Gao Jiameng, Zhou Xianqiang, Tian Weibin, Xia Junyi, Wang Lei, Shen Yao, Shen Yao
Department of Respiratory and Critical Care Medicine, Shanghai Pudong Hospital, Shanghai, China.
Department of Traditional Chinese Medicine, Peking University People's Hospital, Beijing, China.
Oncology. 2025;103(9):848-862. doi: 10.1159/000543101. Epub 2024 Dec 11.
The incidence of lung cancer remains high worldwide and is still the leading cause of cancer-related deaths globally. The primary reason for this is that the vast majority of patients are diagnosed only when the disease has progressed to an advanced stage or metastasized. Therefore, early diagnosis of lung cancer is crucial. Approximately 85% of lung cancers are non-small cell lung cancer (NSCLC). As a type of NSCLC, lung adenocarcinoma (LUAD) is more prone to distant metastasis and has a poorer prognosis. It is often primarily treated with immunotherapy. Currently, immunotherapy mainly focuses on T cells. However, with the deepening of research, plasma cells, which have long been considered non-essential in anti-tumor responses, have been increasingly recognized for their critical role.
This study integrates data from TCGA, Tumor Immune Single-Cell Hub 2 (TISCH), and 10X databases, focusing on plasma cells. Through clustering analysis and Least Absolute Shrinkage and Selection Operator (LASSO) regression analysis, it aimed to establish a predictive model for high-risk LUAD patients and further explore the relationship between the risk model and immune cells, with the goal of providing potential predictions for the efficacy of immunotherapy for patients. Additionally, we conducted drug sensitivity analysis and immune checkpoint analysis to identify drugs with potential benefits for the clinical management of high-risk patients. At the same time, we performed further immune checkpoint analysis to identify potential therapeutic targets for LUAD.
By integrating the TCGA, TISCH, and 10X databases and focusing on plasma cells through clustering analysis and LASSO regression analysis, we established a predictive model for high-risk LUAD patients involving four feature genes: BEX5, CASP10, EPSTI1, and LY9. The ROC and results demonstrate that our model has strong predictive performance. Additionally, we found that the risk model is closely related to immune cells, providing the potential for predicting the efficacy of immunotherapy for patients. Subsequently, we conducted drug sensitivity analysis and immune checkpoint analysis, revealing that the majority of drugs are more sensitive to low-risk patients, while ABT-888, AS601245, and CCT007093 may have greater potential clinical benefits for high-risk patients. Immune checkpoint analysis showed significant differences in the expression of ADORA2A, BTLA, CD276, CD27, CD28, CD40LG, CD48, and TNFRSF14 between high-risk and low-risk patient groups, suggesting their potential as therapeutic targets for LUAD.
We constructed a risk assessment model for LUAD patients based on these genes. This model achieved breakthroughs in predicting the prognosis of LUAD patients with different risk levels and identifying potential immune targets, which were validated in the TCGA-LUAD clinical samples.
肺癌在全球范围内的发病率仍然很高,仍是全球癌症相关死亡的主要原因。主要原因是绝大多数患者在疾病进展到晚期或转移时才被诊断出来。因此,肺癌的早期诊断至关重要。大约85%的肺癌是非小细胞肺癌(NSCLC)。作为NSCLC的一种类型,肺腺癌(LUAD)更容易发生远处转移,预后较差。它通常主要采用免疫疗法治疗。目前,免疫疗法主要集中在T细胞上。然而,随着研究的深入,长期以来被认为在抗肿瘤反应中不重要的浆细胞,其关键作用越来越受到认可。
本研究整合了来自TCGA、肿瘤免疫单细胞中心2(TISCH)和10X数据库的数据,重点关注浆细胞。通过聚类分析和最小绝对收缩和选择算子(LASSO)回归分析,旨在建立高危LUAD患者的预测模型,并进一步探索风险模型与免疫细胞之间的关系,为患者免疫治疗疗效提供潜在预测。此外,我们进行了药物敏感性分析和免疫检查点分析,以确定对高危患者临床管理有潜在益处的药物。同时,我们进行了进一步的免疫检查点分析,以确定LUAD的潜在治疗靶点。
通过整合TCGA、TISCH和10X数据库,并通过聚类分析和LASSO回归分析重点关注浆细胞,我们建立了一个涉及四个特征基因(BEX5、CASP10、EPSTI1和LY9)的高危LUAD患者预测模型。ROC和结果表明我们的模型具有很强的预测性能。此外,我们发现风险模型与免疫细胞密切相关,为预测患者免疫治疗疗效提供了可能。随后,我们进行了药物敏感性分析和免疫检查点分析,发现大多数药物对低危患者更敏感,而ABT - 888、AS601245和CCT007093对高危患者可能具有更大的潜在临床益处。免疫检查点分析显示高危和低危患者组之间ADORA2A、BTLA、CD276、CD27、CD28、CD40LG、CD48和TNFRSF14的表达存在显著差异,表明它们作为LUAD治疗靶点的潜力。
我们基于这些基因构建了LUAD患者的风险评估模型。该模型在预测不同风险水平的LUAD患者预后和识别潜在免疫靶点方面取得了突破,并在TCGA - LUAD临床样本中得到了验证。