Literature DB >> 27072587

Regulation of UHRF1 by dual-strand tumor-suppressor microRNA-145 (miR-145-5p and miR-145-3p): Inhibition of bladder cancer cell aggressiveness.

Ryosuke Matsushita1, Hirofumi Yoshino1, Hideki Enokida1, Yusuke Goto2, Kazutaka Miyamoto1, Masaya Yonemori1, Satoru Inoguchi1, Masayuki Nakagawa1, Naohiko Seki2.   

Abstract

In microRNA (miRNA) biogenesis, the guide-strand of miRNA integrates into the RNA induced silencing complex (RISC), whereas the passenger-strand is inactivated through degradation. Analysis of our miRNA expression signature of bladder cancer (BC) by deep-sequencing revealed that microRNA (miR)-145-5p (guide-strand) and miR-145-3p (passenger-strand) were significantly downregulated in BC tissues. It is well known that miR-145-5p functions as a tumor suppressor in several types of cancer. However, the impact of miR-145-3p on cancer cells is still ambiguous. The aim of the present study was to investigate the functional significance of miR-145-3p and BC oncogenic pathways and targets regulated by miR-145-5p/miR-145-3p. Ectopic expression of either miR-145-5p or miR-145-3p in BC cells significantly suppressed cancer cell growth, migration and invasion and it also induced apoptosis. The gene encoding ubiquitin-like with PHD and ring finger domains 1 (UHRF1) was a direct target of these miRNAs. Silencing of UHRF1 induced apoptosis and inhibited cancer cell proliferation, migration, and invasion in BC cells. In addition, overexpressed UHRF1 was confirmed in BC clinical specimens, and the high UHRF1 expression group showed a significantly poorer cause specific survival rate in comparison with the low expression group. Taken together, our present data demonstrated that both strands of miR-145 (miR-145-5p: guide-strand and miR-145-3p: passenger-strand) play pivotal roles in BC cells by regulating UHRF1. The identification of the molecular target of a tumor suppressive miRNAs provides novel insights into the potential mechanisms of BC oncogenesis and suggests novel therapeutic strategies.

Entities:  

Keywords:  UHRF1; bladder cancer; miR-145-3p; miR-145-5p; tumor-suppressor

Mesh:

Substances:

Year:  2016        PMID: 27072587      PMCID: PMC5053739          DOI: 10.18632/oncotarget.8668

Source DB:  PubMed          Journal:  Oncotarget        ISSN: 1949-2553


INTRODUCTION

In 2012, more than 400,000 new cases of bladder cancer (BC) were diagnosed and 165,000 patients died worldwide [1]. As for the prevalence of BC, men are three times more frequently diagnosed with BC than women [2]. The reasons for this disparity between sexes are not fully understood. BC is pathologically classified into two groups: non-muscle-invasive BC (NMIBC) and muscle-invasive BC (MIBC). Most BC patients (approximately 50%–80%) are diagnosed with NMIBC and this disease can be treated by removing the tumor by transurethral approaches [3]. In NMIBC, disease may recur, and some patients (approximately 25%) progress to MIBC [3]. Patients with advanced BC are generally treated with combination chemotherapy (gemcitabine and cisplatin), but progression-free survival is of limited duration [4]. Therefore, it is important to elucidate the molecular mechanisms of recurrence and invasiveness of BC cells to develop new treatment strategies. The discovery of non-coding RNA in the human genome changed approaches in cancer research [5, 6]. Molecular mechanisms of post transcriptional gene regulation by protein-coding RNA/non-coding RNA networks are being studied on a genome-wide scale. MicroRNA (miRNA) is a class of small non-coding RNAs, and they are known to be involved in the repression or degradation of target RNA transcripts in a sequence-dependent manner [7]. A single miRNA can regulate thousands of target transcripts, and more than 60% of protein-coding genes may be influenced by miRNAs [8, 9]. Accumulating evidence indicates that aberrantly expressed miRNAs disturb normally regulated RNA networks, leading to pathologic responses in cancer cells [6]. Strategies to identify aberrant expression of miRNA-mediated cancer pathways are being developed as a new direction in cancer research in the post genome sequencing era. To seek out differentially expressed miRNAs in BC cells, we used BC clinical specimens to establish deep sequencing-based miRNA expression signatures [10]. In general, the guide-strand RNA from duplex miRNA is retained to direct recruitment of the RNA induced silencing complex (RISC) to target messenger RNAs, whereas the passenger-strand RNA is degraded [11-13]. Recently, we revealed that both strands of microRNA (miR)-144-5p and miR-144-3p derived from pre-miR-144 acted as tumor suppressors in BC cells [14]. Moreover, miR-144-5p (passenger-strand) directly targeted cyclin E1 and E2 in BC cells, suggesting that the passenger-strand of miRNA has a physiological role in cells [14]. In this study, we focused on miR-145-5p and miR-145-3p because these miRNAs were significantly downregulated in BC cells as determined in our deep sequencing signature [10]. It is well known that miR- 145- 5p functions as a tumor suppressor in several types of cancer, including BC [15]. However, the role of miR-145-3p on cancer cells is still ambiguous. The aims of the present study were to investigate the anti-tumor effects of miR-145-3p as well as miR-145-5p, and to determine the BC oncogenic pathways and target genes regulated by these miRNAs. The discovery that miR- 145- 5p and miR-145-3p coordinately regulate pathways and targets provides new insight into the mechanisms of BC progression and metastasis.

RESULTS

The expression levels of miR-145-5p and miR-145-3p in BC specimens and cell lines

We evaluated the expression levels of miR-145-5p and miR-145-3p in BC tissues (n = 69), normal bladder epithelia (NBE) (n = 12), and two BC cell lines (T24 and BOY). The expression levels of miR-145-5p and miR- 145- 3p were significantly lower in tumor tissues and BC cell lines compared with NBE (Figure 1A). Spearman's rank test showed a positive correlation between the expression of these miRNAs (r = 0.986 and P < 0.0001) (Figure 1B). On the other hand, there were no significant relationships between any of the clinicopathological parameters (i.e., tumor grade, stage, metastasis, or survival rate) and the expression levels of miR-145-5p and miR-145-3p (data not shown).
Figure 1

The expression levels of miR-145-5p and miR-145-3p, and their effects in BC cells

(A) Expression levels of miR- 145- 5p and miR-145-3p in clinical specimens and BC cell lines were determined by qRT-PCR. Data were normalized to RNU48 expression. (B) Correlation of miR-145-5p and miR-145-3p expression. (C) Cell growth was determined by XTT assays 72 hours after transfection with 10 nM miR-145-5p or miR-145-3p. *P < 0.0001. (D) Cell migration activity was determined by the wound-healing assays. *P < 0.0001. (E) Cell invasion activity was determined using Matrigel invasion assays. *P < 0.0001.

The expression levels of miR-145-5p and miR-145-3p, and their effects in BC cells

(A) Expression levels of miR- 145- 5p and miR-145-3p in clinical specimens and BC cell lines were determined by qRT-PCR. Data were normalized to RNU48 expression. (B) Correlation of miR-145-5p and miR-145-3p expression. (C) Cell growth was determined by XTT assays 72 hours after transfection with 10 nM miR-145-5p or miR-145-3p. *P < 0.0001. (D) Cell migration activity was determined by the wound-healing assays. *P < 0.0001. (E) Cell invasion activity was determined using Matrigel invasion assays. *P < 0.0001.

Effect of restoring miR-145-5p or miR-145- 3p expression on cell growth, migration, and invasion in BC cell lines

We performed gain-of-function studies using transfection of these miRNAs to investigate their functional roles. XTT, cell migration, and invasion assays demonstrated that cell proliferation, cell migration, and cell invasion were significantly inhibited in miR-145-5p and miR-145-3p transfectants in comparison with mock or miR-control transfectants (each P < 0.0001, Figure 1C, 1D, and 1E). These results suggested that miR-145-3p as well as miR-145-5p could have a tumor suppressive function in BC cells. To investigate the synergistic effects of miR- 145- 5p and miR-145-3p, we performed proliferation, migration, and invasion assays with co-transfection of miR- 145-5p and miR-145-3p in BC cells (T24 and BOY), but they did not show synergistic effects of these miRNAs transfection (Supplementary Figure 1).

Effects of miR-145-5p and miR-145-3p transfection on apoptosis and cell cycle in BC cell lines

Because miR-145-5p and miR-145-3p transfection strongly inhibited cell proliferation in BC cell lines, we hypothesized that these miRNAs may induce apoptosis. Hence, we performed flow cytometric analyses to determine the number of apoptotic cells following restoration of miR- 145-5p or miR-145-3p expression. The apoptotic cell numbers (apoptotic and early apoptotic cells) were significantly larger in miR-145-5p or miR-145-3p transfectants than in mock or miR-control transfectants (Figure 2A and 2C). Western blot analyses showed that cleaved PARP expression was significantly increased in miR-145-5p or miR-145-3p transfectants compared with mock or miR-control transfectants (Figure 2B and 2D).
Figure 2

Effects of miR-145-5p and miR-145-3p on apoptosis

(A, C) Apoptosis assays were carried out using flow cytometry. Early apoptotic cells are in area R4 and apoptotic cells are in area R2. The normalized ratios of apoptotic cells are shown in the histograms. Cycloheximide (2 μg/mL) was used as positive control. *P = 0.0266 and **P < 0.0001. (B, D) Western blot analyses for apoptotic markers (cleaved PARP) in BC cell lines. GAPDH was used as a loading control.

Effects of miR-145-5p and miR-145-3p on apoptosis

(A, C) Apoptosis assays were carried out using flow cytometry. Early apoptotic cells are in area R4 and apoptotic cells are in area R2. The normalized ratios of apoptotic cells are shown in the histograms. Cycloheximide (2 μg/mL) was used as positive control. *P = 0.0266 and **P < 0.0001. (B, D) Western blot analyses for apoptotic markers (cleaved PARP) in BC cell lines. GAPDH was used as a loading control. We also investigated the cell cycle assays using miR-145-5p and miR-145-3p transfectants. The fraction of cells in the G2/M phase was significantly larger in miR-145-5p and miR-145-3p transfectants in T24 cells in comparison with mock or miR-control transfectants (Supplementary Figure 2). In contrast, miR-145-5p and miR-145-3p transfection induced cell cycle arrest at the G1 phase in BOY cells (Supplementary Figure 2). The reason why the cell cycle arrest (G2 arrest in T24 and G1 arrest in BOY) varies according to a cell types is a future problem.

