Abstract
Replicative aging has been demonstrated in asymmetrically dividing unicellular organisms, seemingly caused by unequal damage partitioning. Although asymmetric segregation and inheritance of potential aging factors also occur in symmetrically dividing species, it nevertheless remains controversial whether this results in aging. Based on large-scale single-cell lineage data obtained by time-lapse microscopy with a microfluidic device, in this report, we demonstrate the absence of replicative aging in old-pole cell lineages of Schizosaccharomyces pombe cultured under constant favorable conditions. By monitoring more than 1,500 cell lineages in 7 different culture conditions, we showed that both cell division and death rates are remarkably constant for at least 50–80 generations. Our measurements revealed that the death rate per cellular generation increases with the division rate, pointing to a physiological trade-off with fast growth under balanced growth conditions. We also observed the formation and inheritance of Hsp104-associated protein aggregates, which are a potential aging factor in old-pole cell lineages, and found that these aggregates exhibited a tendency to preferentially remain at the old poles for several generations. However, the aggregates were eventually segregated from old-pole cells upon cell division and probabilistically allocated to new-pole cells. We found that cell deaths were typically preceded by sudden acceleration of protein aggregation; thus, a relatively large amount of protein aggregates existed at the very ends of the dead cell lineages. Our lineage tracking analyses, however, revealed that the quantity and inheritance of protein aggregates increased neither cellular generation time nor cell death initiation rates. Furthermore, our results demonstrated that unusually large amounts of protein aggregates induced by oxidative stress exposure did not result in aging; old-pole cells resumed normal growth upon stress removal, despite the fact that most of them inherited significant quantities of aggregates. These results collectively indicate that protein aggregates are not a major determinant of triggering cell death in S. pombe and thus cannot be an appropriate molecular marker or index for replicative aging under both favorable and stressful environmental conditions.
Author summary
Multicellular organisms universally senesce and must produce rejuvenated progenies in order to transmit life. Although similar age-related deterioration in physiological functions and reproduction is also found in unicellular organisms that divide asymmetrically to produce morphologically distinct aged and younger cells, it has been unclear whether symmetrically dividing microbes—such as fission yeast—exhibit the same traits. Using long-term live-cell microscopy combined with a microfluidic device, we monitor the growth and death of a large number of fission yeast cells and demonstrate the existence of aging-free lineages. These lineages are, however, not immortal, and the probability of death increases as the cells grow more rapidly; thus, the “live fast, die fast” trade-off exists in fission yeast. We further characterize the segregation and inheritance of protein aggregates, which are commonly thought of as “aging factors.” The aging-free lineages bear the aggregate load for some generations with no apparent adverse effects on growth. We also show that there is no threshold amount of protein aggregate above which cells are destined to death in both normal and stressed conditions: protein aggregate is thus not a direct initiation signal for cell death. Our data reveal that protein aggregation might not be an appropriate index for aging and that we should revisit its role in cell physiology.
Introduction
Replicative aging in unicellular organisms is defined by a gradual increase in generation time and probability of death as cell divisions increase. In cases of asymmetrically dividing unicellular organisms such as Caulobacter crescentus, Saccharomyces cerevisiae, and Candida albicans, aging is manifested and linked to morphological asymmetry [1–3]. The situation, however, is less clear for symmetrically dividing organisms. While some evidence suggests replicative aging in old-pole cell lineages of Escherichia coli [4–6], Wang et al. reported that growth rates of E. coli old-pole cells did not significantly alter over 200 generations, despite the gradual increases in filamentation and death rates [7]. For the symmetrically dividing fission yeast S. pombe, earlier studies suggested replicative aging by observation of asymmetry in cell volume at divisions followed by the deaths of the larger cells and asymmetric segregation of carbonylated proteins (one of the biomarkers of oxidative stress). Additionally, it was suggested that inheritance of carbonylated proteins and a birth scar might inversely correlate with survival probability [8–10]. In a more recent study, however, Coelho et al. showed that potential aging factors such as an old pole, a new spindle pole body, and protein aggregates did not correlate with generation time, suggesting that S. pombe does not age, at least under favorable conditions [11].
The key mechanism to generate aging lineages (and their rejuvenated counterparts) is thought to be asymmetric segregation of “aging factors,” regardless of the mode of cell division. Among the potential aging factors are aggregates of misfolded proteins [12,13]. In E. coli, naturally occurring protein aggregates reside exclusively at old-pole ends, probably because of nucleoid occlusion, and a negative correlation between the aggregate burden and growth rate is observed [5,6]. Likewise, in S. cerevisiae, protein aggregates are preferentially found in aging mother cells. Active mechanisms that have been suggested to contribute to asymmetric segregation include organelle-associated confinement and actin cable-dependent retrograde flow [14–17]. Asymmetric damage segregation and its association with aging were also suggested in S. pombe cultured under heat or oxidative stress conditions [11]. Although it was previously shown how aggregates are formed, move, and segregate during cell division, it is not clearly established whether they contribute to an increased death rate [11,18].
To study the aging process of yeasts, lineage tracking on an agar plate is conventionally performed [19]. This requires micromanipulation to remove daughter cells and is relatively labor intensive, thus precluding high-throughput and long-term analyses. An increasing number of studies at the single-cell level for various model organisms utilize microfluidic devices made of polydimethylsiloxane (PDMS), a chemically stable and biocompatible silicone, in combination with automated microscopic imaging techniques [20–25]. One such device, termed the “Mother Machine,” was originally developed to track E. coli old-pole cell lineages with considerably higher throughput (105 individual old-pole cells) and longer duration (200 generations) than previous studies [7]. Mother Machine-like microfluidic devices for S. pombe have been reported recently, and they demonstrated the absence of replicative aging in rich medium [26,27].
In this work, we measured more than 1,500 fission yeast old-pole cell lineages up to 80 generations using a custom-built Mother Machine-like microfluidic device. By measuring cell division and death rates in 7 different balanced growth conditions, we confirmed the absence of replicative aging in old-pole cell lineages in all of the tested environments and found a positive correlation between the division and death rates. We observed formation, growth, inheritance, and asymmetric segregation of Hsp104-associated protein aggregate in the old-pole lineages and demonstrated that inheritance and quantity of protein aggregate affected neither generation time nor triggering of cell death. In addition, a large amount of protein aggregate induced by transient stress treatment could also be tolerated without affecting cellular growth rates. Collectively, our results suggest that protein aggregate does not serve as an aging marker under both favorable and stressful conditions.
