Exploring tumor-normal cross-talk with TranNet: Role of the environment in tumor progression

被引:1
作者
Amgalan, Bayarbaatar [1 ]
Day, Chi-Ping [2 ]
Przytycka, Teresa M. [1 ]
机构
[1] NIH, Natl Ctr Biotechnol Informat, Natl Lib Med, Bethesda, MD 20894 USA
[2] NCI, Lab Canc Biol & Genet, Ctr Canc Res, NIH, Bethesda, MD USA
关键词
HEPATOCELLULAR-CARCINOMA; PROGNOSTIC BIOMARKER; CANCER PROGRESSION; GENES; EXPRESSION; OVEREXPRESSION; INFLAMMATION; REPERTOIRE; ACTIVATION; SIGNATURES;
D O I
10.1371/journal.pcbi.1011472
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
There is a growing awareness that tumor-adjacent normal tissues used as control samples in cancer studies do not represent fully healthy tissues. Instead, they are intermediates between healthy tissues and tumors. The factors that contribute to the deviation of such control samples from healthy state include exposure to the tumor-promoting factors, tumor-related immune response, and other aspects of tumor microenvironment. Characterizing the relation between gene expression of tumor-adjacent control samples and tumors is fundamental for understanding roles of microenvironment in tumor initiation and progression, as well as for identification of diagnostic and prognostic biomarkers for cancers.To address the demand, we developed and validated TranNet, a computational approach that utilizes gene expression in matched control and tumor samples to study the relation between their gene expression profiles. TranNet infers a sparse weighted bipartite graph from gene expression profiles of matched control samples to tumors. The results allow us to identify predictors (potential regulators) of this transition. To our knowledge, TranNet is the first computational method to infer such dependencies.We applied TranNet to the data of several cancer types and their matched control samples from The Cancer Genome Atlas (TCGA). Many predictors identified by TranNet are genes associated with regulation by the tumor microenvironment as they are enriched in G-protein coupled receptor signaling, cell-to-cell communication, immune processes, and cell adhesion. Correspondingly, targets of inferred predictors are enriched in pathways related to tissue remodelling (including the epithelial-mesenchymal Transition (EMT)), immune response, and cell proliferation. This implies that the predictors are markers and potential stromal facilitators of tumor progression. Our results provide new insights into the relationships between tumor adjacent control sample, tumor and the tumor environment. Moreover, the set of predictors identified by TranNet will provide a valuable resource for future investigations. In oncological studies, control samples are usually biopsied from tumor-adjacent normal tissue. However, there is an increasing understanding that such samples represent a state that is intermediate between tumor and normal, and is influenced by environmental factors common to tumor and normal tissues, and by tumor microenvironment. Therefore, uncovering the relation between gene expressions across control and tumors samples can inform us about the roles of microenvironment in tumor initiation and progression. Here we present a predictive model, TranNet, to study the functional relationship between matched control and tumor samples. TranNet infers a transition function from gene expression in a control sample to that in the matched tumor sample. Simultaneously, the method identifies a set of genes that are predictors of this transition. To our knowledge, TranNet is the first computational method to infer such dependencies.Our results demonstrated that TranNet efficiently captured the relation between tumors and their microenvironment, generating important implications for the detection, diagnosis, and prognosis of cancers.
引用
收藏
页数:21
相关论文
共 91 条
  • [1] The repertoire of mutational signatures in human cancer
    Alexandrov, Ludmil B.
    Kim, Jaegil
    Haradhvala, Nicholas J.
    Huang, Mi Ni
    Ng, Alvin Wei Tian
    Wu, Yang
    Boot, Arnoud
    Covington, Kyle R.
    Gordenin, Dmitry A.
    Bergstrom, Erik N.
    Islam, S. M. Ashiqul
    Lopez-Bigas, Nuria
    Klimczak, Leszek J.
    McPherson, John R.
    Morganella, Sandro
    Sabarinathan, Radhakrishnan
    Wheeler, David A.
