De Summa Simona, De Palma Giuseppe, Ghini Veronica, Apollonio Benedetta, De Risi Ivana, Tufaro Antonio, Strippoli Sabino, Luchinat Claudio, Tenori Leonardo, Guida Michele
Molecular Diagnostics and Pharmacogenetics Unit, IRCCS Istituto Tumori "Giovanni Paolo II", Bari, Italy.
Institutional BioBank, Experimental Oncology and Biobank Management Unit, IRCCS Istituto Tumori "Giovanni Paolo II", Bari, Italy.
Front Immunol. 2025 Aug 1;16:1536710. doi: 10.3389/fimmu.2025.1536710. eCollection 2025.
Immune checkpoint inhibitors (ICIs) have improved the metastatic melanoma (MM) treatment. However, a significant proportion of patients show resistance to immunotherapy, and predictive biomarkers for non-responders or high-risk recurring patients are currently lacking. Recent studies have shown that tumor-related metabolic fingerprints can be useful in predicting prognosis and response to therapy in various cancer types. Our study aimed to identify serum-derived metabolomic signatures that could predict clinical responses in MM patients treated with ICIs.
H-NMR (proton nuclear magnetic resonance) was used to analyze the serum metabolomic profiles from 71 MM patients undergoing anti-PD-1 therapy (43 patients as first-line, 27 as second-line, 1 as third-line). Feature selection was applied to identify key metabolites within these profiles, to develop risk score models predicting overall survival (OS) and progression-free survival (PFS).
A multivariable model was used to identify distinct prognostic factors for OS. Negative factors included glucose, high-density lipoprotein (HDL) cholesterol, and apolipoprotein B-very low-density lipoprotein (ApoB-VLDL), whereas glutamine and free HDL cholesterol emerged as positive factors. They were then used to construct a risk score model able to stratify patients in prognostic groups. Similarly, a separate predictive risk score model for PFS was developed, focusing solely on glucose and apolipoprotein A1 (ApoA1) HDL. Threefold cross validation resulted in mean concordance indices of 0.72 and 0.74 for PFS and OS, respectively. Importantly, this analysis was replicated in patients who received first-line ICIs. Interestingly, the prognostic score for OS included glutamine, glucose, and LDL (low-density lipoprotein) triglycerides, whereas only glucose negatively influenced PFS. In this subset, the concordance indices increased to 0.81 and 0.9 for PFS and OS, respectively.
Our data identified glycolipid signatures as robust predictors of distinct therapeutic outcomes in MM patients treated with ICIs. These results could pave the way for novel therapeutic approaches.
免疫检查点抑制剂(ICIs)改善了转移性黑色素瘤(MM)的治疗。然而,相当一部分患者对免疫疗法表现出耐药性,目前缺乏针对无反应者或高风险复发患者的预测生物标志物。最近的研究表明,肿瘤相关的代谢指纹图谱可用于预测各种癌症类型的预后和对治疗的反应。我们的研究旨在识别血清衍生的代谢组学特征,以预测接受ICIs治疗的MM患者的临床反应。
采用氢核磁共振(H-NMR)分析71例接受抗PD-1治疗的MM患者的血清代谢组学谱(43例一线治疗,27例二线治疗,1例三线治疗)。应用特征选择来识别这些谱中的关键代谢物,以建立预测总生存期(OS)和无进展生存期(PFS)的风险评分模型。
使用多变量模型识别OS的不同预后因素。负面因素包括葡萄糖、高密度脂蛋白(HDL)胆固醇和载脂蛋白B-极低密度脂蛋白(ApoB-VLDL),而谷氨酰胺和游离HDL胆固醇则为正面因素。然后将它们用于构建能够将患者分层到预后组的风险评分模型。同样,开发了一个单独的PFS预测风险评分模型,仅关注葡萄糖和载脂蛋白A1(ApoA1)HDL。三重交叉验证得出PFS和OS的平均一致性指数分别为0.72和0.74。重要的是,该分析在接受一线ICIs治疗的患者中得到了重复。有趣的是,OS的预后评分包括谷氨酰胺、葡萄糖和低密度脂蛋白(LDL)甘油三酯,而只有葡萄糖对PFS有负面影响。在这个亚组中,PFS和OS的一致性指数分别增加到0.81和0.9。
我们的数据确定糖脂特征是接受ICIs治疗的MM患者不同治疗结果的有力预测指标。这些结果可能为新的治疗方法铺平道路。