Results
Old-pole cell lineages exhibit aging-free growth over tens of generations in a microfluidic device
We designed and developed a microfluidic device for long-term tracking of old-pole cell lineages of S. pombe (Fig 1A and 1B and S1 Fig). Our device has essentially the same architecture as the “Mother Machine,” which was originally developed by Wang et al. for studying aging and growth in E. coli [7], except that the dimensions of the internal channels were scaled up for fission yeast, which are physically larger. During time-lapse experiments, the device was constantly supplied with fresh medium to keep the environmental conditions around the cells unchanged. We experimentally confirmed that the medium reached the ends of the observation channels within 5 min, both in the absence and presence of cells (S2 Fig and S1 Movie). Cells grew and divided aligned in the observation channels, and cells that spilled out from the observation channels to the trench were washed out by the flow of medium (Fig 1B and S2 Movie). These settings allowed us to follow the division dynamics of cells located at the ends of the observation channels, referred to as old-pole cells (or mother cells), typically for 50–80 generations. Time-series data on cell size (determined by visualized cell area) for every cell lineage were extracted from a set of time-lapse images (Fig 1C). We analyzed more than 1,500 single-cell lineages in each experiment, which is comparable to, or larger than, the numbers of cell lineages analyzed in similar microfluidic experiments [7,27].
We performed time-lapse experiments employing 7 different culture conditions with different media (yeast extract medium [YE] or Edinburgh minimal medium [EMM]) and temperatures (see S1 Table for the summary of all measurements). Plotting the cumulative division probability against time confirmed that division rates were strikingly stable except during the initial measuring (Fig 1D and S3 Fig). This early instability in division rates reflected a lag in cell recovery from the slow-growing state that follows the loading of the cells into the microfluidic device (see Materials and methods). Population doubling times calculated from the distributions of generation times (see [28–30] for reference) were close to those determined in batch culture experiments in the same media and temperature conditions (Fig 1E and S2 Table). This indicates that the medium exchange rate in the device is sufficiently high. The stability in division rates for 50–80 generations, in turn, suggests an absence of deterioration in the reproductive ability of old-pole cells, under favorable culture conditions.
Despite these favorable growth conditions, we observed the deaths of individual cells at low frequencies over the entire observation period (Fig 2A, S2 Movie and S1 Table). Because the death events were observed throughout the time-lapse experiments and in every imaged position, they were not caused by temporal and/or local alterations in culture environments. The behaviors of cells destined for death were heterogeneous but could be broadly categorized into 3 types: Type I (swollen), Type II (hyperelongated), or Type III (shrunken). Approximately 80% of the death events were categorized as Type I, and in almost all of these cases, siblings in the same observation channel synchronously died (S4D and S4E Fig and S2 Movie). These observations are consistent with a recent report using a similar microfluidics system [27]. The synchronous deaths were also observed in another PDMS microfluidic device, where the observation channels accommodate greater numbers of cells than the Mother Machine. Importantly, we observed the synchronous deaths even when the dying siblings were spatially separated, whereas the other surrounding cells continued dividing normally (S4F Fig and S3 Movie). These findings suggest that the synchronous deaths are not induced by local environmental changes in channels but are triggered in their common ancestor cells.
We did not detect any preceding progressive signatures in the growth and division histories of dead cells. For example, the transitions in generation times of the extinct cell lineages were indistinguishable from those of the surviving lineages; no obvious or discernible increase in generation times was observed prior to cell deaths (Fig 2B). The stability of generation times in the extinct cell lineages was further confirmed by comparing the means and standard deviations of generation times for each generation between the surviving and extinct lineages (Fig 2C and S5 Fig). In addition, the number of surviving cell lineages decayed exponentially with time and generation count (Fig 2D and 2E and S6 Fig), indicating that cell deaths occurred randomly with fixed probabilities and that every lineage exhibited an equal chance of abrupt death. The death rates estimated from the decay curves were small, in the order of 10−5 per min (or 10−2 per generation). We noticed that our standard fluorescence imaging conditions induced weak photodamage [31]. Consequently, the estimated death rates were slightly higher than the death rates obtained by bright field imaging alone, but the constancy of the death rates was unaltered (S4B and S4C Fig).
Trade-off between reproduction and survival in balanced growth conditions
We next investigated how cellular division and death rates might be interrelated. As presented in Fig 3A, we found that the death rate increased linearly with the division rate. The values of each data point (including error estimates) and the corresponding culture conditions are summarized in S3 Table. For example, in YE at 34°C, the division rate was r = (8.94 ± 0.01) × 10−3 min-1 (mean generation time τb = 1/r = 112 min), and the death rate was k = (1.1 ± 0.1) × 10−4 min-1 (characteristic lifetime τd = 1/k = 9.1 × 103 min = 6.3 days). Additionally, in EMM at 28°C, the division rate was r = (4.29 ± 0.01) × 10−3 min-1 (τb = 233 min), and the death rate was k = (2.0 ± 0.4) × 10−5 min-1 (τd = 5.0 × 104 min = 35 days). Thus, fast growth significantly shortens the lifetime of single cells. Reformatting the plot reveals that the expected life span of single-cell lineages in units of generation (τd/τb) also decreases with division rate, asymptotically approaching the minimum bound (the shortest expected life span) of approximately 50 generations (Fig 3B, gray broken line). The decrease in expected life span can be attributed to the fact that the death rate reaches 0 with a positive division rate value (rmin = [3.6 ± 0.2] × 10−3 min-1, equivalently τbmax = 280 min), as shown in Fig 3A.
It should be noted here that Spivey et al. has recently reported that the death probability per generation of h- 972 (the same strain used in our study) grown in rich medium was about 1.8% where the mean generation time was about 130 min [27]. These values correspond to the division rate r = 7.7 × 10−3 min-1 and the death rate k = 1.4 × 10−4 min-1. The linear relation in Fig 3A predicts that k = 8.6 × 10−5 min-1 when r = 7.7 × 10−3 min-1, which is 1.6-fold lower than their experimental value but reasonably close despite the different configurations of the microfluidic devices.