Identification of common target genes regulated by miR-145-5p and miR-145-3p in BC cells

To gain further insight into the molecular mechanisms and pathways regulated by tumor suppressive miR-145-5p and miR-145-3p in BC cells, we used a combination of in silico analyses and gene expression analyses. Figure 3 shows our strategy to narrow down the common target genes of miR-145-5p and miR-145-3p.
Figure 3

Flow chart illustrates the strategy for analysis of miR-145-5p and miR-145-3p target genes

A total of 4,555 and 6,295 downregulated genes in expression analysis of miR-145-5p and miR-145-3p transfected BC cell lines, respectively, (T24 and BOY) were selected as putative target genes. Next we merged the data of those selected genes and the microRNA.org database. The analyses showed 398 common putative target genes between miR-145-5p and miR-145-3p. We then analyzed gene expression with available GEO data sets (GSE11783 + GSE31684). The analyses showed that 79 genes were significantly upregulated in BC specimens compared with NBE.

Flow chart illustrates the strategy for analysis of miR-145-5p and miR-145-3p target genes

A total of 4,555 and 6,295 downregulated genes in expression analysis of miR-145-5p and miR-145-3p transfected BC cell lines, respectively, (T24 and BOY) were selected as putative target genes. Next we merged the data of those selected genes and the microRNA.org database. The analyses showed 398 common putative target genes between miR-145-5p and miR-145-3p. We then analyzed gene expression with available GEO data sets (GSE11783 + GSE31684). The analyses showed that 79 genes were significantly upregulated in BC specimens compared with NBE. In gene expression analyses, a total of 4,555 and 6,295 genes were downregulated in miR-145-5p and miR- 145-3p transfectants, respectively, in comparison with control transfectants (Gene Expression Omnibus (GEO), accession number: GSE66498). Of those downregulated genes, 1,735 and 1,680 genes, respectively, had putative binding sites for miR-145-5p and miR-145- 3p in their 3′ untranslated regions (UTRs) according to the microRNA.org database. We found that there were 398 common genes targeted by both miRNAs, and among them, we ultimately identified 79 genes that were upregulated in the clinical BC samples from the GEO (accession numbers: GSE11783, GSE31684) (Table 1). We subsequently focused on the ubiquitin-like with PHD and ring finger domains 1 (UHRF1) gene because it was the top ranked gene in the list.
Table 1

Highly expressed genes putatively regulated by miR-145-5p and miR-145-3p

Entrez Gene IDGene SymbolDescriptionGenomic locationGene Expression Omnibus (GSE11783 + GSE31684)Expression in miR-145-5ptransfectant (Log2 FC)Expression in miR-145-3ptransfectant (Log2 FC)
ExpressionLog2 FCP-valueT24BOYT24BOY
29128UHRF1ubiquitin-like with PHD and ring finger domains 119p13.3up4.9841.049E-03−0.041−0.274−0.334−0.901
54972TMEM132Atransmembrane protein 132A11q12.2up3.4581.049E-03−0.006−0.087−0.178−0.140
4288MKI67marker of proliferation Ki-6710q26.2up3.1821.049E-03−0.070−0.022−0.609−0.872
1111CHEK1checkpoint kinase 111q24.2up2.8411.049E-03−0.354−0.204−0.426−0.583
25886POC1APOC1 centriolar protein A3p21.2up2.3541.049E-03−0.146−0.194−0.251−0.161
400745SH2D5SH2 domain containing 51p36.12up2.2991.049E-03−0.512−0.075−0.136−0.038
55215FANCIFanconi anemia, complementation group I15q26.1up2.1881.049E-03−0.031−0.079−0.281−0.320
51512GTSE1G-2 and S-phase expressed 122q13.31up2.1471.049E-03−0.028−0.149−0.713−0.209
157570ESCO2establishment of sister chromatid cohesion N-acetyltransferase 28p21.1up2.0281.049E-03−0.441−0.352−0.585−0.166
2175FANCAFanconi anemia, complementation group A16q24.3up1.8771.049E-03−0.017−0.166−0.412−0.532
6624FSCN1fascin homolog 1, actin-bundling protein (Strongylocentrotus purpuratus)7p22.1up1.8292.942E-03−2.899−0.732−0.175−1.133
22979EFR3BEFR3 homolog B (S. cerevisiae)2p23.3up1.8031.247E-03−0.312−0.033−1.189−1.625
3918LAMC2laminin, gamma 21q25.3up1.7971.791E-02−0.839−0.707−0.125−0.608
8349HIST2H2BEhistone cluster 2, H2be1q21.2up1.7641.524E-03−0.266−0.149−0.524−0.170
9455HOMER2homer homolog 2 (Drosophila)15q25.2up1.7062.526E-03−0.360−0.278−0.132−0.305
25902MTHFD1Lmethylenetetrahydrofolate dehydrogenase (NADP+ dependent) 1-like6q25.1up1.6111.049E-03−0.307−0.024−0.617−0.505
55732C1orf112chromosome 1 open reading frame 1121q24.2up1.4611.685E-03−0.099−0.147−0.030−0.132
388389CCDC103coiled-coil domain containing 10317q21.31up1.3903.290E-02−0.327−0.266−2.471−1.838
6566SLC16A1solute carrier family 16 (monocarboxylate transporter), member 11p13.2up1.3593.893E-02−0.229−0.137−0.759−1.259
23178PASKPAS domain containing serine/threonine kinase2q37.3up1.3331.058E-03−0.016−0.001−0.218−0.443
5426POLEpolymerase (DNA directed), epsilon, catalytic subunit12q24.33up1.2411.247E-03−0.094−0.424−0.295−0.051
55379LRRC59leucine rich repeat containing 5917q21.33up1.2331.049E-03−0.155−0.198−0.289−0.283
6715SRD5A1steroid-5-alpha-reductase, alpha polypeptide 1 (3-oxo-5 alpha-steroid delta 4-dehydrogenase alpha 1)5p15.31up1.1705.069E-03−0.329−0.018−0.823−0.837
4602MYBv-myb avian myeloblastosis viral oncogene homolog6q23.3up1.1604.501E-03−0.105−0.337−0.111−1.418
8940TOP3Btopoisomerase (DNA) III beta22q11.22up1.1579.078E-03−0.108−0.021−0.840−1.150
64768IPPKinositol 1,3,4,5,6-pentakisphosphate 2-kinase9q22.31up1.1531.072E-03−0.526−0.102−0.630−0.296
9266CYTH2cytohesin 219q13.33up1.1271.049E-03−0.226−0.104−0.598−0.377
221468TMEM217transmembrane protein 2176p21.2up1.0814.734E-02−0.049−0.008−0.033−0.337
25859PART1prostate androgen-regulated transcript 1 (non-protein coding)5q12.1up1.0254.873E-03−0.144−0.212−0.097−0.694
8566PDXKpyridoxal (pyridoxine, vitamin B6) kinase21q22.3up1.0141.316E-03−0.039−0.842−0.567−0.558
11072DUSP14dual specificity phosphatase 1417q12up1.0082.440E-03−0.126−0.092−0.924−1.020
23516SLC39A14solute carrier family 39 (zinc transporter), member 148p21.3up0.9993.435E-03−0.540−0.216−2.083−1.548
85414SLC45A3solute carrier family 45, member 31q32.1up0.9773.435E-03−0.578−0.086−0.782−0.505
1163CKS1BCDC28 protein kinase regulatory subunit 1B1q21.3up0.9411.857E-02−0.370−0.229−0.678−0.802
79929MAP6D1MAP6 domain containing 13q27.1up0.9271.093E-03−0.135−0.210−0.928−0.529
65985AACSacetoacetyl-CoA synthetase12q24.31up0.9191.058E-03−0.555−0.367−0.816−0.798
1263PLK3polo-like kinase 31p34.1up0.9101.685E-03−0.229−0.092−1.766−2.103
64785GINS3GINS complex subunit 3 (Psf3 homolog)16q21up0.8911.740E-03−0.185−0.218−0.853−0.826
4957ODF2outer dense fiber of sperm tails 29q34.11up0.8541.185E-03−0.232−0.409−0.610−0.963
57613KIAA1467KIAA146712p13.1up0.8374.169E-03−0.382−0.282−0.398−0.456
7525YES1v-yes-1 Yamaguchi sarcoma viral oncogene homolog 118p11.32up0.7942.526E-03−0.382−0.447−0.256−0.446
8751ADAM15ADAM metallopeptidase domain 151q22up0.7876.433E-03−0.233−0.217−0.383−0.318
7172TPMTthiopurine S-methyltransferase6p22.3up0.7861.524E-03−0.167−0.032−0.482−0.323
4615MYD88myeloid differentiation primary response 883p22.2up0.7591.947E-03−0.662−0.118−0.286−0.113
1678TIMM8Atranslocase of inner mitochondrial membrane 8 homolog A (yeast)Xq22.1up0.7292.723E-03−0.530−0.187−0.201−0.267
3927LASP1LIM and SH3 protein 117q12up0.6922.348E-03−0.280−0.014−0.319−0.069
10295BCKDKbranched chain ketoacid dehydrogenase kinase16p11.2up0.6856.186E-03−0.281−0.161−0.439−0.246
26088GGA1golgi-associated, gamma adaptin ear containing, ARF binding protein 122q13.1up0.6681.049E-03−0.010−0.074−0.180−0.202
6240RRM1ribonucleotide reductase M111p15.4up0.6674.582E-02−0.206−0.207−1.158−2.292
219902TMEM136transmembrane protein 13611q23.3up0.6673.574E-03−0.449−0.477−0.386−0.405
7019TFAMtranscription factor A, mitochondrial10q21.1up0.6441.274E-02−0.163−0.413−0.543−0.609
55775TDP1tyrosyl-DNA phosphodiesterase 114q32.11up0.6241.316E-03−0.151−0.193−0.651−0.188
79858NEK11NIMA-related kinase 113q22.1up0.6131.626E-03−0.628−0.563−0.179−0.189
1889ECE1endothelin converting enzyme 11p36.12up0.6043.635E-02−0.949−0.274−0.559−0.639
65264UBE2Zubiquitin-conjugating enzyme E2Z17q21.32up0.5901.348E-03−0.352−0.187−0.895−1.241
9205ZMYM5zinc finger, MYM-type 513q12.11up0.5827.805E-03−0.413−0.381−0.699−0.890
996CDC27cell division cycle 2717q21.32up0.5729.799E-03−0.486−0.018−0.260−0.099
22898DENND3DENN/MADD domain containing 38q24.3up0.5701.016E-02−0.235−0.012−0.597−0.926
84314TMEM107transmembrane protein 10717p13.1up0.5702.965E-02−0.471−0.208−0.199−0.839
85464SSH2slingshot protein phosphatase 217q11.2up0.5622.440E-03−0.296−0.173−0.433−0.220
56180MOSPD1motile sperm domain containing 1Xq26.3up0.5591.928E-02−0.145−0.237−1.352−1.270
6625SNRNP70small nuclear ribonucleoprotein 70kDa (U1)19q13.33up0.5541.725E-02−0.373−0.281−0.663−0.988
60490PPCDCphosphopantothenoyl­-cysteine decarboxylase15q24.2up0.5501.182E-02−0.269−0.338−0.057−0.130
147657ZNF480zinc finger protein 48019q13.41up0.5473.893E-02−0.453−0.035−0.107−0.047
159090FAM122Bfamily with sequence similarity 122BXq26.3up0.5432.865E-02−0.356−0.131−1.379−1.493
3150HMGN1high mobility group nucleosome bindingdomain 121q22.2up0.5227.521E-03−0.884−0.157−0.162−0.119
7421VDRvitamin D (1,25-dihydroxyvitamin D3) receptor12q13.11up0.4943.290E-02−0.001−0.069−0.428−0.417
84705GTPBP3GTP binding protein 3 (mitochondrial)19p13.11up0.4851.999E-02−0.156−0.048−0.488−1.061
84818IL17RCinterleukin 17 receptor C3p25.3up0.4788.102E-03−0.306−0.009−0.053−0.194
10102TSFMTs translation elongation factor, mitochondrial12q14.1up0.4754.873E-03−0.170−0.026−0.951−0.608
27ABL2c-abl oncogene 2, non-receptor tyrosine kinase1q25.2up0.4559.799E-03−0.211−0.281−0.230−0.102
55285RBM41RNA binding motifprotein 41Xq22.3up0.4151.538E-02−0.055−0.215−0.495−0.559
57532NUFIP2nuclear fragile X mental retardation protein interacting protein 217q11.2up0.3971.056E-02−0.098−0.256−0.425−0.904
84445LZTS2leucine zipper, putative tumor suppressor 210q24.31up0.3944.155E-02−0.174−0.125−0.288−0.026
8243SMC1Astructural maintenance of chromosomes 1AXp11.22up0.3903.635E-02−0.163−0.061−0.917−0.297
54617INO80INO80 complex subunit15q15.1up0.3842.835E-03−0.594−0.006−0.635−0.350
7511XPNPEP1X-prolyl aminopeptidase (aminopeptidase P) 1, soluble10q25.1up0.3817.521E-03−0.648−0.272−1.595−1.701
23367LARP1La ribonucleoprotein domain family, member 15q33.2up0.3774.155E-02−0.049−0.003−0.091−0.216
10146G3BP1GTPase activating protein (SH3 domain) binding protein 15q33.1up0.3134.021E-02−1.431−0.040−0.505−0.475

