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Ambion, Inc., Austin, Texas 78744-1832, USA
Reprint request to: Emmanuel Labourier, Ambion, Inc., 2130 Woodward Street, Austin, TX 78744-1832, USA; e-mail: elabourier{at}ambion.com; fax: (512) 651-0201.
| ABSTRACT |
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Keywords: microRNA; miRNA; gene expression profile; oligonucleotide microarray; poly(A) polymerase
| INTRODUCTION |
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Biochemical and bioinformatics approaches have identified several hundred genes encoding miRNAs in plants, Caenorhabditis elegans, Drosophila, and mammals. As with protein-coding genes, a key to understanding how miRNAs are functioning is to determine when and where they are expressed. Northern blots are commonly used for miRNA analysis, and interesting developmental or tissue-specific miRNA expression patterns have been identified (Lagos-Quintana et al. 2002
; Houbaviy et al. 2003
; Lim et al. 2003
; Sempere et al. 2004
). A variety of improvements or adaptation to existing technologies have also been tailored to small RNA detection. These include locked nucleic-acidmodified probes for Northern blot (Valoczi et al. 2004
), oligonucleotide filter macroarrays (Krichevsky et al. 2003
; Sioud and Rosok 2004
), RNA oligonucleotide ligation followed by RT-PCR amplification (Grad et al. 2003
), fluorescence resonance energy transfer (Allawi et al. 2004
), signal-amplifying ribozymes (Hartig et al. 2004
), primer extension (Zeng and Cullen 2003
), nuclease protection (Overhoff et al. 2004
), or direct real-time PCR amplification for detection of precursor miRNAs (Schmittgen et al. 2004
). In addition, a number of microarray-based methods have recently been developed (Babak et al. 2004
; Barad et al. 2004
; Liu et al. 2004
; Miska et al. 2004
; Nelson et al. 2004
; Sun et al. 2004
; Thomson et al. 2004
; Baskerville and Bartel 2005
).
Conceptually, microarrays offer an ideal method for high-throughput, multiplex miRNA gene expression analyses in tissues and cells. However, miRNAs present unique challenges that make them more difficult to analyze than mRNAs. The inherent small size of miRNAs provides very little sequence for appending label or for designing probes. Furthermore, miRNAs represent only a small fraction (~0.01%) of the mass of a total RNA sample, making it important to label them with the highest specific activity possible. Finally, miRNAs exist in three forms, short mature miRNA, hairpin pre-miRNA, and long pri-miRNA (Lee et al. 2003
, 2004
; Cai et al. 2004
; Rodriguez et al. 2004
). Since only the mature miRNA is active, it is important to eliminate array signal from the pre-miRNAs and pri-miRNAs. These factors conspire to make it difficult to detect miRNAs using standard array procedures and are not completely addressed by the procedures that have thus far been developed for miRNA array analysis. To eliminate the potential bias associated with random labeling or priming (Babak et al. 2004
; Liu et al. 2004
; Sun et al. 2004
), detection of pre-miRNA and pri-miRNA sequences (Babak et al. 2004
; Liu et al. 2004
; Nelson et al. 2004
; Sun et al. 2004
), and PCR-based amplification or ligation strategies (Barad et al. 2004
; Miska et al. 2004
; Thomson et al. 2004
; Baskerville and Bartel 2005
), we have developed a method allowing direct labeling and hybridization of the mature and active miRNAs. The microarray system was evaluated using both artificial and real samples to determine its sensitivity, dynamic range, accuracy, and reproducibility. Finally, we used the system to analyze 26 human tissue samples, which enabled classification of normal tissues based on their miRNA expression profiles.
| RESULTS |
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To optimize the miRNA probe design, fluorescently labeled miRNAs from human thymus, lung, and brain were hybridized to series of immobilized oligonucleotide probes with regions complementary to eight different miRNAs and various 5' and 3' linker lengths and sequences connecting to the attachment moiety. A matrix of hybridization and washing time, temperature, and buffer compositions was used to identify the probe design and protocol that (1) maximized signal without creating significant signal from negative control elements spotted on the same microarrays and (2) provided relative miRNA abundance data congruent to Northern blot data (data not shown). This optimal probe design and array protocol (Fig. 1
; see also Materials and Methods) was used for all subsequent studies.