Aggregated protein deposits remain in old-pole cell lineages for multiple generations but are eventually segregated to new-pole cells
Our observation that fission yeast old-pole cell lineages are unlikely to undergo replicative senescence motivated us to proceed to monitor long-term dynamics of protein aggregation to gain insight into how these lineages avoid aging. In general, protein aggregates are associated with molecular chaperones and heat shock proteins that can extricate protein monomers from the aggregates and refold them into their native structures [12,13]. One of the most well-studied heat shock proteins in yeasts is Hsp104, an ATP-dependent disaggregase that is often used as a molecular marker of protein aggregation in both S. cerevisiae and S. pombe. A strain that expresses Hsp104–green fluorescent protein (GFP) from the native chromosomal locus was observed in the microfluidic device for approximately 50 generations (Fig 4A and S4 Movie). The time-lapse imaging revealed that most healthy growing cells had 0 or 1 major GFP focus. We defined aggregates as a set of connected pixels whose fluorescence (i.e., GFP) intensity exceeded a defined threshold value and quantified aggregate amounts by integrating fluorescent intensity within the connected area (S7 Fig). The distribution of aggregate amounts was roughly exponential (Fig 4B), which is consistent with previously reported results [18]. Fig 4C presents a representative dynamic of formation, growth, and segregation of protein aggregates in an old-pole cell. Once formed at an old-pole end, the (major) aggregate grew and tended to remain at the pole for many generations, but it occasionally migrated toward the new-pole end and was subsequently segregated to the new-pole cell (S4 Movie), which is qualitatively consistent with an earlier report [18]. The distribution of aggregate inheritance duration, which is defined as the time interval between 2 successive “born-clean events” in units of generation, had a peak at 4 generations with an extended tail to the right and spreading over more than 40 generations (Fig 4D). The tail can be approximately fitted by an exponential curve with a decay rate of λ = 0.13 (generation-1), suggesting that the segregation of protein aggregate to a new-pole cell is a random process that occurs once in every 1/λ = 7.8 generations on average. These results revealed that fission yeast old-pole cell lineages could escape from the burden of protein aggregate.
Protein aggregation affects neither generation time nor initiation of cell death
Although the mean generation time of the old-pole cell lineages was stable (Fig 2B and 2C), heterogeneity in each cell cycle length might be related to protein aggregation. We quantified the load of protein aggregation using 2 metrics: (1) aggregate amount and (2) aggregate age, the latter being defined as elapsed time (in units of generation) since the last birth without aggregate inheritance (indicated by “Born clean” bars in Fig 4C). The former evaluates the current load of aggregation, whereas the latter evaluates the burden of possessing the aggregate for prolonged periods. We first simply plotted generation time against (cell cycle-averaged) aggregate amount (Fig 5A) and aggregation age (Fig 5B), detecting no correlations.
To analyze such relations in greater detail, we partitioned the data points in Fig 5A and 5B into 3 classes (low, middle, and high) according to the aggregation metrics (aggregate amount or aggregation age) and compared the generation time distributions among the classes (Fig 5C and 5D). The distributions were essentially identical among the classes for both aggregation indices, which strongly indicates that cell cycle length is unaffected by protein aggregation.
Next, we examined if the amount and inheritance of protein aggregation trigger cell death. Fig 6A illustrates protein aggregation dynamics (Hsp104-GFP aggregate amount) along with the level of constitutively expressed protein (mCherry mean fluorescence intensity corresponding to its cellular concentration) for both survived and extinct lineages. Typically, cells destined for death exhibited accelerated accumulation of protein aggregates immediately prior to death (Fig 6A [top panel], after 4,500 min); we detected accelerated accumulation in 79% (427 out of 541) of extinct lineages. The commencement of accelerated accumulation was detectable by clear kinks in the transitions of aggregate amounts. These kinks seem to identify the time of initiation of cell death because other apparent functional deteriorations, such as radical increases in mCherry expression and changes of cellular morphology, also initiated concurrently (Fig 6A and 6B and S4 Movie). Interestingly, even after the onset of these abnormalities, cell division occurred a few times before death (Fig 6C), which might underlie the observed synchronized deaths (S4D, S4F and S4G Fig).
Due to the occurrence of accelerated accumulation in many extinct lineages before deaths, the distribution of aggregates at the death points was shifted toward greater values (Fig 6D). However, the distribution of the amount at the kink points was very close to that for the total population (Fig 6D), which suggests that large aggregate amounts are not required for initiating the process of dying. To reinforce this observation, we counted the numbers of cells that exhibited deaths and kinks for given ranges of aggregate amount (Fig 6E) and evaluated the probability of death (Fig 6F) and of starting accelerated accumulation (Fig 6G). The results showed that the probability of commencing accelerated accumulation did not increase with the aggregate amount, although that of observation of cell deaths was elevated, which again suggests that the aggregate amount is not causative of initiation of the dying processes.
We also investigated whether retention of protein aggregates increased the probabilities of death and of starting accelerated accumulation by counting the numbers of cells that showed deaths and kinks for given aggregation age (Fig 6H). We found that both probabilities were nearly constant, irrespective of aggregation age (Fig 6I and 6J). The death probabilities for aggregation age < 3 generations were slightly lower than the total death probability (1.15 × 10−2 per generation) (Fig 6I), possibly because of an identified lag of a few generations before death, after the onset of accelerated accumulation (Fig 6C). Indeed, the probabilities of commencing accelerated accumulation were equally high for these small aggregation-age generations (Fig 6J). Overall, our data suggest that Hsp104-associated protein aggregation is unlikely to play a major role in initiating the dying process. Our results, however, do not exclude the possibility that rapid accumulation of protein aggregate might accelerate completion of the dying processes post onset.
Protein aggregation induced by oxidative stress does not result in replicative aging
It has been suggested that fission yeast ages upon stress treatment, and inheritance of large protein aggregate results in increased death probability [11]. To see if these aging phenotypes are also observed in our system, we transiently treated cells with hydrogen peroxide (H2O2), a commonly used oxidative stressor, and monitored cell division/death kinetics along with protein aggregation dynamics. As expected, cells immediately ceased to divide upon stress treatment (Fig 7A, around t = 6,000 min). After removal of the stress, there was a lag (around t = 6,000–6,500 min) before cells resumed dividing. Strikingly, once cells started to grow again, the division rate was almost the same as that previously observed under unstressed conditions (Fig 7A). The survival curve in Fig 7B revealed an increase in death rate upon stress treatment (approximately 10% cells died during 1 h of exposure to hydrogen peroxide). Although the recovery was slower than that of division rate, the death rate also returned to the normal level seen in the unstressed condition. We did not observe the progressive increase of generation time after stress removal, one of the hallmarks of replicative aging; marked increase of generation time was seen only in the first generation after stress removal (Fig 7C). These results suggest that the apparent deterioration in cellular growth/death is a transient response to the stress and not a manifestation of aging.
