Literature DB >> 25225794

Monocarboxylate transporters 1-4 in NSCLC: MCT1 is an independent prognostic marker for survival.

Marte Eilertsen1, Sigve Andersen2, Samer Al-Saad3, Yury Kiselev4, Tom Donnem2, Helge Stenvold2, Ingvild Pettersen1, Khalid Al-Shibli5, Elin Richardsen3, Lill-Tove Busund3, Roy M Bremnes2.   

Abstract

INTRODUCTION: Monocarboxylate transporters (MCTs) 1-4 are lactate transporters crucial for cancers cells adaption to upregulated glycolysis. Herein, we aimed to explore their prognostic impact on disease-specific survival (DSS) in both cancer and tumor stromal cells in NSCLC.
METHODS: Tissue micro arrays (TMAs) were constructed, representing both cancer and stromal tumor tissue from 335 unselected patients diagnosed with stage I-IIIA NSCLC. Immunohistochemistry was used to evaluate the expression of MCT1-4.
RESULTS: In univariate analyses; ↓ MCT1 (P = 0.021) and ↑ MCT4 (P = 0.027) expression in cancer cells, and ↑ MCT1 (P = 0.003), ↓ MCT2 (P = 0.006), ↓ MCT3 (P = 0.020) expression in stromal cells correlated significantly with a poor DSS. In multivariate analyses; ↓ MCT1 expression in cancer cells (HR: 1.9, CI 95%: 1.3-2.8, P = 0.001), ↓ MCT2 (HR: 2.4, CI 95%: 1.5-3.9, P<0.001), ↓ MCT3 (HR: 1.9, CI 95%: 1.1-3.5, P = 0.031) and ↑ MCT1 expression in stromal cells (HR: 1.7, CI 95%: 1.1-2.7, P = 0.016) were significant independent poor prognostic markers for DSS.
CONCLUSIONS: We provide novel information of MCT1 as a candidate marker for prognostic stratification in NSCLC. Interestingly, MCT1 shows diverging, independent prognostic impact in the cancer cell and stromal cell compartments.

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Year:  2014        PMID: 25225794      PMCID: PMC4165596          DOI: 10.1371/journal.pone.0105038

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Non-small cell lung cancer (NSCLC) is a major cause of cancer deaths in the Western World, with a 5-year survival still as low as 16% in the United States [1]. The latter is due to late symptoms and lack of early detection measures. New and better predictive and prognostic markers in NSCLC are highly warranted. Hypoxia is a common feature of solid tumors [2], and our research group has previously published articles on hypoxic markers in NSCLC [3]–[6]. A necessary metabolic adaption to hypoxia is a switch to energy generation by glycolysis. In addition, malignant cells in general even seem to prefer glycolysis despite the presence of oxygen (“Warburg effect”) [7]. The cancer cells' ability to switch to glycolysis is believed to represent a growth advantage, since the oxygen availability in a tumor can fluctuate over time [8]. However, glycolysis also increases lactic acid production. To avoid intracellular acidification and apoptosis, glycolytic cells must sustain lactate homeostasis. Several transporters are involved in this process including monocarboxylate transporters (MCT) 1–4 [9]. MCT1-4 are trans-membrane symporters involved in lactate and pyruvate transportation. MCT1 and MCT4 are located in the cell membrane. MCT4 exports lactate, while MCT1 can facilitate both import and export depending on the pH gradient [10]. The potential roles of MCT2 and MCT3 in cancers are less studied. MCT2 is reported to be expressed in the mitochondrial membrane, where it is involved in the import of pyruvate following lactate oxidation [11]. MCT3 export lactate, but is only reported to be expressed in retinal pigment epithelium and choroid plexus epithelium [9]. Lactate homeostasis can also be sustained through metabolic co-operation between cancer cells and tumor stroma cells [11], [12]. This theory of metabolic co-operation is based on the observation that cancer cells express proteins involved in anaerobic glycolysis (like GLUT1), while stromal cells express complementary proteins involved in lactate oxidation. Although energy metabolism has been a rather unexploited field in cancer treatment, effectors of energy metabolism are intriguing targets of therapy [13]. The expression of MCTs and their functional role in normal tissue is well characterized, but the transporter expression and role in different cancers has just recently started to be investigated [9]. Due to the recent observation that MCTs may play a central part in tumor biology, and that MCT1 is considered as a potential target in cancer treatment, we aimed to explore the prognostic impact of MCT1–4 on disease specific survival (DSS) in both cancer and tumor stromal cells from NSCLC patients. In addition, we investigated the potential synergetic impact of co-expression of metabolic markers in NSCLC.

