Transcriptional evidence for the "Reverse Warburg Effect" in human breast cancer tumor stroma and metastasis: Similarities with oxidative stress, inflammation, Alzheimer's disease, and "Neuron-Glia Metabolic Coupling"
Abstract
Caveolin-1 (-/-) null stromal cells are a novel genetic model for cancer-associated fibroblasts and myofibroblasts. Here, we used an unbiased informatics analysis of transcriptional gene profiling to show that Cav-1 (-/-) bone-marrow derived stromal cells bear a striking resemblance to the activated tumor stroma of human breast cancers. More specifically, the transcriptional profiles of Cav-1 (-/-) stromal cells were most closely related to the primary tumor stroma of breast cancer patients that had undergone lymph-node (LN) metastasis. This is consistent with previous morphological data demonstrating that a loss of stromal Cav-1 protein (by immuno-histochemical staining in the fibroblast compartment) is significantly associated with increased LN-metastasis. We also provide evidence that the tumor stroma of human breast cancers shows a transcriptional shift towards oxidative stress, DNA damage/repair, inflammation, hypoxia, and aerobic glycolysis, consistent with the "Reverse Warburg Effect". Finally, the tumor stroma of "metastasis-prone" breast cancer patients was most closely related to the transcriptional profiles derived from the brains of patients with Alzheimer's disease. This suggests that certain fundamental biological processes are common to both an activated tumor stroma and neuro-degenerative stress. These processes may include oxidative stress, NO over-production (peroxynitrite formation), inflammation, hypoxia, and mitochondrial dysfunction, which are thought to occur in Alzheimer's disease pathology. Thus, a loss of Cav-1 expression in cancer-associated myofibroblasts may be a protein biomarker for oxidative stress, aerobic glycolysis, and inflammation, driving the "Reverse Warburg Effect" in the tumor micro-environment and cancer cell metastasis.
Introduction
Recently, we identified a loss of stromal caveolin-1
(Cav-1) as a novel biomarker for the cancer-associated fibroblast phenotype in
human breast cancers [1]. More specifically, when fibroblasts were isolated
from human breast cancers, 8 out of 11 patients showed >2-fold reduction in
Cav-1 protein expression, relative normal matched fibroblasts prepared from the
same patients [1]. Furthermore, detailed phenotypic analysis of mammary
fibroblasts derived from Cav-1 (-/-) null mice revealed that they share
numerous properties with cancer-associated fibroblasts, such as constitutively
active TGFbeta signaling, and that they have the ability to promote normal
mammary epithelial cells to undergo an EMT (epithelial-mesenchymal transition)
[2].
To determine if loss of stromal Cav-1 has prognostic
value, we performed a series of independent biomarker studies [3,4]. Using a
cohort of 160 breast cancer patients, with nearly 20 years of follow-up data,
we showed that a loss of stromal Cav-1 (in the fibroblast compartment) is a
powerful single independent predictor early tumor recurrence, lymph node
metastasis, tamoxifen-resistance, and poor clinical outcome [4]. As the
prognostic value of a loss of stromal Cav-1 was independent of epithelial
marker status, it appears that a loss of Cav-1 has predictive value in all the
different epithelial subtypes of human breast cancer, including ER+, PR+,
HER2+, and triple-negative patients [4]. The high predictive value of a loss
of stromal Cav-1 was also independently validated by another independent
laboratory, using a second independent breast cancer patient cohort [5].
A loss of stromal Cav-1 also appears to
play a role in tumor initiation and progression [6]. Using a DCIS patient
cohort, in which patients were treated with wide-excision, but without any
chemo- or radio-therapy, we also evaluated the prognostic value of stromal
Cav-1 [6]. In this DCIS patient cohort, a loss of stromal Cav-1 was
specifically associated with DCIS recurrence and invasive progression. 100% of
the patients with a loss of stromal Cav-1 underwent recurrence, and 80% of
these patients progressed to invasive disease, namely frank invasive ductal carcinoma [6]. Similar results were also independently obtained in human prostate cancers,
where a loss of stromal Cav-1 was specifically associated with advanced
prostate cancer, tumor progression, and metastatic disease [7].
To begin to understand the mechanism(s) underlying the
lethality of a loss of Cav-1 in cancer-associated fibroblasts, we turned to
Cav-1 (-/-) deficient mice as a model system.
For this purpose, we isolated bone marrow derived
stromal cells from WT and Cav-1 (-/-) deficient mice, as cancer-associated
fibroblasts are thought to evolve from mesenchymal stem cells [8]. These cells
were then subjected to unbiased proteomic and genome-wide transcriptional
analysis. Interestingly, proteomic analysis revealed the upregulation of i) 8
myofibroblast markers (including vimentin, calponin, and tropomyosin), ii) 8
glycolytic enzymes (including PKM2 and LDHA), and iii) 2 markers of oxidative
stress (peroxiredoxin1 and catalase) [8]. The glycolytic phenotype of Cav-1
(-/-) null stromal cells was also supported by transcriptional analysis, as
most of the proteins that were found to be upregulated by proteomics, were also
transcriptionally upregulated [8]. Based on these findings, we proposed a new
model to understand the role of the Warburg effect ("aerobic glycolysis") in
tumor metabolism. We hypothesized that glycolytic cancer-associated fibroblasts
promote tumor growth by the secretion of energy-rich metabolites (such as
pyruvate and lactate) that could then be taken up by adjacent epithelial cancer
cells, where they would be incorporated into the tumor cell's TCA cycle,
leading to enhanced ATP production [8]. This would provide a feed-forward
mechanism by which glycolytic fibroblasts could promote tumor growth,
progression, and metastasis. Because the Warburg effect was previously thought
to be largely confined to tumor cells, and not to the cancer-associated
fibroblast compartment, we have termed this new idea "The Reverse Warburg
Effect" [8].
In order to determine which transcriptional programs
are activated in Cav-1 (-/-) stromal cells, we performed an extensive
bioinformatics analysis of our genome-wide profiling data [9]. This informatics
analysis revealed that a loss of Cav-1 (-/-) in stromal cells drives ROS
production and oxidative stress [9]. This, in turn, results in the activation
of key transcription factor, such as HIF and NF-kB, which can then drive
aerobic glycolysis and inflammation in the tumor micro-environment [9]. This
could provide a molecular basis for understanding the lethality of a loss of
stromal Cav-1 in human breast cancer patients.