We next asked how protein aggregation dynamics are related to the stress response. As reported earlier, we observed that oxidative stress enhanced protein aggregation, and many lineages accumulated aggregate to high levels not attainable in normal conditions (Fig 7D). When the cells re-entered division cycles after stress removal, the large amount of aggregate persisted (and even continued to grow in some cases). Strikingly, even such significant amounts of aggregate did not affect generation time (Fig 7E). In nonstressed conditions, the amount of aggregate did not exceed 400 (× 103 a.u.) in 90% of extinct lineages, whereas approximately 40% of the lineages that survived the stress treatment until the end of measurement experienced more aggregation than 400 (× 103 a.u.) (Fig 7F). These results further support that the absolute amount of protein aggregate does not determine growth kinetics or cell fates. This contrasts with the previous report [11], in which the authors concluded that S. pombe exhibits aging under stressful conditions.
Ectopically induced protein aggregation does not affect cellular growth or death
To further examine if protein aggregation can result in cellular aging and/or cell death in S. pombe, we ectopically expressed a truncated version of the orthoreovirus aggregation-prone protein, μNS, which was N-terminally tagged with mCherry or mNeonGreen for visualization by fluorescent microscopy [32–34]. We confirmed that μNS formed aggregates in the cytoplasm of S. pombe, which are detectable as bright foci in many cells (Fig 8A). mCherry-μNS and Hsp104-GFP foci did not colocalize, which indicates that not all protein aggregates were associated with Hsp104 (Fig 8A and S5 Movie). Formation and segregation dynamics of mNeonGreen-μNS aggregate were similar to those of Hsp104-GFP, other than that accelerated accumulation before cell death was not observed (Fig 8B, S8A Fig and S5 Movie). Generation time was not correlated with either aggregate amount or aggregation age (Fig 8C), and distribution of μNS aggregate amount at death points was almost identical to that at the termination of the measurements for the survived lineages (Fig 8D). These results suggest that, as noted for endogenous Hsp104-associated protein aggregation, induction of ectopic protein aggregation causes no functional loads on S. pombe cells in terms of the rates of cell division and initiation of death.
Deletion of hsp104+ gene does not result in aging
Finally, we examined if hsp104+ gene disruption results in replicative aging in the old-pole cell lineages. As expected, hsp104Δ strains were sensitive to heat shock (Fig 9A). The deletion, however, did not affect the status of μNS aggregate in terms of both inheritance duration and distribution of the amount (S8A and S8B Fig). Likewise, generation time remained noncorrelated to aggregation (S8C Fig), and distribution of aggregate amount at death points was similar to that at the end points of the survived lineages (S8D Fig). Division and death rates for the deletion mutant were essentially identical to those in the wild-type strain (Fig 9B and 9C). Taken together, our data suggest that regulation of protein aggregation by Hsp104 is not critical for avoiding replicative aging in the old-pole lineages of S. pombe.
Discussion
In this study, we investigated the growth and death of S. pombe under various favorable culture conditions and demonstrated the lack of replicative aging in old-pole cell lineages. While being free from replicative aging, the cells died abruptly, and our extensive quantification revealed trade-offs between reproduction rate and survival probability. Furthermore, we showed that Hsp104-associated protein aggregation, often regarded as an aging factor, did not have a significant effect on growth and initiation of the dying processes, not only under normal conditions but also when stressed, where a large quantity of protein aggregate was induced.
Replicative aging in fission yeast
The observation that both division and death rates were constant over tens of generations strongly suggested that the fission yeast old-pole cell lineages were free from replicative aging (Figs 1 and 2). This endorses the conclusion of a recent report on the absence of replicative aging in fission yeast in favorable conditions [11,27]. However, we cannot formally exclude the possibility that aging of fission yeast occurs over a longer timescale than the observed durations in our experiments and in other recent work [11,27]. Regarding the discrepancy with the earlier reports, in which replicative aging was suggested [8,10], it is of note that in the cited mortality assays, the populations became extinct within 20 generations, while about 80% of cells survived at that generation in our experiments (Fig 2E). This implies that the physiological states of the observed cells in the experiments reported elsewhere were significantly different from those in ours.
Recently, Spivey et al. have also shown the lack of replicative aging in old-pole cell lineages of S. pombe under favorable conditions using a similar microfluidics device [27]. Importantly, they observed that the death rates were variable among different strains of S. pombe even under the same culture conditions. For example, the death rate of NCYC132 strain was 5-fold lower than that of h- 972. On the other hand, we have shown that the death rates of one S. pombe strain (h- 972) are variable under different growth conditions and characterized the trade-off between fast growth and death (Fig 3). It is then natural to ask how strongly the division-death trade-off depends on the genetic backgrounds of different strains. This important subject of future studies might provide insights into the generality and the origin of the trade-off relation.
Our experiments involving oxidative stress exposure in the microfluidic device revealed that generation time and death rate reverted to normal after removal of the stressor, although most old-pole cells continued to inherit and accumulate even more Hsp104-associated protein aggregates (Fig 7). This result is inconsistent with the previous report [11], and the widely accepted notion that S. pombe ages under stressful conditions. Because oxidative stress conditions used in our study (1-h exposure to 2 mM H2O2) are more severe than those in [11] (1-h exposure to 1 mM H2O2), the absence of noticeable aging phenotypes cannot be explained by an insufficient dose of stress. One of the possible causes of the discrepancy might be the difference in the culture conditions after stress treatment: cells were grown in microcolony on an agarose pad in [11], whereas they were grown under a microfluidic device with a continuous liquid medium supply in our study. The lack of progressive increases in generation time suggests that the observed increases of generation time, death rate, and the amounts of Hsp104-associated protein aggregation are responses provoked by the stress exposure, not the signature of aging. Therefore, aging under stressful conditions might not be a general trait in S. pombe.
