- Open Access
Transcriptome profiling of Saccharomyces cerevisiae mutants lacking C2H2 zinc finger proteins
© Mao et al.; licensee BioMed Central Ltd. 2008
- Published: 20 March 2008
The budding yeast Saccharomyces cerevisiae is a eukaryotic organism with extensive genetic redundancy. Large-scale gene deletion analysis has shown that over 80% of the ~6200 predicted genes are nonessential and that the functions of 30% of all ORFs remain unclassified, implying that yeast cells can tolerate deletion of a substantial number of individual genes. For example, a class of zinc finger proteins containing C2H2 zinc fingers in tandem arrays of two or three is predicted to be transcription factors; however, seven of the thirty-one predicted genes of this class are nonessential, and their functions are poorly understood. In this study we completed a transcriptomic profiling of three mutants lacking C2H2 zinc finger proteins, ypr013cΔ, ypr015cΔ and ypr013cΔypr015cΔ.
Gene expression patterns were remarkably different between wild type and the mutants. The results indicate altered expression of 79 genes in ypr013 cΔ, 185 genes in ypr015 cΔ and 426 genes in the double mutant when compared with that of the wild type strain. More than 80% of the alterations in the double mutants were not observed in either one of the single deletion mutants. Functional categorization based on Munich Information Center for Protein Sequences (MIPS) revealed up-regulation of genes related to transcription and down-regulation of genes involving cell rescue and defense, suggesting a decreased response to stress conditions. Genes related to cell cycle and DNA processing whose expression was affected by single or double deletions were also identified.
Our results suggest that microarray analysis can define the biological roles of zinc finger proteins with unknown functions and identify target genes that are regulated by these putative transcriptional factors. These findings also suggest that both YPR013C and YPR015C have biological processes in common, in addition to their own regulatory pathways.
- Double Mutant
- Zinc Finger Protein
- Common Gene
- Nonessential Gene
- Double Deletion
The budding yeast, Saccharomyces cerevisiae, has been an excellent eukaryotic model system for understanding basic cellular processes and metabolic pathways . S. cerevisiae was the first eukaryotic genome for which the genome sequence was reported . Approximately 6200 ORFs were identified; however, over 30% of the genes remain functionally unclassified. Furthermore, large-scale gene deletion analysis has shown that over 80% of the ~6200 yeast genes are nonessential, implying that many genes and pathways in this organism are functionally redundant [3, 4].
Zinc finger proteins (Zfp) represent the largest and most diverse superfamily of nucleic acid binding proteins in eukaryotes. These proteins participate in a variety of cellular activities, including development, differentiation, cell cycle, and tumor suppression. It has been estimated that up to 1% of the genes in the human genome may encode proteins with zinc finger domains . In the human brain alone, 133 species of C2H2 type zinc finger cDNAs have been identified [6–8]. Currently, ˜ 31 C2H2 zinc finger proteins have been reported and/or predicted to be transcriptional factors in yeast [9, 10]. The functions of 24 zinc finger proteins have been extensively studied; however, the remaining seven genes (YER130C, YGR067C, YML081W, YPL230W, YPR013C, YPR015C and YPR022C) are nonessential with little or unknown biological functions (http://www.yeastgenome.org). YPR015C was recently identified as one of 100 novel, weakly expressed cell cycle-regulated genes when yeast were grown in a fermentor using minimum medium, indicating that some of the transcriptional factors may be not activated in rich medium . Systematic genetic analysis revealed a synthetic lethal interaction between CTF4 and YPR015C, leading to an impairment of POL II transcription , suggesting that two genes may be involved in the same essential pathway. Limited information pertinent to nonessential genes exists in current scientific literature.
The S. cerevisiae deletion library contains deletions of all 4700 nonessential genes . These mutants provide a valuable resource for genome-wide functional analyses. Transcriptomic analysis permits the simultaneous profiling of gene expression of thousands of genes and the identification of target genes regulated by specific gene of interest via mutation. We chose to study two non-essential genes, YPR013C and YPR015C, which are located on the same chromosome (chr XVI). These genes encode C2H2 zinc finger proteins with two Zfs in a tandem array, four identical stretches, and a conserved linker . We examined the gene expression patterns of the two single deletion mutants, as well as a double mutant harboring both these gene deletions. It is our objective to understand how transcriptional regulation is affected by these particular zinc finger proteins, and to identify common features among various pathways of transcriptional regulation.
To investigate the biological roles of the two C2H2 zinc finger proteins, we chose to examine the effect of the two gene deletion on overall gene expression in the mutants. Microarray analyses of single mutant ypr013c Δ and ypr015c Δ macrodissect the target genes or regulatory pathways for those particular zinc finger proteins and the synergistic effect of the deletion of both Zf motifs by profiling of the double mutant ypr013c Δypr015c Δ.