Here, we have used a bioinformatics approach to
determine whether similar "Warburg-like" transcrip-tional profiles exist in the
tumor stroma isolated from human breast cancers. For this purpose, we analyzed
an existing data set in which the tumor stroma was isolated away from adjacent
breast cancer cells using laser-capture micro-dissection [10]. We now provide
new evidence for the existence of the "Reverse Warburg Effect" in human tumor stroma
from breast cancer patients. More specifically, the tumor stroma of human
breast cancers shows a transcriptional shift towards oxidative stress, DNA
damage/repair, inflammation, hypoxia, and aerobic glycolysis, supporting with
the "Reverse Warburg Effect". Consistent with the idea that oxidative stress in
the tumor stroma is a driving factor in promoting tumor progression and
metastasis, we also show that the tumor stroma of human breast cancers overlaps
significantly with the transcriptional profiles associated with Alzheimer's
brain disease.
Finally, the "Reverse Warburg Effect" is strikingly
similar to the theory of "Neuon-Glia Metabolic Coupling" [11-18], which was
proposed more than 10 years ago to explain metabolic changes associated with
normal synaptic transmission, which may be exacerbated during neuronal stress
and neuronal degeneration, as in Alzheimer's disease. In "Neuron-Glia Metabolic
Coupling", astrocytes undergo aerobic glycolysis, secrete energy-rich
metabolites (pyruvate and lactate), and neurons then take up these metabolites
and use them in the neuronal TCA cycle to generate high amounts of ATP. Thus,
we propose that "The Reverse Warburg Effect" we observe could also be more
broadly termed "Epithelial-Stromal Metabolic Coupling".
As such, tumors may be initiating a
survival mechanism that is normally used by the brain during stress.
Interestingly, myofibroblasts and mesenchymal stem cells are known to often
express GFAP (glial fibrillary acidic protein) [19-21], an intermediate
filament protein that is thought to be relatively specific for astrocytes in
the central nervous system. Here, we see that GFAP is upregulated in the "tumor
stroma" and in the stroma of "metastasis-prone" breast cancer patients. Thus,
possible similarities between astrocytes and myo-fibroblasts/cancer-associated
fibroblasts should be further explored.
Results
Transcriptional
comparison of Cav-1 (-/-) stromal cells with human breast cancer stroma
Previously, we subjected
Cav-1 (-/-) bone marrow derived stromal cells, and their wild-type
counter-parts to genome-wide transcriptional profiling [8]. Because such a
large number of gene transcript levels are changed, we focused on the gene
transcripts that are upregulated. We speculated that these Cav-1 (-/-) stromal
gene profiles might also overlap with the transcriptional stromal profiles
obtained from human breast cancers.
To test this hypothesis
directly, we obtained the transcriptional profiles of a large data set of human
breast cancer patients [10] whose tumors were subjected to laser-capture
micro-dissection, to selectively isolate the tumor stroma. Based on this data
set [10], we then generated three human breast cancer stromal genes lists:
1) Tumor Stroma vs.
Normal Stroma List
- Compares the transcriptional profiles of tumor stroma
obtained 53 patients to normal stroma obtained from 38 patients. Genes
transcripts that were consistently upregulated in tumor stroma were selected
and assigned a p-value, with a cut-off of p <0.05 (contains 6,777 genes) (Supplementary
Table 1).
2) Recurrence Stroma List
-
Compares the transcript-tional profiles of tumor stroma obtained from 11 patients
with tumor recurrence to the tumor stroma of 42 patients without tumor
recurrence. Genes transcripts that were consistently upregulated in the tumor
stroma of patients with recurrence were selected and assigned a p-value, with a
cut-off of p <0.05 (contains 3,354 genes) (Supplementary Table 2).
3)Lymph-node (LN) Metastasis Stroma List
- Compares the transcriptional
profiles of tumor stroma obtained from 25 patients with LN metastasis to the
tumor stroma of 25 patients without LN metastasis. Genes transcripts that were
consistently upregulated in the tumor stroma of patients with LN metastasis
were selected and assigned a p-value, with a cut-off of p <0.05 (contains
1,182 genes) (
Supplementary Table 3).
These
three gene lists were then individually intersected with the transcriptional
profile of Cav-1 (-/-) null stromal cells [8]. The results of these
intersections are presented in Figure 1, as
Venn diagrams. Most important- ly, significant overlap was seen with all
three gene lists. Greater than 2,000 genes were common between the Cav-1 (-/-)
stromal gene list and the gene transcripts upregulated in breast cancer tumor
stroma (p = 1.6 x 10-3). Also, more than 1,000 gene transcripts
were common between the Cav-1 (-/-) stromal gene list and the gene transcripts
upregulated in the breast cancer tumor stroma of patients with tumor recurrence
(p = 1 x 10-3). Finally, nearly 500 genes were commonly upregulated
between Cav-1 (-/-) stromal cells and the breast cancer tumor stroma of
patients with LN metastasis (p = 4.6 x 10-6). Thus, the
transcriptional profiles of Cav-1 (-/-) stromal cells are most ignificantly
related to the tumor stroma of patients with LN-metastasis. Independently, our
previous data demonstrated that a loss of stromal Cav-1 protein expression (by
immuno-histochemistry) in human breast cancers is specifically associated with
a 2.6-fold increase in the number of tumor cell positive lymph nodes
(LN-metastasis) [3,4].
Figure 1. Venn diagrams for the transcriptional overlap between Cav-1 (-/-) stromal cells and tumor stroma from breast cancer patients.
The top 100 most significant gene transcripts for all
three human breast cancer stromal gene lists, including their transcriptional
intersection with Cav-1 (-/-) stromal cells, is included in Supplementary
Tables 3, 4, and 5.
As Cav-1 (-/-) stromal cells are a genetic model of
activated myofibroblasts [2] which biosynthetically secrete more collagen, and
fibrosis is a critical risk factor for poor clinical outcome in human breast
cancer patients [3], we also looked at the potential overlap been the expression
of collagen gene transcripts (See Table 1). Thirty-five collagen gene
transcripts were specifically upregulated in tumor stroma; 16 were upregulated
in "recurrence-prone" stroma; and only 1 was upregulated in "metastasis-prone"
stroma. In all three cases, there was striking overlap with the collagen gene
transcripts upregulated in Cav-1 (-/-) stromal cells, as indicated in bold (24
out of 35 transcripts; 12 out of 16 transcripts; and 1 out of 1 transcript; See
Table 1).
Cav-1
(-/-) stromal cells have also been previously subjected to extensive analysis
via an unbiased proteomics approach [8,24]. We next intersected these
proteomic results with the three human breast cancer stromal gene lists. The
results of this intersection are shown in Table 2. Note that many of the
proteins that are upregulated in Cav-1 (-/-) stromal cells are also
transcriptionally upregulated in the stroma of human breast cancer patients.