The lack of noticeable aging in S. pombe old-pole lineages contrasts with that in E. coli cultured under favorable growth conditions in the Mother Machine, in which division rates of old-pole cells were stable, but death rates increased over generations [7]. It is interesting to note that the modes of cell wall syntheses at poles are quite different between the 2 symmetrically dividing microorganisms. S. pombe employs polar growth, and newly synthesized cell wall materials are exclusively incorporated at the ends of the cells [35–37], whereas in E. coli, the cylindrical part of the cell grows and cell walls at poles are thought to be metabolically inert and unable to avoid deterioration [38–40]. Thus, for fission yeast we do not have an a priori reason to believe that old-pole lineages should undergo senescence. Rather, new-pole lineages that inherit a larger proportion of old lateral cell walls and a birth scar (due to the delay for the new-pole end to initiate growth after division [41]) might be subject to aging. It should be stressed that our results do not rule out the existence of any forms of lineage-specific aging in fission yeast, e.g., lineages that inherit damaged (carbonylated) proteins and/or birth scars [10]. Since the Mother Machine allows tracking of only old-pole cell lineages, new methods are required to track such cell lineages within proliferating populations.
Our results might also imply that symmetrically dividing unicellular organisms could escape aging if they possess efficient damage repair mechanisms. On the other hand, systematic asymmetric partitioning of most cellular components should occur in nonsymmetrically dividing unicellular organisms, resulting in consistent unequal partitioning of the damaged materials to specific lineages, associated with cellular morphological features such as cell size. This might underlie the empirical fact that aging is more prominent in asymmetrically dividing unicellular organisms.
Protein aggregation and cellular growth/death
A common perception is that protein aggregate accumulates during the aging process or the stress response, and cells die catastrophically when the aggregation load exceeds the cellular capacity. Our data, however, indicated that Hsp104-associated protein aggregate is also formed in aging-free cell lineages (Fig 4 and S4 Movie). We showed that neither the aggregate amount nor the retention time affected the generation time (Fig 5). In addition, we demonstrated that cells transiently exposed to oxidative stress could promptly resume normal growth, even in the presence of unusually large amounts of protein aggregate induced by such stress (Fig 7). The commonly observed correlation between protein aggregation and cell death is most likely explained by the accelerated accumulation of aggregate a few generations before cell death. The commencement points of accelerated accumulation appear to specify the initiation points of the dying processes because the other abnormalities of mCherry expression levels and cellular morphology started around the same time. The initiation of the dying process occurred irrespectively of aggregate quantity, which argues against the concept that there is an absolute threshold in protein aggregation burden for triggering cell death. The results also suggest that retention of the aggregates did not elevate the cell death probability (Fig 6H–6J). Overall, our data indicate that Hsp104 foci do not reflect gradual deterioration of proteostasis in the cells and thus cannot be used as the sole molecular marker for cellular senescence in fission yeast. Our results do not exclude the possibility, however, that rapid accumulation of protein aggregates might accelerate completion of the dying processes post onset. For example, it has been suggested that large protein aggregates tend to overlap division plane and increase the frequency of death [11]. Characterizing in more detail the intracellular events that occur concurrently with the accelerated accumulation might unravel the new roles of the protein aggregates in S. pombe.
Together with the results regarding Hsp104-associated protein aggregation, our experimental results involving the ectopic aggregation-prone protein, μNS, suggest that S. pombe is, in fact, highly tolerant of protein aggregation loads (Fig 8) and that their adverse effects on growth and death and their relation to aging might have been overestimated. More insights would be gained by examining the correlations between the other types of foreign protein aggregation and cellular division and death.
It should be noted that there can be multiple types of protein aggregation with different constituents and formation/degradation dynamics, such as stress foci/Q-bodies/CytoQ, immobile protein deposit (IPOD), juxtanuclear quality control compartment (JUNQ)/intranuclear quality control compartment (INQ), and age-associated deposits, as reported for budding yeast [17,42–44]. Hsp104 is enriched in stress foci, IPOD, and age-associated deposits, but typically not in JUNQ/INQ [17]. Although Hsp104 is assumed to represent total protein aggregates in fission yeast [18], detailed classification and characterization of protein aggregates in this organism are still lacking. Therefore, future studies should clarify to what extent Hsp104-associated protein aggregates capture the behaviors of total protein aggregates in cells.
Trade-off between reproduction and survival
We found that as the cell division rate elevated, the death rate increased in a linear fashion (Fig 3A). Although a simple extrapolation of the linear trend predicts immortality of single cells when the division rate is below rmin, we have not been able to experimentally achieve stable growth with such a low division rate under our current measurement setup. The slow growth of cells with a division rate close to, or even smaller than, rmin could be achieved by applying stressors, such as high/low temperatures, nutrient limitation, drug exposure, or harsh chemical conditions (e.g., extreme redox environments and high/low osmolarity). However, stress responses would render internal cellular states different from those in nonstressed conditions. We speculate that this linear trend is a hallmark of a balanced growth state, rather than a universal constraint on cell division and death rates in any environment.
Why might death rate be positively correlated with division rate? In line with the historical free radical theory of aging, it could be contemplated that faster growth with higher metabolic rates generates greater oxidative stress and/or toxic metabolic wastes that result in cell death [45]. Although a substantial body of work supports the notion that reactive oxygen species (ROS) underlie aging and/or the reproduction-survival trade-off, skeptical views have also been proposed in recent studies [46–48]. In addition, caution should be exercised when applying these theories to aging and/or life history, given the lack of aging before death in our observations. Another, and not mutually exclusive, possibility is that cells might allocate energy and resources to growth and division at the expense of maintenance mechanisms such as DNA repair, protein quality control, and stress responses. Indeed, the expression of stress-induced genes is negatively correlated with growth rate in budding yeast [49], and enhanced stress resistance in slower growing cells has been reported [50,51]. Demetrius proposed that it is neither metabolic rate nor specific metabolites, but rather the stability of the entire metabolic system that determines lifespan [52]. However, how external environments (i.e., temperature and/or nutrition status) affect the robustness of steady-state levels of metabolites to stochastic fluctuations in metabolic processes is still poorly understood and would be an interesting topic for future research.
Causes of cell death
In general, death can be triggered by both external and internal cues [53]. Because the microfluidic system ensures stable culture conditions by continuous supply of fresh medium, cellular deaths observed in this study are most likely caused by internal signals, although we cannot exclude the possibility that subtle fluctuations of local environments around cells had some impacts on death. DNA lesions are unlikely to be a major cause of death because the extensive elongation in cell length, a characteristic phenotype of DNA damage response [54], was observed in only approximately 20% of cases (S4E Fig). ROS are involved in many examples of programmed cell death from yeasts to humans [55–57] and thus are at least one of the significant candidates to be examined. Accordingly, it would be of great interest to visualize the dynamics of mitochondria and/or peroxisomes in our experimental system. A very recent study has reported that Sir2p (silent information regulator 2: a highly conserved NAD+-dependent deacetylase) overexpression or inhibition of the TOR pathway (target of rapamycin: a highly conserved phosphatidylinositol kinase-related protein kinase that is responsible for nutrient responsive growth regulation) by rapamycin decreases death rates in S. pombe [27]. Involvement of a variety of biological processes implicated by such observations, including heterochromatin regulation [58,59], asymmetric partition of damaged proteins [10], and nitrogen-starvation responses [60–62], should be investigated in future research.
