The ability of cells to respond to environmental changes and adapt their metabolism enables cell survival under stressful conditions. The budding yeast Saccharomyces cerevisiae (S. cerevisiae) is particularly well adapted to the harsh conditions of anaerobic wine fermentation. However, S. cerevisiae gene function has not been previously systematically interrogated under conditions of industrial fermentation. We performed a genome-wide study of essential and nonessential S. cerevisiae gene requirements during grape juice fermentation to identify deletion strains that are either depleted or enriched within the viable fermentative population. Genes that function in autophagy and ubiquitin-proteasome degradation are required for optimal survival during fermentation, whereas genes that function in ribosome assembly and peroxisome biogenesis impair fitness during fermentation. We also uncover fermentation phenotypes for 139 uncharacterized genes with no previously known cellular function. We demonstrate that autophagy is induced early in wine fermentation in a nitrogen-replete environment, suggesting that autophagy may be triggered by other forms of stress that arise during fermentation. These results provide insights into the complex fermentation process and suggest possible means for improvement of industrial fermentation strains.
The budding yeast S. cerevisiae is a hallmark model organism for understanding cellular and molecular processes; it is also one of the most important industrial microorganisms for food and enzyme production. The ability of S. cerevisiae to rapidly adapt to changing environmental conditions, including survival in both aerobic and anaerobic conditions, and to out-compete other microbes by virtue of its high tolerance for ethanol has underpinned the propagation of S. cerevisiae strains optimized for fermentation performance. Evolutionary pressures acting on the S. cerevisiae genome have resulted in gains of genes to enable adaptation to anaerobic fermentation (Gordon et al. 2009). Although industrial fermentation is an anthropic environment, S. cerevisiae naturally proliferates in the interior of rotting fruit such as damaged grape berries, where it effectively creates a fermentative environment (Mortimer and Polsinelli 1999). In fact, the progenitor of the laboratory yeast strain S288C, which was the first eukaryotic genome to be sequenced, was isolated from a rotting fig in California in 1938 (Goffeau et al. 1996; Mortimer and Johnston 1986). Despite the explosion in genomics, proteomics, and systems biology since the sequencing of S288C, ∼1000 of the ∼6200 annotated yeast genes still have no known function (Pena-Castillo and Hughes 2007). However, to date, most high-throughput functional genomic analyses have been acquired under laboratory conditions that do not closely resemble the natural fermentative lifestyle of S. cerevisiae.
During fermentation of grape juice, S. cerevisiae is exposed to many stresses, including high osmolarity (20–40% equimolar glucose:fructose), organic acid stress (pH 3–3.5), limiting nitrogen, anaerobiosis, and ethanol toxicity [final concentration 12–15% (v/v)]. Whole-genome gene expression analysis of wine yeast strains during fermentation under wine-making conditions has demonstrated dramatic expression changes in ∼40% of the genome, including upregulation of stress response, energy production, and surprisingly, glucose repressed genes (Backhus et al. 2001; Marks et al. 2008; Perez-Ortin et al. 2002; Rossignol et al. 2003; Varela et al. 2005). Studies of short-term stress response in laboratory yeast strains have identified a signature environmental stress response of 10–20% of the genome to changes in temperature, nutrients, osmotic shock, and nutrient depletion (Causton et al. 2001; Gasch et al. 2000; Gasch and Werner-Washburne 2002). Although genome-wide expression data have provided valuable insights, gene mRNA expression profiles often do not correlate with gene requirement under specific conditions (Giaever et al. 2002; Winzeler et al. 1999). In addition, protein levels and function are often affected by post-translational modification in the absence of changes in gene expression. A comparison of the transcriptome and proteome of a wine yeast strain during fermentation revealed only a weak correlation between changes in mRNA and protein abundance at stationary phase (Rossignol et al. 2009). Thus, to gain insight as to how yeast cells sense and respond to environmental conditions, the functional requirement for each gene must be analyzed.
Laboratory strains of S. cerevisiae exhibit suboptimal fermentation performance compared with industrial S. cerevisiae strains because of their inability to convert all sugars present in grape must to ethanol (Pizarro et al. 2007). However, an auxotrophic laboratory strain of S288C is able to ferment grape juice to completion by supplementation of required amino acids and reduction of sugars (Harsch et al. 2009). Although earlier studies demonstrated aneuploidy in some wine yeast strains, recent karyotypic analysis of four commercial S. cerevisiae wine yeast strains revealed only small to moderate variations in gene copy number compared with S288C, with no major chromosomal rearrangements or abnormal chromosome numbers (Dunn et al. 2005; Pretorius 2000). In addition, genetic analysis of 45 commercial yeast strains showed that 40 strains were diploid whereas only five were aneuploid (Bradbury et al. 2006). Recent sequencing studies have provided the yeast community with new insight into the genomic variation between S. cerevisiae laboratory, industrial, clinical, and wild strains (Borneman et al. 2008; Liti et al. 2009; Novo et al. 2009; Schacherer et al. 2009; Wei et al. 2007). Genome sequencing and single nucleotide polymorphism analysis of 86 S. cerevisiae strains demonstrated that wine yeast strains from geographically distinct locations are closely related, suggesting a single domestication event (Liti et al. 2009; Schacherer et al. 2009). The genome of the commercial wine yeast strain EC1118 possesses three unique chromosomal regions encompassing 34 genes, of which two regions contain DNA from a non-Saccharomyces origin (Novo et al. 2009). Although these unique chromosomal regions are likely involved in the adaptation of EC1118 to industrial fermentation conditions, 99% of predicted EC1118 open reading frames (ORF) are in common with S288C (Novo et al. 2009). Likewise when the genomes of the wine yeast strain AWRI1631 and S288C were compared, although ∼68,000 single nucleotide variations were identified, the proteomes exhibited over 99.3% amino acid identity (Borneman et al. 2008). The fact that gene order, predicted ORFs, and proteomes are highly similar between S. cerevisiae S288C and wine yeast strains suggests that genomic technologies developed in S288C may be exploited to reveal gene functions required to cope with the dynamic stresses imposed by fermentation.
