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Copyright Tanaka, Yi. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. Synthetic Morphology Using Alternative Inputs 1Department of Developmental and Cell Biology, University of California Irvine, Irvine, California, United States of America 2Center for Complex Biological Systems, University of California Irvine, Irvine, California, United States of America Grzegorz Kudla, Editor University of Edinburgh, United Kingdom * E-mail: tmy/at/uci.edu Conceived and designed the experiments: HT TMY. Performed the experiments: HT. Analyzed the data: HT TMY. Contributed reagents/materials/analysis tools: HT TMY. Wrote the paper: HT TMY. Created the concept of alternative inputs: HT. Received June 1, 2009; Accepted August 11, 2009. This article has been cited by other articles in PMC.Abstract Designing the shape and size of a cell is an interesting challenge for synthetic biology. Prolonged exposure to the mating pheromone α-factor induces an unusual morphology in yeast cells: multiple mating projections. The goal of this work was to reproduce the multiple projections phenotype in the absence of α-factor using a gain-of-function approach termed “Alternative Inputs (AIs)”. An alternative input is defined as any genetic manipulation that can activate the signaling pathway instead of the natural input. Interestingly, none of the alternative inputs were sufficient to produce multiple projections although some produced a single projection. Then, we extended our search by creating all combinations of alternative inputs and deletions that were summarized in an AIs-Deletions matrix. We found a genetic manipulation (AI-Ste5p ste2Δ) that enhanced the formation of multiple projections. Following up this lead, we demonstrated that AI-Ste4p and AI-Ste5p were sufficient to produce multiple projections when combined. Further, we showed that overexpression of a membrane-targeted form of Ste5p alone could also induce multiple projections. Thus, we successfully re-engineered the multiple projections mating morphology using alternative inputs without α-factor. Introduction Cells respond to various extracellular chemical and physical inputs such as light, osmotic pressure, growth factors and neurotransmitters. Receptors detect the extracellular inputs, and then activate signal transduction networks that mediate specific output responses such as the transcription of genes (short-term response) or cellular morphological changes (long-term response). A synthetic approach is a powerful method to further the understanding of biological systems [1], and reproducing natural outputs without using the natural inputs is an important goal in synthetic biology. The mating signaling network in budding yeast is one of the most well-analyzed signal transduction systems [2]. Haploid a-cells respond to the extracellular input α-factor to mate with α-cells. Transcriptional activation of mating-related genes, formation of mating projections, and fusion of two opposite mating type cells are involved in this process. Binding of the input α-factor to α-factor receptor (Ste2p) leads to activation of the heterotrimeric G-protein: Gα (Gpa1p) releases GDP, binds GTP, and dissociates from Gβγ (Ste4p/Ste18p). Free Gβγ recruits to the plasma membrane the scaffold protein Ste5p [3], [4], which tethers together the mitogen activated protein kinase (MAPK) cascade (Ste11p → Ste7p → Fus3p/Kss1p) for its signaling specificity [5]. Activated Fus3p phosphorylates the transcription factor Ste12p and its inhibitors Dig1p/Dig2p, resulting in the transcription of mating-related genes. There are dramatic changes in cell morphology during the mating response. In particular, cells form a mating projection that arises from the combined actions of heterotrimeric G-protein, MAPK, and Cdc42 signaling, which regulate the spatial dynamics of the cytoskeleton, cell membrane, and cell wall [6]. Intriguingly, when cells are exposed continuously to high concentrations of α-factor, they will form multiple mating projections [7]–[9]. The mechanisms underlying this process are not fully understood, and characterizing this oscillatory behavior is an interesting challenge for systems and synthetic biology. It has been shown that certain loss-of-function mutations prevent this multiple projection phenotype, although the mutants can still make a single projection [9]. Here, we describe a novel approach to re-engineer the yeast mating morphology which we term “Alternative Inputs to α-Factor”. An alternative input (AI) is defined as any genetic manipulation that can activate the signaling pathway instead of the natural input. We addressed the question of whether