At the present time, however, we do not understand if sporadic death is dependent on any specific molecular mechanism. For example, intrinsic fluctuations in gene expression and/or biochemical reaction rates may well differentially result in catastrophic alterations to cellular physiology. A variety of fluorescent biosensors for more global physiological states, such as intracellular pH, ATP, NAD+/NADH, molecular crowding, and second messengers—cAMP, diacylglycerol (DAG), Ca++, etc.—would be valuable and informative to infer the causes of cell death [63–68]. We hope that our simple but powerful microfluidics approach can contribute to the detailed study of the mechanisms of cell mortality and a deeper understanding of limitations in cellular homeostasis, one of the significant questions in biology.
Materials and methods
Microfluidic device fabrication
The microfluidic device was fabricated by standard photolithography techniques (S1B Fig) [69–71]. The CAD designs, created using ZunoRAPID software (Photron), were printed on photoresist-coated chrome-on-glass masks (CBL4006Du-AZP, Clean Surface Technology) using a laser-drawing system (DDB-201-TW, Neoark). The UV-exposed regions of the photoresist (AZP1350) were removed by NMD-3 (Tokyo Ohka Kogyo), and the exposed chromium was etched by MPM-E350 (DNP Fine Chemicals). After removing the remaining photoresist layer using acetone (Wako), the masks were rinsed with MilliQ water and air-dried.
An SU-8 mold for the PDMS device was made on a silicon wafer (ϕ = 76 mm, P<100>, resistance 1 to 10 Ω·cm, thickness 380 μm; Furuuchi Chemical) in 2 steps. First, to make observation channels, the wafer was coated with SU-8 3005 (Nippon Kayaku) using a spin-coater (MS-A150, Mikasa) at 500 rpm for 10 s and then at 4,000 rpm for 30 s. After soft baking for 2 min at 95°C, the photoresist was exposed to UV using the mercury lamp of a mask-aligner (MA-20, Mikasa) at 22.4 mW/cm2 for 12 s. Postexposure baking was performed at 95°C for 3 min, followed by exposure to SU-8 developer (Nippon Kayaku) and a 2-propanol (Wako) rinse. The same procedure was repeated to fabricate trenches using SU-8 3025 (Nippon Kayaku) at 500 rpm for 10 s and then at 2,000 rpm for 30 s. Soft baking was performed at 95°C for 10 min, followed by UV exposure at 22.4 mW/cm2 for 16 s and postexposure baking at 95°C for 10 min.
The PDMS base and curing agent (Sylgard 184) were mixed at a ratio of 10:1, poured onto the SU-8 mold in a container, and degassed using a vacuum desiccator. Curing was performed at 65°C overnight. The device was peeled from the mold, washed briefly in ethanol with sonication, and then air-dried. After punching 2 holes in the device to connect the inlet and outlet tubes, the surfaces of the device and a coverslip (24 × 60 mm, thickness 0.12–0.17 mm, Matsumani) were activated using a plasma cleaner (PDC-32G, Harrick Plasma) and bonded together. Finally, the inlet and outlet tubes were inserted into the holes (see also S1 Fig).
Fission yeast strains
HN0025, which expresses mVenus under the control of a constitutive adh1 promoter (h- leu1-32::leu1+-Padh1-mVenus), was constructed by transforming HN0003 (h- leu1-32) with the Not I-digested fragment of pDUAL-mVenus, generated by replacing the Sph I-Cla I fragment of pDUAL 13G10 with the Padh1-mVenus-nmt1 terminator cassette. HN0041 was constructed in the same manner as HN0025, except that the mVenus fragment was replaced with mCherry, and used as a parental strain to establish HN0045. To generate HN0045, the GFP tag was fused at the C-terminus of Hsp104 by PCR-based gene targeting [72]: the 3′ end of the ORF and 3′ UTR region of hsp104+ were assembled with the GFP(S65T)-kanR fragment on the pFA6a-GFP(S65T)-KanMX6 to generate a targeting module. For the strain depicted in S1D Fig (HN0034), the Padh1-mCherry cassette was integrated at the ade6+ locus. To generate HN0060, Ptef-mNeonGreen-μNS cassette was first cloned into pDUAL vector, and then a Not I-digested fragment was integrated to the leu1-32 locus. Note that the μNS is a truncated version (1,411–2,163) that corresponds to amino acids 471–721. Genomic DNA of bacterial strain CJW4617 [34] (a kind gift from Dr. M. Nibert at Harvard Medical School and Dr. C. J. Wagner at Yale University) was used as a template for PCR cloning of the μNS cDNA. To disrupt hsp104+, the host strains were transformed by a PCR-amplified deletion cassette, and G418-resistant clones were selected. A complete list of the strains and PCR primers used in this study can be found in S4 Table. The pDUAL 13G10 strain was provided by Riken BRC, a member of the National Bio-Resources Project of the MEXT, Japan [73,74].
Confocal microscopy
Confocal fluorescence microscopic images of yeast cells in the microfluidic device (S1D Fig) were acquired using a Nikon Ti-E microscope equipped with a laser scanning confocal system, equipped with a 60× objective lens (Plan Apo λ N.A. 1.4, Nikon) and under oil immersion. The resolution along the Z-axis was 0.15 μm, and 335 images (corresponding to approximately 50 μm in height) were taken. Three-dimensional reconstructions of the images were achieved using an ImageJ 3D viewer plug-in.
Long-term time-lapse experiments
For long-term time-lapse measurements, 10 mL of a log-phase culture of yeast cells at 28–34°C in YE containing 3% glucose or EMM containing 2% glucose was concentrated 50-fold by centrifugation and injected into the microfluidic device using a 1 mL syringe (Terumo). Cells were loaded into the observation channels by gravity, simply slanting the device. The loading procedure typically took a couple of hours, during which time the cells often entered into an early stationary phase in response to the highly crowded environment, resulting in a time lag before stable growth was achieved. The device was supplied with appropriate medium supplemented with a low concentration (10 μg/mL) of ampicillin sodium (Wako) to minimize the risk of bacterial contamination. Note that ampicillin has no effect on fission yeast growth. The flow rate was 10–15 mL/h. For transient oxidative stress treatment, the medium was changed to YE containing 2 mM hydrogen peroxide for 1 h and then switched back to YE.