The comprehensive yeast gene deletion strain collection has enabled high-throughput screens for phenotypic traits of yeast genes; however, many of the physiological conditions tested are not relevant to industrial or natural yeast environments (Scherens and Goffeau 2004). A competitive fitness study of the heterozygous deletion mutant collection under conditions of nitrogen limitation revealed that impaired 26S proteasome function afforded a growth advantage, suggesting that a defect in protein degradation may be beneficial when nutrients are limiting (Delneri et al. 2008). Although the majority of the yeast genome is nonessential when grown in laboratory conditions, a comprehensive set of chemical genomic profiles uncovered a phenotype for 97% of yeast genes under chemical or environmental stress conditions (Hillenmeyer et al. 2008). Although a number of studies have assessed the deletion collection for ethanol sensitivity, very few genes appear in common across the different datasets, suggesting that the cellular response to ethanol may depend heavily upon precise experimental conditions (Fujita et al. 2006; Kubota et al. 2004; Kumar et al. 2008; Teixeira et al. 2009; Van Voorst et al. 2006; Yazawa et al. 2007; Yoshikawa et al. 2009). Finally, the deletion collection has been screened to identify yeast genes that confer resistance to inhibitors of bioethanol fermentation (Endo et al. 2008; Gorsich et al. 2006). Notably, genome-wide analysis of genetic requirements during wine fermentation has not been previously reported.
Here, we profile the genome-wide yeast deletion collection in S288C over a 14 day fermentation period to identify deletion strains that confer either a fitness defect or an advantage. Strains with fitness defects during fermentation were enriched for gene deletions in three major categories: autophagy, modification by ubiquitination, and proteasome degradation. Strains with a fitness advantage during fermentation were compromised for ribosomal proteins, peroxisome biogenesis, or phosphate homeostasis. Autophagy is the process whereby cytoplasmic components and excess organelles are degraded; we demonstrate that autophagy is induced under wine fermentation conditions. Finally, deletion of 139 uncharacterized genes alters yeast fitness during fermentation, suggesting that interrogation under nonstandard laboratory conditions will be required to uncover the function of many strongly selected genes in yeast evolution.
Materials and Methods
The S288C diploid homozygous and heterozygous deletion pools were created as described (Ooi et al. 2001). The homozygous deletion pool (MAT a/α gene XΔKanMX4/gene XΔKanMX4 his3Δ1/his3Δ1 leu2Δ0/leu2Δ0 ura3Δ0/ura3Δ0 met15Δ0/MET15 lys2Δ0/LYS2) was purchased from Invitrogen and contains 4653 homozygous deletions represented equally at a concentration of 2 × 107 cells/mL. The heterozygous deletion pool (MAT a/α gene XΔKanMX4/GENE X his3Δ1/his3Δ1 leu2Δ0/leu2Δ0 ura3Δ0/ura3Δ0 met15Δ0/MET15 lys2Δ0/LYS2) was generated in the following manner. Individual heterozygous deletion mutants (Open Biosystems, #YSC1055, 5797 unique ORFs) were pinned onto YPD plates (96 colonies per plate) containing G418 (200 μg/mL, Gibco #1181-031) and incubated at 25° for three days. Five mL of YPD (supplemented with 100 μg/mL G418) were added to each plate, cells were resuspended using a glass rod, and then transferred into a flask on ice. Glycerol was added to 15% final concentration, and cells were frozen in 1 mL aliquots (OD600 = 15.0). One biological replicate of the homozygous and heterozygous deletion pools (6 × 106 cells), the S288C parental strain (BY4743), and the EC1118 strain were each grown overnight in rich glucose medium [YPD: 2% glucose (Fisher Scientific #D15-12), 2% bacto-peptone (BD #DF0118072), 1% yeast extract (BD #DF0127071)] to mid–log phase, washed in sterile water, and then resuspended in filter-sterilized synthetic grape juice [10% glucose, 10% fructose (Acros Organics #161350025), 0.45% malic acid (Sigma-Aldrich #M1000), 0.45% tartaric acid (Sigma-Aldrich #T1807), 0.03% citric acid (Sigma-Aldrich #C83155), 0.2% (NH4)2SO4 (Fisher #A702-3), 0.17% yeast nitrogen base without amino acids and ammonium sulfate (Difco #DF0335159), 0.1% (v/v) Tween 80 (Sigma P4780), 0.8 mM tryptophan (Sigma #T0254), 0.2 mM uracil (Sigma #U0750), 0.16 mM adenine (Sigma #A9126), 0.2 mM lysine (Sigma #L5501), 2 mM leucine (Sigma #L8000), 0.2 mM histidine (Sigma #H8125), adjusted to pH 3.0)] and inoculated into 500 mL of filter-sterilized synthetic grape juice at 2 × 106 cells/mL in a 500 mL Kimax bottle fitted with a vapor lock. Fermentations were carried out at 21°. The first time point was taken 24 h post inoculation into synthetic grape juice and was used as a control in all hybridizations. Subsequent time points were taken at days 2, 4, 6, 8, 10, and 14 by withdrawal of 2 mL of culture through an airtight rubber seal. Aliquots were centrifuged, and the supernatant was stored at −80° and subsequently used for metabolite analysis. To select for live cells in the barcode microarray analysis of the homozygous and heterozygous deletion pools, pellets were resuspended in sterile water and grown on YPD + 200 µg/mL G418 agar (Difco, #DF0145170) medium at 25° for two days prior to harvesting and extraction of genomic DNA.
