Multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomas

Abstract Background The tumor-associated microenvironment plays important roles in tumor progression and drug resistance. However, systematic investigations of macrophage–tumor cell interactions to identify novel macrophage-related gene signatures in gliomas for predicting patient prognoses and resp...

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Main Authors: Xiaoqiang Sun, Xiaoping Liu, Mengxue Xia, Yongzhao Shao, Xiaohua Douglas Zhang
Format: Article
Language:English
Published: BMC 2019-05-01
Series:Journal of Translational Medicine
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12967-019-1908-1
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spelling doaj-51c677270feb4e6a80f62de6903017d42020-11-25T03:33:40ZengBMCJournal of Translational Medicine1479-58762019-05-0117112010.1186/s12967-019-1908-1Multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomasXiaoqiang Sun0Xiaoping Liu1Mengxue Xia2Yongzhao Shao3Xiaohua Douglas Zhang4Department of Medical Informatics, Zhong-shan School of Medicine, Sun Yat-Sen UniversitySchool of Mathematics and Statistics, Shandong University at WeihaiDepartment of Medical Informatics, Zhong-shan School of Medicine, Sun Yat-Sen UniversityNYU School of Medicine, NYU Langone Health, New York UniversityFaculty of Health Sciences, University of MacauAbstract Background The tumor-associated microenvironment plays important roles in tumor progression and drug resistance. However, systematic investigations of macrophage–tumor cell interactions to identify novel macrophage-related gene signatures in gliomas for predicting patient prognoses and responses to targeted therapies are lacking. Methods We developed a multicellular gene network approach to investigating the prognostic role of macrophage–tumor cell interactions in tumor progression and drug resistance in gliomas. Multicellular gene networks connecting macrophages and tumor cells were constructed from re-grouped drug-sensitive and drug-resistant samples of RNA-seq data in mice gliomas treated with BLZ945 (a CSF1R inhibitor). Subsequently, a differential network-based COX regression model was built to identify the risk signature using a cohort of 310 glioma samples from the Chinese Glioma Genome Atlas database. A large independent validation set of 690 glioma samples from The Cancer Genome Atlas database was used to test the prognostic significance and accuracy of the gene signature in predicting prognosis and targeted therapeutic response of glioma patients. Results A macrophage-related gene signature was developed consisting of twelve genes (ANPEP, DPP4, PRRG1, GPNMB, TMEM26, PXDN, CDH6, SCN3A, SEMA6B, CCDC37, FANCA, NETO2), which was tested in the independent validation set to examine its prognostic significance and accuracy. The generation of 1000 random gene signatures by a bootstrapping scheme justified the non-random nature of the macrophage-related gene signature. Moreover, the discovered gene signature was verified to be predictive of the sensitivity or resistance of glioma patients to molecularly targeted therapeutics and outperformed other existing gene signatures. Additionally, the macrophage-related gene signature was an independent and the strongest prognostic factor when adjusted for clinicopathologic risk factors and other existing gene signatures. Conclusion The multicellular gene network approach developed herein indicates profound roles of the macrophage-mediated tumor microenvironment in the progression and drug resistance of gliomas. The identified macrophage-related gene signature has good prognostic value for predicting resistance to targeted therapeutics and survival of glioma patients, implying that combining current targeted therapies with new macrophage-targeted therapy may be beneficial for the long-term treatment outcomes of glioma patients.http://link.springer.com/article/10.1186/s12967-019-1908-1Multicellular gene networkMacrophagesPrognostic signatureDrug resistanceGliomaBiomarker
collection DOAJ
language English
format Article
sources DOAJ
author Xiaoqiang Sun
Xiaoping Liu
Mengxue Xia
Yongzhao Shao
Xiaohua Douglas Zhang
spellingShingle Xiaoqiang Sun
Xiaoping Liu
Mengxue Xia
Yongzhao Shao
Xiaohua Douglas Zhang
Multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomas
Journal of Translational Medicine
Multicellular gene network
Macrophages
Prognostic signature
Drug resistance
Glioma
Biomarker
author_facet Xiaoqiang Sun
Xiaoping Liu
Mengxue Xia
Yongzhao Shao
Xiaohua Douglas Zhang
author_sort Xiaoqiang Sun
title Multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomas
title_short Multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomas
title_full Multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomas
title_fullStr Multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomas
title_full_unstemmed Multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomas
title_sort multicellular gene network analysis identifies a macrophage-related gene signature predictive of therapeutic response and prognosis of gliomas
publisher BMC
series Journal of Translational Medicine
issn 1479-5876
publishDate 2019-05-01
description Abstract Background The tumor-associated microenvironment plays important roles in tumor progression and drug resistance. However, systematic investigations of macrophage–tumor cell interactions to identify novel macrophage-related gene signatures in gliomas for predicting patient prognoses and responses to targeted therapies are lacking. Methods We developed a multicellular gene network approach to investigating the prognostic role of macrophage–tumor cell interactions in tumor progression and drug resistance in gliomas. Multicellular gene networks connecting macrophages and tumor cells were constructed from re-grouped drug-sensitive and drug-resistant samples of RNA-seq data in mice gliomas treated with BLZ945 (a CSF1R inhibitor). Subsequently, a differential network-based COX regression model was built to identify the risk signature using a cohort of 310 glioma samples from the Chinese Glioma Genome Atlas database. A large independent validation set of 690 glioma samples from The Cancer Genome Atlas database was used to test the prognostic significance and accuracy of the gene signature in predicting prognosis and targeted therapeutic response of glioma patients. Results A macrophage-related gene signature was developed consisting of twelve genes (ANPEP, DPP4, PRRG1, GPNMB, TMEM26, PXDN, CDH6, SCN3A, SEMA6B, CCDC37, FANCA, NETO2), which was tested in the independent validation set to examine its prognostic significance and accuracy. The generation of 1000 random gene signatures by a bootstrapping scheme justified the non-random nature of the macrophage-related gene signature. Moreover, the discovered gene signature was verified to be predictive of the sensitivity or resistance of glioma patients to molecularly targeted therapeutics and outperformed other existing gene signatures. Additionally, the macrophage-related gene signature was an independent and the strongest prognostic factor when adjusted for clinicopathologic risk factors and other existing gene signatures. Conclusion The multicellular gene network approach developed herein indicates profound roles of the macrophage-mediated tumor microenvironment in the progression and drug resistance of gliomas. The identified macrophage-related gene signature has good prognostic value for predicting resistance to targeted therapeutics and survival of glioma patients, implying that combining current targeted therapies with new macrophage-targeted therapy may be beneficial for the long-term treatment outcomes of glioma patients.
topic Multicellular gene network
Macrophages
Prognostic signature
Drug resistance
Glioma
Biomarker
url http://link.springer.com/article/10.1186/s12967-019-1908-1
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