UHRF1 was a direct target of miR-145-5p and miR-145-3p in BC cells

We performed quantitative real-time RT-PCR (qRT-PCR) to validate that miR-145-5p and miR-145-3p repressed UHRF1 mRNA expression in BC cell lines, and we did indeed observe that it was significantly reduced in transfectants of these miRNAs in comparison with mock or miR-control transfectants (P < 0.0001 and P = 0.0036, Figure 4A). The protein expression levels of UHRF1 were also repressed in the miRNAs transfectants (Figure 4B).
Figure 4

Direct regulation of UHRF1 by miR-145-5p and miR-145-3p

(A) UHRF1 mRNA expression was evaluated by qRT-PCR in T24 and BOY 72 hours after transfection with miR-145-5p and miR-145-3p. GUSB was used as an internal control. *P = 0.0036 and **P < 0.0001. (B) UHRF1 protein expression was evaluated by Western blot analyses in T24 and BOY 72–96 hours after transfection with miR-145-5p or miR-145-3p. GAPDH was used as a loading control. (C) miR-145-5p and miR-145-3p binding sites in the 3′ UTR of UHRF1 mRNA. Dual Luciferase reporter assays using vectors encoding putative miR-145-5p and miR-145-3p target sites of the UHRF 3′ UTR (positions 1,179–1,198 and 287–292, respectively) for both wild-type and deleted regions. Normalized data were calculated as ratios of Renilla/firefly luciferase activities. *P < 0.0001.

Direct regulation of UHRF1 by miR-145-5p and miR-145-3p

(A) UHRF1 mRNA expression was evaluated by qRT-PCR in T24 and BOY 72 hours after transfection with miR-145-5p and miR-145-3p. GUSB was used as an internal control. *P = 0.0036 and **P < 0.0001. (B) UHRF1 protein expression was evaluated by Western blot analyses in T24 and BOY 72–96 hours after transfection with miR-145-5p or miR-145-3p. GAPDH was used as a loading control. (C) miR-145-5p and miR-145-3p binding sites in the 3′ UTR of UHRF1 mRNA. Dual Luciferase reporter assays using vectors encoding putative miR-145-5p and miR-145-3p target sites of the UHRF 3′ UTR (positions 1,179–1,198 and 287–292, respectively) for both wild-type and deleted regions. Normalized data were calculated as ratios of Renilla/firefly luciferase activities. *P < 0.0001. We carried out dual luciferase reporter assays in T24 and BOY cells to determine whether the UHRF1 gene was directly regulated by miR-145-5p/3p. The microRNA.org database predicted that there was one binding site for miR- 145-5p in the 3′ UTR of UHRF1 (position 1,179– 1,198); for miR-145-3p, there was a binding site in the 3′ UTR at position 287–292. We used vectors encoding the partial wild-type sequence of the 3′ UTR of the mRNA, including the predicted miR-145-5p or miR-145- 3p target sites. We found that the luminescence intensity was significantly reduced by co-transfection with these miRNAs and the vector carrying the wild-type 3′ UTR, whereas no reduction of luminescence was observed by transfection with the deletion vector (binding site had been removed) (P < 0.0001, Figure 4C). These suggested that either of miR-145-5p and miR-145-3p were directly bounded to specific sites in the 3′ UTR of UHRF1 mRNA.

Effects of silencing UHRF1 in BC cell lines

To investigate the functional role of UHRF1 in BC cells, we carried out loss-of-function studies by using si-UHRF1 transfectants. First, we evaluated the knockdown efficiency of si-UHRF1 transfection in BC cell lines. In the present study, we used two types of si- UHRF1 (si- UHRF1-1 and si-UHRF1-2). The qRT- PCR and Western blot analyses showed that both siRNAs effectively downregulated UHRF1 expression in both cell lines (Figure 5A and 5B).
Figure 5

UHRF1 mRNA and protein expression after si-UHRF1 transfection and effects of UHRF1 silencing in BC cell lines

(A) UHRF1 mRNA expression was evaluated by qRT-PCR in T24 and BOY 72 hours after transfection with si-UHRF1-1 and si-UHRF1-2. GUSB was used as an internal control. (B) UHRF1 protein expression was evaluated by Western blot analysis in T24 and BOY 72 - 96 hours after transfection with miR-145-5p or miR-145-3p. GAPDH was used as a loading control. (C) Cell proliferation was determined with the XTT assays 72 hours after transfection with 10 nM si-UHRF1-1 or si-UHRF1-2. *P < 0.0001. (D) Cell migration activity was determined by wound-healing assays. *P < 0.0001. (E) Cell invasion activity was determined using Matrigel invasion assays. *P < 0.0001.

UHRF1 mRNA and protein expression after si-UHRF1 transfection and effects of UHRF1 silencing in BC cell lines

(A) UHRF1 mRNA expression was evaluated by qRT-PCR in T24 and BOY 72 hours after transfection with si-UHRF1-1 and si-UHRF1-2. GUSB was used as an internal control. (B) UHRF1 protein expression was evaluated by Western blot analysis in T24 and BOY 72 - 96 hours after transfection with miR-145-5p or miR-145-3p. GAPDH was used as a loading control. (C) Cell proliferation was determined with the XTT assays 72 hours after transfection with 10 nM si-UHRF1-1 or si-UHRF1-2. *P < 0.0001. (D) Cell migration activity was determined by wound-healing assays. *P < 0.0001. (E) Cell invasion activity was determined using Matrigel invasion assays. *P < 0.0001. XTT, cell migration, and invasion assays demonstrated that cell proliferation, cell migration, and cell invasion were inhibited in si-UHRF1 transfectants in comparison with the mock or siRNA-control transfectant cells (each P < 0.0001, Figure 5C, 5D, and 5E). In the apoptosis assays, the apoptotic cell numbers were significantly greater in si-UHRF1 transfectants than in mock or siRNA-control transfectants (Figure 6A and 6C). Western blot analyses showed that cleaved PARP expression was significantly increased in si-UHRF1 transfectants compared with mock or siRNA-control transfectants (Figure 6B and 6D).
Figure 6

Effects of silencing UHRF1 on apoptosis in BC cell lines

(A, C) Apoptosis assays were carried out using flow cytometry. Early apoptotic cells are in area R4 and apoptotic cells are in area R2. The normalized ratios of the apoptotic cells are shown in the histogram. Cycloheximide (2 μg/mL) was used as a positive control. *P < 0.0001 (B, D) Western blot analyses for apoptotic markers (cleaved PARP) in BC cell lines. GAPDH was used as a loading control.

Effects of silencing UHRF1 on apoptosis in BC cell lines

(A, C) Apoptosis assays were carried out using flow cytometry. Early apoptotic cells are in area R4 and apoptotic cells are in area R2. The normalized ratios of the apoptotic cells are shown in the histogram. Cycloheximide (2 μg/mL) was used as a positive control. *P < 0.0001 (B, D) Western blot analyses for apoptotic markers (cleaved PARP) in BC cell lines. GAPDH was used as a loading control.