Most notably, there was a strong association between the metabolic enzymes that
were upregulated in Cav-1 (-/-) stromal cells and the "recurrence-prone" and
"metastasis-prone" stromal gene lists.
Validating the "Reverse
Warburg Hypothesis" in human breast cancer stroma
Recently,
based on the unbiased proteomic and transcriptional analysis of Cav-1 (-/-)
stromal cells, we have proposed that tumor stromal fibroblasts may undergo
aerobic glycolysis [8]. We have termed this new idea the "Reverse Warburg
Effect" [8].
Transcriptional
analysis of Cav-1 (-/-) stromal cells [9] indicated that the "Reverse Warburg
Effect" is associated with transcriptional over-expression of
glycolysis-associated genes, HIF-target genes [25], NF-kB target genes [26],
genes associated with the response to oxidative stress
(GO_0006979), as well as the concomitant
compensatory transcriptional upregulation of mitochondrial associated genes (GO_0005739) [9].
Table 1. Collagen gene expression in the human breast cancer stromal gene lists.
Genes intersecting with the Cav-1 (-/-) bone marrow derived stromal gene list are shown in bold.
Tumor Stroma Associated (24 of 35 collagen genes)
| P-value
|
Col11a1 | collagen, type XI, alpha 1 | 1.51E-73 |
Col8a1
|
collagen,
type VIII, alpha 1
|
1.11E-51
|
Col10a1
|
collagen,
type X, alpha 1
|
2.37E-42
|
Col12a1
|
collagen,
type XII, alpha 1
|
6.40E-34
|
Col5a2
|
collagen,
type V, alpha 2
|
7.78E-33
|
Col5a1 | collagen, type V, alpha 1 | 2.54E-31 |
Col1a2 | collagen, type I, alpha 2 | 1.07E-27 |
Col3a1 | collagen, type III, alpha 1 | 3.32E-27 |
Col4a5 | collagen, type IV, alpha 5 | 6.04E-23 |
Col8a2
|
collagen,
type VIII, alpha 2
|
1.78E-22
|
Col6a3 | collagen, type VI, alpha 3 | 3.87E-19 |
Col6a1 | collagen, type VI, alpha 1 | 8.97E-19 |
Col9a1 | collagen, type IX, alpha 1 | 3.05E-18 |
Col17a1
|
collagen,
type XVII, alpha 1
|
4.11E-18
|
Col4a6 | collagen, type IV, alpha 6 | 2.50E-17 |
Col1a1 | collagen, type I, alpha 1 | 3.20E-17 |
Col25a1
|
collagen,
type XXV, alpha 1
|
7.13E-17
|
Col5a3 | collagen, type V, alpha 3 | 1.17E-16 |
Col20a1
|
collagen,
type XX, alpha 1
|
2.35E-16
|
Col16a1 | collagen, type XVI, alpha 1 | 3.77E-16 |
Col13a1
|
collagen,
type XIII, alpha 1
|
4.27E-14
|
Col24a1 | collagen, type XXIV, alpha 1 | 4.07E-13 |
Col15a1
|
collagen,
type XV, alpha 1
|
2.00E-12
|
Col4a4
|
collagen,
type IV, alpha 4
|
5.55E-12
|
Col4a2 | collagen, type IV, alpha 2 | 1.17E-11 |
Col18a1 | collagen, type XVIII, alpha 1 | 5.00E-11 |
Col9a2 | collagen, type IX, alpha 2 | 5.30E-11 |
Col14a1 | collagen, type XIV, alpha 1 | 4.92E-10 |
Col23a1 | collagen, type XXIII, alpha 1 | 7.52E-08 |
Col11a2 | collagen, type XI, alpha 2 | 3.90E-07 |
Col2a1 | collagen, type II, alpha 1 | 6.22E-07 |
Col27a1 | collagen, type XXVII, alpha 1 | 4.93E-06 |
Col4a3 | collagen, type IV, alpha 3 | 1.21E-05 |
Col19a1 | collagen, type XIX, alpha 1 | 1.90E-05 |
Col4a1 | collagen, type IV, alpha 1 | 4.37E-02 |
Recurrence-Prone Stroma (12 of 16 collagen genes)
|
Col13a1
|
collagen,
type XIII, alpha 1
|
4.16E-05
|
Col20a1
|
collagen,
type XX, alpha 1
|
4.34E-05
|
Col3a1 | collagen, type III, alpha 1 | 8.00E-05 |
Col11a1 | collagen, type XI, alpha 1 | 2.84E-04 |
Col1a1 | collagen, type I, alpha 1 | 2.46E-03 |
Col11a2 | collagen, type XI, alpha 2 | 4.63E-03 |
Col8a2
|
collagen,
type VIII, alpha 2
|
8.91E-03
|
Col23a1 | collagen, type XXIII, alpha 1 | 1.05E-02 |
Col4a2 | collagen, type IV, alpha 2 | 1.51E-02 |
Col9a1 | collagen, type IX, alpha 1 | 1.58E-02 |
Col4a5 | collagen, type IV, alpha 5 | 1.85E-02 |
Col14a1 | collagen, type XIV, alpha 1 | 1.94E-02 |
Col2a1 | collagen, type II, alpha 1 | 2.06E-02 |
Col10a1
|
collagen,
type X, alpha 1
|
2.08E-02
|
Col9a2 | collagen, type IX, alpha 2 | 2.97E-02 |
Col19a1 | collagen, type XIX, alpha 1 | 3.90E-02 |
Metastasis-Prone Stroma (1 of 1 collagen genes)
|
Col6a1 | collagen, type VI, alpha 1 | 4.00E-02 |
Table 2. Intersection of Cav-1 (-/-) stromal proteomics with the human breast cancer stromal gene lists.
Includes proteins upregulated in Cav-1 (-/-) bone marrow
derived stromal cells (ref # 8), Cav-1 (-/-) mouse embryo
fibroblasts (ref # 24), and
Cav-1 (-/-) mammary fat pad. P values listed are from the Human Breast Cancer
Stromal Gene Lists. Genes in bold are associated with metabolism.
