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signifinder enables the identification of tumor cell states and cancer expression signatures in bulk, single-cell and spatial transcriptomic data

View ORCID ProfileStefania Pirrotta, View ORCID ProfileLaura Masatti, View ORCID ProfileAnna Corrà, View ORCID ProfileFabiola Pedrini, View ORCID ProfileGiovanni Esposito, View ORCID ProfilePaolo Martini, View ORCID ProfileDavide Risso, View ORCID ProfileChiara Romualdi, View ORCID ProfileEnrica Calura
doi: https://doi.org/10.1101/2023.03.07.530940
Stefania Pirrotta
1Department of Biology, University of Padua, Padua, Italy
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Laura Masatti
1Department of Biology, University of Padua, Padua, Italy
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Anna Corrà
1Department of Biology, University of Padua, Padua, Italy
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Fabiola Pedrini
1Department of Biology, University of Padua, Padua, Italy
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Giovanni Esposito
2Immunology and Molecular Oncology Diagnostic Unit of The Veneto Institute of Oncology IOV – IRCCS, Padua, Italy
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Paolo Martini
3Department of Molecular and Translational Medicine, University of Brescia, Brescia, Italy
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Davide Risso
4Department of Statistical Sciences, University of Padua, Italy
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Chiara Romualdi
1Department of Biology, University of Padua, Padua, Italy
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Enrica Calura
1Department of Biology, University of Padua, Padua, Italy
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  • For correspondence: enrica.calura@unipd.it
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Abstract

Over the last decade, many studies and some clinical trials have proposed gene expression signatures as a valuable tool for understanding cancer mechanisms, defining subtypes, monitoring patient prognosis, and therapy efficacy. However, technical and biological concerns about reproducibility have been raised. Technical reproducibility is a major concern: we currently lack a computational implementation of the proposed signatures, which would provide detailed signature definition and assure reproducibility, dissemination, and usability of the classifier. Another concern regards intratumor heterogeneity, which has never been addressed when studying these types of biomarkers using bulk transcriptomics.

With the aim of providing a tool able to improve the reproducibility and usability of gene expression signatures, we propose signifinder, an R package that provides the infrastructure to collect, implement, and compare expression-based signatures from cancer literature. The included signatures cover a wide range of biological processes from metabolism and programmed cell death, to morphological changes, such as quantification of epithelial or mesenchymal-like status. Collected signatures can score tumor cell characteristics, such as the predicted response to therapy or the survival association, and can quantify microenvironmental information, including hypoxia and immune response activity.

signifinder has been used to characterize tumor samples and to investigate intra-tumor heterogeneity, extending its application to single-cell and spatial transcriptomic data. Through these higher-resolution technologies, it has become increasingly apparent that the single-sample score assessment obtained by transcriptional signatures is conditioned by the phenotypic and genetic intratumor heterogeneity of tumor masses. Since the characteristics of the most abundant cell type or clone might not necessarily predict the properties of mixed populations, signature prediction efficacy is lowered, thus impeding effective clinical diagnostics. Through signifinder, we offer general principles for interpreting and comparing transcriptional signatures, as well as suggestions for additional signatures that would allow for more complete and robust data inferences. We consider signifinder a useful tool to pave the way for reproducibility and comparison of transcriptional signatures in oncology.

Competing Interest Statement

The authors have declared no competing interest.

  • Abbreviations

    Abbreviations
    Meaning
    ASC
    Adult Stem Cell
    BRCA
    Breast Cancer
    CAFs
    Cancer Associated Fibroblasts
    CIN
    Chromosomal Instability
    DIF
    Differentiated
    ECM
    Extracellular Matrix
    EMT
    Epithelial-to-Mesenchymal Transition
    FFPE
    Formalin-Fixed Paraffin-Embedded
    GB
    Glioblastoma
    IFN
    Interferons
    IMR
    Immunoreactive
    IPS
    Immunophenoscore
    MES
    Mesenchymal
    MHC
    Major Histocompatibility Complex
    OVC
    Ovarian Cancer
    PRO
    Proliferative
    scRNA-seq
    Single cell RNA Sequencing
    t-SNE
    t-Distributed Stochastic Neighbor Embedding
    TCGA
    The Cancer Genome Atlas
    TME
    Tumor Microenvironment
  • Copyright 
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    Posted March 10, 2023.
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    signifinder enables the identification of tumor cell states and cancer expression signatures in bulk, single-cell and spatial transcriptomic data
    Stefania Pirrotta, Laura Masatti, Anna Corrà, Fabiola Pedrini, Giovanni Esposito, Paolo Martini, Davide Risso, Chiara Romualdi, Enrica Calura
    bioRxiv 2023.03.07.530940; doi: https://doi.org/10.1101/2023.03.07.530940
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    signifinder enables the identification of tumor cell states and cancer expression signatures in bulk, single-cell and spatial transcriptomic data
    Stefania Pirrotta, Laura Masatti, Anna Corrà, Fabiola Pedrini, Giovanni Esposito, Paolo Martini, Davide Risso, Chiara Romualdi, Enrica Calura
    bioRxiv 2023.03.07.530940; doi: https://doi.org/10.1101/2023.03.07.530940

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