Microarray performances
The overall performance of this new microarray system was evaluated by measuring several key parameters such as consistency, accuracy/precision, sensitivity/limit of detection, and robustness/reproducibility. First, we compared two miRNA populations independently purified from the same tissue and labeled either with Cy5 or Cy3 (self vs. self analysis). Analysis of the mean signal in each channel showed equivalent labeling between both dyes (R2 = 0.992) and consistency of the intensities (99.6% correlation) (Fig. 2A
). Although microarrays are generally used to measure relative expression levels based on a given reference, we next wanted to determine how quantitative the miRNA microarray system was. Two artificial populations of 17 synthetic miRNAs mixed at different ratios were created, labeled with Cy5 or Cy3, and hybridized on the same array in triplicate (Fig. 2B
). The Log2(Normalized Ratio) was measured for each miRNA feature and was used to calculate the relative representation of each miRNA in the two populations. The correlation between the theoretical and measured values was 84%. The average difference between the theoretical and measured values was 3.5%with a maximum of 15%, indicating that the microarray system can accurately report variations greater than ~20%.
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To validate the profiling data, new total RNA samples were isolated from 10 randomly selected tissues and miRNA expression levels were analyzed by independent detection methods. Both Northern blot (let-7C) and hybridization in solution (miR-200B) confirmed differential expression of individual miRNAs across tissues as well as differences in relative miRNA abundance within the same tissue (Fig. 7
). miR-200B could not be detected in adrenal gland, skeletal muscle, and spleen. Tissues such as kidney, prostate, or thymus all have high expression levels of let-7C and miR- 200B, while liver poorly expresses these two miRNAs. Colon has higher expression levels of miR-200B but lower levels of let-7C relative to prostate. The same result was obtained by direct comparison between these two tissues (see Fig. 3B
). Differential miRNA expression across tissues was also confirmed by pair analysis of bladder, lung, and uterus samples (see Fig. 4
) or by testing other miRNAs, either broadly expressed across tissues (e.g., miR-16 and -22) or tissue specific (e.g., miR-124) (see Supplemental Fig. 2
). Collectively, these data show that the miRNA microarray system described here is a powerful and robust tool for high-throughput study of miRNA expression levels and comparative analysis of miRNA expression profiles.
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| DISCUSSION |
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Most existing array-based miRNA profiling technologies use total RNA or fractions enriched in small RNA by microfiltration or reversed-phase matrices. These procedures then rely on random priming, PCR, or ligation for a labeling step prior to hybridization to immobilized probes. A key improvement in our system was to develop a rapid electrophoretic gel fractionation method that removes the large excess of unrelated RNA species and precursor miRNA sequences that can interfere with the array performance. This purification step corresponds to an enrichment by ~10,000-fold without affecting the relative miRNA abundance in individual samples (Fig. 4
). The resulting fraction is ideal for efficient array labeling as well as other applications, such as cloning or enzymatic amplification (data not shown). A second improvement was to develop a method for homogenous labeling of the miRNA fraction with the highest specific activity without jeopardizing its capacity to hybridize to specific probes on a planar array. Direct enzymatic tailing with PAP and amine-modified NTP results in a homogenous tailed miRNA population that can subsequently be labeled either directly with any amine-reactive molecules, e.g., Cy or Alexa dyes, or indirectly using NHSbiotin and streptavidin coupled to fluorescent moieties (data not shown). Further, the labeled miRNA fraction is compatible with microarrays created using different immobilization chemistries, such as aldehyde, epoxy, poly-L-lysine or three-dimensional matrices glass slides (data not shown). Northern blot, solution hybridization, and microarray experiments clearly demonstrate that the combination of these two improvements does not introduce any bias in the profiling analysis, faithfully conserves miRNA representation, and allows accurate profiling at lower sample input (Figs. 4
, 5
, 7
).