Expression of UHRF1 in BC clinical specimens

The qRT-PCR analyses showed that the expression level of UHRF1 mRNA was significantly upregulated in 69 BC specimens and 2 BC cell lines compared with 12 NBE (P < 0.0001, Figure 7A). Spearman's rank test showed negative correlations between miR-145-5p/miR-145-3p expression and UHRF1 mRNA expression (r = −0.324 and −0.298, P = 0.0024 and 0.0051, Figure 7B). As shown in Figure 7C, the expression level of UHRF1 was significantly greater in high grade clinical BCs (P = 0.0135), MIBCs (T2 ≤) (P = 0.0379), BCs with positive lymph node invasion (N1) (P = 0.00182), and in BCs with positive distant metastasis (M1) (P = 0.0307) than in their counterparts. Kaplan-Meier analysis showed that the high UHRF1 expression group had significantly lower cause specific survival probabilities compared to the low UHRF1 expression group (P = 0.0259, Figure 8).
Figure 7

The expression level of UHRF1 mRNA in BC clinical specimens and cell lines, and association of UHRF1 expression with clinicopathological parameters

(A) Expression levels of UHRF1 in clinical specimens and BC cell lines were determined by qRT-PCR. Data were normalized to GUSB expression. (B) The correlated expression among miR-145-5p, miR-145-3p, and UHRF1. (C) Association of UHRF1 expression with clinicopathological parameters. Relationships between two variables were analyzed using the Mann-Whitney U test.

Figure 8

The association between the expression level of UHRF1 and cause specific survival rate

Kaplan-Meier survival curves for cause specific survival rates based on UHRF1 expression in 57 BC patients. P-values were calculated using the log-rank test.

The expression level of UHRF1 mRNA in BC clinical specimens and cell lines, and association of UHRF1 expression with clinicopathological parameters

(A) Expression levels of UHRF1 in clinical specimens and BC cell lines were determined by qRT-PCR. Data were normalized to GUSB expression. (B) The correlated expression among miR-145-5p, miR-145-3p, and UHRF1. (C) Association of UHRF1 expression with clinicopathological parameters. Relationships between two variables were analyzed using the Mann-Whitney U test.

The association between the expression level of UHRF1 and cause specific survival rate

Kaplan-Meier survival curves for cause specific survival rates based on UHRF1 expression in 57 BC patients. P-values were calculated using the log-rank test. We validated the expression status of UHRF1 in BC clinical specimens using immunohistochemical staining. UHRF1 was expressed moderately or strongly in several cancer lesions, and normal bladder tissues stained weakly (Figure 9).
Figure 9

Immunohistochemical staining of UHRF1 in BC clinical specimens

UHRF1 was expressed more strongly in several cancer lesions than in noncancerous tissues. Left panel, original magnification ×40; Right panel, original magnification ×200. (A) Positively stained tumor lesion (High grade, T2bN0M0), (B) Positively stained tumor lesion (High grade, T1N0M0), (C) Positively stained tumor lesion (Low grade, T3N0M0), (D) Negative staining in normal bladder tissue.

Immunohistochemical staining of UHRF1 in BC clinical specimens

UHRF1 was expressed more strongly in several cancer lesions than in noncancerous tissues. Left panel, original magnification ×40; Right panel, original magnification ×200. (A) Positively stained tumor lesion (High grade, T2bN0M0), (B) Positively stained tumor lesion (High grade, T1N0M0), (C) Positively stained tumor lesion (Low grade, T3N0M0), (D) Negative staining in normal bladder tissue.

Investigation of downstream genes regulated by UHRF1 in BC cells

To identify the downstream genes regulated by UHRF1, genome-wide gene expression analyses and in silico analyses were performed in two BC cell lines transfected with si-UHRF1. A total of 533 genes were downregulated (log2 FC < −1.5) by si-UHRF1 transfection, and a total of 704 genes were upregulated (log2 FC > 1.0) by si-UHRF1 transfection compared with negative control cells (GEO, accession number: GSE77790). Among the downregulated genes in the si-UHRF1 transfectants, 104 genes were upregulated in the BC clinical samples from GEO database (accession numbers: GSE11783, GSE31684), whereas among the upregulated genes, 62 genes were downregulated in the clinical BCs. These results imply that the 104 upregulated genes may act as oncogenes, and the 62 downregulated genes may act as tumor suppressors downstream from UHRF1 in BC (Tables 2 and 3).
Table 2