We used a Nikon Ti-E microscope with a thermostat chamber (TIZHB, Tokai Hit), 40× objective (Plan Apo λ N.A. 0.95, Nikon), cooled CCD camera (ORCA-R2, Hamamatsu Photonics), and an LED excitation light source (DC2100, Thorlabs). Several cell divisions were allowed before initiating measurements. Micromanager software (https://micro-manager.org/) was used for fluorescence and/or bright field image acquisition. The time-lapse interval was 3 min (for the experiments described in Figs 1–3) or 5 min (for the experiments described in Figs 4–9). Exposure times were 400 ms (for mVenus), 200 ms (for GFP), 100 ms (for mCherry), and 10 ms (for bright field).
Single-cell lineage tracking and division/death point identification
The acquired fluorescence images were converted into binary images using a custom-written OpenCV program. The binary images were used to identify cellular regions or ROIs, and lineage tracking (relating ROIs along lineages) was performed using a customized ImageJ macro. The transition between ROIs along each lineage was analyzed to mark cell division points where an ROI area suddenly decreased more than 1.5-fold. To mark cell death points, 2 criteria were employed: (1) if there was no division during a 360-min window, then the beginning of the window was defined as a death point, and (2) if there was a profound (more than 1.75-fold) decrease in fluorescence during a 30-min time window, then the beginning of the window was defined as a death point. We confirmed that the decay curve of surviving cell lineages obtained using these death criteria quantitatively concurred with that obtained by manual image inspection (S4A Fig). In the data set used in Figs 6–9, we examined all of the cell-size trajectories by eye and manually marked death points so as to ensure confidence in the data.
The death onset points (= kinks on the aggregate amount trajectories) were identified by manually inspecting the aggregate amount trajectory plots for all of the 541 extinct lineages. Aggregate amount/age at the kinks and generations to die after the onset of the dying process were subsequently recorded using a custom-developed ImageJ-plugin.
Lineage tracking data for all the environments tested are deposited in the Dryad repository [75].
Estimation of the population doubling time from the distribution of intrinsic generation time
Generation time distributions obtained by following old-pole cell lineages in the Mother Machine represent intrinsic cellular division properties when 2 sister cells are physiologically indistinguishable. In standard batch cultures, however, selection occurs because of heterogeneities in cellular generation times, which cause the population doubling time (Td) to be smaller than the mean generation time . Here g(τ) is the probability density function of an intrinsic generation time distribution in a given culture condition. When cells randomly and independently determine their generation times according to g(τ), the population growth rate, Λ = ln2/Td, must satisfy the Euler-Lotka equation [28–30],
(1) |
Equivalently, (Eq 1) can be rewritten as
(2) |
where is the survival function (complementary cumulative distribution) of g(τ), which represents the probability of a newly divided cell remaining undivided until age τ. One can show that , and then , becomes a probability density function and can be interpreted as “age distribution” along cell lineages. Therefore, Eq 2 can be also expressed as
(3) |
We numerically estimate Λ based on a discretized version of Eq 3, i.e.,
(4) |
where Δτ is the time-lapse interval. 〈τ〉g was calculated as , where τi is the generation time and n is the number of samples, and the probability distribution of age is calculated as .
Division rate, death rate, and expected life span of fission yeast
We calculated division rate r as
where τi is the generation time and n is the number of samples.
We estimated death rate k from the decay curve by the least squares fitting (t versus ln(N(t)), where t is time and N(t) is the number of surviving lineages at t). The expected value of “time to death” is thus . We calculated “expected life span” in units of generation as .
Error estimation of division and death rates
The standard errors for the division rates were calculated as
where τi is the generation time and n is the number of samples. ±2S. E.division ranges were shown as error bars in Fig 3A and 3B.
To evaluate errors in the death rate estimations, we produced simulated decay curves of the surviving fraction using parameters (death rate, initial cell number, and observation period) specific to each experiment. The simulation was repeated 5,000 times for each environment, and the death rate was obtained from a simulated survival curve in each run. The standard deviation of the determined death rates was calculated as σdeath, and the ±2σdeath ranges were shown as error bars in Fig 3A. Errors in expected life span (σlifespan) were calculated using the error propagation rule.
Statistical evaluation of death (or death onset) probability
We first estimated death probability per generation p0 to be 1.15 × 10−2 from the survival curve. In Fig 6F and 6I, the death probability p for each aggregate amount or aggregation age was then tested using a binomial test for the two-tailed null hypothesis H0: p = p0 at the significance level = 0.05.
For the onset probability of accelerated accumulation, we set the null hypothesis to be H0: q = 0.79 p0 = 9.09 × 10−3 based on our observation that a clear kink in the protein aggregation dynamics was detected in 79% of the extinct lineages and implemented binomial testing at the significance level = 0.05 (Fig 6G and 6J).
Supporting information
Acknowledgments
We thank Kunihiro Ohta and Takatomi Yamada for the kind gift of fission yeast strains, Max Nibert and Christine Jacobs-Wagner for the kind gift of bacterial strains, Riken BRC for plasmids, Reiko Okura for technical assistance, and members of the Wakamoto lab for in-depth discussions.
Abbreviations
- ctrl
control
- DAG
diacylglycerol
- EMM
Edinburgh minimal medium
- GFP
green fluorescent protein
- INQ
intranuclear quality control compartment
- IPOD
immobile protein deposit
- JUNQ
juxtanuclear quality control compartment
- PDMS
polydimethylsiloxane
- RFP
red fluorescent protein
- ROI
region of interest
- ROS
reactive oxygen species
- Sir2p
silent information regulator 2
- TOR
target of rapamycin
- wt
wild type
- YE
yeast extract medium
Data Availability
Data are available from the Dryad repository: http://dx.doi.org/10.5061/dryad.s2t5t.