Materials and Methods

Ethics statement

The Norwegian Data Inspectorate and The Regional Committee for Medical and Health Research Ethics Nord (Nordland, Troms and Finnmark) have approved the study. Patient records/information was anonymized and de-identified prior to analysis. The need for consent was specifically waived by The Regional Committee for Research Ethics, since the study was retrospective with more than half of the patients deceased.

Patients

Primary tumor tissue samples from 371 patients diagnosed with NSCLC stage I-IIIA at the University Hospital of Northern Norway and Nordland Central Hospital from 1990 to 2004 were collected retrospectively. Thirty-six patients were excluded from the cohort. Exclusion from the study was due to radiotherapy or chemotherapy prior to surgery (n = 10), other malignancy within the 5 years prior to diagnosis (n = 13) or inadequate paraffin-embedded fixed tissue blocks (n = 13). A representative cohort of 335 patients was included in the study, and complete demographic and clinicopathological data were obtained retrospectively. An anonymised database was established. Staging of the tumors was done according to the World Health Organization Guidelines [14]. Two experienced pathologists reviewed all primary tissue carefully prior to the study (S.A.S. and K.A.S).

Microarray construction

The most representative areas of cancer cells and tumor stromal cells were identified. Using a tissue-arraying instrument (Beecher Instruments, Silver Springs, MD), two representative 0.6 mm core biopsies of cancer cells and two representative 0.6 mm core biopsies of tumor stromal cells were collected from each surgical specimen. As controls, normal lung tissue localized distant from the primary tumor was used in addition to samples from 20 normal lungs. All the cores were gathered in eight tissue microarray blocks (TMAs). Detailed methodology has been reported previously [15].

Immunohistochemistry

All applied antibodies had been subjected to validation by the manufacturer for immunohistochemistry (IHC) on paraffin-embedded material, in addition MCT1 and MCT4 was validated by in-house Western blot analysis (Figure 1). All sections were deparaffinised with xylene and rehydrated with ethanol. The 4 µm sections containing tissue cores were subjected to the following antibodies: MCT1 (rabbit polyclonal, AB3538P, Millipore, 1/75), MCT2 (goat polyclonal, ab129290, Abcam, 1∶150), MCT3 (rabbit polyclonal, ab60333, Abcam, 1∶50), MCT4 (rabbit polyclonal, sc-50329, Santa Cruz, 1∶200) and GLUT1 (mouse monoclonal, AB40084, Abcam; 1∶500) [5].
Figure 1

Western Blot of MCT1 and MCT4.

In all cell lines investigated (A-549; lung adenocarcinoma, H661; large cell carcinoma, U-251 MG; neuronal glioblastoma) a protein band of approximately 40 kDa was detected corresponding to MCT1 and MCT4. Equal loading was ensured by B-actin.

Western Blot of MCT1 and MCT4.

In all cell lines investigated (A-549; lung adenocarcinoma, H661; large cell carcinoma, U-251 MG; neuronal glioblastoma) a protein band of approximately 40 kDa was detected corresponding to MCT1 and MCT4. Equal loading was ensured by B-actin. MCT1 and MCT4 were stained using the Ventana Benchmark XT (Ventana Medical Systems Inc.) procedure ultraview DAB. Antigen retrieval was done automatic by CC1 mild (32 min). For MCT2 and MCT3, antigen retrieval was done manually by placing the specimens in 0.01 M citrate buffer at pH 6.0 and exposed to microwave heating of 20 minutes at 450 W. The primary antibody was visualized by adding a secondary antibody conjugated with Biotin, followed by an Avidin/Biotin/Peroxydase complex (Vectastein ABC Elite kit from Vector Laboratories). Finally, all slides were counterstained with hematoxylin to visualize the nuclei.

Scoring of immunohistochemistry

Scoring was done using light microscopy, and performed independently and semi-quantitatively by one experienced pathologist (S.A.S) and one M.D (M.E). Both intensity and density was scored when possible. The dominant staining intensity in cores of cancer cells and stromal cells was scored as; 0 = negative, 1 = weak, 2 = intermediate, 3 = strong (Figure 2). Staining density was scored as 0 = none, 1 = 1–10%, 2 = 11–50%, 3 = 51–100%. In case of disagreement, slides were re-examined and consensus was reached by the observers. Inter-individual variability in IHC-scoring in both cancer cells and stromal cells was evaluated on the current material.
Figure 2

Immunhistochemical staining of MCT1–4 in NSCLC.

