Yang Ling, Guo Lijuan, Zhu Yun, Zhang Zehan
Department of Nursing, Chengdu Xinhua Hospital Affiliated to North Sichuan Medical College, Chengdu, China.
Department of Nursing, Qionglai Hospital of Traditional Chinese Medicine, Chengdu, China.
J Cell Mol Med. 2025 Jun;29(11):e70637. doi: 10.1111/jcmm.70637.
Oral cancer is among the most prevalent malignant tumours worldwide; prognosis can be affected by several factors, including molecular subtypes, immune microenvironment and clinical characteristics. In this study, we aimed to apply machine learning methods in conjunction with single-cell sequencing data to characterise the immune microenvironment of oral cancer and build an immune infiltration prediction model to provide a theoretical basis for the personalised therapy and prognosis assessment of oral cancer. Clinico-genomic data were obtained from patients with oral cancer and single-cell sequencing was utilised to delineate the immune cell composition in the tumour microenvironment. Model construction and immune-related gene screening were performed using machine learning algorithms such as Lasso regression, random forest and gradient boosting machine. We assessed the predictive performance of the model by cross-validation on its training dataset and by testing the model on an independent dataset. Certain subsets of immune cells correlate with the prognosis of patients with oral cancer. C-index (given in supplementary) yielded a good discrimination ability (C-index > 0.75) in the training set and validation set. Moreover, the model-identified immune-related genes presented remarkable expression differences in the two different risk groups and played important roles in the response to immune therapy. By exploring the complexity of the oral cancer immune microenvironment with machine learning techniques, in this study, we build a reliable prognostic model based on immune infiltration. The model could be applied in clinical practice to personalisation treatment decision-making and prognosis evaluation.
口腔癌是全球最常见的恶性肿瘤之一;预后会受到多种因素影响,包括分子亚型、免疫微环境和临床特征。在本研究中,我们旨在结合机器学习方法与单细胞测序数据来表征口腔癌的免疫微环境,并构建免疫浸润预测模型,为口腔癌的个性化治疗和预后评估提供理论依据。从口腔癌患者获取临床基因组数据,并利用单细胞测序来描绘肿瘤微环境中的免疫细胞组成。使用套索回归、随机森林和梯度提升机等机器学习算法进行模型构建和免疫相关基因筛选。我们通过在训练数据集上进行交叉验证以及在独立数据集上测试模型来评估模型的预测性能。某些免疫细胞亚群与口腔癌患者的预后相关。C指数(见补充材料)在训练集和验证集中具有良好的区分能力(C指数>0.75)。此外,模型识别出的免疫相关基因在两个不同风险组中呈现出显著的表达差异,并且在免疫治疗反应中发挥重要作用。通过利用机器学习技术探索口腔癌免疫微环境的复杂性,在本研究中,我们基于免疫浸润构建了一个可靠的预后模型。该模型可应用于临床实践,以进行个性化治疗决策和预后评估。