Chuang Cheng-Hsun, Huang Pei-Ming, Liang Sung-Tzu, Chen Ke-Cheng, Lin Mong-Wei, Kuo Shuenn-Wen, Liao Hsien-Chi, Lee Jang-Ming
Institute of Molecular Medicine and Bioengineering, National Yang Ming Chiao Tung University, Hsinchu, Taiwan.
TCI Gene Inc., Taipei, Taiwan.
Oncology. 2025;103(5):427-438. doi: 10.1159/000541371. Epub 2024 Sep 20.
Cytokines such as tumor necrosis factor-alpha (TNF-α), interleukin 6 (IL6), interferon-gamma (IFN-γ), interleukin 17-alpha (IL17-α), and interleukin 33 (IL33) play critical roles in immune responses and may impact cancer prognosis in future. However, few studies have simultaneously explored the prognostic impact of these cytokines for cancer. In this study, we aim to apply the unsupervised clustering analysis to approach the correlation between the expression of these cytokines and the subsequent prognosis of patients with esophageal squamous cell carcinoma (ESCC).
A robust clustering algorithm was used, the Gaussian mixture method (GMM), through the mclust R package to group patients based on the expression of their cytokines in plasma or tumors. The 324 NTU patients were grouped into 4 clusters, and the 179 GSE53625 patients were grouped into 3 clusters based on expression in plasma and tumors, respectively. Five- and 3-year overall survival (OS) and progression-free survival (PFS) curves of each cluster were compared. Univariate and multivariate Cox regression analyses were also performed.
We successfully distinguished the multimodal distribution of cytokines through GMM clustering and discovered the relationship between cytokines and clinical outcomes. We observed that NTU-G3 and NTU-G4 subgroups showed most variation in 5-, 3-year OS and 5-, 3-year PFS with NTU-G3 being associated with poorer prognosis compared to NTU-G4 (p = 0.016, 0.0052, 0.0575, and 0.0168, respectively). NTU-G3 was characterized with higher TNF-α (median = 3.855, N = 78) and lower IL33 (median = 0.000, N = 78), while NTU-G4 showed lower TNF-α (median = 1.76, N = 51) and higher IL33 (median = 1.070, N = 51). The difference was statistically significant for TNF-α and IL33, with p = 0.0002 and p < 0.0001, respectively. A multivariate Cox-regression analysis revealed that GMM clustering and T/N stage were independent factors for prognosis, suggesting that the prognosis might be dependent on these cytokines.
Our data suggest that expression patterns of IL33 and TNF-α in plasma might serve as a convenient marker to predict the prognosis of ESCC in the future.
细胞因子如肿瘤坏死因子-α(TNF-α)、白细胞介素6(IL6)、干扰素-γ(IFN-γ)、白细胞介素17-α(IL17-α)和白细胞介素33(IL33)在免疫反应中发挥关键作用,未来可能会影响癌症预后。然而,很少有研究同时探讨这些细胞因子对癌症的预后影响。在本研究中,我们旨在应用无监督聚类分析方法来探讨这些细胞因子的表达与食管鳞状细胞癌(ESCC)患者后续预后之间的相关性。
使用一种强大的聚类算法,即高斯混合方法(GMM),通过mclust R包根据患者血浆或肿瘤中细胞因子的表达对患者进行分组。324例NTU患者根据血浆中的表达被分为4个簇,179例GSE53625患者根据肿瘤中的表达被分为3个簇。比较每个簇的5年和3年总生存期(OS)及无进展生存期(PFS)曲线。还进行了单因素和多因素Cox回归分析。
我们通过GMM聚类成功区分了细胞因子的多峰分布,并发现了细胞因子与临床结局之间的关系。我们观察到,NTU-G3和NTU-G4亚组在5年、3年OS及5年、3年PFS方面表现出最大差异,与NTU-G4相比,NTU-G3的预后较差(分别为p = 0.016、0.0052、0.0575和0.0168)。NTU-G3的特征是TNF-α较高(中位数 = 3.855,N = 78),IL-33较低(中位数 = 0.000,N = 78),而NTU-G4的TNF-α较低(中位数 = 1.76,N = 51),IL-33较高(中位数 = 1.070,N = 51)。TNF-α和IL-33的差异具有统计学意义,p分别为0.0002和p < 0.0001。多因素Cox回归分析显示,GMM聚类和T/N分期是预后的独立因素,这表明预后可能取决于这些细胞因子。
我们的数据表明,血浆中IL-33和TNF-α的表达模式可能在未来作为预测ESCC预后的便捷标志物。