Gene
| Description
| Tumor Stroma
| Recurrence-Prone
| Metastasis-Prone
|
Capg
|
capping protein (actin
filament), gelsolin-like
|
4.18e-38
|
4.07e-03
| |
Sparc
|
secreted acidic cysteine
rich glycoprotein
|
1.49e-35
| | |
Arhgdib
|
Rho, GDP dissociation
inhibitor (GDI) beta
|
3.92e-32
| | |
Gpd2
| glycerol phosphate
dehydrogenase 2, mitochondrial | 1.39e-29 | | |
Upp1 | uridine
phosphorylase 1 | 2.77e-28 | | |
Col3a1
|
collagen, type III, alpha 1
|
3.30e-27
|
8.00e-05
| |
Col1a2
|
collagen, type I, alpha 2
|
1.07e-27
| | |
Tpm1
|
tropomyosin 1, alpha
|
2.20e-26
|
5.23e-07
| |
Sh3bgrl3
|
SH3 domain binding glutamic
acid-rich protein-like 3
|
4.35e-24
| | |
Col1a1
|
collagen, type I, alpha 1
|
3.20e-17
|
2.46e-03
| |
Eef1d
|
eukaryotic translation
elongation factor 1 delta (guanine nucleotide exchange protein)
|
2.00e-12
| | |
Nme2
|
non-metastatic cells 2,
protein (NM23B) expressed in
|
2.39e-09
| | |
Sncg
|
synuclein, gamma (breast
cancer-specific protein 1)
|
8.86e-08
| | |
Ldhc | lactate dehydrogenase C | 1.26e-07 | 1.78e-03 | |
Myl1
|
myosin,
light chain 1, alkali; skeletal, fast
|
3.60e-07
| | |
Gsn
|
gelsolin
|
6.30e-05
| | |
Ckm | creatine kinase, muscle | 3.88e-05 | | |
Tpm2
|
tropomyosin 2, beta
|
1.38e-03
|
2.22e-03
| |
Cnn2
|
calponin 2
| |
2.26e-02
| |
Fth1
|
ferritin, heavy polypeptide
1
| |
2.72e-02
| |
Pdha1 | pyruvate dehydrogenase E1
alpha subunit | | 2.85e-02 | |
Pgk1 | phosphoglycerate kinase 1 | | 3.21e-02 | |
Eno3 | enolase 3, beta muscle | | | 1.29e-03
|
Aldoa | aldolase A,
fructose-bisphosphate | | | 1.69e-03 |
Afp
|
alpha fetoprotein
| | |
3.06e-02
|
Pkm2 | pyruvate kinase, muscle | | | 3.73e-02 |
Alb
|
albumin
| | |
3.95e-02
|
Pgd | phosphogluconate dehydrogenase | | | 4.19e-02 |
Serpinb2
|
serine (or cysteine)
peptidase inhibitor, clade B, member 2
| | |
4.27e-02
|
Eef2
|
eukaryotic translation
elongation factor 2
| | |
4.41e-02
|
Table 3. Intersection of human breast cancer stromal gene sets with gene sets related to the "Reverse Warburg Effect".
| Glycolysis | HIF
Targets | Mitochondrial
Genes | NF-kB
Targets | Ox
Stress | Alzheimer's |
Stromal Gene Set
| | | | | | |
Tumor
Stroma | 19 | 213 | 233 | 199 | 51 | 676 |
Recurrence-Prone | 10 | 108 | 120 | 86 | 22 | 338 |
Metastasis-Prone | 7 | 42 | 68 | 32 | 9 | 145 |
| | | | | | |
Table 3 shows that all of these gene sets are well-represented in tumor stroma,
"recurrence-prone" stroma, and the "metastasis-prone" stroma of human breast
cancer patients (See also SupplmentalTables 7, 8, and 9 for detailed
gene lists).
It is important to note that these breast cancer stromal gene lists also include
Cxcl12, a known HIF-target gene [25], that is transcriptionally-upregulated
~5-fold in Cav-1 (-/-) stromal cells [8].
The "Reverse Warburg Effect" and similarities with Alzheimer's disease
We have previously shown that the transcriptional profiles of Cav-1 (-/-) stromal
cells significantly ovelap with the transcriptional profiles obtained from the
analysis of Alzheimers disease brain [9]. We believe this is functionally due
to the activation of similar biological processes in both "The Reverse Warburg
Effect" and Alzheimer's disease [9], including oxidative stress, NO
over-production (peroxynitrite formation), inflammation, hypoxia, and
mitochondrial dysfunction [27].
Thus, here, we independently evaluated the association
between Alzheimer's disease and human breast cancer tumor stroma. These
transcriptional overlaps are enumerated in Table 3, and are illustrated
schematically as Venn diagrams in Figure 2. Detailed gene lists are provided
in Supplemental Tables 7, 8, and 9.
Interestingly, as predicted, the genes that are
transcriptionally upregulated in Alzheimer's disease significantly overlap with
tumor stroma, "recurrence-prone" stroma, and "metastasis-prone" stroma. This
clearly functionally links Alzheimer's disease with the human breast cancer
tumor stroma.
As with the gene profiles of Cav-1 (-/-) stromal
cells, the Alzheimer's disease profiles were most significantly associated with the "metastasis-prone" stromal gene
set (p = 9 x 10-5).
Detailed analysis of the "Metastasis-Prone" stromal gene set
Next, we examined the possible overlap of the
"metastasis-prone" stromal gene set with other existing transcriptional
profiles, using gene-set enrichment analysis.
Our results are shown in Table 4.
Briefly, we see that the "metastasis-prone" stromal gene set is associated with
a number of interesting biological processes, including cell cycle progression
and survival, DNA damage/repair, scleroderma, "stemness", aging and oxidative
stress, Alzheimer's disease, decreased DNA-methylation, tamoxifen-resistance,
metastasis, Myc-associated target genes, inflammation (NF-kB/STAT), TGFbeta
signaling and myofibroblast differentiation, hypoxia and HIF signaling,
mitochondrial function, and liver-specific gene transcription.
Table 4. Comparative results for wild type N2 vs. nth-1;xpa-1.
Data Set | Description | P-value |
Cell
Cycle Progression and Survival
|
MORF_ANP32B
|
Neighborhood of ANP32B acidic (leucine-rich) nuclear
phosphoprotein 32 family, member B in the MORF expression compendium
|
2.34E-08
|
MORF_CSNK2B
|
Neighborhood of CSNK2B casein kinase 2, beta polypeptide in the
MORF expression compendium
|
3.97E-06
|
MORF_PCNA
|
Neighborhood of PCNA proliferating cell nuclear antigen in the
MORF expression compendium
|
6.66E-06
|
MORF_DEK
|
Neighborhood of DEK oncogene (DNA binding) in the MORF
expression compendium
|
4.97E-05
|
SHIPP_FL_VS_DLBCL_DN
|
Genes upregulated in diffuse B-cell lymphomas (DLBCL) and
downregulated in follicular lymphoma (FL) (fold change of at least 3)
|
1.17E-04
|
MORF_RAN
|
Neighborhood of RAN, member RAS oncogene family in the MORF
expression compendium
|
2.14E-04
|
MORF_SKP1A
|
Neighborhood of SKP1A S-phase kinase-associated protein 1A
(p19A) in the MORF expression Compendium
|
2.28E-04
|
TGANTCA_V$AP1_C
|
Genes with promoter regions [-2kb,2kb] around transcription
start site containing the motif TGANTCA which matches annotation for JUN: jun
oncogene
|
4.47E-04
|
GNF2_RAN
|
Neighborhood of RAN, member RAS oncogene family in the GNF2
expression compendium
|
8.76E-04
|
GCM_ANP32B
|
Neighborhood of ANP32B acidic (leucine-rich) nuclear
phosphoprotein 32 family, member B in the GCM expression compendium
|
1.92E-03
|
MITOSIS
|
Genes annotated by the GO term GO:0007067. Progression through
mitosis, the division of the eukaryotic cell nucleus to produce two daughter
nuclei that, usually, contain the identical chromosome complement to their
mother.