Low expression: A) MCT1, B) MCT2, C) MCT3, D) MCT4. High expression: E) MCT1, F) MCT2, G) MCT3, H) MCT4. 100× and 400× magnification.

Immunhistochemical staining of MCT1–4 in NSCLC.

Low expression: A) MCT1, B) MCT2, C) MCT3, D) MCT4. High expression: E) MCT1, F) MCT2, G) MCT3, H) MCT4. 100× and 400× magnification. Mean scores for cancer cell cores and stromal cell cores were calculated. In cancer cells, high expression was defined as: >1.5 for MCT1 and MCT3; >1 for MCT2; >2 for MCT4. Density was used for MCT1 and MCT4 in cancer cells, while MCT2 and MCT3 cancer cells intensity scores were used. In stromal cells, high expression was defined as: >1 for MCT1 and MCT3; >1.5 for MCT2 and MCT4. For MCT1 and MCT2 stroma intensity scores were used. For MCT3 and MCT4 stroma density scores were used. The same IHC scoring method has been utilized in previous studies from our group [15]. Furthermore, we constructed four co-expression variables. The first co-expression variable was created to test the potential synergistic impact when both GLUT1 (glucose import) [5] and MCT4 (lactate export) is expressed in cancer cells; GLUT1c+MCT4c. The other three co-expression variables assessed the hypothesized synergetic effect of metabolic co-operation between cancer cells and stromal cells; GLUT1c+MCT1 (lactate import)s, MCT4c+MCT1s and MCT1c+MCT4s. Kaplan Meier curves of the co-expression variables were made with the following stratifications low/low, other (low/high or high/low), high/high.

Western blot

Cell lysates were incubated with NuPAGE LDS Sample Buffer (Life Technologies, USA) for 5 minutes at 85°C, sonicated briefly and run on a NuPAGE 4–12% Bis Tris Gel (Life Technologies, USA). Blotting was performed onto a Hybond nitrocellulose membrane (GE Healthcare) using the NuPAGE blotting system (Life Technologies, USA). The membrane was incubated with Odyssey blocking buffer (LI-COR Biosciences, Germany) for 1 hour at room temperature. Primary and secondary antibodies were diluted in the blocking buffer. Anti-MCT1 antibody (Millipore, USA, cat#AB3538p) was used in the dilution of 1∶500, anti-MCT4 in the dilution 1∶500 (Santa Cruz, USA, cat#SC-50329) and anti-actin (Sigma, cat#A2066) 1∶2000. IRDye CW secondary antibodies (LI-COR, Germany) were used in dilution 1∶10000. Molecular weight markers used were SeeBlue Plus 2 (Life Technologies, USA, cat#LC5925) and Magic Mark XP (Life Technologies, USA, cat#LC5602). Images were acquired on the ODYSSEY Sa Infrared Imaging System (LI-COR, Germany).

Maintenance of cell lines

NCI-H661 cells (ATCC #HTB-183) were grown in RPMI-1640 media (21875-034, Gibco), A549 cells (ATCC # CCL-185) were grown in Ham's F-12K (Kaighn's) media (21127-022, Gibco), U-251 MG cells (Sigma-Aldrich #09063001) were grown in DMEM with 4,5 g/l glucose (41965-039, Gibco). All media were supplemented with penicillin, streptomycin and 10% fetal calf serum.

Statistical methods

The SPSS 20.0 (Chicago, IL, USA) was used to perform the statistical analyses. The Kaplan-Meier method was used for univariate analyses. The log-rank test was used to test the statistical significance between survival curves stratified by marker expression. The endpoint of this study was disease-specific survival (DSS). DSS was calculated from the time of surgery to the time of lung cancer death. The cox regression analysis (backward stepwise) was used to test the independent impact of variables that were significant in the univariate analyses. In Model 1, MCT1–4 was tested simultaneously, while in Model 2 co-expression variables were tested one by one. The significance level for stepwise entry and removal was set at 0.05 and 0.10 respectively. P = 0.05 was considered statistically significant for all analyses.

Results

Patients characteristics

In Table 1, demographic, clinical and histopathologic variables are presented. The last DSS update was done in January 2011. The patients' median age was 67.1 years (range 28–85) and the majority of the cohort was male (76%). Ninety-six percent of the cohort was previous or present smokers. The median follow-up time of survivors was 99 months (range 9.8–189). The NSCLC tumors were divided in the following subgroups according to histology; 191 squamous cell carcinomas (SCC), 113 adenocarcinomas (AC) and 31 large-cell carcinomas (LCC).
Table 1

Prognostic clinicopathologic variables as predictors of disease-specific survival in 335 NSCLC patients (univariate analyses; log-rank test).