    Mustonen, Ville
    Getz, Gad
    Rozen, Steven G.
    Stratton, Michael R.
    [J]. NATURE, 2020, 578 (7793) : 94 - +
  • [2] Ly6E/K Signaling to TGFβ Promotes Breast Cancer Progression, Immune Escape, and Drug Resistance
    AlHossiny, Midrar
    Luo, Linlin
    Frazier, William R.
    Steiner, Noriko
    Gusev, Yuriy
    Kallakury, Bhaskar
    Glasgow, Eric
    Creswell, Karen
    Madhavan, Subha
    Kumar, Rakesh
    Upadhyay, Geeta
    [J]. CANCER RESEARCH, 2016, 76 (11) : 3376 - 3386
  • [3] LY6K-AS lncRNA is a lung adenocarcinoma prognostic biomarker and regulator of mitotic progression
    Ali, Mohamad Moustafa
    Di Marco, Mirco
    Mahale, Sagar
    Jachimowicz, Daniel
    Kosalai, Subazini Thankaswamy
    Reischl, Silke
    Statello, Luisa
    Mishra, Kankadeb
    Darnfors, Catarina
    Kanduri, Meena
    Kanduri, Chandrasekhar
    [J]. ONCOGENE, 2021, 40 (13) : 2463 - 2478
  • [4] DEOD: uncovering dominant effects of cancer-driver genes based on a partial covariance selection method
    Amgalan, Bayarbaatar
    Lee, Hyunju
    [J]. BIOINFORMATICS, 2015, 31 (15) : 2452 - 2460
  • [5] Comprehensive analysis of normal adjacent to tumor transcriptomes
    Aran, Dvir
    Camarda, Roman
    Odegaard, Justin
    Paik, Hyojung
    Oskotsky, Boris
    Krings, Gregor
    Goga, Andrei
    Sirota, Marina
    Butte, Atul J.
    [J]. NATURE COMMUNICATIONS, 2017, 8
  • [6] Inflammation and cancer: back to Virchow?
    Balkwill, F
    Mantovani, A
    [J]. LANCET, 2001, 357 (9255) : 539 - 545
  • [7] PRMT5: a putative oncogene and therapeutic target in prostate cancer
    Beketova, Elena
    Owens, Jake L.
    Asberry, Andrew M.
    Hu, Chang-Deng
    [J]. CANCER GENE THERAPY, 2022, 29 (3-4) : 264 - 276
  • [8] Gene expression analysis of membrane transporters and drug-metabolizing enzymes in the lung of healthy and COPD subjects
    Berg, Tove
    Myrback, Tove Hegelund
    Olsson, Marita
    Seidegard, Janeric
    Werkstrom, Viktoria
    Zhou, Xiao-Hong
    Grunewald, Johan
    Gustavsson, Lena
    Nord, Magnus
    [J]. PHARMACOLOGY RESEARCH & PERSPECTIVES, 2014, 2 (04):
  • [9] Organ-specific adaptive signaling pathway activation in metastatic breast cancer cells
    Burnett, Riesa M.
    Craven, Kelly E.
    Krishnamurthy, Purna
    Goswami, Chirayu P.
    Badve, Sunil
    Crooks, Peter
    Mathews, William P.
    Bhat-Nakshatri, Poornima
    Nakshatri, Harikrishna
    [J]. ONCOTARGET, 2015, 6 (14) : 12682 - 12696
  • [10] TGF-β-Induced Transcription Sustains Amoeboid Melanoma Migration and Dissemination
    Cantelli, Gala
    Orgaz, Jose L.
    Rodriguez-Hernandez, Irene
    Karagiannis, Panagiotis
    Maiques, Oscar
    Matias-Guiu, Xavier
    Nestle, Frank O.
    Marti, Rosa M.
    Karagiannis, Sophia N.
    Sanz-Moreno, Victoria
    [J]. CURRENT BIOLOGY, 2015, 25 (22) : 2899 - 2914