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1 Departments of Experimental Oncology, Urology, Pathology, Clinical Pathology, and Medical Oncology and 2 Rome Oncogenomic Center, Regina Elena Cancer Institute; 3 Istituto Dermopatico dell'Immacolata; 4 Endocrinology, Catholic University; 5 INeMM, National Research Council, Rome, Italy and 6 Medical Oncology, Dana-Farber Cancer Institute, and Pathology, Brigham & Women's Hospital, Boston, Massachusetts
Requests for reprints: Antonella Farsetti, Molecular Oncogenesis Laboratory, Department of Experimental Oncology, Regina Elena Cancer Institute-Experimental Research Center, Via delle Messi d'Oro 156, 00158 Rome, Italy. Phone: 39-6-5266-2531; Fax: 39-6-41805-26. E-mail: farsetti{at}ifo.it
| Abstract |
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| Introduction |
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Because the initiation and progression of prostate cancer involves multiple changes in gene expression, cDNA microarray technology has been recently used to identify disease-related gene expression patterns in prostate samples (4-8). This approach has detected alterations in several candidate genes associated with prostate cancer progression (9). However, there is not yet a definitive molecular classification that can predict consistently and reliably the clinical behavior of prostate cancer. Inconsistencies among reported prostate cancer gene expression signatures could be attributed at least in part to the fact that most of these analyses were done using bulk tissue samples that, in addition to neoplastic cells, contain many other cell types, such as epithelial, stromal, endothelial cells and infiltrating lymphocytes. To circumvent this technical problem, we have analyzed RNA samples prepared from early passages of primary cultures highly enriched in epithelial cells that display a secretory phenotype and are derived from explants of prostate cancer tissue obtained at the time of surgery. The expression profile of the cancer cells consistently revealed elevated transcription of many genes known to be important in prostate carcinogenesis. These results have allowed us to identify an epithelial-restricted transcription profile that can be integrated with the grade and clinical information, with the aim of discriminating indolent and aggressive prostate tumors with histologically similar features.
| Results |
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Reactivation of hTERT and enzymatic activity has been proposed as a "diagnostic" marker in prostate cancer because it seems to be an early event in prostate carcinogenesis (18). Our results from a well-defined and selected population highly enriched in the epithelial phenotype confirm the usefulness of this marker in distinguishing between normal and tumor phenotypes.
Phenotype of Primary Prostate Epithelial Cell Cultures
Each normal epithelial cell type has a specific pattern of cytokeratin expression, which can be used as a differentiation marker (19). Cytospins of cultured cells were analyzed by immunocytochemistry using antibodies against several common prostate epithelial or stromal markers. The results were compared with the immunostaining pattern of commercial PrEC, a well-characterized transiently amplifying, basaloid population that exhibits partial secretory differentiation when reaching senescence (20). All cultures derived from tumors stained positive for the luminal cytokeratins CK8 (Fig. 2A
) and CK18 (data not shown), AR, and PSA but were negative for p63 and HMwCK (Fig. 2A and C), a pattern consistent with a luminal/secretory phenotype. Consistent with the homogenous expression of epithelial markers, no staining was detected for the stromal markers vimentin or
-smooth muscle actin (Fig. 2A). Interestingly, expression of AR protein and PSA mRNA were modulated by treatment with DHT or the synthetic androgen (R1881), indicating that hormonal responsiveness was preserved (Fig. 2B). As expected, PrEC cells were positive for HMwCK and p63, weakly positive for CK8 (Fig. 2A), and negative for CK18 (data not shown), AR, and PSA (Fig. 2A and C, respectively). Nuclear estrogen receptor-ß expression was seen in normal and transformed epithelial cells as well as in the original tissues, whereas estrogen receptor-
was not detectable (data not shown). Of note, all these markers were preserved in immortalized cell lines we derived from primary cultures by transduction of both hTERT and SV40 T antigen genes.7 Thus, the overall concordance of expression patterns between original tumors and cultured cells derivatives suggests that the phenotype of the tumor is preserved in vitro.
