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Imaging, Diagnosis, Prognosis |
Authors' Affiliations: 1 College of Pharmacy, Ohio State University, Columbus, Ohio, 2 Department of Surgery, University of Oklahoma Health Sciences Center and Veterans Affairs Medical Center, Oklahoma City, Oklahoma, and 3 Divisions of Gastroenterology and Hepatology and Gastroenterological Surgery, Mayo Clinic College of Medicine, Rochester, Minnesota
Requests for reprints: Thomas D. Schmittgen, College of Pharmacy, Ohio State University, 500 West 12th Avenue, Columbus, OH 43210. Phone: 614-292-3456; Fax: 614-292-7766; E-mail: schmittgen.2{at}osu.edu.
| Abstract |
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Experimental Design: More than 200 precursor and mature miRNAs were profiled by real-time PCR in 43 and 28 pairs of HCC and adjacent benign liver, respectively, and in normal liver specimens.
Results: Several miRNAs including miR-199a, miR-21, and miR-301 were differentially expressed in the tumor compared with adjacent benign liver. A large number of mature and precursor miRNAs were up-regulated in the adjacent benign liver specimens that were both cirrhotic and hepatitis-positive compared with the uninfected, noncirrhotic specimens (P < 0.01). Interestingly, all of the miRNAs in this comparison had increased expression and none were decreased. The expression of 95 randomly selected mRNAs was not significantly altered in the cirrhotic and hepatitis-positive specimens, suggesting a preferential increase in the transcription of miRNA. Comparing the miRNA expression in the HCC tumors with patient's survival time revealed two groups of patients; those with predominantly lower miRNA expression and poor survival and those with predominantly higher miRNA expression and good survival (P < 0.05). A set of 19 miRNAs significantly correlated with disease outcome. A number of biological processes including cell division, mitosis, and G1-S transition were predicted to be targets of the 19 miRNAs in this group.
Conclusion: We show that a global increase in the transcription of miRNA genes occurs in cirrhotic and hepatitis-positive livers and that miRNA expression may prognosticate disease outcome in HCC.
-1-antitrypsin deficiency, or immune-related causes such as primary biliary cirrhosis and autoimmune hepatitis. In parts of Asia and sub-Saharan Africa, dietary fungal aflatoxins have a synergistic effect with chronic hepatitis in the pathogenesis of HCC (2–5). Chronic liver injury with associated inflammation leads to accelerated cycles of cell death, regeneration, and repair that ultimately lead to premature senescence of the liver. As the regenerative capacity of the liver becomes exhausted, aberrant repair processes in the context of ongoing inflammation result in the development of nodular regeneration, stromal expansion, and fibrosis, the end stage of which is called cirrhosis. Cirrhosis is a major risk factor for the development of HCC; individuals with cirrhosis have a 2% to 6% risk per year of developing HCC (6). Previous studies have identified a number of genetic and epigenetic alterations associated with cirrhosis, including allelic imbalance at multiple genetic loci, p53 mutations, promoter hypermethylation of the p16INK4a tumor suppressor gene, and telomere shortening with replicative senescence and associated chromosomal instability. The development of HCC is associated with the development of additional genetic and epigenetic alterations, coupled with telomerase activation and consequent cellular immortalization (7). Important molecules and pathways involved in hepatocarcinogenesis include cell cycle regulatory proteins such as p53, c-Myc, and cyclin D1, the Wnt/β-catenin signaling pathway, and multiple receptor tyrosine kinase growth factor ligands and receptors, including epidermal growth factor, fibroblast growth factor, hepatocyte growth factor, and vascular endothelial growth factor, which activate the mitogen-activated protein kinase and phosphoinositide-3-kinase/AKT kinase pathways (8, 9).
MicroRNA (miRNA) are endogenously expressed, small interfering RNAs, discovered during studies of Caenorhabditis elegans development (10). miRNAs are transcribed as precursor molecules that are subsequently processed into the active
21 nucleotide mature miRNA. The mature miRNA binds to the 3' untranslated region of the target mRNA through imperfect base pairing, producing translational arrest and/or degradation of the mRNA. Conceptually, miRNAs regulate gene expression in a manner similar to transcription factors. Both miRNAs and transcription factors are trans-acting factors that bind to composite cis-regulatory elements that are "hard-wired" into RNA and DNA, respectively (11). Although putative roles for the vast majority of mammalian miRNAs remain unknown, miRNAs have been implicated in a diverse number of mammalian cellular processes including insulin secretion in the pancreas (12), differentiation of adipocytes (13), and regulation of embryonic stem cell development (14).