alternative inputs could induce multiple projections or not. No single alternative input could induce multiple mating projections, although some produced a single projection. To broaden the search as well as to characterize the existing AI morphologies, we created all possible combinations of alternative inputs and deletions summarized in an AIs-Deletions matrix. Interestingly, we found that AI-Ste5p (overexpressed Ste5p) induced a polarized cell phenotype even in the absence of MAPK activity and transcriptional activation. In addition, we discovered a genetic manipulation (AI-Ste5p ste2Δ) that enhanced the formation of multiple projections. Pursuing this lead, we demonstrated that Ste4p and Ste5p were sufficient to produce multiple projections when overexpressed together. Finally, we found that overexpression of a membrane-targeted form of Ste5p alone could also produce multiple projections. Thus, we re-engineered the mating morphology using alternative inputs to induce multiple mating-projections without α-factor. Results Alternative Inputs to α-factor A natural stimulus activates signaling molecules in a pathway resulting in an output response. We define any genetic manipulation (i.e. overexpressing wild-type or constituitively active forms) that can activate the signaling pathway in lieu of the natural input as “Alternative Inputs or (AIs)”. Here, we set the goal to induce the natural output using alternative inputs. In this study, we constructed alternative inputs to the yeast mating pheromone α-factor in the pathway leading from α-factor to the transcription of pheromone-inducible genes (Figure 1A
In all experiments, the cells contained deletions of the BAR1 and MFα1 genes; we refer to the bar1Δ mfα1Δ strain background as “wild-type.” BAR1 encodes for an α-factor protease; MFα1 encodes for α-factor along with the MFα2 gene. We deleted MFα1 because of a concern that a small fraction of cells could switch from MATa to MATα and then synthesize α-factor; MFα1 is the major source of α-factor in MATα cells [10]. We focused on 7 signaling proteins of the α-factor transcription pathway: Ste2p, Ste4p, Ste5p, Ste11p, Ste7p, Fus3p, and Ste12p. First, we attempted to overexpress the wild-type versions of these proteins (Figure S1). Three (Ste4p [11], [12], Ste5p, Ste12p [13]) were able to induce transcription of the PFUS1-GFP reporter significantly above the basal level, but four did not (Ste2p, Ste11p, Ste7p, Fus3p) (Figure S1A). As a result, we constructed constitutively active forms of Ste2p (Ste2pP258L, S259L [14]), Ste11p (Ste11ΔN, [15]), Ste7p (Ste11ΔN-Ste7p [16]) and Fus3p (Fus3pI161L [17]), and overexpressed them from the PGAL1 promoter on the multi-copy plasmid. Overexpression of Ste2pP258L, S259L and Fus3pI161L weakly induced transcription (Figure 2A Quite strikingly, the morphologies of the AI strains differed significantly from the morphologies caused by α-factor. Wild-type cells treated with a high concentration of α-factor for an extended period (t = 24 hours) induced multiple projections (Figure 2BTo further investigate the trend down the pathway from less polarized round cells (AI-Ste4p) to more polarized cells with a single projection (AI-Ste7p), we simultaneously added α-factor with the inducer galactose in AI-Ste4p, AI-Ste7p, and AI-Fus3p cells. Interestingly, we found that AI-Ste4p+α-factor produced cells with multiple projections (96%, Figure 3
Alternative inputs caused localization defects in polarity markers To perform a more detailed characterization of the morphological changes induced by the alternative inputs, we investigated the localization of three cell polarity markers (Figure 4A
Compared to cells stimulated with α-factor, AI-activated cells displayed severe defects in the spatial patterns of the polarity markers (Figure 4A F-actin and Spa2p had a somewhat more polarized appearance in the AI cells compared to Ste20p. AI-Ste7p had substantial actin patch formation (26%) in the mating projection. On the other hand, AI-Ste4p (56%) and AI-Ste11p (46%) induced aberrant actin cable structures in addition to patch structures (Figure 4B Morphology AIs-Deletions matrix In wild-type cells, no single alternative input in the α-factor-transcription pathway was able to induce multiple ( 3) projections, although four AIs (AI-Ste4p, AI-Ste11p, AI-Ste7p, and AI-Ste12p) possessed strong transcriptional activation. To characterize the morphologies induced by the AIs more systematically and to search for new morphologies, we combined the gain-of-function alternative inputs with loss-of-function deletions. We constructed all combinations of alternative inputs and deletions among the 7 signaling genes and the resulting phenotypes were summarized in two AIs-Deletions matrices, one for transcriptional activation (Table 1) and one for morphology (Figure 5