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Gene Expression Profiling: Normal versus Prostate CancerDerived Cells
RNA was isolated from 22 tumor cultures and hybridized to Affymetrix Human U133A GeneChip arrays (Affymetrix, Inc., High Wycombe, United Kingdom). Because cultures representing matched case-controls could not be generated from normal prostate tissue adjacent or contralateral to the lesion, cultures derived from normal/hyperplastic tissues (N1, C10, C17, and C16sx) with a prevalent luminal phenotype and from normal prostate epithelial cells with the basal phenotype (PrEC) were used as controls.
Comparison of control versus tumor-derived populations (prostate cancer) was done using two different approaches for significance adjustments: Significance Analysis for Microarrays (SAM) and Max T test. In addition, Prediction Analysis for Microarrays (PAM) was used to classify categories and identify genes associated with prostate cancer (see Materials and Methods). The results from all three analysis, when compared, identified 89 common genes that were differentially expressed and discriminated between cancer and normal samples (Fig. 3A ). Cluster analysis of these genes emerging from the intersection of PAM, SAM, and Max T test is shown in Fig. 3B. Among the most differentially expressed transcripts (Fig. 3B), some were up-regulated in tumors [e.g., IGFBP5, IGFBP3, KRAS2, hTERT, two other molecules involved in telomere biology, TRF2 and TRF2IP (hRap1), and TNFAIP6], whereas others were down-regulated [e.g., E-cadherin (CDH1) and P-cadherin (CDH3)]. The expression of a subset of genes with the highest score was also validated by qRT-PCR (Fig. 3C). Among these, the serine/threonine kinase AKT/protein kinase B (AKT1), a key regulator of cell survival with a known role in prostate carcinogenesis (24), was highly overexpressed. We exploited this finding to investigate the role of AKT1 in the survival of seven prostate cancerderived cells expressing high level of the wild-type protein and three normal/hyperplastic control cells. As shown in Fig. 3D, after infection with the AdAKTdn and on serum starvation, significant levels of apoptosis were detected in 6 of 7 prostate cancerderived but not in control cell cultures.
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We therefore did supervised SAM and PAM analyses of the groups defined by recurrence status to identify a prognostic expression signature. SAM/PAM intersection analysis resulted in 70 overlapping genes (listed in Table 3 ) out of 98 or 103, respectively. Cluster analysis of these genes also confirmed the presence of two main groups (termed G1 and G2 in Fig. 4B) similar (or substantially overlapping) to the groups defined by recurrence using supervised methods. Interestingly, the recurrence transcriptional profile, shared by two patients (13 and 43), which still exhibited the variables of an organ-confined disease, potentially allows to predict the worst outcome with a probability of 99% (Fisher's exact test). This may suggest that the epithelial-enriched gene profile represents an additional variable for the identification of tumors with poor prognosis based solely on tumor extension.
The prognostic expression signature revealed that, compared with the G2 group, G1 samples exhibit lower expression of genes involved in regulation of mitotic spindle elongation (e.g., PRC1) and in sensing DNA damage (e.g., H2AX). In contrast, a subset of genes usually associated with higher rate of proliferation, such as RPS20, MED6, POLM, and POLL, were overexpressed in G1 samples (Tables 3 and 4 ).
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To validate in vivo the prognostic signature emerging from the cell populations, immunohistochemistry analysis was done on tissue samples derived from ours and from an independent set of 20 patients (17 with diagnosis of prostate cancer and 3 with benign prostatic hyperplasia; as detailed in Materials and Methods) exhibiting clinicohistopathologic features similar to our original cohort. The expression level of one of the most significant genes emerged from the transcription profile, histone H2AX, was evaluated in both cohorts with respect to the poor and good prognosis defined as relapse-free survival. Expression of the phosphorylated form of H2AX (
-H2AX) was discriminating for the two groups of patients with distinct outcome both in our study (data not shown) and, as shown in Fig. 4D, in the independent retrospective cohort with a prolonged follow-up (12-14 years). No
-H2AX staining was observed in the normal/hyperplastic samples (data not shown). The differential expression of
-H2AX detected in the good and poor outcome groups provides a clear correlation between in vitro and in vivo data. These findings are promising, as they support the possibility that the expression pattern of individual genes may contribute in the future to optimize patients' stratification and prognosis.