CharacteristicsPatients N, (%)Median survival (months)5-year survival (%)P
Age.42
≤65 years156 (47)9856
>65 years179 (53)NR60
Sex.22
Female82 (24)19064
Male253 (76)9856
Smoking status.26
Never15 (5)1943
Previous105 (31)8455
Present215 (64)NR60
WHO Performance status .016
0197 (59)NR63
1120 (36)6452
218 (5)2533
Weight loss.76
<10%303 (90)19058
>10%32 (10)9857
Histology .028
Squamous cell carcinoma191 (57)NR66
Adenocarcinoma113 (34)5446
Large cell carcinoma31 (9)9856
Differentiation <.001
Poor138 (41)4747
Moderate144 (43)19065
Well53 (16)NR68
Surgical procedure 0.007
Wedge + Lobectomy243 (73)19062
Pneumectomy92 (27)3747
p-Stage <.001
pI157 (47)NR72
pII136 (41)6251
pIIIA42 (12)1724
T-status <.001
185 (25)19075
2188 (56)8457
362 (19)2537
N-status <.001
0232 (69)NR67
176 (23)3543
227 (8)1818
Surgical margins.37
Free307 (92)19059
Not free28 (8)4748
Vascular infiltration .001
No284 (85)19062
Yes51 (15)2733

NR, not reached.

NR, not reached.

Expression of hypoxic markers and their correlations

MCT1 and MCT4 expression was mostly membranous, while MCT2 and MCT3 was mostly cytoplasmic (Figure 2). A moderate correlation was observed between density of cancer cell expression of MCT1 and intensity of GLUT1 expression (r = 0.38, P<0.001). Between clinicopathological factors and MCTs, a moderate correlation was observed only between density of MCT1 in cancer cells and histology (r = 0.484, P<0.001) with high expression in 58% of squamous cell carcinoma compared to 34% in adenocarcinoma.

Univariate analysis

The significant prognostic clinicopathological variables were; WHO performance status (P = 0.016), histology (P = 0.028), differentiation (P<0.001), surgical procedure (P = 0.007), p-Stage (P<0.001), T-status (P<0.001), N-status (P<0.001) and vascular infiltration (P = 0.001) (Table 1). Among the metabolic markers examined, ↑MCT1 expression in cancer cells (P = 0.021) and ↑MCT2 (P = 0.006) and ↑MCT3 (P = 0.020) expression in stromal cells correlated significantly with a favourable DSS (Table 2 and Figure 3). Whereas ↑MCT1 in stromal cells (P = 0.003) and ↑MCT4 in cancer cells (P = 0.027) were significantly associated with a poor DSS. MCT2 and MCT3 in cancer cells and MCT4 in stromal cells had no significant impact on survival.
Table 2

Monocarboxylate transporters (MCT) 1–4 in cancer and stromal cells as predictors of disease-specific survival in 335 NSCLC patients (univariate analyses; log-rank test).

CharacteristicsPatients, N (%)Median survival (months)5-year survival (%)P
MCT1
Cancer cells .021
High171 (51)NR66
Low149 (44)6251
Missing15 (5)
Stromal cells .003
High201 (60)7154
Low108 (32)NR70
Missing26 (8)
MCT2
Cancer cells.364
High220 (66)12758
Low67 (20)NR64
Missing48 (14)
Stromal cells .006
High83 (25)NR72
Low231 (69)12755
Missing21(6)
MCT3
Cancer cells.776
High105 (31)19060
Low192 (58)NR59
Missing38 (11)
Stromal cells .020
High277 (83)61190
Low32 (9)4027
Missing26 (8)
MCT4
Cancer cells .027
High132 (39)NR51
Low178 (53)6265
Missing25 (8)
Stromal cells.110
High165 (49)NR62
Low139 (42)7153
Missing31 (9)
Figure 3

Kaplan Meier curves with DSS for expression of MCT1 and co-expression variables.

Kaplan Meier curves with disease-specific survival for expression of monocarboxylate transporter (MCT)1 in cancer cells and stromal cells and the co-expression variable GLUT1c+MCT4c and GLUT1c+MCT1s in NSCLC. A) MCT1 in cancer cells, B) MCT1 in stromal cells, C) GLUT1c+MCT4c, D) GLUT1c+MCT1s.

Kaplan Meier curves with DSS for expression of MCT1 and co-expression variables.