Quantification of metabolites
Fermentation bottles were weighed every two days, and a sample of the supernatant was extracted for metabolite analysis. Ethanol, fructose, and glucose were detected using an Agilent 1100 Series HPLC system with an Agilent Refractive Index detector and autosampler. A 1 μL sample was injected onto a Supelcogel C610H cation exchange column and a Supelguard C610H guard column at 0.75 mL/min with a degassed 0.22 μm filtered 0.1% H3PO4 mobile phase using a column temperature of 50° and a refractive index temperature of 35°. Calibration and data analysis/quantitation were performed with LC/MSD Chemstation (Software Revision Rev. A.09.03). Yeast assimilable nitrogen (YAN; total alpha amino acids and ammonium) was measured with N-PANOPA and K-LARGE kits from Megazyme (Megazyme International Ireland) according to manufacturer’s instructions.
Barcode amplification, hybridization, and image analysis
Barcode amplification and hybridization were performed as described (Cook et al. 2008) using amplification primers from Operon Biotechnologies. Arrays were scanned visually for anomalies, which were flagged and discarded as necessary. The median local background-subtracted intensities were converted to log2 ratios, and the data were Lowess normalized using the program Vector Xpression 3. Data with negative values in either channel were adjusted to a floor value of 1 for further calculations. Log2 intensity values [A = 0.5*log2(Cy5*Cy3)] were chosen individually for UP and DOWN (DN) barcode tags of each microarray to maximize recovery of true positives and minimize recovery of false positives as described (Cook et al. 2008) except using log2 intensity values instead of signal-to-noise ratios. In the case of the homozygous deletion pool experiments, intensity thresholds included less than 5% of false-positive signals. In the case of heterozygous deletion pool experiments, the majority of barcodes on the array were present within the pool. As such, an alternative method was required to set intensity thresholds; these were chosen qualitatively to exclude the low-intensity peak within the bimodal distribution of signals in a Log2 intensity (A) vs. frequency plot, representing presumptive nonfunctional barcodes. To further minimize false positives and maximize true positives, UP and DN barcodes with significant data for less than 40% of all replicate spots across all experiments were excluded from subsequent analysis. UP and DN tags for each array were independently converted to Z scores before being combined (centered to an average log2 ratio value of 0 and normalized to a standard deviation of 1). Replicate spots were averaged, and remaining false barcodes of strains not present in the homozygous or heterozygous deletion pool were removed. The data were clustered using Cluster 3.0 (De Hoon et al. 2004); prior to clustering, data were filtered to remove barcodes with no significant change across any time point (all log2 values < 1) or to include only those with significant change in 50% of experiments. Data were clustered hierarchically, with average linkage and an uncentered correlation similarity metric. Heat maps were generated using the program Java Treeview (Saldanha 2004). Microarray information can be accessed at ArrayExpress (E-MEXP-3332).
To identify enriched functional categories, heterozygous and homozygous deletion mutants with a fitness disadvantage or advantage were queried using Funspec (Robinson et al. 2002), and categories with a P value of 0.01 or less were analyzed further. All genes listed under a given Munich Information Center for Protein Sequences (MIPS) category were compared with all genes from the homozygous deletion pool (3734) or the heterozygous deletion pool (5470) that had significant data on our array. The number of genes in each MIPS functional classification category (459 total categories were queried) that were present on the array are represented in Tables 2–5⇓⇓⇓ in the “total genes in dataset” column. The number of genes with a 2-fold or greater decrease or increase in abundance compared with control in at least three of the fermentation time points are presented in the “total genes observed” column. P values were calculated using the hypergeometric cumulative distribution function and adjusted with a Bonferroni correction. Genes that were not annotated in the various MIPS categories, but nevertheless bear related functions, were manually added when necessary.
Western blot analysis
The API Western blot was performed as follows. 1.5 × 107 cells per sample were TCA precipitated, vortexed with 50 μL glass beads and 50 μL SDS gel loading buffer, boiled, run on an SDS-PAGE gel, and then transferred to nitrocellulose membrane. The membrane was probed with a 1:4000 dilution of anti-API antibody [kindly provided by Dr. Daniel Klionsky (Klionsky et al. 1992)] and a 1:5000 dilution of secondary antibody (goat-anti rabbit HRP conjugate, Bio-Rad).
The homozygous pep4Δ/pep4Δ log phase and two-day fermented yeast were concentrated by centrifugation. The yeast were high-pressure frozen in Type A HPF specimen carriers (Technotrade International, Manchester, NH) with a Leica HPM 100 (Vienna, Austria). Frozen samples were then freeze-substituted in a Leica AFS (Vienna, Austria) as follows: two days at −85° in HPLC-grade acetone [containing 8% dimethoxypropane (DMP), 0.5% glutaraldehyde, 0.1% tannic acid], followed with several washes in clean acetone (−85°), transferred to HPLC-grade acetone (containing 1% osmium tetroxide and 0.1% uranyl acetate), held at −85° for two additional days, warmed to and held at −20° for 6 h, and finally warmed to room temperature. Substituted yeast were then washed in clean acetone and infiltrated with Spurr's resin over a graded series to 100% resin with rotation at room temperature. Ultrathin sections were cut using a Reichert Ultracut E ultramicrotome, picked up on formvar-coated 200-mesh copper grids, and stained with 2% uranyl acetate (aqueous) and Reynold’s lead citrate. Images were captured using an FEI Tecnai G2 (Hillsboro, OR) operated at 200 kV equipped with a 2K side-mounted Advanced Microscopy Techniques (AMT) digital camera (Danvers, MA).