| Discussion |
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From the prostate cell lines, we obtained an epithelial-restricted gene expression profile. These signatures reliably and consistently differentiated between cells derived from normal tissue and from prostate cancer. Thus, the tumor transcription pattern is essentially maintained in culture. Previously, a similarity in gene expression profiling was noted between primary breast tumors and their epithelial cell derivatives (25). Our analysis confirms the gene expression patterns of previous studies on prostate cancers (4, 5, 26) but also identifies additional genes whose expression is specifically altered in the secretory prostate epithelium (i.e., components of the telomere complex, such as hTERT, TRF2, and TRF2IP). In particular, the gene profile we describe allows stratification of cell lines (and thus of patients) and therefore the possibility of exploiting the cells for ex vivo targeted therapies as exemplified by our induction of apoptosis through functional inhibition of AKT (27). Inhibitors of the phosphatidylinositol 3-kinase/AKT pathway are currently being evaluated as anticancer agents in prostate cancer clinical trials (28, 29), and other pathways could be similarly targeted with appropriate drugs. In this regard, among the 89 genes emerging from the intersection of the normal versus cancer analyses (Fig. 3), we found a specific up-regulation of the HMOX1 gene in the cancer-derived population, confirming again a strong involvement of the phosphatidylinositol 3-kinase signaling and downstream effectors in prostate cancer, in agreement with previous reports (30).
The clear distinction between tumor and normal samples prompted us to focus on the tumor cell populations to obtain information that would add to clinical and pathologic variables and thus help in selecting the most appropriate therapy and improve prognosis. The supervised bioinformatics analysis clearly highlighted two distinct transcriptional signatures. Of these, the one marking the G1 cluster (Fig. 4B) was specifically associated with a more severe clinical course of the disease within a follow-up ranging from 24 to 40 months (see Table 2). Indeed, we found a significant correlation between this transcriptional signature and the pathologic stage, particularly the extension of the lesion. Of note, two patients with organ-confined disease (patients 13 and 43; see Table 2) exhibit the signature of aggressive tumors. In this respect, the transcriptional profile we identified might help to predict recurrence in patients that do not display features of aggressive biological behavior as assessed by traditional clinicopathologic variables.
With very few exceptions, what emerged from the gene profile restricted to the cancer-derived cells and from the qRT-PCR analysis of a set of genes with the highest discriminating score is a clear pattern of progressive down-regulation of expression that follows the progression of the disease. One of the striking features of the profile associated with poor prognosis is in fact a relatively lower expression of genes (identified by GOAL analysis; Table 4) belonging to families controlling cell cycle, mitosis, and DNA repair. Two recent studies (31, 32) have reported that the DNA damage response is activated in preneoplastic lesions and down-regulated with disease progression and suggested that the initial activation of DNA repair represents one of the earliest barriers to cancer, such that loss of this pathway facilitates acquisition of malignant properties. Our findings agree with this concept. Indeed, the vast number of down-regulated genes involved in DNA damage sensing and repair, among which are "early sensor," such as H2AX (Table 3; Fig. 4), indicates that these pathways are severely compromised or even abrogated in the G1 group. To our knowledge, this is the first evidence of a potential prognostic role of the H2AX expression in prostate cancer. Validation of these data on in vivo samples derived from ours and from an independent set of patients strongly supports this conclusion, although a prolonged follow-up for our cohort and analysis of additional genes belonging to the prognostic signature are required.
