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Plant Physiology 138:585-590 (2005) © 2005 American Society of Plant Biologists High-Throughput RNA Isolation Technologies. New Tools for High-Resolution Gene Expression Profiling in Plant Systems1Department of Biology, Duke University, Durham, North Carolina 27708
The complete genome sequences of two representative species of flowering plants, the monocot rice (Oryza sativa) and the eudicot Arabidopsis (Arabidopsis thaliana), provide us with a new opportunity to understand developmental and physiological events at the genome level (Arabidopsis Genome Initiative, 2000 One of the biggest challenges in studying global gene regulation in multicellular organisms is the heterogeneity of gene expression. Each organ is unique at the level of its tissues, cells, and gene expression profiles. In addition, there is growing evidence that responses to environmental stimuli or developmental signals occur differentially at the cell or tissue level. Thus, to better understand gene regulatory circuits, gene expression should be analyzed at a single cell or tissue type. Because the quantity of RNA, protein, or metabolites obtained from a single cell is very small, the development of sophisticated technologies is necessary. We need new techniques to efficiently isolate molecules from single cells and the equipment to detect and quantify small amounts of molecules.
Improvements in RNA amplification techniques have made it possible to analyze small amounts of mRNA from very little starting material using either PCR amplification of primer-tagged cDNA (Hertzberg et al., 2001 Another challenging problem of single-cell transcript profiling is the efficient and precise dissection of target cells from plant tissue. The presence of cell walls and large vacuoles of plant cells make the dissection of single cells difficult. However, several research groups have recently profiled gene expression at the single-cell level using various methods. Their approaches are summarized below.
Micropipetting has been used to directly extract the contents of cells using microcapillaries or pipettes (Karrer et al., 1995
Laser-Capture Microdissection Although micropipetting is a straightforward method for extracting RNA from intact tissues, its application is limited in that internal cells are not easily accessed with microcapillaries or pipettes, and there is no good way to visually supervise the extraction due to the limited depth of field of most microscopes. To isolate RNA from cells residing in anatomically complex tissues, a special dissecting tool for visualizing the target cells is essential.
Laser-capture microdissection (LCM) has been developed and used in gene expression profiling of animal cells (Emmert-Buck et al., 1996
The LCM technique has at least two advantages: (1) it minimizes the extensive manipulation of tissues that could change the RNA profile, and (2) as tissues are fixed in large scale simultaneously, effects of collection time on experiments with important temporal components, such as the circadian clock, are reduced. However, in most cases, LCM is very labor intensive during the dissection step and is tricky for the isolation of small cells or tissues with few cell layers. Nakazono et al. (2003)
For the quick and accurate isolation of RNA from small meristematic cells, protoplasting and sorting techniques have been developed and then used to generate a global expression map for Arabidopsis roots (Fig. 1C; Birnbaum et al., 2003 Of the 10,492 genes that are detected in roots above a conservative threshold, 5,717 (approximately 54%) were differentially expressed in at least one subzone and had at least a 4-fold difference in expression level. This number is remarkably higher than in the other analyses discussed above, even considering the differences in analysis methods and types of microarrays used. Hierarchical clustering identified eight regions in which sets of genes are differentially expressed, and four regions (localized expression domains) had an enrichment of hormone-signaling genes (i.e. auxin, jasmonic acid, and gibberellic acid).
Although there were general concerns about the effect of protoplasting on transcriptional profiles, the number of genes whose expression changed was small (R2 > 0.9 for three replicates of the whole root versus the protoplasted root; Birnbaum et al., 2003 By knowing the spatial expression patterns of most of the genes in the Arabidopsis genome, it is now possible to facilitate the positional cloning of root mutants according to their digital in situ patterns. Overlapping expression patterns of close homologs may also allow for more informed reverse genetic approaches to discover genes with potentially redundant functions. In addition to these applications, the digital in situ can serve as a powerful tool to predict sets of tissue-specific genes. In order to identify cell type-specific transcription factors, we generated promoter::GFP transgenic plants for candidate genes based on the enrichment of transcripts in specific cells. In these experiments, GFP expression patterns showed a remarkable correlation to the digital in situ data, and we could generate new cell type-specific GFP lines for further transcriptional profiling (J.-Y. Lee, J. Colinas, J.Y. Wang, and P.N. Benfey, unpublished data).
One of the daunting tasks in profiling root cells is the characterization of transcripts in the quiescent center (QC). In Arabidopsis, there are only four to seven QC cells in the meristem. To understand the gene expression activity in root stem cells, transcripts of QC cells expressing the AGL42::GFP reporter were profiled as described above (Nawy et al., 2005 Although protoplasting and sorting is a very time-efficient and highly reproducible technique, it has only been used so far in roots. How well green parts of the plant may be sorted remains to be tested. Even though the generation of GFP-expressing lines is quite difficult for many plant species, Arabidopsis is easy to transform, and there are many publicly available collections of GFP lines (i.e. http://www.plantsci.cam.ac.uk/Haseloff/Home.html; http://enhancertraps.bio.upenn.edu).
The technologies introduced above may be applied, to a greater or lesser extent, to several species and various cell types. However, transcriptional profiling has been performed on single cells or tissue types that are easier to isolate, such as pollen, guard cells, xylem, and cambium.
Mature pollen was physically separated from flowers (Honys and Twell, 2003
Guard cells and mesophyll cells were isolated from mature leaves by protoplasting epidermal peels and chopped leaves, respectively. Highly pure populations of each cell type (99% purity for guard cells) were obtained by multiple iterations of filtering and washing the protoplasts through nylon mesh (with a pore size of 10 µm for guard cells and 30 µm for mesophyll cells). Their gene expression profiles were analyzed on the AGA microarray with and without treatment with abscisic acid (ABA; Leonhardt et al., 2004
Zinnia is an excellent system for studying xylem differentiation in vitro. Mesophyll cells isolated from leaves are placed in liquid culture and supplied with auxin and cytokinin. Differentiated mesophyll cells will undergo transdifferentiation into tracheary elements. Time-course expression profiling during transdifferentiation was reported by two research groups (Demura et al., 2002
Due to technical difficulties, the molecular mechanisms of secondary growth have remained largely uncharacterized. However, EST sequencing and tools for global transcriptional profiling have recently shed light on the processes that are characteristic of trees. Schrader et al. (2004)
The three technologies described above are summarized in Table I. Each method has both advantages and disadvantages in terms of efficiency and applicability. Results of experimental technology, however, have added considerably to our understanding of gene regulation at the cellular level, and they will certainly become more widely used in the near future.
The importance of cell-level transcriptional profiling cannot be overemphasized, as the study of ABA responses in guard cells demonstrates (Leonhardt et al., 2004
Root cell profiling has clearly demonstrated how differently gene expression may be regulated in each tissue and between developmental stages (Birnbaum et al., 2003
The accumulation of genome-level data makes the goal of building gene regulatory networks in plants much more attainable (for stress responses, see the review in Chen and Zhu, 2004
Combining the data sets from several cell and tissue types under well-designed experimental conditions, developmental and physiological pathways in the whole organism at a systems level can be identified (Pennisi, 2003
We thank Juliette Colinas, Hongchang Cui, and Jean Wang for critical reading of the manuscript and comments. Received February 22, 2005; returned for revision April 15, 2005; accepted April 15, 2005.
1 This work was supported by the National Science Foundation AT2010 project (grant no. 0209754). www.plantphysiol.org/cgi/doi/10.1104/pp.105.061812. * Corresponding author; e-mail philip.benfey{at}duke.edu; fax 9196138177.
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