The miRNA microarray system was used to analyze a variety of different human adult tissues. We found that miRNA expression varies dramatically between tissues. Differential miRNA expression across tissues was also confirmed by direct comparison between two tissues and by independent detection methods (Figs. 3B
, 4
, 7
). In contrast, miRNA profiles of identical tissues from multiple donors are very similar (data not shown). Furthermore, most miRNA genes likely to be processed from the same polycistronic primary transcripts have highly correlated expression patterns. As previously reported (Baskerville and Bartel 2005
), correlation coefficients for pairs of miRNA genes such as miR-24 and -27a, miR-15a and -16, or miR-1 and -133 are between 0.74 and 0.91, indicating that miRNA expression is tightly regulated within individual tissues.
The miRNA expression profiles from different tissues revealed more than 50 miRNAs that are expressed primarily in one or a few related tissues (see Supplemental Table 1). Among these tissue-specific miRNAs was a set that had been previously reported in mouse and/or human: miR-1 in heart and muscle, miR-9, -124, -125, and -128 in brain, miR-122A in liver, miR-133A and -206 in muscle, miR-142 and -150 in spleen, or miR-148 in liver and stomach (Lagos-Quintana et al. 2002
; Krichevsky et al. 2003
; Babak et al. 2004
; Sempere et al. 2004
; Baskerville and Bartel 2005
). In addition, miRNA expression profiles in several of the tissues assayed here had not been previously reported. The depth of our study (162 miRNAs, 26 tissues) allowed us to complete the human miRNA expression map and to identify new miRNAs with unexpected expression patterns. For example, we found that miR-125 is in fact more expressed in cervix, ovary, and uterus than in brain, miR-142 and -150 are not only expressed in spleen but are also very abundant in lymph node, ovary or, thymus, and miR-148 was detected in pancreas and ovary in addition to liver and stomach. miR- 181A was found highly expressed in brain, placenta, spleen, and thymus, while miR-205 was identified in breast, prostate, and thymus. About 20 miRNAs, such as miR-126-AS, -143, -145, -189, or -321, were found highly expressed in one or several tissues from the digestive tract cluster. Strikingly, the tissues that showed the highest restricted enrichment in individual miRNAs are brain and the cervix/uterus/ovary cluster. This observation suggests that specific miRNAs might play a critical role in brain and female reproductive system development and/or homeostasis.
Hierarchical clustering of the tissues based on their respective miRNA profiles showed that tissues are characterized by unique miRNA expression profiles. Together with the tissue specificity of several miRNAs, this observation is consistent with the concept that miRNAs are important components of tissue development, differentiation, and maintenance of differentiation in adults. Interestingly, related tissues had similar miRNA profiles, as would be predicted for global regulators of tissue differentiation. One tantalizing hypothesis is that miRNAs might directly regulate the expression levels of many of the genes that distinguish these different adult tissues or clusters of adult tissues.
Categorizing miRNAs based on their coregulation or identifying miRNAs that are differentially expressed between different tissues or cell samples will undoubtedly identify interesting miRNAs that deserve closer scrutiny. Further questions are whether these miRNA signatures are affected in disease states and, if so, at what stage. A direct comparison between a large panel of human tumors and their corresponding normal adjacent tissues revealed several miRNAs that might directly contribute to oncogenesis (K. Keiger, J. Shelton, D. Brown, E. Labourier, in prep.). This approach, combined with genetic studies in C. elegans and functional studies in human cultured cells, recently helped identify let-7 miRNA as a regulator of RAS oncogene expression and as a potential tumor suppressor disrupted in lung tumors (Johnson et al. 2005
). Further, our microarray technology enables accurate miRNA expression profiling in fixed tissues (P. Powers, R. Conrad, K. Keiger, J. Shelton, D. Brown, E. Labourier, in prep.), providing access to a vast amount of information from archived clinical samples. If miRNAs are indeed involved in oncogenesis, inflammatory response, or viral infection, comparative miRNA expression studies in disease samples will certainly reveal novel therapeutic targets and diagnostic markers.