We classified the output into different morphological classes based on representative cells from each combination. The categories included multiple projection cells (m), single long projection cells (P), single short projection cells (p), elongated cells (e), large cells (L), and small round cells (s). As we expected, the most general trend was that morphology was influenced by transcriptional activation (Table 1) so that in general the elements above the matrix diagonal showed the small round morphology (Figure 5 Interestingly, AI-Ste5p induced polarized phenotypes (i.e. elongated cells) in all strains including deletions downstream of STE5 in the α-factor transcription pathway. In the absence of transcriptional activation, AI-Ste5p produced elongated cells and elongated cells that formed a bud or another elongated cell (Figure 5 AI-Ste11p induced both large round cells and cells with a projection in the deletions upstream and including STE11, but in deletions downstream of STE11, it induced only large round cells (Figure 5 AI-Ste12p induced large round cells in any deletion strain except for the ste12Δ strain. The multiple projections phenotype in the wild-type backgrounds was the result of the production of α-factor from the MFα2 gene (Text S1 and Figure S2). In the other deletions, α-factor signaling was blocked giving rise to morphologies and transcriptional activation comparable to AI-Ste12p in the mfα2Δ strain (Table 1, Figure 5 Multiple projections induced by Alternative Inputs without α-factor In the AIs-Deletions matrix, there were two combinations that produced multiple projections: AI-Ste5p ste2Δ and AI-Ste7p ste2Δ (Figure 5
To investigate whether these increased mating responses were mediated by Gβγ, the STE4 gene was deleted along with the SST2 gene, and AI-Ste5p was overexpressed. The transcriptional activity and morphological changes induced by AI-Ste5p in the sst2Δ strain were completely eliminated in the sst2Δ ste4Δ background (Figure 6A and 6B To test whether Ste4p was also sufficient in combination with Ste5p to induce multiple projections, we simultaneously overexpressed both AI-Ste5p and AI-Ste4p in the wild-type background. Indeed, the double AI strain contained cells with two and three projections, whereas each individual alternative input induced zero or one projection (Figure 6C In addition, overexpression of both AI-Ste4p and AI-Ste5p corrected many of the localization defects in the polarity markers observed when AI-Ste4p and AI-Ste5p were applied singly (Figure 6E Membrane targeting of Ste5p promotes formation of more than one projection Ste4p recruits Ste5p to the plasma membrane in response to α-factor, and forced membrane targeting of Ste5p using a C-terminal membrane tag (Ste5p-CTM) activates the MAPK cascade without Ste4p [3]. We hypothesized that in the (AI-Ste4p+AI-Ste5p) cells Ste4p performed the role of recruiting Ste5p to the plasma membrane. To test this hypothesis, we overexpressed Ste5p-CTM instead of Ste5p. Indeed, Ste5p-CTM enhanced the transcriptional response and produced more second projections even in the complete absence of Ste4p (Figures 7A and 7B
These data suggest that a minimum level of transcriptional activation is necessary to form multiple projections. AI-Ste5p possessed a low level of transcriptional activation (PFUS1-GFP/OD600 = 87), and increasing transcription (130 to 150) in the Ste5p-CTM and AI-Ste5p ste2Δ strains resulted in multiple projections (Figure 7CCertain genetic manipulations can lead to simultaneous formation of multiple sites of polarization (i.e. polar caps) [26]. On the other hand, the formation of multiple projections induced by α-factor is sequential [8]. It is important to distinguish whether the multiple projections induced by alternative inputs were formed sequentially or simultaneously. We performed time-course experiments (t = 0, 8, 16, 24 hours) in Ste5p-CTM cells that produced multiple projections (Figure 7D = 16 hours, 11% of cells produced a second projection. At t = 24 hours, 28% of cells produced a second projection and 1% of cells produced a third projection. These results suggest that Ste5p-CTM induced the second projection not simultaneously but sequentially although we cannot rule out the possibility that the first projection did not stop growing after the second projection was initiated from these time-course experiments. Preliminary time-lapse studies with GFP-Ste5p-CTM indicated that the first projection stops before the start of the second projection (T.-M. Yi, data not shown).Effects of varying the level of alternative inputs on transcription and morphology It is instructive to investigate the outputs in response to varying the level of alternative inputs. To this end, we created gal2Δ strains [27], which allows a more graded activation of the PGAL1 promoter by galactose, and treated the Ste5p-CTM and AI-Ste7p strains with several concentrations of galactose (Figure 8
