Cancer Center, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, 430022, China.
Department of Ultrasound, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, 430022, China.
BMC Med Genomics. 2022 Feb 22;15(1):33. doi: 10.1186/s12920-022-01184-1.
Precision medicine has increased the accuracy of cancer diagnosis and treatment, especially in the era of cancer immunotherapy. Despite recent advances in cancer immunotherapy, the overall survival rate of advanced NSCLC patients remains low. A better classification in advanced NSCLC is important for developing more effective treatments.
The calculation of abundances of tumor-infiltrating immune cells (TIICs) was conducted using Cell-type Identification By Estimating Relative Subsets Of RNA Transcripts (CIBERSORT), xCell (xCELL), Tumor IMmune Estimation Resource (TIMER), Estimate the Proportion of Immune and Cancer cells (EPIC), and Microenvironment Cell Populations-counter (MCP-counter). K-means clustering was used to classify patients, and four machine learning methods (SVM, Randomforest, Adaboost, Xgboost) were used to build the classifiers. Multi-omics datasets (including transcriptomics, DNA methylation, copy number alterations, miRNA profile) and ICI immunotherapy treatment cohorts were obtained from various databases. The drug sensitivity data were derived from PRISM and CTRP databases.
In this study, patients with stage 3-4 NSCLC were divided into three clusters according to the abundance of TIICs, and we established classifiers to distinguish these clusters based on different machine learning algorithms (including SVM, RF, Xgboost, and Adaboost). Patients in cluster-2 were found to have a survival advantage and might have a favorable response to immunotherapy. We then constructed an immune-related Poor Prognosis Signature which could successfully predict the advanced NSCLC patient survival, and through epigenetic analysis, we found 3 key molecules (HSPA8, CREB1, RAP1A) which might serve as potential therapeutic targets in cluster-1. In the end, after screening of drug sensitivity data derived from CTRP and PRISM databases, we identified several compounds which might serve as medication for different clusters.
Our study has not only depicted the landscape of different clusters of stage 3-4 NSCLC but presented a treatment strategy for patients with advanced NSCLC.
精准医学提高了癌症诊断和治疗的准确性,尤其是在癌症免疫治疗时代。尽管癌症免疫治疗取得了最近的进展,但晚期 NSCLC 患者的总生存率仍然较低。对晚期 NSCLC 进行更好的分类对于开发更有效的治疗方法很重要。
使用 Cell-type identification By Estimating Relative Subsets Of RNA Transcripts(CIBERSORT)、xCell(xCELL)、Tumor IMmune Estimation Resource(TIMER)、Estimate the Proportion of Immune and Cancer cells(EPIC)和 Microenvironment Cell Populations-counter(MCP-counter)计算肿瘤浸润免疫细胞(TIIC)的丰度。使用 K-means 聚类对患者进行分类,并使用四种机器学习方法(SVM、Randomforest、Adaboost、Xgboost)构建分类器。从各种数据库中获取多组学数据集(包括转录组学、DNA 甲基化、拷贝数改变、miRNA 谱)和 ICI 免疫治疗队列。药物敏感性数据来自 PRISM 和 CTRP 数据库。
在这项研究中,根据 TIIC 的丰度,将 III-IV 期 NSCLC 患者分为三个亚群,我们建立了分类器,根据不同的机器学习算法(包括 SVM、RF、Xgboost 和 Adaboost)来区分这些亚群。发现亚群 2 中的患者具有生存优势,可能对免疫治疗有良好的反应。我们构建了一个免疫相关的预后不良标志物,该标志物可以成功预测晚期 NSCLC 患者的生存情况,并通过表观遗传分析,我们发现了 3 个关键分子(HSPA8、CREB1、RAP1A),它们可能是亚群 1 中的潜在治疗靶点。最后,在筛选 CTRP 和 PRISM 数据库中衍生的药物敏感性数据后,我们确定了几种可能适用于不同亚群的化合物。
我们的研究不仅描绘了 III-IV 期 NSCLC 不同亚群的特征,还为晚期 NSCLC 患者提供了一种治疗策略。