Literature DB >> 21732131

Subcellular FIH-1 expression patterns in invasive breast cancer in relation to HIF-1α expression.

Agon Hyseni1, Petra van der Groep, Elsken van der Wall, Paul J van Diest.   

Abstract

BACKGROUND: Hypoxia Inducible Factor-1α (HIF-1α) expression in breast cancer is associated with a poor clinical outcome. HIF-1α shows two expression patterns: the canonical poor prognosis hypoxia-related perinecrotic pattern and a diffuse expression pattern that seems to have less downstream effects and is clearly associated with poor survival. Factor-inhibiting hypoxia-inducible factor 1 (FIH-1) inhibits HIF-1 activity by hydroxylating the C-terminal trans-activation domain of the HIF-1α subunit, thus preventing HIF-1 from recruiting co-activators CPB/p300, which are important for inducing the transcription of target genes. The aim of this study was to investigate the expression patterns of FIH-1 in breast cancer and evaluate the relationship between FIH-1 and HIF-1α expression in breast cancer as a possible explanation for apparently less downstream effects of diffuse HIF-1α expression.
METHODS: Tissue sections from 92 consecutive invasive breast carcinomas were stained by immunohistochemistry for FIH-1, HIF-1α, glucose transporter 1 (GLUT-1) and carbonic anhydrase IX (CAIX).
RESULTS: 45 cases overexpressed HIF-1α, 5 of which in a perinecrotic fashion while FIH-1 was positive in 73 of the 92 cases studied. Contrary to our expectations, three out of five cases with perinecrotic HIF-1α expression were also positive for FIH1. Cytoplasmic FIH-1 correlated with HIF-1α expression (P = 0.03) and tumor grade (P = 0.01). HIF-1α overexpression predicted poorer prognosis as usual (P = 0.02). FIH expression had no additional prognostic value to HIF-1α.
CONCLUSIONS: FIH1 is expressed in the majority of invasive breast carcinomas and shows distinct subcellular localization patterns. FIH-1 expression does not seem to explain the proposed functional differences between diffuse and perinecrotic HIF-1α expression in breast cancer.

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Year:  2011        PMID: 21732131      PMCID: PMC3223342          DOI: 10.1007/s13402-011-0053-5

Source DB:  PubMed          Journal:  Cell Oncol (Dordr)        ISSN: 2211-3428            Impact factor:   6.730


Introduction

Due to the increased rate of cell multiplication and the inadequate supply of oxygen due to lagging angiogenesis, hypoxic conditions are frequently present in breast carcinoma [1]. To survive in this environment, cancer cells induce the transcription of a complex set of genes involved in numerous cellular survival pathways. The most important of these pathways include angiogenesis, glycolysis, pH regulation and metastasis [2]. The principal molecule orchestrating the cellular response to hypoxia is Hypoxia Inducible Factor-1 (HIF-1) [3, 4]. Structurally, HIF-1 is a heterodimer consisting of the highly regulated HIF-1α and constitutively expressed HIF-1β subunits. Once these two subunits dimerize, HIF-1 can bind to hypoxia response elements (HREs) in the promoters of target genes and induce their transcription [5]. However, under normoxic conditions, the HIF-1α subunit is continuously degraded, a process which starts with a set of enzymes called prolyl hydroxylase domain enzymes (PHDs). PHDs hydroxylate HIF-1α at proline residues P402 and P564 in the oxygen dependent degradation domain (ODDD), consequently, this domain is recognized by the Von-Hippel Lindau Protein and targeted for degradation by the proteosome [5]. In multiple cancers, HIF1α has been implicated in prognosis [6, 7]. In breast cancer, HIF1 has been implicated in sporadic [8] and hereditary carcinogenesis [9] and is associated with metastases formation [10], angiogenesis [11], poor clinical outcome [12, 13] and resistance to therapy [14, 15]. In cancers like breast [8, 11, 12, 16] and endometrium [6, 17, 18], HIF-1α showed two expression patterns: a hypoxia-related perinecrotic expression pattern and a diffuse expression pattern. In invasive breast cancer, the perinecrotic HIF-1α expression pattern is associated with expression of the HIF-1α downstream genes Glut-1 and CA IX, while the diffuse HIF-1α expression pattern lacks this association and points to non-functional HIF-1α expression. Furthermore, perinecrotic HIF-1α indicated a poor prognosis, while diffuse HIF-1α expression is prognostically better [19]. Apparently, the effects of HIF-1α depend not only on the expression level but also on the expression pattern. The mechanisms of the seemingly non-functional diffuse HIF-1 expression have not fully been elucidated. Amplification of the HIF-1α gene as observed in prostate cancer [20] appeared to be absent in invasive breast cancer [21], as were mutations in the ODDD [22]. In contrast, p300 and p53 levels did seem to determine activation of HIF-1 downstream targets in invasive breast cancer [23]. In addition to the control provided with hydroxylation by PHDs and subsequent proteosome degradation, transcription induction of HIF-1α is controlled by hydroxylation of a single conserved aspariginyl residue at the C-terminal trans-activation domain (C-TAD). This hydroxylation is conducted by factor inhibiting hypoxia-inducible factor (FIH) and is of particular importance as C-TAD is the binding site for CPB/p300, essential co-activators required for transcription induction [24]. In this manner, FIH-1 provides an additional level of control to PHDs and prevents HIF-1 activity at normoxia. More importantly, FIH-1 is able to exercise the control of HIF-1 even under severe hypoxic conditions, when PHD enzymes fail to do so [25]. In renal cell cancer, nuclear FIH expression independently predicted overall survival [26]. In breast cancer, FIH-1 expression has been analysed in a limited number of studies [14, 27]. Since FIH-1 is an important regulator of HIF-1 activity, the purpose of this study was to analyze the expression patterns of FIH-1 in invasive breast cancer as a possible explanation for the non-functionality of diffuse HIF-1α expression.

