An Empirical Approach Leveraging Tumorgrafts to Dissect the Tumor Microenvironment in Renal Cell Carcinoma Identifies Missing Link to Prognostic Inflammatory Factors.
Tao WangRong LuPayal KapurBijay S JaiswalRaquibul HannanZe ZhangIvan PedrosaJason J LukeHe ZhangLeonard D GoldsteinQurratulain YousufYi-Feng GuTiffani McKenzieAllison JoyceMin S KimXinlei WangDanni LuoOreoluwa OnaboluChristina StevensZhiqun XieMingyi ChenAlexander FilatenkovJose TorrealbaXin LuoWenbin GuoJingxuan HeEric StawiskiZora ModrusanSteffen DurinckSomasekar SeshagiriJames BrugarolasPublished in: Cancer discovery (2018)
By leveraging tumorgraft (patient-derived xenograft) RNA-sequencing data, we developed an empirical approach, DisHet, to dissect the tumor microenvironment (eTME). We found that 65% of previously defined immune signature genes are not abundantly expressed in renal cell carcinoma (RCC) and identified 610 novel immune/stromal transcripts. Using eTME, genomics, pathology, and medical record data involving >1,000 patients, we established an inflamed pan-RCC subtype (IS) enriched for regulatory T cells, natural killer cells, TH1 cells, neutrophils, macrophages, B cells, and CD8+ T cells. IS is enriched for aggressive RCCs, including BAP1-deficient clear-cell and type 2 papillary tumors. The IS subtype correlated with systemic manifestations of inflammation such as thrombocytosis and anemia, which are enigmatic predictors of poor prognosis. Furthermore, IS was a strong predictor of poor survival. Our analyses suggest that tumor cells drive the stromal immune response. These data provide a missing link between tumor cells, the TME, and systemic factors.Significance: We undertook a novel empirical approach to dissect the renal cell carcinoma TME by leveraging tumorgrafts. The dissection and downstream analyses uncovered missing links between tumor cells, the TME, systemic manifestations of inflammation, and poor prognosis. Cancer Discov; 8(9); 1142-55. ©2018 AACR.This article is highlighted in the In This Issue feature, p. 1047.
Keyphrases
- renal cell carcinoma
- poor prognosis
- long non coding rna
- regulatory t cells
- oxidative stress
- immune response
- clear cell
- electronic health record
- end stage renal disease
- natural killer cells
- big data
- chronic kidney disease
- genome wide
- dendritic cells
- single cell
- bone marrow
- induced apoptosis
- ejection fraction
- machine learning
- newly diagnosed
- healthcare
- papillary thyroid
- deep learning
- peritoneal dialysis
- cell proliferation
- dna methylation
- artificial intelligence
- squamous cell carcinoma
- patient reported outcomes
- toll like receptor
- squamous cell