Significantly downregulated genes by si-UHRF1 in BC cell lines

Entrez Gene IDGene SymbolDescriptionGenomic locationGene Expression Omnibus(GSE11783 + GSE31684)Expressionin si-UHRF1transfectant(Log2 FC)
ExpressionLog2FCP-valueT24BOY
7153TOP2Atopoisomerase (DNA) II alpha 170kDa17q21.2up6.3121.049E-03−1.880−1.681
29128UHRF1ubiquitin-like with PHD and ring finger domains 119p13.3up4.9841.049E-03−3.213−2.907
259266ASPMasp (abnormal spindle) homolog, microcephaly associated (Drosophila)1q31.3up4.2991.049E-03−3.431−3.444
332BIRC5baculoviral IAP repeat containing 517q25.3up4.1101.049E-03−2.258−1.777
9928KIF14kinesin family member 141q32.1up3.8661.049E-03−3.294−1.544
1063CENPFcentromere protein F, 350/400kDa1q41up3.5761.049E-03−2.613−3.307
1894ECT2epithelial cell transforming 23q26.31up3.4691.049E-03−1.928−1.813
55247NEIL3nei endonuclease VIII-like 3 (E. coli)4q34.3up3.4281.049E-03−1.728−2.065
9401RECQL4RecQ protein-like 48q24.3up3.4141.049E-03−1.751−2.102
3832KIF11kinesin family member 1110q23.33up3.3561.049E-03−2.299−1.657
57082CASC5cancer susceptibility candidate 515q15.1up3.2301.049E-03−2.470−2.188
151176FAM132Bfamily with sequence similarity 132, member B2q37.3up3.1001.058E-03−2.420−2.184
151246SGOL2shugoshin-like 2 (S. pombe)2q33.1up2.6941.049E-03−3.124−2.407
1062CENPEcentromere protein E, 312kDa4q24up2.6891.058E-03−3.676−3.218
23529CLCF1cardiotrophin-like cytokine factor 111q13.2up2.6461.049E-03−1.905−2.363
81930KIF18Akinesin family member 18A11p14.1up2.5531.049E-03−3.246−2.128
7130TNFAIP6tumor necrosis factor, alpha-induced protein 62q23.3up2.5312.835E-03−1.795−2.735
55502HES6hes family bHLH transcription factor 62q37.3up2.5066.688E-03−1.572−1.508
5328PLAUplasminogen activator, urokinase10q22.2up2.2441.740E-03−2.417−1.791
9824ARHGAP11ARho GTPase activating protein 11A15q13.3up2.0512.348E-03−1.675−1.613
23057NMNAT2nicotinamide nucleotide adenylyltransferase 21q25.3up2.0501.247E-03−1.707−1.863
59285CACNG6calcium channel, voltage-dependent, gamma subunit 619q13.42up2.0161.049E-03−1.502−1.763
675BRCA2breast cancer 2, early onset13q13.1up2.0151.049E-03−1.764−2.356
6524SLC5A2solute carrier family 5 (sodium/glucose cotransporter), member 216p11.2up1.9001.214E-03−1.855−1.569
79412KREMEN2kringle containing transmembrane protein 216p13.3up1.8931.348E-03−2.309−1.796
6274S100A3S100 calcium binding protein A31q21.3up1.8258.102E-03−2.215−1.848
5331PLCB3phospholipase C, beta 3 (phosphatidylinositol-specific)11q13.1up1.7901.049E-03−2.219−1.735
55349CHDHcholine dehydrogenase3p21.1up1.7431.049E-03−1.926−2.008
811CALRcalreticulin19p13.2up1.6521.049E-03−1.554−1.500
4987OPRL1opiate receptor-like 120q13.33up1.6272.626E-03−1.927−1.766
375248ANKRD36ankyrin repeat domain 362q11.2up1.5308.102E-03−3.873−1.791
441054C4orf47chromosome 4 open reading frame 474q35.1up1.4852.151E-02−2.229−2.522
201475RAB12RAB12, member RAS oncogene family18p11.22up1.4681.058E-03−2.353−2.947
286151FBXO43F-box protein 438q22.2up1.4632.396E-02−1.528−2.082
9091PIGQphosphatidylinositol glycan anchor biosynthesis, class Q16p13.3up1.4343.574E-03−1.594−1.693
81575APOLD1apolipoprotein L domain containing 112p13.1up1.3541.808E-03−2.237−2.383
132320SCLT1sodium channel and clathrin linker 14q28.2up1.3401.049E-03−3.140−3.098
100131211TMEM194Btransmembrane protein 194B2q32.2up1.3251.049E-03−1.573−1.967
153642ARSKarylsulfatase family, member K5q15up1.2521.049E-03−2.052−1.875
21ABCA3ATP-binding cassette, sub-family A (ABC1), member 316p13.3up1.1704.892E-02−1.879−1.831
55036CCDC40coiled-coil domain containing 4017q25.3up1.1601.049E-03−1.562−1.531
84259DCUN1D5DCN1, defective in cullin neddylation 1, domain containing 511q22.3up1.1511.247E-03−1.591−1.993
80381CD276CD276 molecule15q24.1up1.1461.072E-03−2.656−2.096
6487ST3GAL3ST3 beta-galactoside alpha-2,3-sialyltransferase 31p34.1up1.1391.049E-03−1.828−2.380
5351PLOD1procollagen-lysine, 2-oxoglutarate 5-dioxygenase 11p36.22up1.1042.942E-03−1.650−1.570
343099CCDC18coiled-coil domain containing 181p22.1up1.0751.578E-03−3.521−2.428
30818KCNIP3Kv channel interacting protein 3, calsenilin2q11.1up1.0692.723E-03−3.678−2.733
10051SMC4structural maintenance of chromosomes 43q25.33up1.0661.578E-03−2.612−1.745
51427ZNF107zinc finger protein 1077q11.21up1.0401.316E-03−2.527−2.104
10592SMC2structural maintenance of chromosomes 29q31.1up1.0326.688E-03−3.520−2.180
20ABCA2ATP-binding cassette, sub-family A (ABC1), member 29q34.3up0.9651.372E-02−1.511−2.291
55183RIF1replication timing regulatory factor 12q23.3up0.9601.058E-03−1.712−1.605
9898UBAP2Lubiquitin associated protein 2-like1q21.3up0.9521.049E-03−1.587−2.301
29780PARVBparvin, beta22q13.31up0.9521.096E-02−3.288−1.888
9585KIF20Bkinesin family member 20B10q23.31up0.9335.720E-03−2.282−3.122
9534ZNF254zinc finger protein 25419p12up0.9203.863E-03−2.072−2.662
57520HECW2HECT, C2 and WW domain containing E3 ubiquitin protein ligase 22q32.3up0.8843.179E-03−1.838−1.958
84083ZRANB3zinc finger, RAN-binding domain containing 32q21.3up0.8731.578E-03−1.987−1.915
6498SKILSKI-like proto-oncogene3q26.2up0.8591.808E-03−2.709−1.845
64770CCDC14coiled-coil domain containing 143q21.1up0.8426.943E-03−2.453−1.711
254065BRWD3bromodomain and WD repeat domain containing 3Xq21.1up0.8081.393E-03−1.852−2.546
22973LAMB2P1laminin, beta 2 pseudogene 13p21.31up0.8047.521E-03−2.336−2.311
7525YES1YES proto-oncogene 1, Src family tyrosine kinase18p11.32up0.7942.526E-03−3.127−2.099
1984EIF5Aeukaryotic translation initiation factor 5A17p13.1up0.7935.486E-03−2.297−2.018
22852ANKRD26ankyrin repeat domain 2610p12.1up0.7873.303E-03−2.798−2.663
23322RPGRIP1LRPGRIP1-like16q12.2up0.7781.182E-02−1.517−1.806
79677SMC6structural maintenance of chromosomes 62p24.2up0.7648.401E-03−1.909−2.083
84920ALG10ALG10, alpha-1,2-glucosyltransferase12p11.1up0.7636.688E-03−1.828−2.360
8570KHSRPKH-type splicing regulatory protein19p13.3up0.7623.303E-03−1.767−1.820
5819PVRL2poliovirus receptor-related 2 (herpesvirus entry mediator B)19q13.32up0.7579.078E-03−3.014−2.465
51575ESF1ESF1, nucleolar pre-rRNA processing protein, homolog (S. cerevisiae)20p12.1up0.7559.430E-03−1.786−1.732
51361HOOK1hook microtubule-tethering protein 11p32.1up0.6893.067E-02−2.156−2.000
10198MPHOSPH9M-phase phosphoprotein 912q24.31up0.6671.947E-03−2.113−1.502
4983OPHN1oligophrenin 1Xq12up0.6325.277E-03−2.278−1.747
4976OPA1optic atrophy 1 (autosomal dominant)3q29up0.6192.169E-03−2.190−1.526
168850ZNF800zinc finger protein 8007q31.33up0.6111.227E-02−1.807−1.867
26272FBXO4F-box protein 45p13.1up0.6113.512E-02−2.224−2.445
7390UROSuroporphyrinogen III synthase10q26.13up0.6056.433E-03−3.120−2.062
4683NBNnibrin8q21.3up0.5905.720E-03−2.986−1.966
79670ZCCHC6zinc finger, CCHC domain containing 69q21.33up0.5875.486E-03−2.353−1.839
79573TTC13tetratricopeptide repeat domain 131q42.2up0.5876.943E-03−1.740−2.064
50840TAS2R14taste receptor, type 2, member 1412p13.2up0.5741.598E-02−1.947−1.509
79042TSEN34TSEN34 tRNA splicing endonuclease subunit19q13.42up0.5701.138E-02−2.455−1.761
6801STRNstriatin, calmodulin binding protein2p22.2up0.5632.723E-03−1.964−2.434
3597IL13RA1interleukin 13 receptor, alpha 1Xq24up0.5522.075E-02−2.460−2.403
147657ZNF480zinc finger protein 48019q13.41up0.5473.893E-02−3.434−3.276
8683SRSF9serine/arginine-rich splicing factor 912q24.31up0.5341.227E-02−1.523−2.098
252983STXBP4syntaxin binding protein 417q22up0.5162.151E-02−1.776−1.599
284325C19orf54chromosome 19 open reading frame 5419q13.2up0.5104.734E-02−1.614−2.171
91147TMEM67transmembrane protein 678q22.1up0.5099.799E-03−1.647−2.069
114799ESCO1establishment of sister chromatid cohesion N-acetyltransferase 118q11.2up0.4954.873E-03−2.173−2.401
57670KIAA1549KIAA15497q34up0.4804.582E-02−2.127−1.789
6103RPGRretinitis pigmentosa GTPase regulatorXp11.4up0.4673.290E-02−1.583−2.025
5700PSMC1proteasome (prosome, macropain) 26S subunit, ATPase, 114q32.11up0.4491.274E-02−1.639−1.711
253260RICTORRPTOR independent companion of MTOR, complex 25p13.1up0.4422.666E-02−2.458−1.683
23241PACS2phosphofurin acidic cluster sorting protein 214q32.33up0.4423.179E-03−3.416−2.028
27154BRPF3bromodomain and PHD finger containing, 36p21.31up0.4405.720E-03−1.772−2.598
7703PCGF2polycomb group ring finger 217q12up0.4392.865E-02−1.828−1.974
51105PHF20L1PHD finger protein 20-like 18q24.22up0.3839.078E-03−3.492−2.007
57697FANCMFanconi anemia, complementation group M14q21.2up0.3643.067E-02−1.648−1.627
9730VPRBPVpr (HIV-1) binding protein3p21.2up0.3632.075E-02−2.342−1.568
5378PMS1PMS1 postmeiotic segregation increased 1 (S. cerevisiae)2q32.2up0.3504.734E-02−2.701−1.616
255520ELMOD2ELMO/CED-12 domain containing 24q31.1up0.3344.582E-02−2.360−1.637
80124VCPIP1valosin containing protein (p97)/p47 complex interacting protein 18q13.1up0.3043.893E-02−3.107−2.286
Table 3

Significantly upregulated genes by si-UHRF1 in BC cell lines

Entrez Gene IDGene SymbolDescriptionGenomic locationGene Expression Omnibus(GSE11783 + GSE31684)Expressionin si-UHRF1transfectant(Log2 FC)
ExpressionLog2FCP-valueT24BOY
3043HBBhemoglobin, beta11p15.4down−3.2631.214E-031.2042.109
137835TMEM71transmembrane protein 718q24.22down−2.4284.873E-032.8133.920
8639AOC3amine oxidase, copper containing 317q21.31down−2.1881.434E-031.9073.140
1408CRY2cryptochrome circadian clock 211p11.2down−2.1411.058E-032.1342.108
7644ZNF91zinc finger protein 9119p12down−2.0581.155E-031.4352.063
197257LDHDlactate dehydrogenase D16q23.1down−1.6262.965E-021.8441.362
316AOX1aldehyde oxidase 12q33.1down−1.6012.169E-031.8411.049
26051PPP1R16Bprotein phosphatase 1, regulatory subunit 16B20q11.23down−1.5476.688E-031.0761.198
63976PRDM16PR domain containing 161p36.32down−1.4392.075E-022.6393.846
254827NAALADL2N-acetylated alpha-linked acidic dipeptidase-like 23q26.31down−1.3134.873E-031.6213.168
154ADRB2adrenoceptor beta 2, surface5q32down−1.2429.799E-032.3842.302
10477UBE2E3ubiquitin-conjugating enzyme E2E 32q31.3down−1.1171.135E-031.0532.755
7099TLR4toll-like receptor 49q33.1down−1.0536.943E-031.4022.356
57478USP31ubiquitin specific peptidase 3116p12.2down−1.0374.169E-031.5701.234
57185NIPAL3NIPA-like domain containing 31p36.11down−0.9861.316E-031.3291.189
30815ST6GALNAC6ST6 (alpha-N-acetyl-neuraminyl-2,3-beta-galactosyl-1,3)-N-acetylgalactosaminide alpha-2,6-sialyltransferase 69q34.11down−0.9361.660E-021.0932.348
29915HCFC2host cell factor C212q23.3down−0.9281.393E-031.3041.296
54741LEPROTleptin receptor overlapping transcript1p31.3down−0.8931.049E-031.2802.248
7779SLC30A1solute carrier family 30 (zinc transporter), member 11q32.3down−0.8798.736E-031.2671.262
79027ZNF655zinc finger protein 6557q22.1down−0.8631.393E-031.5701.589
64344HIF3Ahypoxia inducible factor 3, alpha subunit19q13.32down−0.8451.016E-021.2842.411
79844ZDHHC11zinc finger, DHHC-type containing 115p15.33down−0.8343.176E-021.5051.890
79815NIPAL2NIPA-like domain containing 28q22.2down−0.8256.688E-031.9291.259
7923HSD17B8hydroxysteroid (17-beta) dehydrogenase 86p21.32down−0.8213.512E-022.6573.759
8629JRKJrk homolog (mouse)8q24.3down−0.8201.740E-031.3582.076
79591C10orf76chromosome 10 open reading frame 7610q24.32down−0.8121.808E-031.0991.917
599BCL2L2BCL2-like 214q11.2down−0.7752.835E-031.3841.730
412STSsteroid sulfatase (microsomal), isozyme SXp22.31down−0.7701.372E-021.4401.471
56900TMEM167Btransmembrane protein 167B1p13.3down−0.7552.626E-032.2822.366
23509POFUT1protein O-fucosyltransferase 120q11.21down−0.7471.274E-021.4002.132
25923ATL3atlastin GTPase 311q12.3down−0.7273.290E-021.1791.907
79669C3orf52chromosome 3 open reading frame 523q13.2down−0.7084.021E-021.2001.482
55844PPP2R2Dprotein phosphatase 2, regulatory subunit B, delta10q26.3down−0.6912.666E-021.4221.303
5939RBMS2RNA binding motif, single stranded interacting protein 212q13.3down−0.6265.943E-031.1931.438
6158RPL28ribosomal protein L2819q13.42down−0.6181.808E-032.0263.427
2145EZH1enhancer of zeste 1 polycomb repressive complex 2 subunit17q21.2down−0.6181.393E-031.3911.171
388969C2orf68chromosome 2 open reading frame 682p11.2down−0.6113.435E-031.3091.192
55422ZNF331zinc finger protein 33119q13.42down−0.5941.725E-022.8552.230
92400RBM18RNA binding motif protein 189q33.2down−0.5948.401E-031.1722.001
80017C14orf159chromosome 14 open reading frame 15914q32.11down−0.5901.182E-021.0721.748
7556ZNF10zinc finger protein 1012q24.33down−0.5631.480E-021.5921.127
55957LIN37lin-37 DREAM MuvB core complex component19q13.12down−0.5431.857E-021.0021.205
84267C9orf64chromosome 9 open reading frame 649q21.32down−0.5435.720E-031.2151.299
8799PEX11Bperoxisomal biogenesis factor 11 beta1q21.1down−0.5354.679E-031.0831.163
8790FPGTfucose-1-phosphate guanylyltransferase1p31.1down−0.5242.075E-021.6801.222
6992PPP1R11protein phosphatase 1, regulatory (inhibitor) subunit 116p22.1down−0.5176.433E-031.1041.329
116224FAM122Afamily with sequence similarity 122A9q21.11down−0.5072.169E-031.2311.549
51710ZNF44zinc finger protein 4419p13.2down−0.4991.372E-022.3851.001
7265TTC1tetratricopeptide repeat domain 15q33.3down−0.4871.182E-021.1091.112
80213TM2D3TM2 domain containing 315q26.3down−0.4851.182E-021.3421.742
81631MAP1LC3Bmicrotubule-associated protein 1 light chain 3 beta16q24.2down−0.4801.725E-021.2102.109
6016RIT1Ras-like without CAAX 11q22down−0.4732.666E-021.5561.432
7247TSNtranslin2q14.3down−0.4674.582E-021.1011.496
167227DCP2decapping mRNA 25q22.2down−0.4471.016E-021.2841.104
11046SLC35D2solute carrier family 35 (UDP-GlcNAc/UDP-glucose transporter), member D29q22.32down−0.4311.227E-021.3181.340
54946SLC41A3solute carrier family 41, member 33q21.2down−0.4024.294E-021.5261.988
7799PRDM2PR domain containing 2, with ZNF domain1p36.21down−0.3847.805E-031.4381.294
6651SONSON DNA binding protein21q22.11down−0.3745.486E-031.1261.155
80255SLC35F5solute carrier family 35, member F52q14.1down−0.3694.441E-021.1431.619
55197RPRD1Aregulation of nuclear pre-mRNA domain containing 1A18q12.2down−0.3643.893E-021.4801.761
91603ZNF830zinc finger protein 83017q12down−0.3582.075E-021.0401.085
5094PCBP2poly(rC) binding protein 212q13.13down−0.2864.734E-021.4541.158
To further investigate the UHRF1 downstream genes, we performed the classification of these candidate genes to known molecular pathways by using DAVID program (https://david.ncifcrf.gov/). Classification strategy of downstream genes by si-UHRF1 transfectants is shown in Figure 10A and 10B. Significantly upregulated and downregulated pathways and their involved genes are indicated in Tables 4 and 5. Several genes were classified into biological process categories and a variety of biological pathways, “M phase”, “cell cycle”, and “cell cycle phase” were significantly downregulated by si- UHRF1 transfectants (Table 4).
Figure 10

