A Novel Gene Signature Based on Immune Cell Infiltration Landscape Predicts Prognosis in Lung Adenocarcinoma Patients

被引:0
作者
Ma, Chao [1 ]
机构
[1] Zhengzhou Univ, Affiliated Hosp 5, Dept Thorac Surg, Zhengzhou, Peoples R China
关键词
Gene signature; lung adenocarcinoma; biomarker; immune cell infiltration; immune cells; tumor microenvironment; INTEGRATED ANALYSIS; CANCER; TUMOR; MICROENVIRONMENT; ACTIVATION; EXPRESSION; MIGRATION; INVASION; EGFR;
D O I
10.2174/0109298673293174240320053546
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Background The tumor microenvironment (TME) is created by the tumor and dominated by tumor-induced interactions. Long-term survival of lung adenocarcinoma (LUAD) patients is strongly influenced by immune cell infiltration in TME. The current article intends to construct a gene signature from LUAD ICI for predicting patient outcomes.Methods For the initial phase of the study, the TCGA-LUAD dataset was chosen as the training group for dataset selection. We found two datasets named GSE72094 and GSE68465 in the Gene Expression Omnibus (GEO) database for model validation. Unsupervised clustering was performed on the training cohort patients using the ICI profiles. We employed Kaplan-Meier estimators and univariate Cox proportional-hazard models to identify prognostic differentially expressed genes in immune cell infiltration (ICI) clusters. These prognostic genes are then used to develop a LASSO Cox model that generates a prognostic gene signature. Validation was performed using Kaplan-Meier estimation, Cox, and ROC analysis. Our signature and vital immune-relevant signatures were analyzed. Finally, we performed gene set enrichment analysis (GSEA) and immune infiltration analysis on our finding gene signature to further examine the functional mechanisms and immune cellular interactions.Results Our study found a sixteen-gene signature (EREG, HPGDS, TSPAN32, ACSM5, SFTPD, SCN7A, CCR2, S100P, KLK12, MS4A1, INHA, HOXB9, CYP4B1, SPOCK1, STAP1, and ACAP1) to be prognostic based on data from the training cohort. This prognostic signature was certified by Kaplan-Meier, Cox proportional-hazards, and ROC curves. 11/15 immune-relevant signatures were related to our signature. The GSEA results indicated our gene signature strongly correlates with immune-related pathways. Based on the immune infiltration analysis findings, it can be deduced that a significant portion of the prognostic significance of the signature can be attributed to resting mast cells.Conclusions We used bioinformatics to determine a new, robust sixteen-gene signature. We also found that this signature's prognostic ability was closely related to the resting mast cell infiltration of LUAD patients.
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页码:6319 / 6335
页数:17
相关论文
共 46 条
[21]   Role of prostaglandin D2 receptor DP as a suppressor of tumor hyperpermeability and angiogenesis in vivo [J].
Murata, Takahisa ;
Lin, Michelle I. ;
Aritake, Kosuke ;
Matsumoto, Shigeko ;
Narumiya, Shu ;
Ozaki, Hiroshi ;
Urade, Yoshihiro ;
Hori, Masatoshi ;
Sessa, William C. .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2008, 105 (50) :20009-20014
[22]   Determining cell type abundance and expression from bulk tissues with digital cytometry [J].
Newman, Aaron M. ;
Steen, Chloe B. ;
Liu, Chih Long ;
Gentles, Andrew J. ;
Chaudhuri, Aadel A. ;
Scherer, Florian ;
Khodadoust, Michael S. ;
Esfahani, Mohammad S. ;
Luca, Bogdan A. ;
Steiner, David ;
Diehn, Maximilian ;
Alizadeh, Ash A. .
NATURE BIOTECHNOLOGY, 2019, 37 (07) :773-+
[23]   Safety and efficacy of quavonlimab, a novel anti-CTLA-4 antibody (MK-1308), in combination with pembrolizumab in first-line advanced non-small-cell lung cancer [J].