Identification of genes with a role in fermentation
To identify nonessential and essential S. cerevisiae genes required for optimal cellular fitness during fermentation, the S288C heterozygous and homozygous diploid yeast deletion mutant pools were individually grown in rich media to midlogarithmic phase, then diluted into synthetic grape juice (see Materials and Methods). The diploid yeast deletion mutant collections were chosen over the haploid collections because wine yeast are primarily diploid and because the diploid collections include both essential and nonessential genes. Anaerobic fermentations were carried out for 14 days at room temperature in 500-mL flasks equipped with a vapor lock. Fermentation profiles of the heterozygous and homozygous deletion mutant pools were plotted (supporting information, Figure S1). We carried out a fermentation of the industrial wine yeast strain EC1118 to demonstrate the fermentation profile of an industrial strain under the same conditions (Figure S1). Growth reached a maximal OD600 of ∼4.2 for both homozygous and heterozygous deletion pools, whereas the EC1118 wine yeast was able to grow to an OD600 of over 6.0 (Figure S1A). After 14 days, the concentration of ethanol in the homozygous and heterozygous diploid deletion pool fermentations was 12.4% and 12.0% (v/v), respectively, whereas the EC1118 fermentation attained 14.0% (v/v) ethanol (Figure S1B). As expected, the EC1118 fermentation was more robust than the S288C homozygous and heterozygous deletion mutant pools as ethanol production reached a plateau after 6 days of fermentation, whereas the S288C pools continued to produce ethanol over the entire 14-day period. There was no discernable difference between the fermentation profiles of the homozygous and heterozygous deletion set pools.
To avoid identification of yeast deletion strains that had fitness requirements due to the transfer of cells from rich media to synthetic grape juice, a control sample was taken after the homozygous and heterozygous deletion set pools had adapted for 24 h in synthetic grape juice, at which point the culture was still in logarithmic phase (Figure S1A). The day 1 time point was used as a hybridization control for all subsequent time points at days 2, 4, 6, 8, 10, and 14 of fermentation. Homozygous and heterozygous deletion strains that exhibited a 2-fold or greater alteration in barcode signal intensity in experimental over control sample in three or more time points were deemed to have either decreased or increased fitness during the fermentation. By this criterion, we identified 300 homozygous (Table S1) and 481 heterozygous (Table S4) deletion strains with reduced fitness during fermentation with an overlap of 38 genes (Table S7). Similarly, we identified 303 homozygous (Table S2) and 466 heterozygous (Table S5) deletion strains with increased fitness during fermentation with an overlap of 48 genes (Table S8). Of the heterozygous deletion mutants with reduced fitness, 116 are essential, and of the heterozygous deletion mutants with increased fitness, 111 are essential, which partially accounts for the low overlap between the datasets (Table 1). Approximately 20% of the deletion strains identified in each screen were deletions of uncharacterized genes and dubious ORFs (Table 1). Thus, nutrient and ethanol stress, as well as oxygen deprivation caused by fermentation, revealed potential roles for genes whose function has not been identified under conventional laboratory conditions.
Autophagy mutants have reduced fitness during fermentation
We performed hierarchical cluster analysis of the 300 homozygous deletion strains (Figure 1A) and 481 heterozygous deletion strains (Figure 1B) with reduced fitness during fermentation. We found that some barcodes show inconsistencies across time points (e.g. depleted in day 2 yet enriched in day 4), likely due to noise in the data because each time point consisted of one biological replicate. Despite this caveat, clustering of the homozygous deletion strains with reduced fitness during fermentation revealed a strong cluster of autophagy genes, deletion of which caused progressive fitness defects over the fermentation period (Figure 1A). Consistently, autoproteolytic processing was the most highly enriched functional category in the entire dataset (P value of 4.5 × 10−17, Table 2). Autophagy is an evolutionarily conserved degradative process by which cytoplasmic constituents and organelles are sequestered into vesicles known as autophagosomes, which in turn fuse with the vacuole and thereby degrade their contents (Nakatogawa et al. 2009; Xie and Klionsky 2007). More selective forms of autophagy, in which specific organelles are engulfed and degraded, include the constitutively active cytoplasm-to-vacuole (Cvt) pathway, ribophagy, mitophagy, pexophagy, and reticulophagy (Kraft et al. 2009). A core set of 15 Atg proteins is required for autophagosome formation in all types of autophagy (Atg1-10, Atg12-14, Atg16,18) and is associated with the preautophagosomal structure (PAS), which is the site adjacent to the vacuole where autophagosomes are generated (Nakatogawa et al. 2009). Thirteen of 15 strains deleted for core ATG genes and 2 of the 3 strains deleted for starvation-induced autophagy genes were significantly depleted during fermentation (Figure 2, Table 2). In contrast, strains disrupted for 6 of the 7 ATG genes that have specific roles in the constitutively active Cvt pathway were not significantly selected for or against during fermentation (Figure 2, Table 2).
Ubiquitin-proteasome pathway mutants have reduced fitness during fermentation
Cluster analysis of the heterozygous deletion strains that have decreased fitness during fermentation did not reveal a prominent cluster of genes as seen with the autophagy deletion strains; however, a functional enrichment query identified a significant enrichment of 23 genes with a role in the ubiquitin-proteasome system (UPS) (Figure 1B, Table 3). Indeed, we additionally observed that 17 homozygous strains deleted for ubiquitin-modification genes had overt fitness defects during fermentation, a significant enrichment of this functional class of genes (Table 2). The UPS is the major intracellular degradative pathway in eukaryotes whereby individual protein substrates are selectively conjugated to the small protein modifier ubiquitin by the action of a conserved cascade of E1 (ubiquitin-activating), E2 (ubiquitin-conjugating), and E3 (ubiquitin ligase) enzymes (Elsasser and Finley 2005; Hochstrasser 1996). Our analysis identified homozygous deletion strains disrupted in the stress-responsive ubiquitin gene (UBI4), ubiquitin-conjugating enzymes (MMS2, UBC7, UBC5), ubiquitin ligases (DOA10/SSM4, RMD5, SAN1, SKP2, UBR2), ubiquitin-specific proteases (UBP1, UBP13, UBP14), and other proteins that have various roles in the UPS (CUE1, DOA1, RFU1, UBX2, UFD2; see Table 2). Ubiquitylated proteins are targeted for degradation by the 26S proteasome, which is composed of a 20S core particle that contains the proteolytic active sites and a 19S regulatory particle that controls substrate entry (Finley 2009). We identified heterozygous deletion strains disrupted for components of the core particle (PRE1, PRE2, PRE4, PRE7, PUP1) and the regulatory particle (RPN5, RPT3, RPT5, RPT6), as well as proteins involved in proteasome assembly (ECM29, POC4, UMP1) and proteasome localization (STS1; Figure 1B, Figure 3, Table 3).