Identification of differentially expressed genes among two different single mutants and a double mutant
Overlapped up-regulated gene list with fold change and p-value among the double mutant and single mutants.
Overlapping down-regulated gene list with fold change and p-value among the double mutant and single mutants.
Confirmation of array results by real-time PCR
To validate the breadth of fold differences of microarray results, several ORFs were verified by real-time PCR (Figure 1). One of selected ORFs was YKL209C, which encodes the mitochondrial malic enzyme involved in sugar metabolism and was highly up-regulated (~ 20 fold) in all mutants. YLL021W encoding the spindle pole antigen and YBR215W involved in cell-cycle regulation were up-regulated only in the ypr015c Δ mutant (~ 2 fold). YNL007C, which is also involved in cell cycle regulation, was down-regulated in both single mutants (~ 2-3 fold), while YML027W also a cell cycle regulated gene was down-regulated in ypr015c Δ mutant alone (~ 2 fold). As shown in Figure 1, the expression patterns produced by real time PCR were similar with that of microarray analysis. Hence, the microarray findings were validated.
Functional categories of the significant genes
Distribution of differentially expressed genes among the single mutants and the double mutants according to MIPS functional categories. Some of the genes are assigned to more than one functional category by MIPS.
Protein with Binding
Cell Cycle & DNA process
Cell Rescue, Defense, Virulence
It is not unexpected that zinc finger protein deletions trigger an extensive altered expression of ~ 9% of protein encoding genes. As stated earlier, these proteins participate in a variety of cellular activities, including transcriptional control, development, differentiation, cell cycle and tumor suppression [6–8]. Ho et al identified six interactions between Ypr015cp and proteins in cell cycle regulation, cell rescue, metabolism by Affinity Capture-MS ; and Ptacek et al, using proteome chip technology, revealed 13 biochemical interactions in which Ypr013cp is involved . Our findings are consistent with these data although determined using microarray analyses. Further study will be required to identify the promoters of target genes for Ypr013cp and Ypr015cp by CHIP on chip assay .
We analyzed transcriptomic profiles in mutants lacking C2H2 zinc finger proteins by a combination of HCA and systematic functional analysis. Our data reveal that a single or a double deletion of YPR013C and YPR015C produced significant alteration of gene expression. The changes of gene expression induced by a double mutation, however, were more extensive, which may indicate synergistic effects on transcriptional regulation. Significant changes in functional categories were related to transcription, cell cycle regulation, and cell rescue. Our microarray results have provided the first genome-wide transcriptomic profiling to reveal the functional roles of two putative C2H2 zinc finger proteins.
Yeast strains and plasmid
Isogenic S. cerevisiae wild type (KC 4023, same as BY 4741, MAT a his3 Δ1 leu2 Δ ura3 Δ met15 Δ), ypr013c Δ, ypr015c Δ and ypr013c Δ ypr015c Δ were used in this study. The strains ypr013c Δ and ypr015c Δ are MAT a yeast deletion mutants, each carrying a gene deletion linked to a kanamycin-resistance marker kanMX that confers resistance to the antibiotic geneticin (G418). Wild type and single mutant strains were obtained from the Mississippi Functional Genomic Network Core facility. The double mutant was constructed by a PCR mediated gene disruption method . Plasmid p4339 (pCRII-TOPO::natRMX4) serves as a DNA template to amplify the natRMX4 cassette required for PCR-mediated integration. Briefly, we used “fusion” PCR primers that contain 22 bp at their 3’ end, homologous to sequenced 5’ and 3’ of the natRMX4 cassette and 45 bp of either the 5’ or 3’end of the gene of interest. ypr013c Δ and ypr015c Δ were transformed with NATR-ypr015c or NATR-ypr013c fusion PCR products, respectively. Transformants were selected on YPD+G418 +clonNAT medium. Double mutants were confirmed by PCR (data not shown). All strains were grown to early log phase (1-2 X 10 6 cells/ml) in YPD (1% yeast extract, 2% peptone, 2% glucose), then harvested for RNA preparation. Plasmid p4339 was kindly provided by the Mississippi Functional Genomic Network Core facility.
Total RNA was extracted from wild type, ypr013c Δ, ypr015cΔ and ypr013cΔ ypr015c Δ cultures grown to early log phase using TRIzol reagent according to the manufacture's instructions. The quality and quantity of RNA were measured by an Agilent 2100 bioanalyzer (Agilent, Palo Alto, CA). cRNA was synthesized by using a low-RNA-input fluorescent linear amplification kit (Agilent Technologies). Cy5 or Cy3 labeled cRNA was purified with the RNeasy MinElute kit (Qiagen, Valencia, CA, USA) and hybridized to yeast 60-mer oligonucleotide arrays according to the manufacturer's instruction (G4140B, Yeast V2, Agilent Technologies). Array slides were then scanned at 10Μm resolution with two-line averaging using an Axon GenePix 4200A scanner and GenePix 6.0 software. Microarrays were done in two (single mutants) or four (double mutants) replicate experiments, including both dye-swap technical replicates or/and biological replicates.