Flow chart demonstrating the strategy for analysis of genes regulated by UHRF1

(A) A total of 2,222 and 1,512 downregulated genes in expression analyses of si-UHRF1 transfectants of BC cell lines (T24 and BOY, respectively) were selected. We then analyzed 533 common downregulated genes by using available GEO data sets (GSE11783 + GSE31684). The analyses showed that 104 genes were significantly upregulated in BC specimens compared with NBE. (B) A total of 2,665 and 2,434 upregulated genes in expression analysis of si-UHRF1 transfectants of BC cell lines (T24 and BOY, respectively) were selected. We then analyzed 704 common upregulated genes by using GEO data sets. The analyses showed that 62 genes were significantly downregulated in BC specimens compared with NBE.

Table 4

Downregulated genes by si-UHRF1 were classified by DAVID program

Biological processNumber of genesP-ValueGenes
M phase158.10E-09ASPM, BIRC5, BRCA2, CENPE, CENPF, FBXO43, KIF11, KIF18A, KIF20B, MPHOSPH9, NBN, SGOL2, SMC2, SMC4, VCPIP1
cell cycle201.10E-07ASPM, BIRC5, BRCA2, CALR, CENPE, CENPF, ESCO1, FBXO43, KIF11, KIF18A, KIF20B, MPHOSPH9, NBN, PSMC1, RIF1, SGOL2, SMC2, SMC4, UHRF1, VCPIP1
cell cycle phase151.40E-07ASPM, BIRC5, BRCA2, CENPE, CENPF, FBXO43, KIF11, KIF18A, KIF20B, MPHOSPH9, NBN, SGOL2, SMC2, SMC4, VCPIP1
cell cycle process171.90E-07ASPM, BIRC5, BRCA2, CALR, CENPE, CENPF, FBXO43, KIF11, KIF18A, KIF20B, MPHOSPH9, NBN, PSMC1, SGOL2, SMC2, SMC4, VCPIP1
chromosome segregation85.20E-07BIRC5, CENPE, CENPF, KIF18A, SGOL2, SMC2, SMC4, TOP2A
M phase of mitotic cell cycle118.50E-07ASPM, BIRC5, CENPE, CENPF, KIF11, KIF18A, KIF20B, MPHOSPH9, SMC2, SMC4, VCPIP1
organelle fission111.00E-06ASPM, BIRC5, CENPE, CENPF, KIF11, KIF18A, KIF20B, OPA1, SMC2, SMC4, VCPIP1
mitosis106.40E-06ASPM, BIRC5, CENPE, CENPF, KIF11, KIF18A, KIF20B, SMC2, SMC4, VCPIP1
nuclear division106.40E-06ASPM, BIRC5, CENPE, CENPF, KIF11, KIF18A, KIF20B, SMC2, SMC4, VCPIP1
mitotic cell cycle121.20E-05ASPM, BIRC5, CENPE, CENPF, KIF11, KIF18A, KIF20B, MPHOSPH9, PSMC1, SMC2, SMC4, VCPIP1
DNA repair104.90E-05BRCA2, ESCO1, FANCM, NBN, NEIL3, PMS1, RECQL4, SMC6, TOP2A, UHRF1
cell division106.50E-05ASPM, BIRC5, BRCA2, CENPE, CENPF, KIF11, KIF20B, SGOL2, SMC2, SMC4
response to DNA damage stimulus117.40E-05BRCA2, ESCO1, FANCM, NBN, NEIL3, PMS1, RECQL4, RIF1, SMC6, TOP2A, UHRF1
establishment of chromosome localization48.90E-05BIRC5, CENPE, CENPF, KIF18A
chromosome localization48.90E-05BIRC5, CENPE, CENPF, KIF18A
chromosome organization121.40E-04BRCA2, BRPF3, CENPE, CENPF, FBXO4, KIF18A, NBN, PCGF2, SGOL2, SMC2, SMC4, TOP2A
DNA metabolic process122.00E-04BRCA2, CENPF, ESCO1, FANCM, FBXO4, NBN, NEIL3, PMS1, RECQL4, SMC6, TOP2A, UHRF1
microtubule-based movement65.80E-04CENPE, KIF11, KIF14, KIF18A, KIF20B, OPA1
regulation of cell cycle process66.00E-04BIRC5, BRCA2, CALR, CENPE, CENPF, KIF20B
microtubule-based process87.90E-04BRCA2, CENPE, HOOK1, KIF11, KIF14, KIF18A, KIF20B, OPA1
mitotic sister chromatid segregation41.30E-03CENPE, KIF18A, SMC2, SMC4
sister chromatid segregation41.40E-03CENPE, KIF18A, SMC2, SMC4
metaphase plate congression31.90E-03CENPE, CENPF, KIF18A
cellular response to stress112.00E-03BRCA2, ESCO1, FANCM, NBN, NEIL3, PMS1, RECQL4, RIF1, SMC6, TOP2A, UHRF1
regulation of mitotic cell cycle62.20E-03BIRC5, BRCA2, CENPE, CENPF, KIF20B, NBN
organelle localization52.20E-03ASPM, BIRC5, CENPE, CENPF, KIF18A
spindle checkpoint32.20E-03BIRC5, CENPE, CENPF
positive regulation of cell cycle44.80E-03BIRC5, BRCA2, CALR, CENPE
establishment of organelle localization48.20E-03BIRC5, CENPE, CENPF, KIF18A
chromosome condensation39.70E-03SMC2, SMC4, TOP2A
glucose transport31.30E-02SLC5A2, STXBP4, YES1
hexose transport31.40E-02SLC5A2, STXBP4, YES1
regulation of cell cycle71.40E-02BIRC5, BRCA2, CALR, CENPE, CENPF, KIF20B, NBN
monosaccharide transport31.50E-02SLC5A2, STXBP4, YES1
negative regulation of neuron differentiation31.70E-02ASPM, CALR, NBN
cell cycle checkpoint41.70E-02BIRC5, CENPE, CENPF, NBN
kinetochore assembly21.80E-02CENPE, CENPF
meiosis42.10E-02BRCA2, FBXO43, NBN, SGOL2
M phase of meiotic cell cycle42.10E-02BRCA2, FBXO43, NBN, SGOL2
meiotic cell cycle42.20E-02BRCA2, FBXO43, NBN, SGOL2
germ cell development42.30E-02BRCA2, CASC5, HOOK1, PVRL2
kinetochore organization22.40E-02CENPE, CENPF
DNA recombination42.50E-02BRCA2, NBN, RECQL4, SMC6
mitotic cell cycle checkpoint32.70E-02CENPE, CENPF, NBN
centromere complex assembly23.50E-02CENPE, CENPF
spermatid development34.10E-02CASC5, HOOK1, PVRL2
regulation of nuclear division34.40E-02CENPE, CENPF, KIF20B
regulation of mitosis34.40E-02CENPE, CENPF, KIF20B
negative regulation of macromolecule biosynthetic process84.50E-02BRCA2, CALR, CD276, CENPF, KCNIP3, PCGF2, SKIL, ZNF254
spermatid differentiation34.60E-02CASC5, HOOK1, PVRL2
cytoskeleton organization74.60E-02BRCA2, CALR, HOOK1, KIF11, KIF18A, OPHN1, RICTOR
negative regulation of cellular biosynthetic process85.10E-02BRCA2, CALR, CD276, CENPF, KCNIP3, PCGF2, SKIL, ZNF254
positive regulation of cellular protein metabolic process55.10E-02CLCF1, EIF5A, FBXO4, PSMC1, RICTOR
carbohydrate transport35.20E-02SLC5A2, STXBP4, YES1
mitotic metaphase plate congression25.30E-02CENPE, KIF18A
regulation of DNA replication35.30E-02BRCA2, CALR, NBN
double-strand break repair35.30E-02BRCA2, NBN, RECQL4
negative regulation of biosynthetic process85.50E-02BRCA2, CALR, CD276, CENPF, KCNIP3, PCGF2, SKIL, ZNF254
positive regulation of protein metabolic process55.80E-02CLCF1, EIF5A, FBXO4, PSMC1, RICTOR
microtubule cytoskeleton organization45.80E-02BRCA2, HOOK1, KIF11, KIF18A
negative regulation of mitotic metaphase/anaphase transition26.40E-02CENPE, CENPF
blastocyst growth26.40E-02BRCA2, NBN
mitotic cell cycle spindle assembly checkpoint26.40E-02CENPE, CENPF
positive regulation of mitotic cell cycle27.00E-02BIRC5, BRCA2
negative regulation of mitosis27.00E-02CENPE, CENPF
negative regulation of nuclear division27.00E-02CENPE, CENPF
negative regulation of macromolecule metabolic process97.20E-02BRCA2, CALR, CD276, CENPF, KCNIP3, PCGF2, PSMC1, SKIL, ZNF254
reproductive cellular process47.30E-02BRCA2, CASC5, HOOK1, PVRL2
mitotic chromosome condensation27.50E-02SMC2, SMC4
negative regulation of transcription from RNA polymerase II promoter57.50E-02CALR, KCNIP3, PCGF2, SKIL, ZNF254
protein localization108.00E-02CALR, CENPE, CENPF, EIF5A, HOOK1, KIF18A, RAB12, RPGR, SGOL2, STXBP4
negative regulation of nucleobase, nucleoside, nucleotide and nucleic acid metabolic process78.60E-02BRCA2, CALR, CENPF, KCNIP3, PCGF2, SKIL, ZNF254
establishment of protein localization98.90E-02CALR, CENPE, CENPF, EIF5A, HOOK1, KIF18A, RAB12, RPGR, STXBP4
in utero embryonic development48.90E-02BRCA2, NBN, PCGF2, RPGRIP1L
negative regulation of nitrogen compound metabolic process79.10E-02BRCA2, CALR, CENPF, KCNIP3, PCGF2, SKIL, ZNF254
positive regulation of cellular component organization49.50E-02CALR, CENPE, EIF5A, RICTOR
developmental growth39.60E-02BRCA2, NBN, PLAU
Table 5