A growing number of both direct and indirect evidence suggests a relationship between differential miRNA expression and cancer. These include miR-15a and miR-16-1 in chronic lymphocytic leukemia (15, 16), miR-143 and miR-145 in colorectal cancer (17), let-7 in lung cancer (18, 19), and miR-155 in diffuse large B cell lymphoma (20). Expression profiling has identified other cancers with differential expression of miRNAs including breast cancer (21), papillary thyroid cancer (22), and glioblastoma (23, 24). A polycistron encoding miRNAs miR-17, -18, -19a, -19b-1, and -92-1 is amplified in human B-cell lymphomas and forced expression of the polycistron along with c-myc was tumorigenic, suggesting that this group of miRNAs may function as oncogenes (25).
The purpose of this study was to profile the expression of miRNAs in clinical specimens of HCC, adjacent benign tissue, and in liver specimens from nondiseased livers and to compare the miRNA expression profiles among the patients with HCC including those with cirrhosis and hepatitis infection.
| Materials and Methods |
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Real-time PCR for mRNA expression. Real-time PCR to measure the mRNA expression of 95 genes was done using SYBR green detection and standard techniques as mentioned above. cDNA was synthesized on total RNA using random primers. PCR primers to the 95 genes were collected from our laboratory archives or those of colleagues or were randomly selected from the PrimerBank database (31). Gene expression was presented relative to 18S rRNA.
Statistics. Differences between the various groups (benign/tumor, cirrhosis/no cirrhosis, virus/nonvirus) were determined using the Student's t test. The Survival Risk Group Prediction algorithm (PAM software package) was used to develop a miRNA expression–based predictor of survival risk groups. The survival risk groups were constructed using the supervised principal component method from ref. (32). This method uses a Cox proportional hazards model to relate survival time to k "supergene" expression levels, where k is selectable by the user (usually 1-3). The supergene expression levels are the first k principal component, i.e., linear combinations of expression levels of the subset of genes that are univariately correlated with survival. In our analysis, we used the first three principal components. The significance of each gene was measured based on a univariate Cox proportional hazards regression of survival time versus the log expression level for the gene. After selecting the genes, the principal component was computed, and the k variable Cox proportional hazard regression analysis was performed. This provides a regression coefficient (weight) for each principal component. This method provides a prognostic index for a patient with a log expression profile given by a set of miRNA expression data. A high value of the prognostic index corresponds to a high value of hazard of death, and consequently, a relatively poor predicted survival. Unsupervised hierarchical cluster analysis was done for samples and genes using mean centered miRNA expression data, average linkage, and uncentered Pearson correlation as a distance.
Computational prediction of potential miRNA targets. A list of predicted targets was generated for the group of 19 coexpressed miRNAs that were identified by PAM survival analysis as strongly associated with survival of patients with HCC. A combinatorial target prediction algorithm was applied (miRgate 2.2 software suite, Actigenics/Cepheid Europe). Initially, a list of all predicted target genes which are targeted by any miRNA from that group, was generated. Secondly, this list of potential targets was analyzed using gene ontology (GO) enrichment analysis according to the total number of miRNAs that were targeting the same GO categories in order to determine the biological processes and functions that were most likely to be affected by a group of miRNAs. A short list of the three top GO categories, which are targeted by at least 80% of the miRNAs from the group, was selected. A list of 84 target genes from those top three categories was further analyzed using the Ingenuity Pathway Analysis system (IPA 5.0, Ingenuity Systems). This method of miRNA combinatorial target analysis has been described in details elsewhere (33).
| Results |
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Comparing the miRNA precursor expression in the V–C– and V+C+ groups yielded the largest number of differentially expressed miRNAs, with 50 miRNA precursors differentially expressed in the benign tissue of patients with hepatitis infection and cirrhosis compared with those patients with histologically normal livers (Supplemental Table S3; Fig. 1A
). The expression of all 50 of the miRNA precursors is increased in the V+C+ group (
2-fold, P < 0.01) and none had reduced expression. When the V+C+ benign tissues were compared with normal liver in patients without HCC, 20 miRNA precursors had increased expressions (
2-fold, P < 0.01). Twelve of the 20 miRNAs were increased in the benign tissue comparison (Supplemental Table S3; Fig. 1). These data show that the expression of a large number of miRNA precursors was increased in patients with cirrhosis and concomitant hepatitis infection.
