| Literature DB >> 26980748 |
James R Bradford1, Mark Wappett2, Garry Beran2, Armelle Logie2, Oona Delpuech2, Henry Brown2, Joanna Boros2, Nicola J Camp3, Robert McEwen2, Anne Marie Mazzola4, Celina D'Cruz4, Simon T Barry2.
Abstract
The tumor microenvironment is emerging as a key regulator of cancer growth and progression, however the exact mechanisms of interaction with the tumor are poorly understood. Whilst the majority of genomic profiling efforts thus far have focused on the tumor, here we investigate RNA-Seq as a hypothesis-free tool to generate independent tumor and stromal biomarkers, and explore tumor-stroma interactions by exploiting the human-murine compartment specificity of patient-derived xenografts (PDX).Across a pan-cancer cohort of 79 PDX models, we determine that mouse stroma can be separated into distinct clusters, each corresponding to a specific stromal cell type. This implies heterogeneous recruitment of mouse stroma to the xenograft independent of tumor type. We then generate cross-species expression networks to recapitulate a known association between tumor epithelial cells and fibroblast activation, and propose a potentially novel relationship between two hypoxia-associated genes, human MIF and mouse Ddx6. Assessment of disease subtype also reveals MMP12 as a putative stromal marker of triple-negative breast cancer. Finally, we establish that our ability to dissect recruited stroma from trans-differentiated tumor cells is crucial to identifying stem-like poor-prognosis signatures in the tumor compartment.In conclusion, RNA-Seq is a powerful, cost-effective solution to global analysis of human tumor and mouse stroma simultaneously, providing new insights into mouse stromal heterogeneity and compartment-specific disease markers that are otherwise overlooked by alternative technologies. The study represents the first comprehensive analysis of its kind across multiple PDX models, and supports adoption of the approach in pre-clinical drug efficacy studies, and compartment-specific biomarker discovery.Entities:
Keywords: RNA-Seq; biomarker discovery; patient-derived xenograft; pre-clinical research; tumor stroma
Mesh:
Substances:
Year: 2016 PMID: 26980748 PMCID: PMC4991491 DOI: 10.18632/oncotarget.8014
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Application of non-negative matrix factorization (NMF) to optimal clustering of human and mouse gene expression
(A) disease representation across the 79 PDX models. (B) consensus matrix at k = 9 for the human transcriptome. (C) contributing cancer types and mean consensus value of each human cluster. “Representative” disease indicates the majority cancer type in the cluster, and numbers of models are given in brackets. Mean consensus value was computed from 200 runs of NMF. (D) consensus matrix at k = 9 for the mouse transcriptome. (E) meta-data breakdown in each mouse cluster and mean consensus value. (F) functional enrichment of the meta-genes driving the mouse clustering. Only clusters with significant functional enrichment (FDR < 0.05) are shown.
Pearson correlation coefficients calculated between human epithelial and mouse CAF markers
| Human genes | Mouse genes | ||
|---|---|---|---|
| 0.29** | 0.24* | 0.32** | |
| 0.06 | 0.37** | 0.27* | |
| 0.01 | −0.20 | 0.10 | |
| −0.01 | −0.21 | −0.05 | |
Figure 2Human MIF and mouse Ddx6 are strongly anti-correlated and are identified as cross-species hubs
(A) Cytoscape [59] rendered human (red boxes) and mouse (blue) gene co-expression network where nodes are genes and edges indicate gene pairs achieving r > 0.85 (grey) or r < −0.85 (green). Magnified view shows sub-network of first and second neighbors of human MIF and mouse Ddx6. (B) scatterplot showing anti-correlation (r = −0.90) between human MIF and mouse Ddx6. (C) r-values between all combinations of human/mouse MIF and DDX6 mRNA expression profiles.
Figure 3Compartment-specific gene expression markers of BTNBC
(A) comparison of ESTIMATE stromal score between PDX, TCGA, CCLE and clinical stroma samples. (B) fold changes achieved by MMP12 between BTNBC and ER+ luminal-B samples across all platforms (*p < 0.01). (C) derivation of tumor specific BTNBC markers exclusive to cell line and PDX datasets. (D) emergence of tumor specific markers in low stroma TCGA samples (*p < 0.05). (E) overlap of stromal [10], EMT [20], CSC [21] and reactive stroma [22] signatures with BTNBC markers derived from human PDX and TCGA samples. (F) comparison of log10 p-values achieved across sample types by overlap with each of the four signatures (*p < 0.05). CSC: cancer stem cell, EMT: epithelial-mesenchymal transition, MMP12: Matrix Metalloproteinase 12.
Overlap of gene signatures with genes over-expressed in BTNBC and ER+ luminal-B breast cancers
| Signature | BTNBC | ER+ luminal-B | ||||||
|---|---|---|---|---|---|---|---|---|
| PDX (1127 | PDX FAP/CSPG4 low (793 | TCGA (1368 | TCGA low stroma (1763 | PDX (511 | PDX FAP/CSPG4 low (569 | TCGA (876 | TCGA low stroma (847 | |
| Stromal (137 | 20 | 14 | 2 | 9 | 1 | 5 | 4 | 6 |
| CSC Up (90 | 16 | 11 | 5 | 16 | 2 | 3 | 1 | 1 |
| CSC Down (211 | 14 | 12 | 13 | 18 | 15 | 14 | 27 | 29 |
| EMT Up (144 | 41 | 27 | 17 | 37 | 5 | 11 | 8 | 11 |
| EM Down (156 | 30 | 22 | 34 | 33 | 8 | 6 | 21 | 21 |
| Reactive stroma (50) | 11 | 8 | 0 | 6 | 0 | 0 | 1 | 1 |
p < 0.05 by hyper-geometric test.
Number of genes over-expressed in TNBC or ER+ luminal-B.
From [10].
Breast cancer stem cell (CSC) signature from [21].
Epithelial-mesenchymal transition (EMT) signature from [20].
From [22].