Perets, R. ;
Bar, J. ;
Rasco, D. W. ;
Ahn, M-J ;
Yoh, K. ;
Kim, D-W ;
Nagrial, A. ;
Satouchi, M. ;
Lee, D. H. ;
Spigel, D. R. ;
Kotasek, D. ;
Gutierrez, M. ;
Niu, J. ;
Siddiqi, S. ;
Li, X. ;
Cyrus, J. ;
Chackerian, A. ;
Chain, A. ;
Altura, R. A. ;
Cho, B. C. .
ANNALS OF ONCOLOGY, 2021, 32 (03) :395-403
[24]   A multiparametric serum kallikrein panel for diagnosis of non-small cell lung carcinoma [J].
Planque, Chris ;
Li, Lin ;
Zheng, Yingye ;
Soosaipillai, Antoninus ;
Reckamp, Karen ;
Chia, David ;
Diamandis, Eleftherios P. ;
Goodglick, Lee .
CLINICAL CANCER RESEARCH, 2008, 14 (05) :1355-1362
[25]   Life-course socioeconomic disadvantage and lung function: a multicohort study of 70496 individuals [J].
Rocha, Vania ;
Fraga, Silvia ;
Moreira, Carla ;
Carmeli, Cristian ;
Lenoir, Alexandra ;
Steptoe, Andrew ;
Giles, Graham ;
Goldberg, Marcel ;
Zins, Marie ;
Kivimaki, Mika ;
Vineis, Paolo ;
Vollenweider, Peter ;
Barros, Henrique ;
Stringhini, Silvia .
EUROPEAN RESPIRATORY JOURNAL, 2021, 57 (03)
[26]   Granzyme B-induced apoptosis in cancer cells and its regulation (Review) [J].
Rousalova, Ilona ;
Krepela, Evzen .
INTERNATIONAL JOURNAL OF ONCOLOGY, 2010, 37 (06) :1361-1378
[27]   Uncovering the immune tumor microenvironment in non-small cell lung cancer to understand response rates to checkpoint blockade and radiation [J].
Schoenhals, Jonathan E. ;
Seyedin, Steven N. ;
Anderson, Clark ;
Brooks, Eric D. ;
Li, Yun R. ;
Younes, Ahmed I. ;
Niknam, Sharareh ;
Li, Ailin ;
Barsoumian, Hampartsoum B. ;
Cortez, Maria Angelica ;
Welsh, James W. .
TRANSLATIONAL LUNG CANCER RESEARCH, 2017, 6 (02) :148-158
[28]   Low-Dose IFNγ Induces Tumor Cell Stemness in Tumor Microenvironment of Non-Small Cell Lung Cancer [J].
Song, Mengjia ;
Ping, Yu ;
Zhang, Kai ;
Yang, Li ;
Li, Feng ;
Zhang, Chaoqi ;
Cheng, Shaoyan ;
Yue, Dongli ;
Maimela, Nomathamsanqa Resegofetse ;
Qu, Jiao ;
Liu, Shasha ;
Sun, Ting ;
Li, Zihai ;
Xia, Jianchuan ;
Zhang, Bin ;
Wang, Liping ;
Zhang, Yi .
CANCER RESEARCH, 2019, 79 (14) :3737-3748
[29]   Glycolysis - a key player in the inflammatory response [J].
Soto-Heredero, Gonzalo ;
Gomez de las Heras, Manuel M. ;
Gabande-Rodriguez, Enrique ;
Oller, Jorge ;
Mittelbrunn, Maria .
FEBS JOURNAL, 2020, 287 (16) :3350-3369
[30]   Transcriptional E2F1/2/5/8 as potential targets and transcriptional E2F3/6/7 as new biomarkers for the prognosis of human lung carcinoma [J].
Sun, Cheng-Cao ;
Zhou, Qun ;
Hu, Wei ;
Li, Shu-Jun ;
Zhang, Feng ;
Chen, Zhen-Long ;
Li, Guang ;
Bi, Zhuo-Yue ;
Bi, Yong-Yi ;
Gong, Feng-Yun ;
Bo, Tao ;
Yuan, Zhan-Peng ;
Hu, Wei-Dong ;
Zhan, Bo-Tao ;
Zhang, Qian ;
Tang, Qi-Zhu ;
Li, De-Jia .
AGING-US, 2018, 10 (05) :973-987