Discussion Synthetic morphology using alternative inputs In this study, we attempted to reproduce in the absence of mating pheromone the multiple mating projections phenotype of yeast cells. We applied a novel synthetic approach termed “Alternative Inputs” to this problem. Whereas wild-type cells exposed continuously to α-factor form multiple mating projections, we found that none of the AIs alone could induce multiple projections. During the course of this study, we identified genetic combinations that could produce multiple projections: (1) AI-Ste5p ste2Δ, (2) AI-Ste7p ste2Δ, (3) AI-Ste5p sst2Δ, (3) AI-Ste5p+AI-Ste4p, and (4) Ste5p-CTM. As we describe below, these results shed light on this morphology, as well as highlight the differences between making one projection versus making more than one projection. Thus, we re-engineered the multiple projections mating morphology using alternative inputs without α-factor. Morphologies induced by pheromone We attempted to recapitulate the multiple projections phenotype induced by high concentrations of α-factor (1 µM). It is important to note the effect of pheromone dose on the morphology of mating projections, which has been reported in the literature. Dose response curves for α-factor induced projection formation were measured, as well as cell division arrest and agglutination [28]. Recent studies using microfluidics devices showed that the shape of the projection(s) ranged from wide projections (lower concentrations, e.g. 10 to 40 nM) to thin projections (higher concentrations, e.g. 100 to 1000 nM) depending on pheromone levels, and that double projections at 6 hours were observed at higher α-factor levels but not at lower concentrations [29]. In most cases, multiple projections induced by high concentrations of α-factor are formed by a succession of polarized growth at new sites and not by simultaneous growth at several sites. The multiple projections formation presumably requires oscillations either in protein levels, activities, or localization in the cell [9]. One may be concerned that such oscillations might thus be precluded by over-expression of a protein (whose transcriptional level could then not be regulated anymore), or by expression of a constitutively active form of the protein. Indeed, when both α-factor and alternative inputs were added, AI-Ste7p and AI-Fus3p (both are constitutively active forms) were dominant to α-factor although α-factor was dominant to AI-Ste4p (a wild-type form, Figure 3 Morphologies induced by single alternative inputs No single alternative input could induce multiple projections (Figure 2B AI-Ste7p produced a single projection and induced high transcriptional activation comparable to transcription induced by α-factor in wild-type cells (Figure 2A Interestingly, the individual AIs all showed significant defects in the localization of polarity markers Ste20p, F-actin, and Spa2p. Thus, proper localization of these proteins is not required for making a single projection. In the case of Ste20p, Peter and colleagues showed that the Ste20p mutant lacking the entire CRIB domain that cannot bind Cdc42p was able to fully activate the mating MAP kinase pathway and form a single projection although the Ste20p mutant did not localize at the projection [22], and our observations are consistent with this finding. Previous studies have investigated abnormal mating morphologies arising from genetic perturbations. In particular, Chenevert, Valtz and Herskowitz classified a large number of mutants involved in pheromone-induced cell polarization [31]. They grouped these mutations into three morphological classes: (1) “Shmooless mutants” including mutations in BEM1 and CDC24, which are necessary to establish polarity, (2) “Peanut shmoo mutants” including mutations in SPA2 and PEA2, that result in wide projections, and (3) “Tiny shmoo mutants” including mutations in TNY1 that produce tiny projections. Most of these mutants resulted from loss-of-function perturbations; it would be informative to compare and contrast gain-of-function morphological phenotypes arising from alternative inputs with these loss-of-function phenotypes. This combined approach may help to further characterize genes that display complex morphological phenotypes (e.g. bending projections) such as AFR1 [32], [33], which influences septin dyamics. Role of Ste5p in making multiple projections This research implicates Ste5p as a key player in the formation of multiple projections. Having sufficient transcriptional activation is also important; AI-Ste5p alone could not make multiple projections and possessed a low level of mating transcription. Overexpressing Ste4p+Ste5p produced multiple mating projections, whereas overexpressing Ste4p and Ste5p individually failed to produce them (Figure 2B