Peroxisome biogenesis mutants have a fitness advantage during fermentation
Hierarchical cluster analysis of the 303 homozygous deletion strains that have increased fitness during fermentation did not reveal a prominent cluster of genes; however, a functional enrichment query identified a significant enrichment for peroxisome biogenesis genes (Figure 4A, Table 4). The biogenesis of peroxisomes requires the posttranslational import of peroxisomal matrix proteins; this process requires recognition by a receptor/docking complex at the surface of the peroxisome, translocation across the peroxisomal membrane, release into the peroxisome matrix, and recycling of the receptor (Smith and Aitchison 2009). Deletion strains defective in the docking complex (PEX13, PEX17), translocation process (PEX8), and receptor recycling (PEX1, PEX4, PEX6, PEX10 and PEX22) all had increased fitness during fermentation (Table 4). A strain deleted for a dubious ORF (YJL211C) that overlaps with the PEX2 receptor recycling gene was also enriched during fermentation (Table S2).
Phosphate transport mutants are beneficial for cellular fitness during fermentation
A second functional category of homozygous deletion strains that was enriched during fermentation included disruptions of genes with roles in phosphate homeostasis. Strains lacking high-affinity phosphate transporters (PHO84, PHO89), a low-affinity phosphate transporter (PHO91), and the MIR1 mitochondrial phosphate carrier were all enriched as fermentation proceeded (Table 4). When cells are starved of phosphate, the expression of PHO84, PHO89, and the secreted acid phosphatases (PHO5, PHO11, PHO12) is induced to facilitate the scavenging of phosphate (Mouillon and Persson 2006). When phosphate is plentiful, Pho84 is removed from the plasma membrane and targeted to the vacuole for degradation (Lagerstedt et al. 2002). Similarly, Pho91 and another low-affinity phosphate transporter, Pho87, are targeted for endocytosis and vacuolar degradation by ubiquitination (Estrella et al. 2008). As our synthetic grape juice medium was not limiting for phosphate, we speculate that unnecessary phosphate transport expression and recycling may actually confer a fitness disadvantage under these conditions.
Ribosomal mutants have a fitness advantage during fermentation
Functional enrichment analysis of heterozygous deletion mutants with a fitness advantage during fermentation revealed a significant enrichment for the functional category of ribosomal proteins (P value of 1.5 × 10−8, Table 5). Hierarchical cluster analysis was performed and two clusters of ribosomal genes were identified, although not all 46 ribosomal genes mapped to these clusters (Figure 4B). We identified heterozygous deletion mutants in components of the small (RPS) and large (RPL) ribosomal subunits; the ribosomal stalk (RPP1B); and components of the mitochondrial small (MRPS, PET123, RSM) and large (MRPL) ribosomal subunits, as well as proteins involved in ribosome biogenesis (DBP9, RRP15, RSA3). As deletion of some ribosomal proteins and known ribosome biogenesis factors did not appear to alter fitness during fermentation, it may be that the deletion strains that conferred resistance correspond to ribosome synthesis pathways that integrate specific aspects of nutrient responsiveness. Differential effects of ribosome proteins and ribosome biogenesis gene deletions have been observed previously in cell-size screens (Jorgensen et al. 2002).
Deletion mutants with altered fitness in three sequential fermentation time points are still enriched for the same functional categories
The cellular environment changes rapidly during fermentation due to the consumption of nutrients and production of ethanol. Thus, genes may be required at a specific stage of fermentation but not throughout the entire fermentation. Therefore, we reanalyzed our data in a highly stringent manner by requiring that deletion mutants display a 2-fold or greater alteration in barcode signal intensity in experimental over control sample in three or more sequential time points (Table S9, Table S10, Table S11, Table S12). By these criteria, we identified 180 homozygous (Table S9) and 210 heterozygous (Table S11) deletion mutants with reduced fitness during fermentation with an overlap of 20 genes (Table S13). One hundred sixty-two homozygous (Table S10) and 214 heterozygous (Table S12) deletion mutants have increased fitness during fermentation in three consecutive time points with an overlap of 18 genes (Table S14). We performed analysis of functional enrichment within each new dataset and found that all of the categories that were enriched previously (Tables 2–5) were still enriched with the sequential datasets, with the exception of the peroxisome genes (Table 4). This finding is likely due to data points that were missing from a few of the peroxisome genes (e.g., PEX1 and PEX8 in Figure 4A). However, the overlap between the homozygous and heterozygous mutants with a fitness advantage during fermentation (Table S8) is enriched for genes with a role in fatty acid oxidation, which occurs in the peroxisome (see Discussion).