Kaplan Meier curves with disease-specific survival for expression of monocarboxylate transporter (MCT)1 in cancer cells and stromal cells and the co-expression variable GLUT1c+MCT4c and GLUT1c+MCT1s in NSCLC. A) MCT1 in cancer cells, B) MCT1 in stromal cells, C) GLUT1c+MCT4c, D) GLUT1c+MCT1s. The co-expression variables ↑GLUT1c+↑MCT1s (P = 0.001), ↑GLUT1c+↑MCT4c (P = 0.003) and ↑MCT4c+↑MCT1s (P = 0.009) were significantly associated with a poor DSS (Table 3). The co-expression marker ↑MCT1c+↑MCT4s (P = 0.006) was significantly associated with a positive DSS.
Table 3

Metabolic co-expression variables in cancer and stromal cells as predictors of disease-specific survival in 335 NSCLC patients (univariate analyses; log-rank test).

Co-expression variablesPatients N (%)Median survival (months)5-year survival (%)P
GLUT1c+MCT1s .001
Low/Low25NR91
Other11419063
High/High1616451
Missing35
GLUT1c+MCT4c .003
Low/Low31NR82
Other17019062
High/High1015248
Missing33
MCT4c+MCT1s .009
Low/Low72NR74
Other1299858
High/High975750
Missing37
MCT1c+MCT4s .006
Low/Low816251
Other1146251
High/High106NR72
Missing34

Multivariate analyses

Significant independent prognosticators for poor DSS in the NSCLC cohort were; T-status >1 (P = 0.002), N-status >0 (P = <0.001), moderate differentiation (P = 0.006), ↓MCT1 in cancer cells (HR: 1.9, CI 95%: 1.3–2.8, P = 0.001), ↓MCT2 in stromal cells (HR: 2.4, CI 95%: 1.5–3.9, P = <0.001) and ↓MCT3 (HR: 1.9, CI 95%: 1.1–3.5, P = 0.031), ↑MCT1 in stromal cells (HR: 1.7, CI 95%: 1.1–2.7, P = 0.016) and the co-expression variables ↑GLUT1c+↑MCT1s (HR: 7.3, P = 0.016) and ↑GLUT1c+↑MCT4c (HR: 3.3, P = 0.031) (Table 4).
Table 4

Results of Cox regression analyses (backward stepwise model) for clinicopathological factors and monocarboxylate transporters (MCTs) (model 1) and metabolic co-expression variables (*model 2).

Model 1All patients N = 335
FactorHRCI 95%P
T-status .002
T11(ref)
T21.6(0.95–2.7).079
T32.8(1.6–5.1).001
N-status .000
N01(ref)
N12.0(1.3–3.2).002
N22.8(1.5–5.0).001
Differentiation .006
Well1(ref)
Moderate2.4.007
Poor1.4(0.74–2.7).306
WHO PS NSNSNS
Vascular infiltration NSNSNS
Histology NSNSNS
MCT1 Cancer cellsTotal* .001
Low1.9(1.3–2.8)
High1(ref)
MCT1 Stromal cells .016
Low1(ref)
High1.7(1.1–2.7)
MCT2 Stromal cells .000
Low2.4(1.5–3.9)
High1(ref)
MCT3 Stromal cells .031
Low1.9(1.1–3.5)
High1(ref)
MCT4 Cancer cells NSNSNS
MCT4c+MCT1s* NSNSNS
MCT1c+MCT4s* NSNSNS
GLUT1c+MCT1s* .016
Low/low1(ref)
Other5.8(1.4–24.4).016
High/high7.3(1.8–30.3).006
GLUT1c+MCT4c* .031
Low/low1(ref)
Other2.4(.94–6.4).068
High/high3.3(1.2–3.3).016
We tested the PH-assumption (def.: the proportional hazards assumption; the relative hazard is constant over time, which is a requirement in the Cox proportional hazards model) for all markers, and for the MCT1-variable in cancer cells it was violated. Hence, the follow-up time was split into two intervals (>20 months, ≤20 months). We chose 20 months because the hazard was proportional past this point. We then performed a separate Cox regression analysis and the results were as follows: HR (total): 1.9, HR(>20 months): 2.3, HR(≤20 months): 0.9.