The G1 signature comprises also few up-regulated genes, among which are those that contribute to augment transcriptional activity (MED6) and promote cell proliferation (RPS20). The enhanced expression of MED6, confirmed also by qRT-PCR (Fig. 4C), in the bad prognosis G1 group, compared with the G2 group, is particularly intriguing, because this gene is known to play a key role in the activation of the basal transcription machinery (33). In agreement with previous gene profiling reports (34), we found higher expression of EDNRA in the G1 compared with the G2 groups. This finding supports recent reports (28) that propose EDNRA antagonists, such as atrasentan, for therapeutic intervention in prostate cancer.
It is notable that within the G1 prognostic signature we observed induction of genes involved in the activation of cellular response to hypoxia, such as HIF1
, HIF2
(EPAS1), and HIF1ß (ARNT; Tables 3 and 4). Because tumor hypoxia and overexpression of the hypoxia-inducible factors pathway have been associated with resistance to certain therapies (35), the information deriving from our prognostic signature acquires an additional value in terms of optimization of patient stratification and outcome-prediction.
In conclusion, short-term cell cultures derived from primary prostate tumors yield sufficient material that is devoid of contaminating nonepithelial cells and is amenable to extensive molecular characterization. This methodology may lead to the further identification and refinement of expression signatures that may guide therapeutic options in prostate cancer.
| Materials and Methods |
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Primary Cultures
Horizontal sections (5 mm thick) of prostate tissue were transported to the laboratory in ice-cold Iscove's modified Dulbecco's medium (Invitrogen, Carlsbad, CA) supplemented with 20% fetal bovine serum (Hyclone, Logan, UT) and glutamine, and cultures were started within 2 to 3 hours of surgery. Prostate samples were chopped into small fragments of 1 to 2 mm3 with sterile scissors and placed in 35-mm dishes containing growth medium. The explants were incubated at 37°C in a humidified 5% CO2 atmosphere to allow attachment to the culture dish (1 week) and epithelial cell growth. As cells reached confluence, they were detached by both trypsin/EDTA mixture and mechanical means and passaged at a split ratio of 1:4. At near confluence, cells aliquots of the primary cultures were frozen and stored in liquid nitrogen. For serial passages, routine trypsinization was used and the split ratio of the cells was 1:4.
Cell Lines
Prostate epithelial cells (PrEC) were cultured according to the manufacturer's protocols (Cambrex BioScience, Verviers, Belgium). Human prostate cancer cell lines (LNCaP) were cultured in RPMI 1640 supplemented with 10% fetal bovine serum (Invitrogen), 4.5 g/L glucose, and 0.1 mol/L HEPES. Human primary fibroblast were cultured in DMEM with 10% donor serum (Invitrogen).
Soft Agar Assay
Cells (2 x 105) were resuspended in 1 mL of 0.4% agar Noble (Difco Laboratories, Kansas City, MO) in complete Iscove's modified Dulbecco's medium and seeded into to 35-mm dish coated with 0.6% agar Noble in the same medium. Every 3 days, 0.5 mL fresh medium was added. After 2 to 3 weeks, cells were stained with 0.4 mg/mL neutral red, and anchorage-independent growth was assessed by counting colonies of >200 µm in diameter.
Clonogenicity Assay
Cells (n = 200) were seeded in duplicate in six-well plates in complete Iscove's modified Dulbecco's medium. After 7 to 14 days, cells were fixed and stained with 0.5% crystal violet and colonies were counted.
Fluorescence In situ Hybridization Analysis
The procedure for fluorescence in situ hybridization has been described previously (36). Briefly, the Vysis (Downers Grove, IL) ProVysion multicolor mixture was used for detection of AR (Xq12), EGFR (7p12), PTEN (10q23), NKX3.1 (8p22), and MYC (8q24) genes, and chromosome numeration probes specific for X, 7, 8, and 10 chromosomes were used to adjust for aneuploidy and to establish the presence of deletions/amplifications. Centromeres and specific gene regions copy numbers were counted in at least 100 cells. The ratios between specific-gene and centromeric copy number were calculated to establish the presence of amplified (AR, MYC, and EGFR) or deleted (PTEN and NKX3.1) genes.