Autophagy mutants have reduced CO2 and ethanol production during fermentation
Of the genes required for cellular fitness during fermentation, we chose to focus our biological studies on the autophagy pathway because it was the most enriched functional category (Table 2) and revealed a strong cluster of genes based on hierarchical cluster analysis (Figure 1A). We directly measured the effects of ATG gene disruptions on fermentation parameters by performing 16-day fermentations with seven different diploid atg homozygous deletion strains compared with the S288C wild-type diploid parental strain and the EC1118 industrial wine yeast strain. The atg deletion strains exhibited highly similar fermentation profiles; therefore, a representative example (atg3Δ) is shown (Figure 5). As expected, EC1118 had a higher rate of fermentation than S288C with 22.0 g final weight loss and 10.8% (v/v) ethanol produced (Figure 5A, B). Compared with the S288C parental strain, atg3Δ strains had a slower rate of weight loss, indicating lower CO2 production and a reduced fermentation rate (Figure 5A). The final weight loss for the S288C parental strain was 18.4 g compared with 15.2 g for atg3Δ strains. Similarly, the final level of ethanol produced after the 16-day fermentation by the S288C parental strain was 9.0% (v/v) compared with 8.3% (v/v) for atg3Δ (Figure 5B). All of the glucose and most of the fructose (99.7%) were depleted in the EC1118 fermentation. However, the S288C fermentation contained 0.4% glucose and 2.6% fructose, and the atg3Δ fermentation contained 0.8% glucose and 3.3% fructose after 16 days (Figure 5C, D). In all cases, the differences between wild-type and atg3Δ strains are statistically significant (P < 0.02, unpaired Student’s t-test). The atg3Δ strains do not have a slow growth phenotype compared with wild-type cells grown in rich media; therefore, lower production of ethanol by atg3Δ cells during fermentation cannot be attributed simply to attenuated growth (Figure 5E). These results demonstrate that in addition to competitive fitness defects at the population level under fermentation conditions, disruption of autophagy genes causes cells to ferment at a slower rate, resulting in reduced ethanol output and residual sugars.
The autophagy pathway is functional during fermentation
Our fitness profiling data suggested that autophagy, but not the constitutively active Cvt pathway, is required for optimal fitness during fermentation (Figure 2). The yeast vacuolar hydrolase aminopeptidase I (API) is synthesized in the cytoplasm in a precursor form (pAPI) that is targeted to the vacuole by either the Cvt pathway (logarithmic growth) or the autophagy pathway (starvation) (Baba et al. 1997; Klionsky et al. 1992). The conversion of pAPI to its mature form (mAPI) is associated with transport of pAPI to the vacuole and requires the Atg19 receptor in the Cvt pathway (Leber et al. 2001; Scott et al. 2001). However, upon prolonged nitrogen starvation, pAPI is processed to mAPI in the absence of Atg19 by the autophagy pathway (Leber et al. 2001; Scott et al. 2001). We performed a fermentation with wild-type (S288C) and atg19 and atg1 deletion mutants and monitored conversion of pAPI into mAPI. As expected, we detected mAPI in wild-type cells at the start of the fermentation (day 1), and the majority of pAPI was processed by day 4 of fermentation (Figure 6). pAPI was also processed to mAPI in atg19 mutants, albeit at a slower rate, which was previously shown under conditions of prolonged starvation (Leber et al. 2001) (Figure 6). However, no processing of pAPI was observed in atg1 mutants because Atg1 is essential for pAPI processing under all conditions (Figure 6). As pAPI is converted to mAPI in an Atg19-independent, but Atg1-dependent, manner, the autophagy pathway is responsible for the transport of Atg19 to the vacuole during fermentation, suggesting that autophagy is occurring during fermentation.
Autophagy is induced during fermentation
To demonstrate that autophagy is induced during fermentation, we performed electron microscopy (EM) analysis with pep4 homozygous mutant cells after two days of fermentation compared with log phase pep4 homozygous mutant cells. Autophagic bodies are rapidly degraded in wild-type cells upon entry into the vacuole, thus necessitating a vacuolar proteinase-deficient strain (such as a pep4 mutant) to visualize them (Takeshige et al. 1992). Of the vacuoles of pep4 log phase cells (N = 26), 70% were devoid of large membrane-bound vesicles (Figure 7A), whereas after two days of fermentation, autophagic bodies were clearly detected in 75% of the vacuoles imaged (N = 20, Figure 7B, arrows). Autophagic bodies are typically 300–900 nm in diameter compared with Cvt vesicles, which are much smaller (∼150 nm) (Baba et al. 1997; Baba et al. 1994; Takeshige et al. 1992). In addition to the autophagic bodies, we detected smaller vesicles in pep4 mutants after two days of fermentation, suggesting that the Cvt pathway may also be active (Figure 7B). Alternatively, the vacuolar sap could contain remnants of broken down autophagic bodies (Takeshige et al. 1992). Vacuoles are known to fragment when exposed to osmotic stress, and our EM images suggested that fermentation conditions may also induce vacuole fragmentation [(Bonangelino et al. 2002), Figure 7B]. Using a vacuolar-specific stain, we confirmed that vacuoles are indeed fragmented during fermentation (Figure S2). These data suggest that both autophagy and rearrangement of the vacuole are induced during wine fermentation.
Autophagy is induced in the presence of nitrogen
The target of rapamycin (Tor) and protein kinase A-Sch9 signaling pathways negatively regulate autophagy; induction of autophagy requires release from this inhibition via activation of the Atg1-Atg13 kinase complex (Kamada et al. 2010; Noda and Ohsumi 1998; Stephan et al. 2009; Yorimitsu et al. 2007). Indeed, we find that a homozygous tor1Δ strain is enriched during fermentation suggesting that release from Tor1-mediated autophagy inhibition is beneficial for fermentation (Table S2). Induction of autophagy in yeast has been well studied under conditions of nitrogen starvation and inhibition of Tor under starvation conditions induces autophagy (Nakatogawa et al. 2009). To determine if nitrogen pools are depleted during our fermentation study, we did a careful analysis of the homozygous deletion set fermentation compared with the EC1118 wine yeast strain by monitoring total YAN along with metabolites, growth, and weight loss measurements. After 14 days of fermentation, the concentration of ethanol in the homozygous diploid deletion pool fermentation was 10.5% (v/v) compared with 12.2% (v/v) for EC1118 (Figure 8C). Glucose was depleted by 4 days in the EC1118 strain and by 12 days in the S288C pool (Figure 8B). Notably, total YAN, which is a measurement of total ammonium sulfate and amino acids, was retained in all fermentations, suggesting that global nitrogen starvation did not occur (Figure 8D).