Discussion

We present the first large-scale study on the prognostic role of MCT1–4 in both cancer cells and cells of the tumor stroma in NSCLC. Our main finding is that ↑MCT1 expression in cancer and stromal cells has a significant, independent impact on disease-specific survival, but with contrary effects in the two investigated compartments. ↑MCT1 in cancer cells is an independent positive prognostic factor. ↑MCT1 in stromal cells is an independent negative prognosticator. In addition, ↑GLUT1c+↑MCT1s and ↑GLUT1c+↑MCT4c show a substantial synergetic and independent impact on DSS when compared to low expression of these markers. Our study confirms the presence of MCT1, MCT2 and MCT4 in NSCLC cancer cells and stromal cells, in agreement with the study by Koukourakis et al.[12]. To our knowledge, this is the first report on MCT3 being expressed in both cancer and stromal cells in NSCLC. We also show that MCT1 and MCT4 are located in the cell membrane, whereas MCT2 and MCT3 are expressed in the cytosol of NSCLC cells. The latter is in support of MCT2's hypothesized role in import of pyruvate in the mitochondria [11]. Besides, the specificity of the MCT1 and MCT4 antibodies was confirmed by Western blot, providing additional evidence for the validity of our main findings. The association between ↑MCT1 expression in NSCLC cancer cells and improved survival was unexpected. Fang et al. reported in 2006 an elevated MCT1 mRNA expression to be correlated with a negative prognosis in neuroblastomas [16]. But apart from this study, a negative prognostic impact of MCT has only been demonstrated when MCT1 is co-expressed with CD147 or p53 [17]–[19]. Halestrap et al. reports that MCT1 is capable of transporting lactate both in and out of the cell, and that the direction of lactate transport is dependent on the pH-gradient [10]. And so, an explanation for our contrasting finding may be that MCT1 is transporting lactate in an opposite direction in neuroblastomas compared to NSCLC. MCT1 in NSCLC cancer cells may import lactate, while in neuroblastoma MCT1 exports lactate. In support of this, Chen et al. reported that lactate, likely imported by MCT1, can induce a certain gene expression profile in breast cancer, associated with a beneficial clinical outcome [20]. Some of these genes favored oxidative phosphorylation. For cells to be able to utilize lactate imported by MCT1, as a metabolic fuel, they must have oxygen available to enable oxidative phosphorylation and thereby ATP production. We hypothesize that ↑MCT1 expression in NSCLC cancer cells serve as a positive prognostic factor, because its expression indicates an overall less aggressive oxidative/metabolic cancer phenotype in NSCLC. However, functional studies are warranted to clarify MCT1's impact in NSCLC, since Izumi et al. stated that MCT1, together with MCT4, may promote cancer cell invasion in lung cancer [21]. Our data show that ↑MCT1 expression in stromal cells of the tumor is a negative prognostic factor in NSCLC, which is consistent with the finding of Sonveaux et al. [22]. They observed MCT1 expressed in endothelial cells to be involved in tumor angiogenesis activation. In their study, lactate activated the transcription factor HIF1α in endothelial cells, which promoted the expression of bFGF and VEGFR2. Vegran et al. state that lactate from cancer cells, exported by MCT4 and imported by MCT1 in endothelial cells, consecutively stimulate angiogenesis through NF-κB and IL-8 signalling [23]. In addition, Rattigan et al. found that lactate can induce MCT1 expression in mesenchymal cells, and in turn contribute to a metabolic co-operation of lactate homeostasis between recruited stromal cells and glycolytic cancer cells, which also is in agreement with our results [24]. Our data demonstrate that the ability to predict survival in NSCLC patients is substantially improved when we combine the key metabolic markers GLUT1 and MCT4, and GLUT1 and MCT1. Our study confirms that ↑GLUT1c+↑MCT4c has a negative prognostic impact in NSCLC, in agreement with the results of Meijer et al. [25]. However, they made their observation only in adenocarcinomas, while we found the same trend in all histological subgroups of NSCLC. This is most likely due to the fact that our NSCLC cohort is considerable larger than that of Meijer et al. To our knowledge, this is the first study reporting that co-expression of ↑GLUT1c+↑MCT1s has a significant synergetic, negative prognostic impact. This result is interesting, since it provides strong additional evidence of the theory of Koukourakis et al. [11], [12]. They hypothesized that stromal cells of the tumor is an accomplice in tumor growth and survival, by enabling cancer cells to maintain high glycolytic metabolism (↑GLUT1) by utilizing the by-product of glycolysis; lactate (↑MCT1 in stromal cells). Cancer metabolism is regarded as a promising target for cancer therapy, and inhibition of MCT1 in cancer cells and in endothelial cells has been suggested as a potential target. So, is MCT1 a potential therapeutic target in NSCLC in light of our result? Despite being a positive prognostic marker when expressed in cancer cells, inhibition of MCT1 in NSCLC cancer cells will possibly not affect these less aggressive cells directly. Busk et al. report that inhibition of MCT1 leads to indirect starving of latent malignant hypoxic cancer cells that are present in the heterogenous tumor [26]. On the other hand, inhibition of MCT1 in cancer cells may be contraindicated since lactate import is thought to induce expression of a less aggressive gene expression profile [20]. Our data show that ↑MCT1 in stromal cells is a negative prognostic factor. Selective inhibition of MCT1 in stromal cells is a potential target strategy and inhibition of MCT1 in endothelial cells has already been suggested [22]. This is the first large-scale study on the prognostic role of MCT1–4 in NSCLC. The results presented herein demonstrate that MCT1 play crucial, but apparently opposing roles in cancer cell versus stromal cell compartments. We propose MCT1 as a new prognostic marker in NSCLC, although expression in cancer cells versus stromal cells mediates opposing prognostic impacts. Metabolic targeting is still largely an unexploited opportunity in cancer treatment more than 80 years after Warburg's ground-breaking studies. As MCTs are pivotal molecular effectors in tumor metabolism they serve as promising therapeutic targets. As there are contrasting prognostic impacts in cancer cells versus stromal cells, attention must be given to their role according to tumor compartments in future functional and expression analysis studies.
  26 in total

