| Literature DB >> 31015800 |
Yanfang Wang1, Quanli Zhang2, Zhaojia Gao3, Shan Xin1,4, Yanbo Zhao5, Kai Zhang5, Run Shi1, Xuanwen Bao6,7.
Abstract
BACKGROUND: Lung adenocarcinoma (LUAD) patients experiencing lymph node metastasis (LNM) always exhibit poor clinical outcomes. A biomarker or gene signature that could predict survival in these patients would have a substantial clinical impact, allowing for earlier detection of mortality risk and for individualized therapy.Entities:
Keywords: Lung adenocarcinoma (LUAD); Lymph node metastasis (LNM); Overall survival (OS); Transcriptome; Weighted gene co-expression network analysis (WGCNA); mRNA signature
Year: 2019 PMID: 31015800 PMCID: PMC6469135 DOI: 10.1186/s12935-019-0822-1
Source DB: PubMed Journal: Cancer Cell Int ISSN: 1475-2867 Impact factor: 5.722
Fig. 1Flowchart of this study
Fig. 2Identification of prognostic genes in LNM-positive patients. a Volcano plot showing DEGs in LNM + samples. b Clustering dendrogram of genome-wide genes in LNM + samples. c Correlation between modules and traits. Absolute values of correlation coefficients between LNM-status and modules greater than 0.15 were considered as LNM-related modules. d Five hundred seventy-five overlapping candidates in the intersection of two sets. e LASSO Cox analysis identified 4 genes most correlated with overall survival in the training set. f Cox coefficients distribution of the gene signature
Fig. 3Signature-based risk score is a promising marker in the training cohort. a Risk score distribution. b Survival overview. c Heatmap showing the expression profiles of the signature in low- and high-risk groups. d Patients in the high-risk group exhibited worse overall survival compared to those in the low-risk group. e GSEA revealed most significant hallmarks correlated with the high-risk group
Fig. 4Expression and survival analysis in subgroups. a Expression pattern of the gene signature in different AJCC-TNM stages. b Signature-based risk score is a promising marker for overall survival in subgroups with different tumour stages and EGFR and KRAS statuses
Fig. 5Construction of a nomogram for survival prediction. a Nomogram combining signature with clinicopathological features. b Calibration plot showing that nomogram-predicted survival probabilities corresponded closely to the actual observed proportions. c The AUC(t) of multivariable models indicated the nomogram had the highest predictive power for overall survival
Fig. 6Validation of the signature in an external cohort. a Risk score distribution. b Survival overview. c Patients with a high risk score exhibited poorer overall survival in the validation cohort