|
1.10E-02
|
SMITH_HTERT_UP
|
Genes upregulated by telomerase
|
1.90E-02
|
CHANG_SERUM_RESPONSE_UP
|
CSR (Serum Response) signature for activated genes (Stanford)
|
2.13E-02
|
DNA
Damage and Repair
|
CIS_XPC_UP
|
Increased expression in XPC-defective fibroblasts, compared to
normal fibroblasts, following treatment with cisplatin
|
2.08E-07
|
MORF_RAD23A
|
Neighborhood of RAD23A, RAD23 homolog A (S. cerevisiae) in the
MORF expression compendium; nucleotide excision repair (NER)
|
3.01E-07
|
MORF_G22P1
|
Neighborhood of G22P1 NULL in the MORF expression compendium a.k.a.,
XRCC6 Gene, X-ray repair complementing defective repair in Chinese hamster
cells 6; a.k.a., thyroid autoantigen 70kD (Ku antigen)
|
6.29E-07
|
MORF_XRCC5
|
Neighborhood of XRCC5 X-ray repair complementing defective
repair in Chinese hamster cells 5 (double-strand-break rejoining; Ku
autoantigen, 80kDa) in the MORF expression compendium
|
2.48E-04
|
MORF_EIF3S6
|
Neighborhood of EIF3S6 eukaryotic translation initiation factor
3, subunit 6 48kDa in the MORF expression compendium; murine mammary tumor
integration site 6 (oncogene homolog)
|
3.61E-04
|
GNF2_G22P1
|
Neighborhood of G22P1 NULL in the GNF2 expression compendium
|
4.90E-04
|
MORF_RAD21
|
Neighborhood of RAD21 RAD21 homolog (S. pombe) in the MORF
expression compendium
|
1.28E-03
|
UVC_LOW_A2_UP
|
Up-regulated at 6-12 hours following treatment of WS1 human skin
fibroblasts with UVC at a low dose (10 J/m^2) (cluster a2)
|
3.90E-03
|
UVB_NHEK3_C7
|
Regulated by UV-B light in normal human epidermal keratinocytes,
cluster 7
|
6.80E-03
|
UVC_LOW_ALL_UP
|
Up-regulated at any timepoint following treatment of WS1 human
skin fibroblasts with UVC at a low dose (10 J/m^2) (clusters a1-a4)
|
7.84E-03
|
UVB_NHEK3_C4
|
Regulated by UV-B light in normal human epidermal keratinocytes,
cluster 4
|
9.69E-03
|
UVB_NHEK1_C4
|
Upregulated by UV-B light in normal human epidermal
keratinocytes, cluster 4
|
9.75E-03
|
UVB_NHEK3_ALL
|
Regulated by UV-B light in normal human epidermal keratinocytes
|
1.00E-02
|
Scleroderma
|
MORF_FBL
|
Neighborhood of FBL fibrillarin in the MORF expression
compendium a.k.a., 34 kDa nucleolar scleroderma antigen, or RNA, U3 small
nucleolar interacting protein 1
|
7.49E-07
|
Stem
Cells
|
STEMCELL_NEURAL_UP
|
Enriched in mouse neural stem cells, compared to differentiated
brain and bone marrow cells
|
6.93E-06
|
STEMCELL_EMBRYONIC_UP
|
Enriched
in mouse embryonic stem cells, compared to differentiated brain and bone
marrow cells
|
1.97E-04
|
LIN_WNT_UP
|
Genes up-regulated by APC in SW480 (colon cancer)
|
7.50E-04
|
HSC_INTERMEDIATE PROGENITORS_FETAL
|
Up-regulated in mouse hematopoietic intermediate progenitors
from fetal liver (Intermediate Progenitors Shared + Fetal)
|
3.75E-03
|
HSA04310_WNT_ SIGNALING_PATHWAY
|
Genes involved in Wnt signaling pathway
|
7.14E-03
|
HSA04330_NOTCH_ SIGNALING_PATHWAY
|
Genes involved in Notch signaling pathway
|
1.28E-02
|
V$TCF4_Q5
|
Genes with promoter regions [-2kb,2kb] around transcription start
site containing the motif SCTTTGAW which matches annotation for TCF4:
transcription factor 4
|
1.49E-02
|
HSC_HSCANDPROGENITORS _SHARED
|
Up-regulated in mouse hematopoietic stem cells and progenitors
from both adult bone marrow and fetal liver (Cluster iii, HSC and Progenitors
Shared)
|
2.00E-02
|
HSC_HSCANDPROGENITORS _FETAL
|
Up-regulated in mouse hematopoietic stem cells and progenitors
from fetal liver (HSC and Progenitors Shared)
|
2.09E-02
|
HSC_INTERMEDIATE PROGENITORS_SHARED
|
Up-regulated in mouse hematopoietic intermediate progenitors
from both adult bone marrow and fetal liver (Cluster v, Intermediate
Progenitors Shared)
|
2.15E-02
|
MAMMARY_DEV_UP
|
Up-regulated in the intact developing mouse mammary gland; higher
expression in 5/6 week pubertal glands than in 3 week, mid-pregnant,
lactating, involuting or resuckled glands
|
2.15E-02
|
Aging, Alzheimer's Disease, and Oxidative Stress
|
MORF_SOD1
|
Neighborhood of SOD1 superoxide dismutase 1, soluble
(amyotrophic lateral sclerosis 1 (adult)) in the MORF expression compendium
|
1.98E-05
|
ALZHEIMERS_DISEASE_UP
|
Upregulated in correlation with overt Alzheimer's Disease, in
the CA1 region of the hippocampus
|
9.05E-05
|
MORF_JUND
|
Neighborhood of JUND jun D proto-oncogene in the MORF
expression compendium
|
2.87E-03
|
Regulation of DNA Methylation
|
MORF_HDAC1
|
Neighborhood of HDAC1 histone deacetylase 1 in the MORF expression
compendium
|
9.91E-06
|
TSA_PANC50_UP
|
50 most interesting genes upregulated by TSA treatment in at
least one of four pancreatic cancer cell lines, but not in normal (HPDE)
cells
|
4.32E-04
|
MORF_HAT1
|
Neighborhood of HAT1 histone acetyltransferase 1 in the MORF
expression compendium
|