1.  Co-expression of CD147/EMMPRIN with monocarboxylate transporters and multiple drug resistance proteins is associated with epithelial ovarian cancer progression.

Authors:  Hongmin Chen; Li Wang; Julia Beretov; Jingli Hao; Weiwei Xiao; Yong Li
Journal:  Clin Exp Metastasis       Date:  2010-07-24       Impact factor: 5.150

2.  Comparison of metabolic pathways between cancer cells and stromal cells in colorectal carcinomas: a metabolic survival role for tumor-associated stroma.

Authors:  Michael I Koukourakis; Alexandra Giatromanolaki; Adrian L Harris; Efthimios Sivridis
Journal:  Cancer Res       Date:  2006-01-15       Impact factor: 12.701

3.  The H+-linked monocarboxylate transporter (MCT1/SLC16A1): a potential therapeutic target for high-risk neuroblastoma.

Authors:  Jun Fang; Quintin J Quinones; Trevor L Holman; Michael J Morowitz; Qun Wang; Huaqing Zhao; Frank Sivo; John M Maris; Miriam L Wahl
Journal:  Mol Pharmacol       Date:  2006-09-25       Impact factor: 4.436

Review 4.  The proton-linked monocarboxylate transporter (MCT) family: structure, function and regulation.

Authors:  A P Halestrap; N T Price
Journal:  Biochem J       Date:  1999-10-15       Impact factor: 3.857

5.  In NSCLC, VEGF-A response to hypoxia may differ between squamous cell and adenocarcinoma histology.

Authors:  Marte Eilertsen; Ingvild Pettersen; Sigve Andersen; Inigo Martinez; Tom Donnem; Lill-Tove Busund; Roy M Bremnes
Journal:  Anticancer Res       Date:  2012-11       Impact factor: 2.480

6.  Inverse prognostic impact of angiogenic marker expression in tumor cells versus stromal cells in non small cell lung cancer.

Authors:  Tom Donnem; Samer Al-Saad; Khalid Al-Shibli; Marit P Delghandi; Magnus Persson; Marit N Nilsen; Lill-Tove Busund; Roy M Bremnes
Journal:  Clin Cancer Res       Date:  2007-11-15       Impact factor: 12.531

Review 7.  Tumor cell metabolism: cancer's Achilles' heel.

Authors:  Guido Kroemer; Jacques Pouyssegur
Journal:  Cancer Cell       Date:  2008-06       Impact factor: 31.743

8.  Lung cancer: a comparative study of metabolism related protein expression in cancer cells and tumor associated stroma.

Authors:  Michael I Koukourakis; Alexandra Giatromanolaki; Georgios Bougioukas; Efthimios Sivridis
Journal:  Cancer Biol Ther       Date:  2007-06-27       Impact factor: 4.742

Review 9.  The new lung cancer staging system.

Authors:  Frank C Detterbeck; Daniel J Boffa; Lynn T Tanoue
Journal:  Chest       Date:  2009-07       Impact factor: 9.410

10.  The genomic analysis of lactic acidosis and acidosis response in human cancers.

Authors:  Julia Ling-Yu Chen; Joseph E Lucas; Thies Schroeder; Seiichi Mori; Jianli Wu; Joseph Nevins; Mark Dewhirst; Mike West; Jen-Tsan Chi
Journal:  PLoS Genet       Date:  2008-12-05       Impact factor: 5.917

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  27 in total

Review 1.  Targeting Cancer Metabolism and Current Anti-Cancer Drugs.