Are the oscillatory dynamics that underlie multiple mating projections formation a systems-level property or the outcome of the actions of a single or small set of genes? We believe the former is true, and thus Ste5p is an important player in a complex process. The fact that none of the artificially induced phenotypes completely matches the number of projections produced by α-factor argues that there are additional dynamics and interactions to be investigated. A working model explaining morphological phenotypes in terms of the spatial-temporal dynamics of mating pathway components Our hypothesis is that the spatial-temporal oscillatory proteins dynamics are necessary for forming multiple projections. We propose the following working model based on our data. Intermediate levels of transcriptional activation (130 PFUS1-GFP/OD600<350, Figure 7CComparison to other approaches There have been several large-scale genetic approaches for dissecting biological systems including single deletion libraries [35], double deletion (synthetic lethal) libraries [36], [37], overexpression libraries [38], and using overexpression to test the robustness of a system [39]. “Alternative Inputs” combines gain-of-function (overexpression) and loss-of-function (deletion) perturbations, and hence is closest in spirit to synthetic dosage lethality analysis [38], [40] in which a reference gene is overexpressed in mutant strains containing potential target mutations. There are several differences in the two approaches, however. First, alternative inputs are defined as overexpressing active signaling molecules that can turn on the pathway rather than just overexpressing the wild-type gene product. Second, the AIs-Deletions matrix describes all possible combinations of alternative inputs and deletions, and not only selected reference genes and target mutations. Third, the AIs approach can be applied to any pathway (e.g. signaling systems) with inputs and outputs so that cell viability is one of many possible read-outs. The alternative inputs approach extends to encompass individual AIs, AIs and deletions, combinations of AIs, and different outputs. Ultimately, one goal is to reproduce the complex behaviors elicited by the natural input by using the coordinated actions of AIs and other perturbations, thereby demonstrating sufficient understanding to re-engineer the system (i.e. synthetic biology) [1], [41]. Expanding the scope of the “Alternative Inputs” approach One shortcoming of this work was that we were unable to construct an adequate AI-MAPK; overexpression of Fus3p, Kss1p, and Fus3pI161L all failed to activate transcription above the basal level. Interestingly, however, overexpression of Fus3pI161L with α-factor produced the same phenotype as AI-Ste7p plus α-factor: a single long projection instead of multiple projections (Figure 3 We used the PGAL1 promoter on a multi-copy 2μ plasmid to induce alternative inputs; this approach should be easy to scale up. On the downside, there was likely to be cell-to-cell heterogeneity in the levels of the AIs because of variations in plasmid copy number for the expression vector. To address this issue, we constructed an AI-Ste5p strain by integrating the PGAL1-STE5. Transcriptional activation was weaker than in cells containing the multi-copy plasmid (PFUS1-GFP/OD600 = 63±7 versus 87±9), and the resulting morphological changes were more modest (reduced polarization). These results suggest that the expression level of Ste5p is important to induce the polarized phenotypes for this AI. Thus, one benefit of using the PGAL1 promoter on a multi-copy 2μ plasmid was higher levels of expression.In the future, we plan to apply the alternative inputs approach on a larger scale to the yeast mating system, as well as to other signaling networks. The broader scope would necessitate improvements in constructing the AIs and strains, output read-outs, data analysis (e.g. automated image analysis using programs such as CalMorph [42] and CellProfiler [43]), and computational modeling. Materials and Methods Strains and plasmids Standard genetic techniques were performed according to [44]. Yeast strains and plasmids used in this study are listed in Table 2 and 3, respectively.