Telomeric Repeat Amplification Protocol Assay
Cell extracts were assayed for telomerase activity by the telomeric repeat amplification protocol (37). Telomerase activity was normalized to an internal standard and quantified by densitometric analysis with NIH Image J. 24 software as described (38).
RNA Extraction and RT-PCR
Cells were cultured in the presence or absence of methyltrienolone (R1881; gift from A. Banhiamad, Jena University, Germany) for 72 hours as described by Nanni et al. (38). Cells were homogenized in Trizol (Invitrogen) and total RNA was isolated according to the manufacturer's instructions. cDNA preparation and PCR conditions were as described previously (38). PSA and aldolase primers were used as described (38, 39).
Real-time PCR Analysis
cDNA synthesis was done from two independent RNA preparations using SuperScript III Platinum Two-Step qRT-PCR kit (Invitrogen) and High-Capacity cDNA Archive kit (Applied Biosystems, Foster City, CA) and qRT-PCR was done with the ABI Prism 7500 PCR instruments (Applied Biosystems) to amplify samples in triplicate. Predesigned TaqMan primers and probe (Applied Biosystems) specific for estrogen receptor-ß1, H2AX, MDM4, MSH5, 18S rRNA, and RNase P were used. qRT-PCR was done using SYBR Master mix (Applied Biosystems) with evaluation of dissociation curves. hTERT and AKT1 primers were described previously (38, 40). For the remaining genes, specific, intron spanning, primers were designed using Primer Express 2.0 (Applied Biosystems). Primers were as follows: APOM forward 5'-CCGATGCAGCTCCACCTT-3' and reverse 5'-AGTCAGGTGGTAGATCCATTTCC-3', APRIN forward 5'-GCCTACAAATCCTTTCCTGGAA-3' and reverse 5'-GAGCACTGATAGATTCGGTATCTATGTG-3', CASP9 forward 5'-GAGGTTCTCAGACCGGAAACAC-3' and reverse 5'-CATTTCCCCTCAAACTCTCAAGA-3', CDH1 forward 5'-CCAGAAACGGAGGCCTGAT-3' and reverse 5'-CTGGGACTCCACCTACAGAAAGTT-3', CDH3 forward 5'-CAGGGAGGCTGAAGTGACCTT-3' and reverse 5'-GAAGTCATCATTATCAGTGCTAAACAGA-3', EDNRA forward 5'-CAGAAGGAATGGCAGCTTGAG-3' and reverse 5'-CACTTCTCGACGCTGCTTAAGA-3', GGA3 forward 5'-GCCAGAAGAAGCAAAGATCAAAG-3' and reverse 5'-TGGTGGGTCAGACTGCACTATG-3', KRAS2 forward 5'-CCCAGGTGCGGGAGAGA-3' and reverse 5'-CTACGCCACCAGCTCCAACT-3', IGFBP3 forward 5'-AGTCCAAGCGGGAGACAGAA-3' and reverse 5'-GGTGATTCAGTGTGTCTTCCATTT-3', IGFBP5 forward 5'-CTACCGCGAGCAAGTCAAGAT-3' and reverse 5'-TGTTTGGGCCGGAAGATC-3', LRP5 forward 5'-AACATGATCGAGTCGTCCAACA-3' and reverse 5'-GATATAATCGCTGTACTGCGTCAGA-3', MED6 forward 5'-TGGTCAAAATGCAGAGGCTAAC-3' and reverse 5'-TCTTGAGCATGCAAAAGGATGT-3', NCOA2 forward 5'-TGTTGCTGCACAAACGAAGAG-3' and reverse 5'-GGCTTCCCCATCGTTTGTC-3', PIK3C2B forward 5'-CCGCATCCCCATCATCTG-3' and reverse 5'-GCTGAGGGAGCAGGAGAGGTA-3', PRC1 forward 5'-GGAGCGTCCGCCATGAG-3' and reverse 5'-CCGAAGGTGATTTAGGGCTTTC-3', RACGAP1 forward 5'-GTCATGGAATTTAAGTGATTTACTGAAGA-3' and