9.44E-04
|
Breast Cancer Associated Tamoxifen-Resistance
|
MORF_NPM1
|
Neighborhood of NPM1 nucleophosmin (nucleolar phosphoprotein B23,
numatrin) in the MORF expression compendium
|
1.73E-04
|
GCM_NPM1
|
Neighborhood of NPM1 nucleophosmin (nucleolar phosphoprotein
B23, numatrin) in the GCM expression compendium
|
7.21E-03
|
GNF2_NPM1
|
Neighborhood of NPM1
|
1.24E-02
|
Metastasis
|
MORF_NME2
|
Neighborhood of NME2 non-metastatic cells 2, protein (NM23B)
expressed in in the MORF expression compendium
|
2.04E-03
|
MORF_MTA1
|
Neighborhood of MTA1 metastasis associated 1 in the MORF
expression compendium
|
1.28E-02
|
CROMER_HYPOPHARYNGEAL_ MET_VS_NON_UP
|
Genes increased in metastatic hypopharyngeal cancer tumours
|
2.37E-02
|
Myc-Associated Genes
|
CACGTG_V$MYC_Q2
|
Genes with promoter regions [-2kb,2kb] around transcription start
site containing the motif CACGTG which matches annotation for MYC: v-myc
myelocytomatosis viral oncogene homolog (avian)
|
2.05E-03
|
LEE_MYC_TGFA_UP
|
Genes up-regulated in hepatoma tissue of Myc+Tgfa transgenic
mice
|
7.34E-03
|
LEE_MYC_UP
|
Genes up-regulated in hepatoma tissue of Myc transgenic mice
|
1.00E-02
|
MYC_ONCOGENIC_SIGNATURE
|
Genes selected in supervised analyses to discriminate cells
expressing c-Myc oncogene from control cells expressing GFP.
|
1.00E-02
|
V$MYC_Q2
|
Genes with promoter regions [-2kb,2kb] around transcription
start site containing the motif CACGTGS which matches annotation for MYC:
v-myc myelocytomatosis viral oncogene homolog (avian)
|
1.26E-02
|
V$NMYC_01
|
Genes with promoter regions [-2kb,2kb] around transcription
start site containing the motif NNCCACGTGNNN which matches annotation for
MYCN: v-myc myelocytomatosis viral related oncogene, neuroblastoma derived
(avian)
|
1.32E-02
|
FERNANDEZ_MYC_TARGETS
|
MYC target genes by ChIP in U-937,HL60 (leukemia),P493
(B-cell),T98G (glioblastoma),WS1 (fibroblast)
|
2.43E-02
|
Inflammation/NF-kB/STAT Signaling
|
IL6_FIBRO_UP
|
Upregulated following IL-6 treatment in normal skin fibroblasts
|
2.05E-03
|
TNFALPHA_30MIN_UP
|
Upregulated 30min after TNF-alpha treatment of HeLa cells
|
2.23E-03
|
HESS_HOXAANMEIS1_UP
|
Genes upregulated in Hoxa9/Meis1 transduced cells vs control
|
6.31E-03
|
ST_INTERLEUKIN_13_PATHWAY
|
IL-13 is produced by Th2 cells on activation of the T cell
antigen receptor, and by mast and basophil cells on activation of the IgE
receptor.
|
9.22E-03
|
ST_IL_13_PATHWAY
|
Like IL-4, IL-13 is produced by Th2 cells on activation of the T
cell antigen receptor, and by mast and basophil cells on activation of the
IgE receptor.
|
9.45E-03
|
V$IRF_Q6
|
Genes with promoter regions [-2kb,2kb] around transcription
start site containing the motif BNCRSTTTCANTTYY which matches annotation for IRF1:
interferon regulatory factor 1
|
1.42E-02
|
TNFALPHA_ALL_UP
|
Upregulated at any timepoint after TNF-alpha treatment of HeLa
cells
|
1.44E-02
|
TGFbeta Signaling/Myofibroblast Differentiation/Fibrosis
|
GCM_ACTG1
|
Neighborhood of ACTG1 actin, gamma 1 in the GCM expression
compendium
|
2.18E-03
|
TGFBETA_ALL_UP
|
Upregulated by TGF-beta treatment of skin fibroblasts, at any
timepoint
|
6.80E-03
|
MYOD_BRG1_UP
|
Genes up-regulated following transduction of MyoD in NIH 3T3
cells that fail to acheive full induction with expression of a
dominant-negative BRG1 allele
|
7.07E-03
|
MORF_ACTG1
|
Neighborhood of ACTG1 actin, gamma 1 in the MORF expression
compendium
|
9.15E-03
|
MYOD_NIH3T3_UP
|
Up-regulated at 24 hours in NIH 3T3 murine fibroblasts following
transduction with MyoD and incubation in differentiation medium
|
1.08E-02
|
POMEROY_DESMOPLASIC_VS_ CLASSIC_MD_UP
|
Genes expressed in desmoplastic medulloblastomas. (p < 0.01)
|
9.68E-03
|
TGFBETA_LATE_UP
|
Upregulated by TGF-beta treatment of skin fibroblasts only at
1-4 hrs (clusters 4-6)
|
2.36E-02
|
Hypoxia/HIF Signaling/Mitochondrial Genes/Metabolism
|
HYPOXIA_REVIEW
|
Genes known to be induced by hypoxia
|
8.96E-03
|
HIF1_TARGETS
|
Hif-1 (hypoxia-inducible factor 1) transcripional targets
|
1.07E-02
|
HUMAN_MITODB_6_2002
|
Mitochondrial genes
|
1.08E-02
|
MITOCHONDRIA
|
Mitochondrial genes
|
1.28E-02
|
HYPOXIA_RCC_UP
|
Upregulated by hypoxia in VHL-rescued renal carcinoma cells
(Fig. 3f+g)
|
1.42E-02
|
HSA00330_ARGININE_AND _PROLINE_METABOLISM
|
Genes involved in arginine and proline metabolism
|
2.20E-02
|
Liver Specific Transcription
|
HSIAO_LIVER_SPECIFIC_GENES
|
Liver selective genes
|
1.04E-02
|
We
have independently shown that many of these same biological processes are
activated in Cav-1 (-/-) stromal cells [9], consistent with the idea that Cav-1
(-/-) stromal cells are a valid model for exploring the tumor-promoting effects
of an activated tumor stromal micro-environment.