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2-fold, P < 0.01; Fig. 1A). Comparing the V–C+ or V+C– to normal liver yielded four and two significantly changed miRNAs, respectively (Fig. 1B). These data suggest that neither hepatitis viral infection nor cirrhosis alone is sufficient to induce major changes in miRNA expression, however the combination of both viral hepatitis infection and cirrhosis significantly enhances the expression of a large number of miRNA precursors. To determine if the increase in miRNA precursor expression of the virally infected specimens had a preference for hepatitis B or hepatitis C, we compared the differences in the miRNA expression in the hepatitis B (n = 3) and hepatitis C (n = 6) samples (cirrhosis-positive group only). Comparing the miRNA expression between these groups yielded nine miRNA precursors (miR-145, -9-2, -138-1,2, -320, -33, -10a,b, -21, -146, and -220) that were differentially expressed (>2-fold increased expression; P < 0.05). For all nine miRNAs, expression in the hepatitis B–infected patients was greater than those infected with hepatitis C. These data suggest that hepatitis B is a greater contributor to the increase in expression compared with hepatitis C, although it must be noted that the sample size was small.
miRNA versus mRNA expression. Our data describe two rather unusual findings: (a) a large percentage of miRNA precursors are differentially expressed in liver tissues that were hepatitis-positive and cirrhotic, and (b) in each of these cases, the miRNA expression was increased, not a single statistically significant decrease in miRNA expression was observed. This observation could be explained by biological or technical factors. Possibilities include fundamental differences in the regulation of miRNAs compared with the regulation of mRNAs, or that the sensitive, real-time PCR used to profile miRNA gene expression biased the results in some way. To address the possibility that miRNA genes are expressed differently than mRNA in these tissues, the expression of 95 randomly selected mRNA genes was quantified in cDNA from the identical RNA used in the miRNA expression profiling study. The entire list of genes studied is presented in Supplemental Table S4. Only 3 of the 95 (3%) mRNAs were differentially expressed in the benign tissues, compared with 50 of the 182 (27%) miRNAs (
2-fold, P < 0.01; Fig. 1C). Of the differentially expressed mRNAs, two were up-regulated and one was down-regulated (Supplemental Table S4). These data suggest that transcription of miRNA genes was more predominantly increased compared with mRNA genes in liver tissues that are cirrhotic and infected with hepatitis virus.
Technical validation. The total RNA available in the archives of one of the authors (L.R. Roberts) was isolated with Trizol reagent followed by a clean-up using a Qiagen Midi column (Qiagen). Column purification has the potential of removing smaller RNAs. We determined that the expression of the 106 nucleotide U6 RNA were comparable in filtered and unfiltered RNA (data not shown). The miRNA precursor expression in RNA from normal liver purchased from Ambion (and not filtered) was comparable to that in the filtered, benign tissue (Supplemental Table S2).
The real-time PCR method that was used quantifies the miRNA precursors (28, 29) and not the mature miRNA. We and others have shown that in most cases, miRNA precursor expression correlates with the mature miRNA expression (28–30, 34–37). However, situations exist in which the precursor expression does not correlate with the mature miRNA expression (29). Although column filtration did not alter the miRNA precursor levels, column filtration did remove a large portion of the
21-nucleotide mature miRNAs (data not shown). Because the mature miRNA is the active species, we wanted to validate the expression of the miRNA precursors. RNA was isolated by the Trizol procedure from liver tissues that were available in our archives; this included 13 of the 43 specimens listed in Table 1. Total RNA was isolated from another 13 liver tissues that were not among the 43 profiled for miRNA precursor expression (patient data are presented in Supplemental Table S1). Ten miRNAs were selected from the 50 miRNA precursors that significantly differed among the V–C– and V+C+ liver tissues (Fig. 1A). The expression of these 10 miRNAs was measured in the 26 benign liver specimens using a real-time PCR assay for mature miRNA (38). Like the miRNA precursors, the mature miRNA expression was increased in the V+C+ specimens compared with the V–C– specimens, however, only 6 of the 10 comparisons were statistically significant (Fig. 2
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miRNA expression in HCC tissues. The expression of 196 mature miRNAs was compared in 28 specimens of HCC and adjacent benign tissues and in 6 normal liver tissues using real-time PCR. The raw data from the expression profiling is included in Supplemental Table S3. The mature miRNA expression in the HCC was compared with the adjacent benign or the normal liver tissue. Differentially expressed miRNA were defined as those having a 2-fold or greater change in gene expression and P < 0.05 (Student's t test). Sixteen miRNAs were differentially expressed when the tumor data was compared with adjacent benign tissue (Table 2 ). The mature miRNA expression data is presented as a heatmap (Supplemental Fig. S1). Hierarchical clustering yielded four clusters. Clusters 3 and 4 contained only tumor, cluster 1 contained only benign tissue, and cluster 2 contained all benign plus two tumors.