Although our YAN measurements suggest that autophagy was not induced by global nitrogen starvation, we cannot assess whether single amino acids have been depleted from the media using this method. Depletion of single amino acids has been demonstrated to induce autophagy, and although we added amino acids to our fermentation media to address auxotrophies in the deletion set, single amino acid depletion may have occurred (Takeshige et al. 1992). However, autophagy is induced by two days of fermentation when cells are still in logarithmic growth (Figure 8A, orange arrow). To verify the presence of all auxotrophically required amino acids, we performed a fermentation with the homozygous deletion set parental strain, and on day two, we filtered the yeast from the fermentation and reinoculated the juice with log phase cells at an OD600 of 0.2. The media isolated from day two of fermentation, when autophagic bodies can be detected, enabled the newly inoculated cells to grow to an OD600 of over 2.0, suggesting that none of the auxotrophic amino acids were depleted (data not shown). On the basis of these results, we propose that autophagy during fermentation is not induced by amino acid depletion.
Our genome-wide survey of the genetic requirements in S. cerevisiae for wine fermentation reveals a primary function for autophagy in this process (Figure 1A, Table 2). The recycling of cellular components by autophagy enables yeast to survive the stressful conditions of fermentation and maximize fermentative output. Consistent with our functional profiles, gene expression studies of S. cerevisiae wine strains reveal that the autophagy genes ATG1, ATG8, and PEP4 are induced during fermentation (Marks et al. 2008; Rossignol et al. 2003). In proteomic studies, protein fragments of glycolytic enzymes that are proteolysed in the vacuole have been detected during fermentation (Trabalzini et al. 2003). Although autophagy has not previously been documented during a primary yeast fermentation, it has been shown that autophagy is induced during secondary fermentation, possibly as a prelude to yeast cell autolysis (Cebollero and Gonzalez 2006; Cebollero et al. 2008). Together with these previous studies, our data suggests that autophagy enables yeast to survive the harsh nutrient and stress conditions that accompany fermentation. We find that autophagy is induced in the presence of nitrogen and sufficient amino acids to support doubling of cells, suggesting that an alternative signal may trigger autophagy induction during fermentation (Figures 6–8).
Our analysis revealed that defects in peroxisome biogenesis and ribosome assembly confer a significant fitness advantage during fermentation (Figure 4, Tables 4, 5). Peroxisomes are degraded by a specialized form of autophagy, termed pexophagy, which is induced upon shift from oxidative growth on poor carbon sources to fermentative growth on glucose (Sakai et al. 2006). The enrichment of strains defective in peroxisome biogenesis raises the possibility that pexophagy is a critical autophagic pathway that is triggered under fermentative conditions. Interestingly, phosphofructokinase protein, but not its enzymatic activity, is required for glucose-induced pexophagy in the methylotrophic yeast P. pastoris (Yuan et al. 1997). One intriguing possibility is that increased glycolytic protein abundance under fermentation conditions is a trigger for pexophagy. We identified 48 genes that overlap between the homozygous and heterozygous deletion mutants with increased fitness during fermentation that are enriched for the MIPS functional classification of oxidation of fatty acids (Table S8, Robinson et al. 2002). One of these genes, PIP2, which encodes the Pip2-Oaf1 transcription factor complex that induces peroxisomal gene expression in response to fatty acids, is repressed by glucose (Gurvitz and Rottensteiner 2006). Two deletion strains with defects in fatty acid β-oxidation (ANT1 and TES1), which takes place in the peroxisome in yeast, also had a fitness advantage during fermentation in both the homozygous and heterozygous datasets (Table S8). In addition, a homozygous deletion of the dubious ORF YNL203C, which removes most of the overlapping SPS19 fatty acid β-oxidation gene, was enriched during fermentation (Table S2). These observations suggest that peroxisome-mediated catabolism may adversely affect strain viability during fermentation.
Ribosomes are degraded by a specialized form of autophagy termed ribophagy (Kraft and Peter 2008; Kraft et al. 2010). Ribosomes constitute about half of the total cellular protein, therefore their degradation may be a major amino acid source under nutrient-limiting conditions such as fermentation. Both ribosome assembly and protein translation consume energy, so downregulation of these processes might enable cell survival under nutrient-limited conditions. Indeed, we identified a number of heterozygous mutants in genes involved in tRNA synthesis that were enriched during fermentation, supporting this hypothesis (Table S5). Recent studies have implicated the Ubp3 ubiquitin protease, its cofactor Bre5, and the Rsp5 ubiquitin ligase in ribophagy (Kraft et al. 2008; Kraft and Peter 2008; Kraft et al. 2009). An intriguing possibility is that some of the ubiquitin-modifying proteins identified in our study may have direct roles in selective autophagy during fermentation.
We found that the 26S proteasome is required for fermentation fitness, suggesting that the UPS is important in the adaptive response to fermentation. In agreement with our data, the single ubiquitin encoding gene in yeast, UBI4, is induced during starvation, and overexpression of UBI4 confers ethanol tolerance (Chen and Piper 1995; Finley et al. 1987; Fraser et al. 1991). In addition, UBI4 was identified from a previous small-scale competitive growth screen as being required for stress tolerance during ethanol production (Sharma et al. 2001). This result and the fitness defect of strains disrupted for ubiquitin-specific proteases suggest that ubiquitin itself may be limiting during the extensive proteome and membrane remodeling that occurs during fermentation.
