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Trans-omics biomarker model improves prognostic prediction accuracy for early-stage lung adenocarcinoma
Author(s) -
Xuesi Dong,
Ruyang Zhang,
Jieyu He,
Linjing Lai,
Raphael N. Alolga,
Sipeng Shen,
Ying Zhu,
Dongfang You,
Lijuan Lin,
Chao Chen,
Yang Zhao,
Weiwei Duan,
Li Su,
Andrea T. Shafer,
Moran Salama,
Thomas Fleischer,
Maria Moksnes Bjaanæs,
Anna Karlsson,
Maria Planck,
Rui Wang,
Johan Staaf,
Åslaug Helland,
Manel Esteller,
Yongyue Wei,
Feng Chen,
David C. Christiani
Publication year - 2019
Publication title -
aging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.473
H-Index - 90
ISSN - 1945-4589
DOI - 10.18632/aging.102189
Subject(s) - biomarker , stage (stratigraphy) , dna methylation , adenocarcinoma , omics , lung cancer , oncology , biomarker discovery , medicine , bioinformatics , biology , cancer , computational biology , gene , gene expression , proteomics , genetics , paleontology
Limited studies have focused on developing prognostic models with trans-omics biomarkers for early-stage lung adenocarcinoma (LUAD). We performed integrative analysis of clinical information, DNA methylation, and gene expression data using 825 early-stage LUAD patients from 5 cohorts. Ranger algorithm was used to screen prognosis-associated biomarkers, which were confirmed with a validation phase. Clinical and biomarker information was fused using an iCluster plus algorithm, which significantly distinguished patients into high- and low-mortality risk groups ( P discovery = 0.01 and P validation = 2.71×10 -3 ). Further, potential functional DNA methylation-gene expression-overall survival pathways were evaluated by causal mediation analysis. The effect of DNA methylation level on LUAD survival was significantly mediated through gene expression level. By adding DNA methylation and gene expression biomarkers to a model of only clinical data, the AUCs of the trans-omics model improved by 18.3% (to 87.2%) and 16.4% (to 85.3%) in discovery and validation phases, respectively. Further, concordance index of the nomogram was 0.81 and 0.77 in discovery and validation phases, respectively. Based on systematic review of published literatures, our model was superior to all existing models for early-stage LUAD. In summary, our trans-omics model may help physicians accurately identify patients with high mortality risk.

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