Network models of primary melanoma microenvironments identify key melanoma regulators underlying prognosis
Melanoma is the most lethal skin malignancy, driven by genetic and epigenetic alterations in the complex tumour microenvironment. While large-scale molecular profiling of melanoma has identified molecular signatures associated with melanoma progression, comprehensive systems-level modeling remains e...
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Veröffentlicht in: | Nature communications 2021-02, Vol.12 (1), p.1214-1214, Article 1214 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Melanoma is the most lethal skin malignancy, driven by genetic and epigenetic alterations in the complex tumour microenvironment. While large-scale molecular profiling of melanoma has identified molecular signatures associated with melanoma progression, comprehensive systems-level modeling remains elusive. This study builds up predictive gene network models of molecular alterations in primary melanoma by integrating large-scale bulk-based multi-omic and single-cell transcriptomic data. Incorporating clinical, epigenetic, and proteomic data into these networks reveals key subnetworks, cell types, and regulators underlying melanoma progression. Tumors with high immune infiltrates are found to be associated with good prognosis, presumably due to induced CD8+ T-cell cytotoxicity, via
MYO1F
-mediated M1-polarization of macrophages. Seventeen key drivers of the gene subnetworks associated with poor prognosis, including the transcription factor
ZNF180
, are tested for their pro-tumorigenic effects in vitro. The anti-tumor effect of silencing
ZNF180
is further validated using in vivo xenografts. Experimentally validated targets of
ZNF180
are enriched in the
ZNF180
centered network and the known pathways such as melanoma cell maintenance and immune cell infiltration. The transcriptional networks and their critical regulators provide insights into the molecular mechanisms of melanomagenesis and pave the way for developing therapeutic strategies for melanoma.
While the molecular profiling of melanoma progression has been extensively characterised by large-scale studies, there is still need for the comprehensive integration of such datasets. Here the authors construct predictive gene network models for prognostic and therapeutic purposes. |
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ISSN: | 2041-1723 2041-1723 |
DOI: | 10.1038/s41467-021-21457-0 |