reverse 5'-GCACAAGCTGCTCAAACAGATT-3', RANBP1 forward 5'-CTGGAAGAAGATGAAGAGGAACTTTT-3' and reverse 5'-CCTTCCATTCTGGGAGATCGT-3', ROCK1 forward 5'-AGAATTGGATGAAGAGGGAAATCA-3' and reverse 5'-CTTTTCTTTGGTACTCATTAATTCTATGCT-3', RPP40 forward 5'-GGTTCAGAAGAATCGACAATGATG-3' and reverse 5'-ACGTGCTCAGTGCTACTTTTGG-3', slc35d1 forward 5'-GCCCACCCTGGCCATT-3' and reverse 5'-TCAGCCCAGCCTTCAAACTC-3', and TNFAIP6 forward 5'-GCGGCCATCTCGCAACT-3' and reverse 5'-TCCAGCAGCACAGACATGAAA-3'.
The mRNA of each gene was quantified using the Standard Curve Method (5-log dilutions in triplicate) and expressed relative to the 18S rRNA or RNase P. Data are represented as box plots generated from Excel charts and plotted on a log scale. In this display, data are represented as boxes showing medians and upper and lower quartiles. Whiskers indicate minimum and maximum values, excluding the outliers that are directly depicted in each graph.
Antibodies
The following monoclonal antibodies were used: 34ßE12 anti-HMWCK, 28A4 anti-PSA, 6F11 antiestrogen receptor-
, and PPG5/10 anti-estrogen receptor-ß (all from UCS Diagnostic S.r.l., Rome, Italy); 35ßH1 anti-CK8, AR441 anti-AR, V9 anti-vimentin, and 1A4
-smooth muscle actin (Dako, Carpinteria, CA); 4A4 anti-p63 (Neomarker-LabVision Corp., Carpinteria, CA); anti-phospho-histone H2AX, Ser139 (Upstate, Lake Placid, NY).
Immunoperoxidase Assay on Tissue Samples and Cell Cultures
Sections (5 µm) of paraffin-embedded tissues were deparaffinized and rehydrated in decreasing ethanol concentrations. Antigen retrieval was done by heating at 96°C for 15 minutes in 10 mmol/L citrate buffer (pH 6.0). Endogenous peroxidase was quenched with 3% H2O2 in 60% methanol, and nonspecific binding was blocked by a 10-minute incubation with normal serum (ScyTek Laboratories, Logan, UT). Samples were then incubated with the primary antibody for 1 hour in a humidified atmosphere. Detection steps were done using the UltraTek HRP kit (ScyTek Laboratories), and peroxidase activity was localized with 3,3'-diaminobenzidine/H2O2 substrate (Dako). Slides were counterstained with hematoxylin, rehydrated, and mounted for microscopic examination. Immunocytochemical analysis was done on cytospins (400 rpm for 5 min) fixed for 30 minutes in formalin. Cells were treated and immunoperoxidase stained as described above for tissue sections. PSA immunostaining was done on cells grown on chamber slides (Lab-Tek, Naperville, IL).
Gene Expression Profiling
Total cellular RNA was isolated by using RNeasy kits (Qiagen, Germantown, MD). Preparation of labeled cRNA and hybridization (GeneChip Human Genome U133A 2.0 Array; Affymetrix) was done according to the Affymetrix GeneChip Expression analysis manual. Microarray data have been deposited in the Gene Expression Omnibus under accession no. GSE3868 (submitted by A. Farsetti).
