treating CCA. The model integrates bile metabolomic data with an Immune Hot-Cold Index (IHC Index) derived from IF results, providing a comprehensive metric of the patient's immune environment.
Our findings revealed significant differences in metabolomic profiles between CCA patients and those with non-malignant liver diseases, as well as between patients with different genetic mutations. The IHC Index successfully differentiated between immune "hot" and "cold" states, correlating strongly with patient responses to immunotherapy. Furthermore, in one CCA patient, the model's predictions were validated, demonstrating high accuracy and clinical relevance.
Our predictive model offers a robust tool for assessing the sensitivity of CCA patients to PD-1 inhibitors, potentially guiding personalized treatment strategies. Additionally, the integration of bile metabolomics with IF data provides a promising approach for developing preoperative diagnostic models, enhancing early detection and treatment planning for CCA.
胆管癌(CCA)的治疗仍面临众多临床挑战,包括免疫治疗敏感性预测和术前诊断模型的开发。
在本研究中,我们旨在通过收集CCA患者的胆汁样本进行代谢组学和微生物组学分析来应对这些挑战。我们还对组织福尔马林固定、石蜡包埋(FFPE)块进行免疫荧光(IF)染色,以评估相关生物标志物的表达。此外,我们对患者进行随访,根据其生存时间分析预后指标。使用先进的机器学习技术,特别是LASSO回归,我们构建了一个预测模型,以确定程序性细胞死亡蛋白1(PD-1)抑制剂治疗CCA的有效性。该模型将胆汁代谢组学数据与从IF结果得出的免疫热冷指数(IHC指数)相结合,提供了患者免疫环境的综合指标。
我们的研究结果显示,CCA患者与非恶性肝病患者之间以及不同基因突变患者之间的代谢组学谱存在显著差异。IHC指数成功区分了免疫“热”和“冷”状态,与患者对免疫治疗的反应密切相关。此外,在一名CCA患者中,该模型的预测得到了验证,显示出高准确性和临床相关性。
我们的预测模型为评估CCA患者对PD-1抑制剂的敏感性提供了一个强大的工具,可能指导个性化治疗策略。此外,胆汁代谢组学与IF数据的整合为开发术前诊断模型提供了一种有前景的方法,可加强CCA的早期检测和治疗规划。