The 20S core particle of the 26S proteasome forms a barrel with a stack of four 7-membered rings (2 inner rings formed by β-type subunits and 2 outer rings formed by α-type subunits) (Finley 2009). We identified heterozygous mutants of five β-type subunits (PRE1, PRE2, PRE4, PRE7, PUP1) that had a fitness disadvantage during fermentation (Table 3, Figure 3). In contrast, a heterozygous deletion strain of PRE5, the α6 subunit of the proteasome, had a fitness advantage during fermentation (Figure 3, Table S5). The β-type subunits contain the proteolytic-active sites of the proteasome, which could explain why loss of these subunits is more detrimental to cellular fitness during fermentation (Finley 2009). Assembly of a specific isoform of the 20S core particle is regulated by the Pba3/Irc25–Pba4/Poc4 assembly chaperone (Kusmierczyk et al. 2008). Unexpectedly, we detected a fitness defect for the pba4/poc4 heterozygous deletion mutant but a fitness advantage for the pba3/irc25 heterozygous deletion mutant (Figure 3, Table 3, Table S4, Table S5). One intriguing possibility is that alternative forms of the 20S core particle enhance cell fitness during fermentation.
Our fitness profiles also revealed a number of other genes with discrete functions that are necessary for optimal growth and survival during fermentation (Table S1, Table S2, Table S3, Table S4, Table S5). In particular, our profiles assigned fermentative phenotypes to 139 uncharacterized genes and 143 dubious ORFs. Most of the dubious ORFs overlap genes with known function, some of which are implicated in autophagy, proteasomal degradation, and ribosome and peroxisome biogenesis. For example, the dubious ORF YMR158W-B, the deletion of which was selected against during fermentation (Figure 1A, Table S1), overlaps with the autophagy gene ATG16. Similarly, the dubious ORF YJL211C, the deletion of which was enriched during fermentation (Table S2), overlaps with the peroxisomal gene PEX2, and the dubious ORF YLR339C, which was enriched in the heterozygous deletion set data, overlaps the essential ribosomal protein RPPO (Table S5). The roles of other uncharacterized genes in fermentation remain to be determined.
A heterozygous deletion mutant fitness profiling study was previously reported in nutrient-limiting conditions, including grape juice media (Delneri et al. 2008). We compared our fermentation fitness profiling data to the deletion mutants identified as haploinsufficient (decreased growth rate) and haploproficient (increased growth rate) from the Delneri et al. (2008) dataset. Heterozygous deletion mutants with a fitness disadvantage during fermentation displayed a statistically significant, albeit modest, 2-fold greater overlap than expected by chance with haploinsufficient mutants grown in carbon-limiting, nitrogen-limiting, and grape juice media (Figure S3). With the exception of a minor enrichment in carbon-limiting conditions, no significant overlap was detected between mutants with a fitness advantage during fermentation and haploproficient mutants grown in nutrient-limiting media (Figure S3). One possibility for this lack of overlap is that we performed a closed fermentation under anaerobic conditions, whereas Delneri et al. (2008) grew their mutant pool in continuous cultures in aerobic conditions. The difference in environmental conditions could be why UPS mutants were haploproficient in nitrogen-limiting conditions, whereas we found that UPS mutants had a fitness disadvantage during fermentation. Delneri et al. (2008) postulated that “protein conservation may be beneficial” under nitrogen-limiting conditions, whereas we postulate that protein recycling is beneficial to fermenting cells. We performed an analysis of functional enrichment within the Delneri et al. (2008) datasets and found that, similar to our heterozygous fermentation data, ribosomal proteins were haploproficient in carbon-source–limiting media (Table 5). Therefore, both studies suggest that a decrease in protein production is beneficial to cells under nutrient stress. Indeed, slowing the growth rate of ribosomal mutants in minimal media rescues their growth defect in rich media (Deutschbauer et al. 2005).
The comprehensive identification of S. cerevisiae gene function has been hampered to some extent by the use of standard laboratory growth conditions. By subjecting the laboratory yeast deletion strain collection to harsh fermentation conditions, we have uncovered the cellular processes and gene function processes necessary for fitness in this natural environment. The identification of genes required for cellular fitness during fermentation should facilitate the genetic engineering of wine yeast strains that are hypertolerant to the harsh conditions of industrial wine fermentation. Recent global transcription machinery engineering (gTME) demonstrates the feasibility of constructing strains with superior fermentative capacity (Alper et al. 2006). Notably, we identified 33 transcription factor genes that modulate fitness during fermentation (Table S1, Table S2, Table S3, Table S4, Table S5); these factors are candidates for future gTME efforts to create specialized fermentation strains. Similarly, the manipulation of autophagy, peroxisome biogenesis, ubiquitin-dependent protein modification, metabolism, and other processes may enhance the utility of yeast in food, enzyme, and biofuel production.
The authors acknowledge the UBC Bioimaging facility, in particular Garnet Martens and Brad Ross, for the electron miscroscopy work. The authors would also like to acknowledge Lina Madilao for mass spectrometry analysis of fermentation metabolites. The authors thank Dr. Kuninori Suzuki and Dr. Yoshinori Ohsumi for the kind gift of the GFP-Atg8 plasmid; Dr. Daniel Klionsky for the kind gift of API antibody; Dr. Hennie J. J. van Vuuren and his lab members for helpful discussions; and Dr. George van der Merwe, Dr. Richard Gardner, and Dr. Kristin Baetz for comments on the manuscript. M.C. is supported by the Natural Sciences and Engineering Research Council of Canada (NSERC) and the University of Toronto. M.T. is a research professor of the Scottish Universities Life Sciences Alliance and holds a Royal Society Wolfson Research Merit Award. V.M. is a Canada Research Chair in Enology and Yeast Genomics. V.M. was supported by the Canadian Institutes of Health Research (MOP-84242) and NSERC (RGPIN 326924-06).
Supporting information is available online at http://www.g3journal.org/lookup/suppl/doi:10.1534/g3.111.000836/-/DC1
Arrays have been submitted to the EBI database at EMBL(E-MEXP-3332).
- Received May 26, 2011.
- Accepted August 13, 2011.
- Copyright © 2011 Piggott et al.
This is an open-access article distributed under the terms of the Creative Commons Attribution Unported License (http://creativecommons.org/licenses/by/3.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.