The PFUS1-GFP reporter (HIS5-marked PCR fragment) [45] was targeted to the HIS3 locus of the strain RJD863 by PCR-based gene integration to create the strain HTY028. Then, the mfα1Δ strain HTY064 was constructed by PCR-based gene disruption of HTY028. In this study, HTY064 was used as the “wild-type” strain in most experiments, and all deletion strains were derived from HTY064 by PCR-based gene disruption. The strains containing the GFP-tagged polarity markers were constructed by the C-terminal integration of GFP (HIS5-marked PCR fragment). GFP was fused to the C-terminus of the SPA2 gene (HTY069) and the STE20 gene (HTY073) in the strain RJD863. To construct Ste18p-GFP, GFP was inserted directly in front of the prenylation consensus sequence [46] near the C-terminus of the STE18 gene (HTY072) [45]. All strains except for RJD360 were derived from RJD863, which originated from W303a. See Table 2 for strain genotypes. Here we note that our isolate of the RJD863 strain contained a A to G sequence polymorphism at position 2630 of STE5 compared to the genome sequence in SGD (Saccharomyces cerevisiae Genome Database). This polymorphism resulted in a D877G amino acid substitution in the Ste5p protein. However, we did not detect any differences in sensitivity to α-factor (Halo Assay), transcriptional activity (PFUS1-GFP expression), or morphology between strains containing the wild-type Ste5p and strains containing the D877G variant. We constructed the alternative inputs expression plasmids as follows. Genes in the α-factor transcription pathway (STE2, STE4, STE5, STE5-CTM, STE11, STE11ΔN (residues 344–717) STE7, FUS3, KSS1, and STE12) were amplified by PCR (Phusion polymerase, New England Biolabs), and then were inserted into the pYES2 or pYES3/CT vectors (Invitrogen) to create the GAL1 promoter-regulated constructs in a high-copy number plasmid. The PGAL1-STE2P258L S259L and PGAL1-FUS3I161L constructs were created using QuickChange II Site-Directed Mutagenesis Kit (Stratagene). See Table 3 for plasmid constructs. Induction of alternative inputs Cells were grown in selective synthetic media containing 2% dextrose overnight. 0.25 OD600 units of cells were harvested, resuspended into 2 ml of selective synthetic media containing 2% raffinose supplemented with adenine, grown for 3 hours, and then 2% galactose (or 2% galactose+1 µM α-factor) was added for 4 hours (for short-term experiments) or 24 hours (for long-term experiments). Mating transcriptional activity assay 1.5 ml of the total 2 ml cell culture was harvested and resuspended in PBS. Then, 100 µl of cells was placed into a 96-well plate and transcriptional activation was measured without fixation. The OD600 of the cells in the PBS solution was also measured using a spectrophotometer. Mating transcriptional activity from a integrated genomic reporter gene (PFUS1-GFP) was assayed using a Gemini XS SpectraMAX fluorometer with the excitation at 470 nm and emission at 510 nm as described previously [45]. The GFP fluorescence (arbitrary units) was normalized to the OD600, and the PFUS1-GFP/OD600 values were averaged over at least three independent experiments. Microscopy 0.4 ml of the total 2 ml cell culture was fixed with ice-cold formaldehyde-PBS solution (3.7% formaldehyde in PBS) for 1 hour. For F-actin staining, cells were fixed with ice-cold formaldehyde-PBS solution for 30 minutes, washed, harvested, and resuspended in PBS with rhodamine-conjugated phalloidin for another 30 minutes, harvested, washed, and resuspended in PBS. Then, 1.5 µl of cells were mounted on a slide with 1 µl of Vectashield mounting solution. The prepared slides were observed using a