Similarities of
the Cav-1 (-/-) stromal gene set with transcriptional profiling data from ER-negative
breast cancer
A comparison of the Cav-1 (-/-) stromal cell gene set with other existing
transcriptional profiles also shows significant overlap with ER-negative human
breast cancer (p = 8.96 x 10-10; BRCA_ER_NEG [28]). For this overlap
analysis, UP genes from the Cav-1 (-/-) stromal data set with a fold-change of >
2.0
(KO/WT) and a P value of <
0.1 were utilized for comparison with
existing gene sets in the data base.
Interestingly, these tumors
were not laser-capture micro-dissected, so this provides an indication that the
Cav-1 (-/-) stromal gene set may also be well represented in the
transcriptional profiles obtained from whole tumors. A HeatMap containing these
intersecting genes is shown in Figure 3 (205 overlapping genes; FC >
1.5;
p <
0.05). See also Supplementary Tables.
These include key
overlapping genes associated with metabolism and glycolysis
(Acot7, Acsl4, Eno1, Gapdh, Ldhb, Mtrf1l, Pfkl, Pgk1, Pgm2, Pgm3, Slc2a5,
Slc2a6), hypoxia (Hyou1), the inflammatory response
(Aif1, C3, Ccl5, Crlf3, Ifngr1, Il10ra, Irak1, Irf5, Isg20, Nfib, Nfkbie, Nos3,
Tnfaip3, Tnfrsf21, Tnfsf13b, Traf1), myofibroblast differentiation and
the extracellular matrix (Actl6a, Capg, Col9a3, Dnmt3b, Mmp9, Myo10,
Spock2, Tgfbi, Tgm1, Timp2), as well as DNA-damage and repair
(Ddit3, Rad54l). These results are consistent with the existence of the
"Reverse Warburg Effect" in ER-negative breast cancers.
Interestingly, it has been previously demonstrated that key secreted inflammatory factors, such as Aif1
(allograft inflammatory factor-1) (upregulated nearly 3-fold in Cav-1 (-/-)
stromal cells; Supplementary Tables) promote NFkB-activation, the paracrine
growth of ER-negative breast cancer cells [29], and are involved in the
pathogenesis of pro-fibrotic diseases, such as scleroderma (systemic sclerosis)
[30-32].
Similarly, Aif1 expression
is highly-upregulated in the tumor stroma of human breast cancers (See Supplementary
Table 1; p = 8.35 x 10-24).
Figure 2. Venn diagrams for the transcriptional overlap between Alzheimer's disease brain and tumor stroma from breast cancer patients.
Discussion
Here, we provide compelling
transcriptional evidence for the "Reverse Warburg Effect" in human breast
cancer tumor stroma. Using an unbiased informatics analysis of transcriptional
gene profiling, we show that Cav-1 (-/-) stromal cells bear a striking resemblance
to the activated tumor stroma of human breast cancers. More specifically, the
transcriptional profiles of Cav-1 (-/-) stromal cells were most closely related
to the stroma of breast cancer patients that had undergone LN-metastasis. This
is consistent with our previous data showing that a loss of stromal Cav-1
protein expression (by immuno-histochemistry) in human breast cancer tumor
micro-arrays is specifically associated with increased LN-metastasis [3,4].
Moreover, we provide
evidence that the tumor stroma of human breast cancers shows a transcriptional
shift towards oxidative stress, DNA damage/repair, inflammation, hypoxia, and
aerobic glycolysis. These findings are consistent with the "Reverse Warburg
Effect" [8,9]. Notably, the tumor stroma of "metastasis-prone" breast cancer
patients was also closely related to the transcriptional profiles derived from
the brains of patients with Alzheimer's disease. As such, certain fundamental
biological processes are common to both an activated tumor stroma and
neuro-degenerative stress. These key biological processes most likely
include oxidative stress, NO over-production (peroxynitrite formation),
inflammation, hypoxia, and mitochondrial dysfunction, which are all thought to
drive Alzheimer's disease pathogenesis.
Thus,
we avidly reviewed the literature regarding theories of neuronal functioning,
neuronal stress, and neuro-degeneration, in the central nervous system and we
stumbled upon the idea of "Neuron-Glia Metabolic Coupling" [11-18] In
this model, first proposed over 10 years ago, astrocytes shift towards aerobic
glycolyis, secrete pyruvate and lactate, which is then taken-up by adjacent
neurons and then "feeds" into the neuronal TCA cycle, resulting in increased
neuronal oxidative mitochondrial metabolism, and higher ATP production in
neurons. In essence, the astrocytes would function as support cells to "feed"
the adjacent neuronal cells. Thus, "Neuron-Glia Metabolic Coupling" and the
"Reverse Warburg Effect" are analogous
biological processes, where the astrocytes are the cancer-associated
fibroblasts and the neurons are the epithelial tumor cells. As such, we
propose that the "Reverse Warburg Effect" could also be more generally termed
"Epithelial-Stromal Metabolic Coupling"
or "Epithelial-Fibroblast Metabolic Coupling".
If
these two processes are indeed analogous, then epithelial tumor cells have
already learned to behave as neurons, using the stroma as a means of support
and nourishment. Figure 4 directly compares "Neuron-Glia Metabolic Coupling"
with the "Reverse Warburg effect" schematically.
Myofibroblasts and
mesenchymal stem cells are known to often express GFAP (glial fibrillary acidic
protein) [19-21], an intermediate filament protein that is thought to be
relatively specific for astrocytes in the central nervous system. Table 5
shows that GFAP and other glial-related gene transcripts are indeed upregulated
in "tumor stroma" and in the stroma of "metastasis-prone" breast cancer
patients. Thus, possible metabolic and functional
similarities between CNS astrocytes and myofibroblasts/cancer-associated
fibroblasts should be further explored.
Interestingly, in "Neuron-Glia
Metabolic Coupling" the glycolytic shift in astrocytes is thought to be
mediated by the secretion of glutamate (a neurotransmitter) from neurons. Then,
astrocytes take up glutamate via high affinity sodium-dependent glutamate
transporters, such as Slc1a2 and Slc1a3. Importantly, one of
these two glial-specific glutamate transporters (Slc1a3) is also
transcriptionally over-expressed in the stroma of human breast cancer patients
(Table 5). As such, the similarities between brain astrocytes,
myofibroblasts, mesenchymal stem cells, and tumor stromal cells may be more
extensive than we previously appreciated.
Table 5. Expression of glial-related genes in human breast cancer stromal gene sets.