Upregulated genes by si-UHRF1 were classified by DAVID program

Biological processNumber of genesP-ValueGenes
regulation of transcription151.40E-02CRY2, ADRB2, EZH1, HCFC2, HIF3A, JRK, POFUT1, PRDM16, PRDM2, TLR4, ZNF10, ZNF331, ZNF44, ZNF655, ZNF91
regulation of transcription, DNA-dependent107.00E-02ADRB2, HCFC2, HIF3A, PRDM16, PRDM2, ZNF10, ZNF331, ZNF44, ZNF655, ZNF91
regulation of RNA metabolic process107.90E-02ADRB2, HCFC2, HIF3A, PRDM16, PRDM2, ZNF10, ZNF331, ZNF44, ZNF655, ZNF91
negative regulation of myeloid leukocyte differentiation24.90E-02PRDM16, TLR4
fucose metabolic process25.20E-02POFUT1, FPGT
brown fat cell differentiation26.90E-02ADRB2, PRDM16
negative regulation of myeloid cell differentiation28.50E-02PRDM16, TLR4

Flow chart demonstrating the strategy for analysis of genes regulated by UHRF1

(A) A total of 2,222 and 1,512 downregulated genes in expression analyses of si-UHRF1 transfectants of BC cell lines (T24 and BOY, respectively) were selected. We then analyzed 533 common downregulated genes by using available GEO data sets (GSE11783 + GSE31684). The analyses showed that 104 genes were significantly upregulated in BC specimens compared with NBE. (B) A total of 2,665 and 2,434 upregulated genes in expression analysis of si-UHRF1 transfectants of BC cell lines (T24 and BOY, respectively) were selected. We then analyzed 704 common upregulated genes by using GEO data sets. The analyses showed that 62 genes were significantly downregulated in BC specimens compared with NBE.

DISCUSSION

miRNAs are critical regulators of gene expression and they control many physiologic processes in mammalian cells [5-7]. There are abundant evidences that aberrantly expressed miRNAs can dysregulate otherwise well-controlled cellular RNA networks, thereby enhancing cancer cell development, progression, and metastasis [6-9]. The discovery of aberrantly expressed miRNAs and the resultant changes in RNA networks in cancer cells provide novel molecular explanations for cancer cell progression and metastasis. It is now apparent that dysregulated miRNAs play important roles in BC cell development [16]. Our past miRNA studies of BC cells showed that clustered miRNAs (including miR-1/133a (targeting TAGLN2), miR-23b/27b/24-1 (targeting EGFR, MET, and FOXM1), and miR-195/497 (targeting BIRC5 and WNT7A)) act as tumor-suppressive miRNAs through their regulation of several oncogenic genes and pathways [10, 17–19]. Improved technological developments (next generation sequencing) have illuminated the role of miRNA networks in cancer cells. In this study, we examined the expression of miR-145-5p and miR-145 3p in BC cells because these miRNAs were significantly reduced in cancer cells as determined by deep sequencing. Our data demonstrated that miR-145-3p (the passenger-strand from pre-miR-145) had anti-tumor effects through targeting of UHRF1 in BC cells. Downregulation of miR-145-5p (the guide-strand) is frequently observed in many types of cancer, and past studies have established the anti-tumor function of miR-145-5p through its regulation of several types of oncogenes in cancer cells [15]. Our group also identified the anti-tumor function of miR-145-5p in prostate cancer, renal cell carcinoma, bladder cancer, and esophageal squamous cell carcinoma [20-23]. Importantly, p53 appears to transcriptionally regulate miR-145-5p by interaction with a potential p53 response element at the pre-miR-145 promoter region [24]. Moreover, c-MYC is directly repressed by miR-145-5p, indicating that it acts as a new member of the p53 regulatory network and contributes to the direct linkage between p53 and c-MYC in human cancer pathways [24]. In contrast to miR-145-5p, the functional significance of miR-145-3p in cancer cells has been obscure. This is the first report to evaluate the anti-tumor function of miR-145-3p in BC cells by gain-of-function assays. miRNAs are often associated in clusters in the genome, and several studies have focused on the functional role of clustered miRNAs in human cancers [17, 18, 20–23, 25]. In the human genome, 429 human miRNAs have been found to be clustered at 144 sites, with inter-miRNA distances of less than 5,000 base pair (miRBase, release 21). Both miR-143 and miR-145-5p are known to be located close together on human chromosome 5q32, where they form a cluster [26]. Based on our miRNA signatures, miR-143 and miR-145-5p are the most frequently downregulated miRNAs in various types of human cancers [26]. These two miRNAs have been reported as tumor suppressors and studied extensively for their role in oncogenic pathways in several cancers [15]. Our past studies demonstrated that hexokinase-2 (HK2) and Golgi membrane protein 1 (GOLM1) were directly regulated by miR-143 and miR-145-5p in renal carcinoma and prostate cancer, respectively [22, 23]. In this study, we speculated that miR-145-5p and miR-145-3p worked together to regulate pathways in BC cell progression and metastasis. Our present data showed that UHRF1 was directly regulated by both miR-145-5p and miR-145-3p in BC cells. In previous studies of miRNA regulation of UHRF1 in cancers, UHRF1 was regulated by miR-146a/146b in gastric cancer [27], miR-9 in colorectal cancer [28], and miR-124 in BC [29]. However, there have been no previous reports about the effects of miR-145-5p and miR-145-3p on UHRF1. The UHRF1 gene was first cloned as a transcription factor that binds to the promoter region of the topoisomerase IIα (TOP2A) gene and controls its expression levels [30]. UHRF1 is involved in a wide range of physiological and pathological phenomena, including cancer development and metastasis [31]. UHRF1 plays a pivotal role in controlling gene expression through regulating epigenetic mechanisms, including DNA methylation, histone deacetylation, histone methylation, and histone ubiquitination [31]. Overexpression of UHRF1 occurs in many types of cancer, and aberrantly expressed UHRF1 causes cancer cell activation through hyper-methylation of tumor-suppressor genes such as BRCA1, CDKN2A, p73, and RASSF1 [32]. Expression of UHRF1 might be used as a progression marker in cancer [32]. For example, the expression of UHRF1 in MIBC was greater than in NMIBC, and upregulation was associated with an increased risk of progression after transurethral resection [33]. Our present data showed that knockdown of UHRF1 significantly induced apoptosis in BC cells and expression levels of the gene correlated with cause specific survival. Our data support the past studies of UHRF1 in cancer research, suggesting UHRF1 plays essential roles in BC cell progression and might be a molecular target for BC treatment. In this study, we identified UHRF1-regulated BC pathways by using genome-wide gene expression analysis of si-UHRF1-transfected cells. Our expression data showed that UHRF1 and TOP2A were significantly reduced by si-UHRF1 transfection, indicating the usefulness of the present analytic approach. Our data showed that several anti-apoptosis genes and pro-proliferation genes were involved in pathways downstream of UHRF1, such as BIRC5 and CENPF. BIRC5 is a member of the inhibitor of apoptosis (IAP) family preferentially expressed by many cancers, including BC [10], and its mediated cellular networks are essential for cancer cell proliferation and viability [34]. CENPF is a master regulator of prostate cancer malignancy. Together, FOXM1 and CENPF regulate target gene expression and activation in cancer cells [35, 36]. The identification of these novel molecular pathways and targets mediated by the miR-145-5p/145-3p/UHRF1 axis may lead to a better understanding of BC cell progression and metastasis. In conclusion, downregulation of dual-strand miR- 145-5p and miR-145-3p was validated in BC clinical specimens, and these miRNAs were shown to function as tumor suppressors in BC cells. To the best of our knowledge, this is the first report demonstrating that tumor suppressive miR-145-5p and miR-145-3p directly targeted UHRF1. Moreover, UHRF1 was upregulated in BC clinical specimens and contributed to anti-apoptotic effects through its regulation of several oncogenic genes. Expression of UHRF1 might be a useful prognostic marker for survival of BC patients. The identification of novel molecular pathways and targets regulated by the miR-145-5p/miR-145-3p/UHRF1 axis may lead to a better understanding of BC progression and aggressiveness.