| MATERIALS AND METHODS |
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RNA preparation
Total RNA isolation and small RNA enrichment procedure were performed with the mirVana miRNA Isolation Kit (Ambion) according to the manufacturers instructions. For miRNA expression profiling in normal human tissues, miRNA certified First- Choice Total RNA (Ambion) were used. To isolate miRNA fractions, total RNA samples were fractionated and cleaned up with the flashPAGE Fractionator and reagents (Ambion) per the manufacturers recommendation. Briefly, 120 µg of each RNA sample were loaded onto the top of a column filled with a denaturing acrylamide gel matrix and fractionated by applying an electrical current. A dye was loaded with the total RNA sample to track RNAs that are ~40 nt in size. Electrophoresis was stopped when the dye reached the bottom of the column, and miRNAs were recovered from the bottom buffer chamber using a glass fiber filter-based cleaning procedure (flashPAGE Reaction Cleanup Kit, Ambion). Approximately 1 ng of miRNA was recovered per 10 µg of total RNA.
miRNA labeling and cleanup
Chemically synthesized oligoribonucleotides (Ambion), purified miRNAs, or fractions enriched in small RNAs were labeled with the mirVana miRNA Labeling Kit (Ambion) and amine-reactive dyes as recommended by the manufacturer. Poly(A) polymerase and a mixture of unmodified and amine-modified nucleotides were first used to append a poly-nucleotide tail to the 3' end of each miRNA. The amine-modified miRNAs were then cleaned up and coupled to NHS-ester modified Cy5 or Cy3 dyes (Amersham Bioscience). Unincorporated dyes were removed with a second glass fiber filter-based cleaning procedure.
Microarray hybridization and data analysis
A 3x miRNA Hybridization Buffer (Ambion) was added to the fluorescently labeled miRNAs and the solution was heated at 95°C for 3 min. Slides were hybridized 1216 h at 42°C in sealed cassettes using a water bath. Following hybridization, the slides were washed and dried prior to a high-resolution scan on a GenePix 4000B Array Scanner (Axon). Each element was located and analyzed using the GenePix Pro 5.0 software package (Axon). Data were filtered for quality and significance using the Longhorn Array Database (Killion et al. 2003
). Filters were based on several data quality standards, including minimum intensity and pixel consistency. All data used for analysis had a signal-to-noise ratio >5, an average sum intensity 50% higher than that of the negative control spots, and a regression ratio >0.5. Data were normalized globally per array such that the average LogRatio was 0 after normalization. Hierarchical clustering was performed by Average Linkage using uncentered Pearson correlation (Eisen et al. 1998
).
Microarray data validation
miRNA expression levels in total RNA samples were measured by Northern blot (25 µg) or solution hybridization (1 µg) with the mirVana miRNA Detection Kit (Ambion) according to the manufacturers instructions. DNA or RNA probes were labeled and purified with the mirVana Probe & Marker Kit (Ambion) and [
-32P]ATP at 6000 Ci/mmol (PerkinElmer). For Northern analyses, RNA samples were resolved on denaturing 15% polyacrylamide gels and electroblotted on BrightStar-Plus Nylon membranes (Ambion). Membranes were blocked in UltraHyb-oligo Hybridization Buffer (Ambion) for at least 1 h at 65°C, hybridized overnight at 42°C with the appropriate probe, and washed three times with NorthernMax Low Stringency Wash Buffer (Ambion) for 5 min at room temperature followed by 15 min at 42°C. Results were quantified on a PhosphorImager Storm 860 (Amersham Bioscience).
| SUPPLEMENTARY MATERIAL |
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| ACKNOWLEDGMENTS |
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| Footnotes |
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Article published online ahead of print. Article and publication date are at http://www.rnajournal.org/cgi/doi/10.1261/rna.2610405.
Received April 6, 2005; accepted June 3, 2005.
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