Department of Interventional Radiology, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, 450052, Henan, China.
Interventional Institute of Zhengzhou University, Zhengzhou, 450052, Henan, China.
Cancer Immunol Immunother. 2023 Mar;72(3):599-615. doi: 10.1007/s00262-022-03279-1. Epub 2022 Aug 23.
Although immunotherapy and targeted treatments have dramatically improved the survival of melanoma patients, the intra- or intertumoral heterogeneity and drug resistance have hindered the further expansion of clinical benefits.
The 96 combination frames constructed by ten machine learning algorithms identified a prognostic consensus signature based on 1002 melanoma samples from nine independent cohorts. Clinical features and 26 published signatures were employed to compare the predictive performance of our model.
A machine learning-based prognostic signature (MLPS) with the highest average C-index was developed via 96 algorithm combinations. The MLPS has a stable and excellent predictive performance for overall survival, superior to common clinical traits and 26 collected signatures. The low MLPS group with a better prognosis had significantly enriched immune-related pathways, tending to be an immune-hot phenotype and possessing potential immunotherapeutic responses to anti-PD-1, anti-CTLA-4, and MAGE-A3. On the contrary, the high MLPS group with more complex genomic alterations and poorer prognoses is more sensitive to the BRAF inhibitor dabrafenib, confirmed in patients with BRAF mutations.
MLPS could independently and stably predict the prognosis of melanoma, considered a promising biomarker to identify patients suitable for immunotherapy and those with BRAF mutations who would benefit from dabrafenib.
尽管免疫疗法和靶向治疗显著改善了黑色素瘤患者的生存率,但肿瘤内或肿瘤间的异质性和耐药性阻碍了临床获益的进一步扩大。
十种机器学习算法构建的 96 个组合框架,基于来自九个独立队列的 1002 个黑色素瘤样本,确定了一个预后共识特征。临床特征和 26 个已发表的特征用于比较我们模型的预测性能。
通过 96 种算法组合开发了一种基于机器学习的预后特征(MLPS),其平均 C 指数最高。MLPS 对总生存期具有稳定且优异的预测性能,优于常见的临床特征和 26 个收集的特征。预后较好的低 MLPS 组具有显著富集的免疫相关途径,倾向于表现为免疫热表型,并具有对抗 PD-1、抗 CTLA-4 和 MAGE-A3 的潜在免疫治疗反应。相反,具有更多复杂基因组改变和预后较差的高 MLPS 组对 BRAF 抑制剂 dabrafenib 更为敏感,在 BRAF 突变患者中得到证实。
MLPS 可独立且稳定地预测黑色素瘤的预后,被认为是识别适合免疫治疗和 BRAF 突变患者的有前途的生物标志物,这些患者可能从 dabrafenib 中受益。