Lu Tong, Guo Wei, Guo Wei, Meng Wangyang, Han Tianyi, Guo Zizhen, Li Chengqiang, Gao Shugeng, Ye Youqiong, Li Hecheng
Department of Thoracic Surgery, Ruijin Hospital, Shanghai Jiao Tong University School of Medicine, 197 Ruijin 2nd Road, Huangpu District, Shanghai 200025, China.
Shanghai Institute of Immunology, State Key Laboratory of Oncogenes and Related Genes, Department of Immunology and Microbiology, Shanghai Jiao Tong University School of Medicine, 227 Chongqing South Road, Huangpu District, Shanghai 200025, China.
Brief Bioinform. 2024 Nov 22;26(1). doi: 10.1093/bib/bbae631.
Intratumor heterogeneity significantly challenges the accuracy of existing prognostic models for esophageal squamous cell carcinoma (ESCC) by introducing biases related to the varied genetic and molecular landscapes within tumors. Traditional models, relying on single-sample, single-region bulk RNA sequencing, fall short of capturing the complexity of intratumor heterogeneity. To fill this gap, we developed a computational model for intratumor heterogeneity corrected signature (ITHCS) by employing both multiregion bulk and single-cell RNA sequencing to pinpoint genes that exhibit consistent expression patterns across different tumor regions but vary significantly among patients. Utilizing these genes, we applied multiple machine-learning algorithms for sophisticated feature selection and model construction. The ITHCS model significantly outperforms existing prognostic indicators in accuracy and generalizability, markedly reducing sampling biases caused by intratumor heterogeneity. This improvement is especially notable in the prognostic assessment of early-stage ESCC patients, where the model exhibits exceptional predictive power. Additionally, we found that the risk score based on ITHCS may be associated with epithelial-mesenchymal transition characteristics, indicating that high-risk patients may exhibit a diminished efficacy to immunotherapy.
肿瘤内异质性通过引入与肿瘤内不同遗传和分子格局相关的偏差,对现有的食管鳞状细胞癌(ESCC)预后模型的准确性构成了重大挑战。传统模型依赖单样本、单区域的批量RNA测序,无法捕捉肿瘤内异质性的复杂性。为了填补这一空白,我们开发了一种肿瘤内异质性校正特征(ITHCS)计算模型,通过使用多区域批量和单细胞RNA测序来确定在不同肿瘤区域表现出一致表达模式但在患者之间差异显著的基因。利用这些基因,我们应用多种机器学习算法进行复杂的特征选择和模型构建。ITHCS模型在准确性和通用性方面显著优于现有的预后指标,显著减少了由肿瘤内异质性引起的采样偏差。这种改进在早期ESCC患者的预后评估中尤为显著,该模型在其中表现出卓越的预测能力。此外,我们发现基于ITHCS的风险评分可能与上皮-间质转化特征相关,这表明高危患者可能对免疫治疗的疗效降低。