Image and gene expression data analysis
Statistical analysis was done with Global locally weighted scatter-plot smoothing (LOWESS), Dye swap and ratio-based normalization. Scatter plot was used to identify the relationship between the two dyes and to check the hybridization quality. Log2 R is plotted against log2 G. Scatter plot is useful in early stage of analysis as it can help to determine whether a linear regression model is appropriate. A correlation between the variables results in the clustering of data points along a line. MA plot was also used to see the log-ratios and intensity-dependent effects at the same time. LOWESS regression, or locally weighted least squares regression, is a technique for fitting a smoothing curve to a dataset. It assumes that the dye bias appears to be dependent on spot intensity. Treatment and control channels are reversed in order to reduce the dye bias. Red and green dye intensity ratio is computed by:
log(R/G) -> log(R/G) – c(A)
where c(A) is the Lowess fit to the log(R/G) vs log(sqrt(R*G)) plot. Genes in Ypr013CΔ or Ypro015CΔ single mutant and double mutants (Ypr013CΔ Ypro015CΔ) were filtered based on flags present in four out of eight samples. Significant genes were selected with measure of confidence based on t-test, p-value. A cut off of ρ < 0.05 and fold change > 1.5 was used. Assuming there are false positives among the differentially expressed genes, we also used Benjamini and Hochberg false discovery rate (FDR) controlling approach . We extracted 6045 quality genes for further data analysis for their functions using MIPS database. Genespring software (Agilent Technologies) was used to analyze microarray data.
To validate the microarray data, a real-time PCR assay was performed to monitor gene expression in both wild type and mutant strains by comparing the mRNA levels of selected genes to a stable housekeeping gene (e.g., actin) using delta-delta Ct (threshold crossing value) calculations. cDNA was synthesized from 1 μg of purified RNA of the same samples used for cRNA synthesis for the microarray experiments by using Iscript cDNA synthesis kit (BioRad). Prior to use in real-time PCR, each primer set was validated for use by gel analysis of RT-PCR products. All reactions were performed in triplicate using a BioRad iCycler. Each reaction contained 12.5 ml SYBR green Supermix (BioRad, 100 mM KCl, 40 mM Tris HCl, pH 8.4, 0.4 mM of each dNTP, 0.5 U iTaq DNA polymerase, 6 mM MgCl2, 20 nM fluorescein), 0.5 ml forward and reverse primer (each at 5 mM), 1 ml cDNA, and H2O to a final volume of 25 ml. Reaction conditions were 1 cycle of 95°C for 1.5 min and 40 cycles of 95°C for 20 s, 60°C for 1 min.
The authors thanks Dr. George M. Santangelo for scientific advice in this study and Mrs. Sai Majji for helping in real-time PCR. This work was supported by the NIH/NCRR INBRE Program grant RR016476.
This article has been published as part of BMC Genomics Volume 9 Supplement 1, 2008: The 2007 International Conference on Bioinformatics & Computational Biology (BIOCOMP'07). The full contents of the supplement are available online at http://0-www.biomedcentral.com.brum.beds.ac.uk/1471-2164/9?issue=S1.