Materials and methods

The study group comprised of 92 consecutive invasive breast carcinomas that were collected from the archive of the Department of Pathology of the University Medical Center Utrecht, The Netherlands. Age, tumor size, and ER, PR and HER2 status were collected from the pathology reports. Histological type was revised according to the WHO. Mitotic counting was done as before [28] and subsequent grading was performed according to Elston [29]. Use of left over tissue for research is part of the standard treatment contract with patients in our hospital [30]. The majority of the tumors were classified as invasive ductal carcinoma of no special type (65%; Table 1). Median tumor size was 2 cm. Median age was 56. 39% of the tumors were classified as grade 1, 32% as grade 2 and 28% as grade 3. 87% of the tumors were ER positive while 60% were PR positive. Only 3 cases were positive for HER2.
Table 1

Histological types of invasive breast cancers in the study group

FrequencyPercentage
Invasive ductal carcinoma6065%
Invasive lobular carcinoma1415%
Tubular carcinoma1011%
Ductal-lobular carcinoma44%
Metaplastic22%
Invasive cribriform22%
Histological types of invasive breast cancers in the study group

Immunohistochemistry

Immunohistochemistry (IHC) was performed on 4μm-thick sections. After de-paraffination and rehydration, endogenous peroxidase blockage ensued. For HIF-1α, antigen retrieval was achieved by heating the sections in EDTA buffer (pH 9.0) at boiling temperature for 20 min. After a cooling down period of 30 min in the same buffer, protein block was applied (Novolink Kit, Novocastra Laboratories, Newcastle upon Tyne, UK) and sections were subsequently incubated overnight with the primary antibody at 4°C (Table 2). Thereafter, to detect HIF-1α, the Novolink Kit (Novocastra) was applied according to the manufacturer’s instructions. For FIH-1, antigen retrieval was achieved by heating the sections in citrate buffer (pH 6.0) at boiling temperature for 20 min. After a cooling down period of 30 min in the same buffer, the sections were incubated with the primary antibody (Table 2). Incubation was applied for 1 h at room temperature, followed by the application of the Powervision Kit (Immunologic, Duiven, The Netherlands) for 30 min. All slides were developed with diaminobenzidine for 10 min. Finally, the sections were counterstained in hematoxylin and mounted. IHC for GLUT-1 and CA IX was performed as described before [17].
Table 2

Details of the antibodies applied

AntibodyManufacturerAntigen retrievalIncubationDilution
FIH 1Novus Biologicals20′ Citrate pH 6.0 buffer1 h at room temperature1:100
HIF-1αBiosciences Pharmingen20′ EDTA pH 9.0 bufferovernight at 4°C1:50
CAIXABCAM20′ Citrate pH 6.0 buffer1 h at room temperature1:1000
GLUT-1Dako20′ Citrate pH 6.0 buffer1 h at room temperature1:200
Details of the antibodies applied For HIF-1α, the percentage of dark brown nuclei was estimated as before [8, 12, 19]. For GLUT1 and CA IX, the presence of membranous or cytoplasmic expression was noted as well as the expression pattern (perinecrotic versus diffuse). An experienced pathologist (PJvD) performed the scoring of FIH-1 in a blinded fashion with regards to other biomarkers and clinicopathological data. The percentage of the nuclei stained was estimated, and the intensity of cytoplasmic staining was semiquantitatively scored as negative (0), 1+, 2+ or 3+.