Nikon ECLIPSE TE300 fluorescence microscope, and the images were taken by a Hamamatsu ORCA-II CCD camera controlled by the MetaMorph software package. Image analysis In control cells (HT064 (WT), +Gal, t = 24 h), there were no cells possessing a diameter greater than 10 µm; the average diameter was approximately 5 µm. We defined a cell with a diameter greater than 10 µm to be a large cell, and we defined a responding cell to be a large cell or a polarized cell (either elongated or possessing projections); the polarized phenotypes could be determined readily by eye. Most alternative inputs (AI-Ste4p, AI-Ste5p, AI-Ste11p, AI-Ste7p and AI-Ste12p) induced dramatic changes in morphology, so these criteria worked well to distinguish between responding and non-responding cells. For AI-Ste2p and AI-Fus3p cells, we concluded that their phenotypes were small round cells (non-responding).For counting the number of projections (Figure 6C Text S1 Multiple projections induced by AI-Ste12p (0.02 MB DOC) Click here for additional data file.(22K, doc) Figure S1 Overexpression of wild-type signaling molecules in the α-factor transcription pathway. (A) Transcriptional activation induced by wild-type signaling molecules. Either α-factor (1 µM) was added or the wild-type signaling molecules were induced and transcriptional activation was measured at t = 24 h. Overexpression of Ste2p, Ste11p, Ste7p, Fus3p, and Kss1p did not activate transcription above basal levels. PFUS1-GFP/OD600 values were averaged from at least three measurements, and bar graphs show mean±SEM. (B) The morphologies produced by overexpressing wild-type signaling molecules. Bright field images taken at t = 24 h for a typical set of cells for each wild-type signaling molecule. The scale bar represents 10 µm.(1.96 MB EPS) Click here for additional data file.(1.8M, eps) Figure S2 AI-Ste12p in the wild-type (MFa2+) strain background produced α-factor. (A) Transcriptional activation induced by AI-Ste12p from both the original strain background (mf α 1 Δ MFa2+) and an mf α 2 Δ background (mf α 1 Δ mf α 2 Δ). PFUS1-GFP/OD600 values were averaged from at least three measurements, and bar graphs show mean±SEM. (B) Bright field images taken at t = 24 h of AI-Ste12p cells in both the original strain background (mf α 1 Δ MFa2+ and an mf α 2 Δ background (mf α 1 Δ mf α 2 Δ). The scale bar represents 10 µm. (C) To test whether AI-Ste12p in the (MFa2+ background (“wild-type”) produced α-factor, we mixed cells (HTY091) containing selected AIs (and no transcriptional reporter) with a MAT a bar1Δ reporter strain containing the PFUS1-GFP construct (HTY146). GFP fluorescence of the reporter strain provided a measure of the α-factor produced by the AI strain. Control cells contained the pYES2 vector, and the result was a basal level of PFUS1-GFP. The same was true for the AI-Ste4p and AI-Ste7p cells. On the other hand, AI-Ste12p induced significant levels of GFP through the production of α-factor. PFUS1-GFP/OD600 values (t = 24 h) were averaged from at least three measurements, and bar graphs show mean±SEM.(1.48 MB EPS) Click here for additional data file.(1.4M, eps) Acknowledgments We thank all members of the Yi lab for helpful comments and suggestions. Footnotes Competing Interests: The authors have declared that no competing interests exist. Funding: This work was supported by NIH grant R01GM75309. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript. References 1. Yeh BJ, Lim WA. Synthetic biology: lessons from the history of synthetic organic chemistry. Nat Chem Biol. 2007;3:521–525. [PubMed] 2. Dohlman HG, Thorner JW. 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