- Aouida M: A genome-wide screen in Saccharomyces cerevisiae reveals altered transport as a mechanism of resistance to the anticancer drug bleomycin. Cancer Res. 2004, 64: 1102-1109. 10.1158/0008-5472.CAN-03-2729.PubMedView ArticleGoogle Scholar
- Goffeau A, Barrell BG, Bussey H, Davis RW, Dujon B, Feldmann H, Galibert F, Hoheisel JD, Jacq C, Johnston M: Life with 6000 genes. Science. 1996, 274: 546-563. 10.1126/science.274.5287.546.PubMedView ArticleGoogle Scholar
- Winzeler EA, Shoemaker DD, Astromoff A, Liang H, Anderson K, Andre B, Bangham R, Benito R, Boeke JD: Functional characterization of the S. cerevisiae genome by gene deletion and parallel analysis. Science. 1999, 285: 901-906. 10.1126/science.285.5429.901.PubMedView ArticleGoogle Scholar
- Giaever G, Chu AM, Ni L, Connelly C, Riles L, Veronneau S, Dow S, Lucau-Danila A, Anderson K, Andre B: Functional profiling of the Saccharomyces cerevisiae genome. Nature. 2002, 418: 387-391. 10.1038/nature00935.PubMedView ArticleGoogle Scholar
- Hoovers JM, Mannens M, John R, Bliek J, van Heyningen V, Porteous DJ, Leschot NJ, Westerveld A, Little PF: High-resolution localization of 69 potential human zinc finger protein genes: a number are clustered. Genomics. 1992, 12: 254-2637. 10.1016/0888-7543(92)90372-Y.PubMedView ArticleGoogle Scholar
- Klug, A: Zinc finger peptides for the regulation of gene expression. J Mol Biol. 1999, 293: 215-218. 10.1006/jmbi.1999.3007.View ArticleGoogle Scholar
- Becker KG: Rapid isolation and characterization of 118 novel C2H2-type zinc finger cDNAs expressed in human brain. Hum Mol Genet. 1995, 4: 685-691. 10.1093/hmg/4.4.685.PubMedView ArticleGoogle Scholar
- Berg, JM, Shi Y: The galvanization of biology: a growing appreciation for the roles of zinc. Science. 1996, 271: 1081-1085. 10.1126/science.271.5252.1081.View ArticleGoogle Scholar
- Böhm S, Frishman D, Mewes HW: Variations of the C2H2 zinc finger motif in the yeast genome and the classification of yeast zinc finger proteins. Nucleic Acids Res. 1997, 25: 2464-2469. 10.1093/nar/25.12.2464.PubMedPubMed CentralView ArticleGoogle Scholar
- Bussereau F, Lafay JF, Bolotin-Fukuhara M: Zinc finger transcriptional activators of yeasts. FEMS Yeast Res. 2003, 4: 445-458. 10.1016/S1567-1356(03)00179-X.View ArticleGoogle Scholar
- de Lichtenberg U, Wernersson R, Jensen TS, Nielsen HB, Fausboll A, Schmidt P, Hansen FB, Knudsen S, Brunak S: New weakly expressed cell cycle-regulated genes in yeast. Yeast. 2005, 22: 1191-1201. 10.1002/yea.1302.PubMedView ArticleGoogle Scholar
- Tong AH, Lesage G, Bader GD, Ding H, Xu H, Xin X, Young J, Berriz GF, Brost RL, Chang M: Global mapping of the yeast genetic interaction network. Science. 2004, 303 (5659): 808-13. 10.1126/science.1091317.PubMedView ArticleGoogle Scholar
- Aneta Kaniak, Zhixiong Xue, Daniel Macool, Jeong-Ho Kim, Mark Johnston: Regulatory Network Connecting Two Glucose Signal Transduction Pathways in Saccharomyces cerevisiae. Eukaryot Cell. 2004, 3 (1): 221-31. 10.1128/EC.3.1.221-231.2004.View ArticleGoogle Scholar
- Jeong-Ho Kim, Valérie Brachet, Hisao Moriya, Mark Johnston: Integration of Transcriptional and Posttranslational Regulation in a Glucose Signal Transduction Pathway in Saccharomyces cerevisiae. Eukaryot Cell. 2006, 5 (1): 167-173. 10.1128/EC.5.1.167-173.2006.View ArticleGoogle Scholar
- Ho Y, Gruhler A, Hellbut A, Bader GD, Moore L, Adams S-L, Millar A, Taylor P, Bennett K, Boutilier K: Systematic identification of protein complexes in Saccharomyces cerevisiae by mass spectrometry. Nature. 2002, 415: 180-183. 10.1038/415180a.PubMedView ArticleGoogle Scholar
- Ptacek J, Devgan G, Michaud G, Zhu H, Zhu X, Fasolo J, Guo H, Jona G, Breitkreutz A, Sopko R: Global analysis of protein phosphorylation in yeast. 2005, 438: 679-684.Google Scholar
- Ren B, Robert F, Wyrick JJ, Aparicio O, Jennings EG, Simon I, Zeitlinger J, Schreiber J, Hannett N, Kanin E: Genome-wide location and function of DNA binding proteins. Science. 2000, 290: 2306-2309. 10.1126/science.290.5500.2306.PubMedView ArticleGoogle Scholar
- Tong AH, Evangelista M, Parsons AB, Xu H, Bader GD, Page N, Robinson M, Raghibizadeh S, Hogue CW, Bussey H: Systematic genetic analysis with ordered arrays of yeast deletion mutants. Science. 2001, 294: 2364-2368. 10.1126/science.1065810.PubMedView ArticleGoogle Scholar
- Benjamini Y, Hochberg Y: Controlling the false discovery rate: a practical and powerful approach to multiple testing. J R Stat Soc Ser B. 1995, 57: 289-300.Google Scholar
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