Statistics

For HIF-1α, cases with ≥1% of positive stained nuclei were considered as showing overexpression as before [19]. The threshold for FIH-1 cytoplasmic positivity was set at ≥2, while the threshold for FIH-1 nuclear positivity was set at ≥10%. Therefore, tumors with a FIH-1 cytoplasmic staining of an intensity ≥2 or with ≥10% of the nuclei stained positive were regarded as positive in the statistical analysis. Correlations between HIF-1α, FIH-1 and other markers were evaluated using the Chi-square test. A Mann–Whitney Test was used to analyze differences in HIF-1α and FIH-1 expression with regards to age and tumor size. For univariate recurrence free survival analysis, Kaplan Meier curves were plotted and differences between the curves were evaluated by the logrank test. Multivariate survival analysis was done by Cox regression. All statistics were done using SPSS version 15.0 (SPSS Inc, Chicago, USA).

Results

As expected, HIF-1α was more often expressed in ductal/metaplastic cases (36/62) compared to tubular/lobular/cribriform cancers (11/30)(P = 0.05) and correlated with tumor grade and a worse prognosis (Table 3).
Table 3

Correlation analysis between HIF-1α expression and GLUT-1, ER, PR, HER2 and tumor type and grade (chi-square test). NB: Not all stainings could be successfully performed for all cases

HIF-1α overexpression
NegativePositive P value
GLUT-1Negative37310.1
Positive816
ERNegative2100.03
Positive4237
PRNegative15220.3
Positive2825
HER2Negative44431
Positive12
CAIXNegative2711<0.01
Positive1836
Grade125110.00
21614
3422
TypeDuctal/metaplastic26360.05
Tubular/lobular/cribriform1911
Correlation analysis between HIF-1α expression and GLUT-1, ER, PR, HER2 and tumor type and grade (chi-square test). NB: Not all stainings could be successfully performed for all cases FIH-1 was expressed in luminal cells of the normal breast and showed both nuclear and cytoplasmic expression (Fig. 1a). In cancer cases, FIH-1 was expressed in 79% (73/92) of the cases and showed distinct subcellular expression patterns (Table 4): in the nucleus 36/92 (39%; Fig. 1b), in the cytoplasm 21/92 (23%; Fig. 1c) or both 16/92 (17%; Fig. 1d). Cytoplasmic FIH-1 expression did not correlate to any of the other biomarkers except that the group of tubular/lobular/cribriform cancers showed less often high expression (P = 0.02).
Fig. 1

Expression patterns of FIH-1: a FIH-1 expression in normal breast tissue; b nuclear FIH-1 expression of breast carcinoma cells; c cytoplasmic FIH-1 expression of breast carcinoma cells; d FIH-1 expression in both the nucleus and cytoplasm of breast carcinoma cells

Table 4

Subcellular localization patterns of FIH-1 in invasive breast cancer

Subcellular localizationFrequency/Percentage
Negative19 (21%)
Exclusively nuclear36 (39%)
Exclusively cytoplasmic21 (23%)
Both nuclear and cytoplasmic16 (17%)
Expression patterns of FIH-1: a FIH-1 expression in normal breast tissue; b nuclear FIH-1 expression of breast carcinoma cells; c cytoplasmic FIH-1 expression of breast carcinoma cells; d FIH-1 expression in both the nucleus and cytoplasm of breast carcinoma cells Subcellular localization patterns of FIH-1 in invasive breast cancer Three cases expressing HIF-1α in a perinecrotic fashion also expressed FIH-1 (Fig. 2), the remaining two were negative. Exclusive nuclear FIH-1 expression showed an inverse correlation with tumor grade (P = 0.01). Furthermore, cytoplasmic expression of FIH-1 showed significant correlations to HIF-1α (P = 0.03), tumor grade (P = 0.01) and a trend for worse prognosis (P = 0.1)(Fig. 3). In multivariate survival analysis, cytoplasmic FIH expression had no additional prognostic value to HIF-1α.
Fig. 2

Perinecrotic nuclear FIH-1 expression in an invasive breast cancer that also showed perinecrotic HIF-1α overexpression

Fig. 3

Kaplan-Meier recurrence free survival curves for patients with or without FIH-1 cytoplasmic expression (P = 0.1)

Perinecrotic nuclear FIH-1 expression in an invasive breast cancer that also showed perinecrotic HIF-1α overexpression Kaplan-Meier recurrence free survival curves for patients with or without FIH-1 cytoplasmic expression (P = 0.1)