MATERIALS AND METHODS

Clinical specimens and cell lines

Clinical tissue specimens were collected from BC patients (n = 69) who had undergone transurethral resection of their bladder tumors (TURBT, n = 59) or cystectomy (n = 10) at Kagoshima University Hospital between 2003 and 2013. NBE (n = 12) were derived from patients with noncancerous disease. The specimens were staged according to the American Joint Committee on Cancer-Union Internationale Contre le Cancer tumor-node-metastasis (TNM) classification and histologically graded [37]. Our study was approved by the Bioethics Committee of Kagoshima University; written prior informed consent and approval were obtained from all patients. Patient details and clinicopathological characteristics are listed in Table 6.
Table 6

Characteristic of patients

Bladder cancer (BC)
Total number69
Median age (range)73(40–94)years
Gender
 Male5376.8%
 Female1623.2%
Tumor grade
 Low grade4565.2%
 High grade2231.9%
 Unknown22.9%
T stage
 Tis22.9%
 Ta710.1%
 T12536.2%
 T22739.1%
 T345.8%
 T445.8%
N stage
 N04058.0%
 N1811.6%
 Unknown2130.4%
M stage
 M05884.1%
 M157.2%
 Unknown68.7%
Operation method
 TURBT5985.5%
 Cystectomy1014.5%
Normal bladder epithelium
 Total number12
 Median age (range)61(47–72) years

Abbreviation: TURBT = transurethral resection of bladder tumor

Abbreviation: TURBT = transurethral resection of bladder tumor We used two human BC cell lines: T24, which was invasive and obtained from the American Type Culture Collection; and BOY, which was established in our laboratory from an Asian male patient, 66 years old, who was diagnosed with stage III BC and lung metastasis [38, 39]. These cell lines were maintained in minimum essential medium supplemented with 10% fetal bovine serum in a humidified atmosphere of 5% CO2 and 95% air at 37°C.

Tissue collection and RNA extraction

Tissues were immersed in RNAlater (Thermo Fisher Scientific; Waltham, MA, USA) and stored at −20°C until RNA extraction was conducted. Total RNA, including miRNA, was extracted using the mirVana™ miRNA isolation kit (Thermo Fisher Scientific) following the manufacturer's protocol. The integrity of the RNA was checked with an RNA 6000 Nano Assay kit and a 2100 Bioanalyzer (Agilent Technologies, Santa Clara, CA, USA) following the manufacturer's protocol.

Quantitative real-time reverse transcription polymerase chain reaction (qRT-PCR)

The procedure for qRT-PCR quantification was described previously [40, 41]. Stem-loop RT-PCR (TaqMan MicroRNA Assays; product ID: 002278 for miR-145-5p and product ID: 002149 for miR-145-3p; Thermo Fisher Scientific) was used to quantify miRNAs according to previously published conditions [40-42]. TaqMan probes and primers for UHRF1 (product ID: Hs 01086727_m1; Thermo Fisher Scientific) were assay-on-demand gene expression products. We used human GUSB (product ID: Hs99999908_m1; Thermo Fisher Scientific) and RNU48 (product ID: 001006; Thermo Fisher Scientific), respectively, as internal controls.

Transfections with miRNA mimic and small interfering RNA (siRNA) into BC cell lines

Mature miRNA molecules, Pre-miR™ miRNA precursors (hsa-miR-145-5p; product ID: PM11480, hsa-miR-145-3p; product ID: PM13036, and negative control miRNA; product ID: AM 17111; Thermo Fisher Scientific) were used in the gain-of-function experiments, whereas UHRF1 siRNA (product ID: HSS120939 and HSS179006; Thermo Fisher Scientific) and negative control siRNA (product ID: D-001810-10; Thermo Fisher Scientific) were used in the loss-of-function experiments. The transfection procedures and transfection efficiencies of miRNA in T24 and BOY cells were reported previously [40-42].

Cell proliferation, migration, and invasion assays

To investigate the functional significance of the miR-145-5p, miR-145-3p, and UHRF1, we performed cell proliferation, migration, and invasion assays using T24 and BOY cells. The experimental procedures were performed as described in our previous studies [40-42].

Apoptosis assays

BC cell lines were transiently transfected with reagent only (mock), miR-control, miR-145-5p, miR- 145- 3p, siRNA-control, or si-UHRF1 at 10 nM in 6 well tissue culture plates, as described previously [14, 17–19]. Cells were harvested by trypsinization 72 hours after transfection and washed in cold phosphate-buffered saline. For apoptosis assays, double staining with FITC-Annexin V and propidium iodide was carried out using a FITC Annexin V Apoptosis Detection Kit (BD Biosciences, Bedford, MA, USA) according to the manufacturer's recommendations and analysed within 1 hour by flow cytometry (CyAn ADP analyzer; Beckman Coulter, Brea, CA, USA). Cells were identified as viable cells, dead cells, early apoptotic cells, and apoptotic cells using Summit 4.3 software (Beckman Coulter), and the percentages of early apoptotic and apoptotic cells from each experiment were then compared. As a positive control, we used 2 μg/mL cycloheximide.

Cell cycle assays

For the cell cycle analyses, cells were stained with PI using the Cycletest PLUS DNA Reagent Kit (BD Biosciences) following the protocol and analyzed by CyAn ADP analyzer (Beckman Coulter). The percentages of the cells in the G0/G1, S, and G2/M phases were determined and compared. Experiments were performed in triplicate.

Western blot analyses

Immunoblotting was performed with rabbit anti-UHRF1 antibodies (1:500, PA5-29884; Thermo Fisher Scientific), anti-PARP antibodies (1:500 #9542; Cell Signaling Technology; Danvers, MA, USA), anti-cleaved PARP antibodies (1:500 #5625; Cell Signaling Technology), and anti-GAPDH antibodies (1:10000 MAB374; Chemicon, Temecula, CA, USA). Specific complexes were visualized with an echochemiluminescence detection system (GE Healthcare, Little Chalfont, UK).

Immunohistochemistry

A tissue microarray of 68 urothelial cancers and 20 normal bladder tissues was obtained from US Biomax, Inc. (Rockville, MD, USA) (product ID: BL1002). Detailed information on all tumor specimens can be found at http://www.biomax.us/index.php. The tissue microarray was immunostained following the manufacturer's protocol with an Ultra Vision Detection System (Thermo Scientific). The primary rabbit polyclonal antibodies against UHRF1 (PA5-29884; Thermo Fisher Scientific) were diluted 1:300. Immunostaining was evaluated according to a scoring method as described previously [17].

Genome-wide gene expression and in silico analyses for the identification of genes regulated by miR-145-5p and miR-145-3p

To further investigate the specific genes affected by miR-145-5p and miR-145-3p, we performed a combination of in silico and genome-wide gene expression analyses. We attempted to identify target genes using a BC cell line transfected with these miRNAs. A Sure Print G3 Human GE 8 × 60K Microarray (Agilent Technologies) was used for expression profiling of miR-145-5p and miR-145-3p transfectants. The microarray data were deposited into GEO (http://www.ncbi.nlm.nih.gov/geo/) and were assigned GEO accession number GSE66498. Next, we selected putative miRNA target genes using the microRNA.org database (August, 2010 release, http://www.microrna.org). Finally, to identify upregulated genes in BC, we analyzed publicly available gene expression data sets in GEO (accession numbers: GSE11783, GSE31684). The data were normalized and analyzed with Gene Spring software (Agilent Technologies) as described previously [22, 23, 40–42]. The strategy for investigation of the target genes is shown in Figure 3.

Plasmid construction and dual luciferase reporter assays

Partial wild-type sequences of the 3′ UTR of UHRF1 or those with a deleted miR-145-5p and miR- 145- 3p target site (positions 1,179–1,198 of UHRF1 3′ UTR for miR- 145-5p, and positions 287–292 of UHRF1 3′ UTR for miR-145-3p) were inserted between the XhoI and PmeI restriction sites in the 3′ UTR of the hRluc gene in the psiCHECK-2 vector (C8021; Promega, Madison, WI, USA). T24 and BOY cell lines were transfected with 50 ng of the vector and 10 nM miR-145-5p or miR-145-3p using Lipofectamine 2000 (Thermo Fisher Scientific) and Opti-MEM (Thermo Fisher Scientific). The activities of firefly and Renilla luciferases in cell lysates were determined with a dual luciferase reporter assay system according to the manufacturer's protocol (E1960; Promega). Normalized data were calculated as the ratio of Renilla/firefly luciferase activities.

Identification of downstream targets regulated by UHRF1 in BC

To investigate molecular targets regulated by UHRF1 in BC cells, we carried out gene expression analyses using si-UHRF1-transfected BC cell lines. Microarray data were used for expression profiling of si-UHRF1 transfectants. The microarray data were deposited into GEO (accession number: GSE77790). We analyzed common down or upregulated genes using the GEO dataset. The flow chart outlining the investigation of UHRF1 downstream genes is shown in Figure 10A and 10B.

Statistical analysis

Relationships among two or three variables and numerical values were analysed using the Mann-Whitney U test or Bonferroni-adjusted Mann-Whitney U test. Spearman's rank test was used to evaluate the correlation among the expressions of miR-145-5p, miR-145-3p, and UHRF1. We estimated cause specific survival of 57 BC patients by using the Kaplan-Meier method. Among the 69 BC patients, 12 died of other causes. Therefore, we analyzed cause specific survival of 57 BC patients. Patients were divided into two groups according to the median value of UHRF1 expression, and the differences between the two groups were evaluated by the log-rank tests. We used Expert Stat View software, version 5.0 (SAS Institute Inc., Cary, NC, USA), for these analyses.
  42 in total

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