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| Discussion |
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Other interesting observations from our study is that the increased miRNA expression in cirrhotic and hepatitis-positive liver specimens is modest in magnitude (2- to 3-fold), consistent across most samples, and highly statistically significant (Supplemental Table S3). The 2- to 3-fold global increase in miRNA expression due to cellular stress from folate deficiency (39) is comparable in magnitude to that reported here. The ability to distinguish modest changes in gene expression was likely facilitated by the fact that we employed sensitive, real-time PCR to profile the miRNA expression. The biological significance of a 2- to 3-fold change in miRNA expression is unknown. Because one miRNA may regulate scores of target genes and one mRNA may be regulated by multiple miRNAs (40), a 2- to 3-fold change in the expression of multiple miRNAs may profoundly alter the regulation of downstream genes.
The only other study to profile miRNA expression in HCC, to our knowledge, is that of Murakami et al. (41). Of the seven miRNAs reported as differentially expressed in HCC by Murakami et al. (41), three were differentially expressed in our study (Mir-199a, Mir-199a*, and Mir-18; Table 2). The number of differentially expressed miRNAs in the entire group of HCC specimens reported in Table 2 is relatively small compared with the large number of differentially expressed miRNAs identified by expression profiling in other cancers (15, 21, 24, 37, 42–44). However, three of the miRNAs with increased expression here were increased in other solid tumors including Mir-21 in glioblastoma (23), breast cancer (21) and pancreas cancer (30); Mir-221 in pancreas (30, 45) and thyroid cancer (22) and Mir-301 in pancreas cancer (30).
Comparing the miRNA expression within the patients with HCC, two different groups of patients emerged: those with reduced miRNA expression and poor survival and those with increased miRNA expression and good survival (Fig. 3; Supplemental Fig. S1). A set of 19 miRNA genes significantly correlated with disease outcome (Fig. 3; Supplemental Table S5). Many of the predicted targets of these miRNAs regulate cell division, mitosis, and G1-S transition (Table 4). In addition to these theoretical issues, it may be possible to prognosticate patients with HCC based on their miRNA expression, similar to what was done for patients with lung cancer (19, 37). Additional testing of the prognostic value of this miRNA expression signature needs to be done on an independent set of samples.
In summary, we have identified a number of miRNAs that are differentially expressed in HCC. Our data also suggest that important changes in miRNA expression occur during the development of chronic viral hepatitis and cirrhosis, and that the combination of viral hepatitis and cirrhosis is significantly more likely to result in changes in miRNA expression. Subsequent changes in miRNA expression in the transition from cirrhosis to HCC are much less marked. It is possible that most of the miRNA changes that occur during carcinogenesis occur early, so that by the stage of replicative senescence, characteristic of cirrhosis, the key miRNA changes that may predispose to carcinogenesis have already occurred. These miRNA changes may reflect and/or mediate a preneoplastic "field effect" in individuals with cirrhosis and hepatitis who are at an increased risk of the development of HCC. Studies of mRNA gene expression analysis during the process of liver carcinogenesis show significant changes in mRNA expression, both in the process of development of cirrhosis and in the transition from cirrhosis to HCC. The results of our miRNA study are in contrast with this and may suggest fundamental differences in the regulation of miRNAs and mRNAs in carcinogenesis that are worthy of further study.
| Acknowledgments |
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| Footnotes |
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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.
Note: Supplementary data for this article are available at Clinical Cancer Research Online (http://clincancerres.aacrjournals.org/).
Received 3/ 5/07; revised 8/10/07; accepted 9/27/07.
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