Discussion

HIF-1α plays a pivotal role in cellular adaptation to the hypoxic environment and as such, is crucial for the interaction between cells and the environment in which they function. Unfortunately, cancerous cells have grown to use the same HIF-1α mechanisms and by doing so, are able to adapt and survive the hostile environment present in tumor tissues. Not surprisingly, HIF-1α expression has been shown to be higher in poorly differentiated lesions and is associated with increased proliferation and metastasis [8, 13, 31]. In breast cancer however, HIF-1α characteristically shows two different expression patterns: perinecrotic, apparently related to the severe hypoxia causing the necrosis, and a diffuse expression pattern where breast cancer cells stain widely and extensively without obvious correlation to local changes in oxygen tension. More importantly, these two expression patterns of HIF-1α showed differences in the activation of downstream target genes and survival in a previous study [19]. Since the activity of HIF-1α is highly regulated, it is plausible to assume that the explanation for differences between the HIF-1α expression patterns could lie in the regulation of its activity. Since FIH-1 is an important factor regulating HIF-1 transcriptional activity, even after PHDs and in severe hypoxia [25], we hypothesized that the loss of FIH-1 expression might provide an explanation for the putative functional differences between perinecrotic and diffuse patterns of HIF-1α expression in breast cancer. In accordance with previous studies [8, 11, 12, 19], we find that HIF-1α expression is associated with higher tumor grade and poor prognosis. FIH-1 was expressed in the majority of the invasive breast carcinomas analyzed in the present study. Contrary to our expectations, FIH1 was positive in three out of five cases with perinecrotic HIF-1α expression and we occasionally observed FIH-1 expression in perinecrotic cells overexpressing HIF-1α (Fig. 2). Furthermore, we did not observe complete loss of FIH1 in any of the cases analyzed, indicating that FIH-1 expression is not the likely explanation for the differences between the HIF-1α expression patterns mentioned. Previous studies have reported expression of FIH1 in the cytoplasm and nuclei of cancerous cells [26, 27, 32–34]. We observe the same, with a significant number of cases showing predominantly nuclear or predominantly cytoplasmic expression. Since exclusive cytoplasmic presence of FIH-1 correlated with HIF-1α expression, tumor grade and tended to indicate worse prognosis (Fig. 3), we supposed that FIH expression might have an additional prognostic value to HIF-1α. However, multivariate analysis showed this was not the case. Associations between cytoplasmic FIH-1 expression and tumor aggressiveness have been shown for breast [27] and pancreatic endocrine tumors [34]. This contradicts to a certain degree what we know so far about the biology of FIH1, which points that FIH1 plays a tumor suppressor role and that its loss is expected to be a carcinogenic event. Since we did not observe a complete loss of FIH1 in any of our study cases, it rather seems that the subcellular localization of FIH-1 is of overriding importance. While abundance of FIH-1 expression is regulated through proteosome degradation [35, 36], it seems that FIH-1 is rather constitutively expressed in various tissues, as shown for normal breast tissue in the present study. FIH-1 is functional in the cytoplasm where it hydroxylates HIF-1α, prevents it from recruiting coactivators like CPB/p300 and hampers efficient transcription induction of HIF-1α target genes. Though FIH-1 might be able to shuttle between the cytoplasm and the nucleus due to its small molecular weight, hypoxia has not been shown to influence its sub-cellular localization [32]. An interesting study by Zheng et al. showed that HIF-1α is not the only substrate of FIH-1 and that FIH-1 hydroxylates the Notch intracellular domain (ICD) as well [37]. The Notch pathway is involved in many pivotal aspects of cellular fate like proliferation differentiation and cell death [38-40]. FIH-1 not only negatively regulates Notch ICD, but also influences the intracellular localization of FIH-1 by recruiting FIH-1 into the nucleus [37]. By sequestering FIH-1 away from HIF-1α and potentiating the cellular hypoxic response, the Notch ICD might influence the phenotype of cancerous cells. Therefore, it is tempting to speculate that although there might be an increase in the hypoxic response, in tumors with exclusive nuclear localization of FIH-1, Notch signaling is abrogated. In conclusion, expression patterns of FIH-1 do not seem to explain the proposed functional differences between diffuse and perinecrotic HIF-1α expression in breast cancer. However, FIH is expressed in the majority of invasive breast carcinomas and shows distinct subcellular localization patterns related with tumor grade and HIF-1α overexpression. The mechanisms behind this need to be further elucidated, especially with regards to the possible interaction with the Notch signaling pathway.
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