Molecular analysis of aggressive renal cell carcinoma with unclassified histology reveals distinct subsets
Renal cell carcinomas with unclassified histology (uRCC) constitute a significant portion of aggressive non-clear cell renal cell carcinomas that have no standard therapy. The oncogenic drivers in these tumours are unknown. Here we perform a molecular analysis of 62 high-grade primary uRCC, incorpor...
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Veröffentlicht in: | Nature communications 2016-10, Vol.7 (1), p.13131-13131, Article 13131 |
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Sprache: | eng |
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Zusammenfassung: | Renal cell carcinomas with unclassified histology (uRCC) constitute a significant portion of aggressive non-clear cell renal cell carcinomas that have no standard therapy. The oncogenic drivers in these tumours are unknown. Here we perform a molecular analysis of 62 high-grade primary uRCC, incorporating targeted cancer gene sequencing, RNA sequencing, single-nucleotide polymorphism array, fluorescence
in situ
hybridization, immunohistochemistry and cell-based assays. We identify recurrent somatic mutations in 29 genes, including
NF2
(18%),
SETD2
(18%),
BAP1
(13%),
KMT2C
(10%) and
MTOR
(8%). Integrated analysis reveals a subset of 26% uRCC characterized by NF2 loss, dysregulated Hippo–YAP pathway and worse survival, whereas 21% uRCC with mutations of
MTOR
,
TSC1
,
TSC2
or
PTEN
and hyperactive mTORC1 signalling are associated with better clinical outcome. FH deficiency (6%), chromatin/DNA damage regulator mutations (21%) and ALK translocation (2%) distinguish additional cases. Altogether, this study reveals distinct molecular subsets for 76% of our uRCC cohort, which could have diagnostic and therapeutic implications.
A subset of renal cell carcinomas have uncertain histology and are aggressive in nature. Here, the authors examine this group of unclassified renal cancers using genomics techniques and identify further subclasses of the tumours that have differing prognoses. |
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ISSN: | 2041-1723 2041-1723 |
DOI: | 10.1038/ncomms13131 |