Authors:  Witchuda Sukjoi; Jarunya Ngamkham; Paul V Attwood; Sarawut Jitrapakdee
Journal:  Adv Exp Med Biol       Date:  2021       Impact factor: 2.622

2.  Metabolic Heterogeneity in Human Lung Tumors.

Authors:  Christopher T Hensley; Brandon Faubert; Qing Yuan; Naama Lev-Cohain; Eunsook Jin; Jiyeon Kim; Lei Jiang; Bookyung Ko; Rachael Skelton; Laurin Loudat; Michelle Wodzak; Claire Klimko; Elizabeth McMillan; Yasmeen Butt; Min Ni; Dwight Oliver; Jose Torrealba; Craig R Malloy; Kemp Kernstine; Robert E Lenkinski; Ralph J DeBerardinis
Journal:  Cell       Date:  2016-02-04       Impact factor: 41.582

3.  Monocarboxylate Transporter 4 in Cancer-Associated Fibroblasts Is a Driver of Aggressiveness in Aerodigestive Tract Cancers.

Authors:  Marina Domingo-Vidal; Diana Whitaker-Menezes; Mehri Mollaee; Zhao Lin; Madalina Tuluc; Nancy Philp; Jennifer M Johnson; Tingting Zhan; Joseph Curry; Ubaldo Martinez-Outschoorn
Journal:  Front Oncol       Date:  2022-06-22       Impact factor: 5.738

4.  Hyperpolarized [1-13C]pyruvate-to-[1-13C]lactate conversion is rate-limited by monocarboxylate transporter-1 in the plasma membrane.

Authors:  Yi Rao; Seth Gammon; Niki M Zacharias; Tracy Liu; Travis Salzillo; Yuanxin Xi; Jing Wang; Pratip Bhattacharya; David Piwnica-Worms
Journal:  Proc Natl Acad Sci U S A       Date:  2020-08-24       Impact factor: 11.205

5.  Mitochondrial Metabolism as a Treatment Target in Anaplastic Thyroid Cancer.

Authors:  Jennifer M Johnson; Stephen Y Lai; Paolo Cotzia; David Cognetti; Adam Luginbuhl; Edmund A Pribitkin; Tingting Zhan; Mehri Mollaee; Marina Domingo-Vidal; Yunyun Chen; Barbara Campling; Voichita Bar-Ad; Ruth Birbe; Madalina Tuluc; Ubaldo Martinez Outschoorn; Joseph Curry
Journal:  Semin Oncol       Date:  2015-09-24       Impact factor: 4.929

Review 6.  Metabolic coupling and the Reverse Warburg Effect in cancer: Implications for novel biomarker and anticancer agent development.

Authors:  Lindsay Wilde; Megan Roche; Marina Domingo-Vidal; Katherina Tanson; Nancy Philp; Joseph Curry; Ubaldo Martinez-Outschoorn
Journal:  Semin Oncol       Date:  2017-10-10       Impact factor: 4.929

7.  Effect of transforming growth factor-β1 on functional expression of monocarboxylate transporter 1 in alveolar epithelial A549 cells.

Authors:  Mohi Uddin; Masashi Kawami; Ryoko Yumoto; Mikihisa Takano
Journal:  Naunyn Schmiedebergs Arch Pharmacol       Date:  2020-01-03       Impact factor: 3.000

8.  Cancer Associated Fibroblasts in Stage I-IIIA NSCLC: Prognostic Impact and Their Correlations with Tumor Molecular Markers.

Authors:  Thomas K Kilvaer; Mehrdad Rakaee Khanehkenari; Turid Hellevik; Samer Al-Saad; Erna-Elise Paulsen; Roy M Bremnes; Lill-Tove Busund; Tom Donnem; Inigo Z Martinez
Journal:  PLoS One       Date:  2015-08-07       Impact factor: 3.240

9.  The tissue expression of MCT3, MCT8, and MCT9 genes in women with breast cancer.

Authors:  Ehsan Sohrabi; Masoumeh Moslemi; Ehsan Rezaie; Nahid Nafissi; Mansoor Khaledi; Hamed Afkhami; Javad Fathi; Ali Zekri
Journal:  Genes Genomics       Date:  2021-06-07       Impact factor: 1.839

10.  MCT4 is induced by metastasis-enhancing pathogenic mitochondrial NADH dehydrogenase gene mutations and can be a therapeutic target.

Authors:  Keizo Takenaga; Nobuko Koshikawa; Miho Akimoto; Yasutoshi Tatsumi; Jason Lin; Makiko Itami; Hiroki Nagase
Journal:  Sci Rep       Date:  2021-06-25       Impact factor: 4.379

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