Huang Junkai, Chen Yu, Tan Zhiguo, Song Yinghui, Chen Kang, Liu Sulai, Peng Chuang, Chen Xu
Department of Hepatobiliary Surgery, Hunan Provincial People's Hospital, The First Affiliated Hospital of Hunan Normal University, Changsha, 410005, Hunan, P. R. China.
The First School of Clinical Medicine, Lanzhou University, Lanzhou, 730000, Gansu, P. R. China.
Curr Med Chem. 2024 Oct 24. doi: 10.2174/0109298673342462241010072026.
We aimed to develop a macrophage signature for predicting clinical outcomes and immunotherapy benefits in cholangiocarcinoma.
Macrophages are potent immune effector cells that can change phenotype in different environments to exert anti-tumor and anti-tumor functions. The role of macrophages in the prognosis and therapy benefits of cholangiocarcinoma was not fully clarified.
The objective of this study is to develop a prognostic model for cholangiocarcinoma.
The macrophage-related signature (MRS) was developed using 10 machine learning methods with TCGA, GSE89748 and GSE107943 datasets. Several indicators (TIDE score, TMB score and MATH score) and two immunotherapy datasets (IMvigor210 and GSE91061) were used to investigate the performance of MRS in predicting the benefits of immunotherapy.
The Lasso + CoxBoost method's MRS was considered a robust and stable model that demonstrated good accuracy in predicting the clinical outcome of patients with cholangiocarcinoma; the AUC of the 2-, 3-, and 4-year ROC curves in the TCGA dataset were 0.965, 0.957, and 1.000. Moreover, MRS acted as an independent risk factor for the clinical outcome of cholangiocarcinoma cases. Cholangiocarcinoma cases with higher MRS scores are correlated with a higher TIDE score, higher tumor escape score, higher MATH score, and lower TMB score. Further analysis suggested high MRS score indicated a higher gene set score correlated with cancer-related hallmarks.
With regard to cholangiocarcinoma, the current study created a machine learning-based MRS that served as an indication for forecasting the prognosis and therapeutic advantages of individual cases.
我们旨在开发一种巨噬细胞特征,用于预测胆管癌的临床结局和免疫治疗益处。
巨噬细胞是强大的免疫效应细胞,可在不同环境中改变表型以发挥抗肿瘤和促肿瘤功能。巨噬细胞在胆管癌预后和治疗益处中的作用尚未完全阐明。
本研究的目的是开发一种胆管癌预后模型。
使用10种机器学习方法以及TCGA数据集、GSE89748和GSE107943数据集,构建巨噬细胞相关特征(MRS)。使用几个指标(TIDE评分、TMB评分和MATH评分)以及两个免疫治疗数据集(IMvigor210和GSE91061)来研究MRS在预测免疫治疗益处方面的性能。
Lasso + CoxBoost方法构建的MRS被认为是一个稳健且稳定的模型,在预测胆管癌患者的临床结局方面显示出良好的准确性;TCGA数据集中2年、3年和4年ROC曲线的AUC分别为0.965、0.957和1.000。此外,MRS是胆管癌病例临床结局的独立危险因素。MRS评分较高的胆管癌病例与较高的TIDE评分、较高的肿瘤逃逸评分、较高的MATH评分和较低的TMB评分相关。进一步分析表明,高MRS评分表明与癌症相关特征相关的基因集评分较高。
关于胆管癌,当前研究创建了一种基于机器学习的MRS,可作为预测个体病例预后和治疗优势的指标。