Gfap is highlighted in bold because it is also known to be a common marker
of astrocytes, myo-fibroblasts, and mesenchymal stem cells.
Gene | Description | Tumor
Stroma | Recurrence
-Prone Stroma | Metastasis-Prone
Stroma |
Gcm1
|
glial
cells missing homolog 1 (Drosophila)
|
6.50e-21
|
8.39e-04
| |
Gfap | glial
fibrillary acidic protein | 1.64e-18 | 1.36e-03 | 2.28e-02 |
Gfra2
|
glial
cell line derived neurotrophic factor family receptor alpha 2
|
2.28e-17
|
3.58E-02
| |
Slc1a3
|
solute
carrier family 1 (glial high affinity glutamate transporter), member 3
|
4.22e-17
|
5.70e-03
| |
Gfra3
|
glial
cell line derived neurotrophic factor family receptor alpha 3
|
2.97e-16
| | |
Gdnf
|
glial
cell line derived neurotrophic factor
|
6.48e-14
| | |
Gcm2
|
glial
cells missing homolog 2 (Drosophila)
|
1.38e-05
|
2.06e-02
| |
Gfra4
|
glial
cell line derived neurotrophic factor receptor alpha 4
| | |
1.02e-02
|
Figure 3. Transcriptional overlap of the Cav-1 (-/-) stromal gene set with ER-negative breast cancer.
A HeatMap containing 205 intersecting genes is shown (FC >1.5; p <0.05). See
also Supplementary Tables. FC, fold-change.
Figure 4. Comparisons between the "Reverse Warburg Effect" and "Neuron-Glia Metabolic Coupling", suggest "Epithelial-Stromal Metabolic Coupling".
In "Neuron-Glia Metabolic Coupling", astrocytes take up more glucose, shift towards aerobic
glycolyis, secrete pyruvate and lactate, which is then taken up by adjacent
neurons and then "feeds" into the neuronal TCA cycle, resulting in
increased neuronal oxidative mitochondrial metabolism, and higher ATP
production in neurons. In essence, the astrocytes function as support cells
to "feed" the adjacent neuronal cells. This schematic diagram shows that
"Neuron-Glia Metabolic Coupling" and the "Reverse Warburg Effect" are
analogous biological processes, where the astrocytes are the
cancer-associated fibroblasts and the neurons are the epithelial tumor cells. Thus, the "Reverse Warburg Effect"
could also be more generally termed "Epithelial-Stromal Metabolic Coupling"
or "Epithelial-Fibroblast Metabolic Coupling". This figure was partially
re-drawn from Bonucelli et al. 2010, with permission [24]. MCT,
mono-carboxylate transporter.
Methods of analysis
Venn diagrams.
In the Venn diagram of Figure 1, we show the
intersections between the set of genes that are upregulated in Cav-1 (-/-)
versus wild-type stromal cells [8] and three breast cancer gene sets [10].
(a) the set of stromal genes that are
upregulated in breast cancer tumor patients versus normal breast stroma; (b) the set of stromal genes that are
upregulated in recurrence positive versus recurrence negative breast cancer
patients (c) the set of stromal genes that are
upregulated in lymph-node metastasis positive versus lymph-node metastasis
negative breast cancer patients.
In the Venn diagram of Figure 2, we show the
intersections between the set of genes that are upregulated in Alzheimer's
brain disease [22] and the sets of genes (a)-(c) listed above. The p-values
determining the significance of upregulation for each gene were computed using
a one-sided t-test statistic (Tables 1, 2, and 5). For each pair (X,Y) of sets
of genes, we also computed the probability (p-value) that the size of their
intersection is less than or equal to the size of the intersection between set
X and a randomly-chosen set of size equal to the size of set Y. This
probability was calculated by applying the cumulative density function of the
hypergeometric distribution on the size of set X, the size of set Y, the
observed overlap between X and Y, and the total number of available genes.
Gene set enrichment analysis.
For the functional analysis presented in Table 4, we
used data from the Molecular Signatures Database (MsigDB [23]) which comprises
a collection of gene sets: - collected from various sources such as online
pathway databases, publications, and knowledge of domain experts, - comprising genes that share a conserved
cis-regulatory motif across the human, mouse, rat, and dog genomes, - identified as co-regulated gene clusters by mining
large collections of cancer-oriented microarray data, and - annotated by a common Gene Ontology (GO) term.
For our analysis we used the latest release of MSigDB
database v2.5 (April 7, 2008), after converting all the gene names in the
database into RefSeq gene IDs. After this preprocessing step, we chose the
sub-collection of gene sets that was relevant to our study, and for each gene
set X in that sub-collection, we computed the overlap between X and the set of
genes Y that are upregulated in lymph-node metastasis positive versus
lymph-node metastasis negative breast cancer patients (p-value ≤0.05).
Then, we computed the probability (p-value) of the observed overlap between
sets X and Y as described in the "Venn diagrams" section.
Acknowledgments
M.P.L. and his laboratory
were supported by grants from the NIH/NCI (R01-CA-080250;
R01-CA-098779; R01-CA-120876; R01-AR-055660), and the Susan G. Komen Breast
Cancer Foundation. F.S. was supported by
grants from the W.W. Smith Charitable Trust, the Breast Cancer Alliance (BCA),
and a Research Scholar Grant from the American Cancer Society (ACS). P.G.F. was
supported by a grant from the W.W. Smith Charitable Trust, and a Career
Catalyst Award from the Susan G. Komen Breast Cancer Foundation. R.G.P. was supported by
grants from the NIH/NCI (R01-CA-70896, R01-CA-75503, R01-CA-86072, and
R01-CA-107382) and the Dr. Ralph and Marian C. Falk Medical Research Trust. The
Kimmel Cancer Center was supported by the NIH/NCI Cancer Center Core grant
P30-CA-56036 (to R.G.P.). Funds were also contributed by the Margaret Q.
Landenberger Research Foundation (to M.P.L.). This project is funded, in part,
under a grant with the Pennsylvania Department of Health (to M.P.L.). The
Department specifically disclaims responsibility for any analyses,
interpretations or conclusions. This work was also supported, in part, by a
Centre grant in Manchester from Breakthrough Breast Cancer in the U.K. (to
A.H.) We would also like to thank
Despina Hadjikyriakou who provided the crucial link between the two co-first
authors of this paper by introducing them to each other and foreseeing the
potential of their collaboration. The authors would also like to thank Dr. Isidore Rigoutsos (IBM/Thomas Jefferson University) for his
generous help and critical reading of the manuscript.
Conflicts of Interest
The authors of this manuscript have no conflict of
interest to declare.
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