Data Analysis
Affymetrix GeneChip scanning was analyzed by customized R languagebased script (see http://www.r-project.org) using the Bioconductor packages (see http://www.bioconductor.org) for quality-control analysis, data normalization, hierarchical cluster, and identification of differentially expressed transcripts. Specifically, the gcrma package was used for chip normalization and background correction; the vsn package provided calibration and transformation of the probe intensities to evaluate the within-group and between-group variabilities. The genefilter package was used to separate genes with high variance according to the interquartile range method. Unsupervised two-way (genes against samples) hierarchical clustering method using the about (3,000) probe set of our data set, previously filtered, was used to test the internal consistency, to explore the relationship among samples, and to check if the individual samples clustered together according to their features. The unsupervised cluster analysis was followed by two similar tests, SAM and mt.MaxT function (Max T test), to identify genes that distinguished between two categories (normal versus cancer and/or recurrent versus nonrecurrent) and by PAM to classify categories and to identify genes that best characterize each class. SAM analysis was done using the R package "samr" as described previously (41). The list of ranked genes obtained was 203 genes in normal versus cancer (
, 1.098; false discovery rate, 0.046) and 98 genes in recurrent versus nonrecurrent (
, 1.338; false discovery rate, 0). Max T test was done in the Multtest package, module of Bioconductor R, according to the Westfall and Young method (42). PAM R supervised class prediction package was done as described in ref. 43. The performance of computational algorithm was tested by the k-fold cross-validation procedure for estimating generalization error based on resampling as described (44, 45). Regulated biological processes and molecular functions were identified by the GOAL Web-based application (46) and the Unigene Build 154 according to the Gene Ontology (GO; http://www.geneontology.org) Consortium classification. Briefly, for each GO term(s) associated to the Unigene cluster in the expression tables, mean t score from the t scores of each corresponding Unigene cluster was calculated. The Unigene clusters t scores were averaged when more genes were present for a single Unigene cluster. To provide a Ps for each GO term and false discovery rate, bootstrap analysis (44, 45) was done on data set generating a bootstrap resampling up to 1.25 x 106 total data. GO terms with Ps < 0.01 were considered differentially regulated. False discovery rate was calculated as described (47, 48). In particular, with a bootstrap of 25 cycles (for a total of 4.5 x 105 generated t score), the false discovery rate was 0.013 for up-regulated and 0.040 for down-regulated terms.
Adenoviral Infection and Terminal Deoxunucleotidyl TransferaseMediated dUTP Nick End Labeling Assay
Replication-deficient recombinant adenovectors encoding the cDNA for human AdAKTdn (49) or no gene (AdNull) were prepared as described (50) and used at a multiplicity of infection of 50 plaque-forming units/cell. After infection, cells were starved in serum-deprived medium for 48 to 96 hours. Cells (
4 x 104) were cytocentrifuged onto glass slides and cytospin preparations were incubated for terminal deoxunucleotidyl transferasemediated dUTP nick end labeling reaction (Boehringer Mannheim Italia S.p.A., Milan, Italy) and counterstained with Hoechst. Apoptosis was quantitated by determining the percentage of terminal deoxunucleotidyl transferasemediated dUTP nick end labelingpositive cells within a field of view at a magnification of x40. A total of 20 randomly chosen fields were counted for each slide and total counts were averaged to obtain the apoptotic index.
Statistical Analysis
Differences among subject groups were assessed by ANOVA, Student's t test, Mann-Whitney test, and Fisher's exact test. A 95% confidence interval (P < 0.05) was considered significant.
| Acknowledgements |
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| Notes |
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The costs of publication of this article were defrayed in part by the payment of page charges. This article must therefore be hereby marked advertisement in accordance with 18 U.S.C. Section 1734 solely to indicate this fact.
7 A. Farsetti et al., in preparation. ![]()
8 International Union Against Cancer. TNM classification of malignant tumors. 6th ed. New York: Wiley-Liss; 2002. ![]()
Received 7/18/05; revised 12/22/05; accepted 1/ 3/06.
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