Funding Statement
Platform for Dynamic Approaches to Living System from Ministry of Education, Culture, Sports, Science and Technology Japan and Japan Agency for Medical Research and Development http://www.mext.go.jp/en/, http://www.amed.go.jp/en/. Received by YW. The funder had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript. Japan Society for the Promotion of Science KAKENHI http://www.jsps.go.jp/english/index.html (grant number 25711008, 15KT0075, 15H05746). Received by YW. The funder had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
References
- 1.Ackermann M. Senescence in a Bacterium with Asymmetric Division. Science (80-). 2003;300: 1920 doi: 10.1126/science.1083532 [DOI] [PubMed] [Google Scholar]
- 2.Jazwinski SM. The genetics of aging in the yeast Saccharomyces cerevisiae. Genetica. 1993;91: 35–51. doi: 10.1007/BF01435986 [DOI] [PubMed] [Google Scholar]
- 3.Fu X, Meng F, Hu Y, Zhou J. Candida albicans, a distinctive fungal model for cellular aging study. Aging Cell. 2008;7: 746–57. doi: 10.1111/j.1474-9726.2008.00424.x [DOI] [PMC free article] [PubMed] [Google Scholar]
- 4.Stewart EJ, Madden R, Paul G, Taddei F. Aging and death in an organism that reproduces by morphologically symmetric division. PLoS Biol. 2005;3: e45 doi: 10.1371/journal.pbio.0030045 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 5.Lindner AB, Madden R, Demarez A, Stewart EJ, Taddei F. Asymmetric segregation of protein aggregates is associated with cellular aging and rejuvenation. Proc Natl Acad Sci U S A. 2008;105: 3076–81. doi: 10.1073/pnas.0708931105 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 6.Winkler J, Seybert A, König L, Pruggnaller S, Haselmann U, Sourjik V, et al. Quantitative and spatio-temporal features of protein aggregation in Escherichia coli and consequences on protein quality control and cellular ageing. EMBO J. 2010;29: 910–23. doi: 10.1038/emboj.2009.412 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 7.Wang P, Robert L, Pelletier J, Dang WL, Taddei F, Wright A, et al. Robust growth of Escherichia coli. Curr Biol. 2010;20: 1099–103. doi: 10.1016/j.cub.2010.04.045 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 8.Barker MG, Walmsley RM. Replicative ageing in the fission yeast Schizosaccharomyces pombe. Yeast. 1999;15: 1511–8. doi: 10.1002/(SICI)1097-0061(199910)15:14<1511::AID-YEA482>3.0.CO;2-Y [DOI] [PubMed] [Google Scholar]
- 9.Minois N, Frajnt M, Dölling M, Lagona F, Schmid M, Küchenhoff H, et al. Symmetrically dividing cells of the fission yeast schizosaccharomyces pombe do age. Biogerontology. 2006;7: 261–7. doi: 10.1007/s10522-006-9025-y [DOI] [PubMed] [Google Scholar]
- 10.Erjavec N, Cvijovic M, Klipp E, Nystrom T. Selective benefits of damage partitioning in unicellular systems and its effects on aging. Proc Natl Acad Sci U S A. 2008;105: 18764–9. doi: 10.1073/pnas.0804550105 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 11.Coelho M, Dereli A, Haese A, Kühn S, Malinovska L, DeSantis ME, et al. Fission yeast does not age under favorable conditions, but does so after stress. Curr Biol. 2013;23: 1844–52. doi: 10.1016/j.cub.2013.07.084 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 12.Doyle SM, Genest O, Wickner S. Protein rescue from aggregates by powerful molecular chaperone machines. Nat Rev Mol Cell Biol. 2013;14: 617–29. doi: 10.1038/nrm3660 [DOI] [PubMed] [Google Scholar]
- 13.Mokry DZ, Abrahão J, Ramos CHI. Disaggregases, molecular chaperones that resolubilize protein aggregates. An Acad Bras Cienc. 2015;87: 1273–92. doi: 10.1590/0001-3765201520140671 [DOI] [PubMed] [Google Scholar]
- 14.Erjavec N, Larsson L, Grantham J, Nyström T. Accelerated aging and failure to segregate damaged proteins in Sir2 mutants can be suppressed by overproducing the protein aggregation-remodeling factor Hsp104p. Genes Dev. 2007;21: 2410–21. doi: 10.1101/gad.439307 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 15.Liu B, Larsson L, Caballero A, Hao X, Öling D, Grantham J, et al. The Polarisome Is Required for Segregation and Retrograde Transport of Protein Aggregates. Cell. 2010;140: 257–67. doi: 10.1016/j.cell.2009.12.031 [DOI] [PubMed] [Google Scholar]
- 16.Spokoini R, Moldavski O, Nahmias Y, England JL, Schuldiner M, Kaganovich D. Confinement to organelle-associated inclusion structures mediates asymmetric inheritance of aggregated protein in budding yeast. Cell Rep. 2012;2: 738–47. doi: 10.1016/j.celrep.2012.08.024 [DOI] [PubMed] [Google Scholar]
- 17.Saarikangas J, Barral Y. Protein aggregates are associated with replicative aging without compromising protein quality control. Elife. 2015;4 doi: 10.7554/eLife.06197 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 18.Coelho M, Lade SJ, Alberti S, Gross T, Tolić IM. Fusion of protein aggregates facilitates asymmetric damage segregation. PLoS Biol. 2014;12: e1001886 doi: 10.1371/journal.pbio.1001886 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 19.Steffen KK, Kennedy BK, Kaeberlein M. Measuring replicative life span in the budding yeast. J Vis Exp. 2009; doi: 10.3791/1209 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 20.Charvin G, Cross FR, Siggia ED. A microfluidic device for temporally controlled gene expression and long-term fluorescent imaging in unperturbed dividing yeast cells. PLoS ONE. 2008;3:e1468 doi: 10.1371/journal.pone.0001468 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 21.Bennett MR, Hasty J. Microfluidic devices for measuring gene network dynamics in single cells. Nat Rev Genet. 2009;10: 628–38. doi: 10.1038/nrg2625 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 22.Zhang Y, Luo C, Zou K, Xie Z, Brandman O, Ouyang Q, et al. Single cell analysis of yeast replicative aging using a new generation of microfluidic device. PLoS ONE. 2012;7:e48275 doi: 10.1371/journal.pone.0048275 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 23.Tian Y, Luo C, Ouyang Q. A microfluidic synchronizer for fission yeast cells. Lab Chip. 2013;13: 4071–7. doi: 10.1039/c3lc50639h [DOI] [PubMed] [Google Scholar]
- 24.Nobs J-B, Maerkl SJ. Long-term single cell analysis of S. pombe on a microfluidic microchemostat array. PLoS ONE. 2014;9:e93466 doi: 10.1371/journal.pone.0093466 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 25.Crane MM, Clark IBN, Bakker E, Smith S, Swain PS. A microfluidic system for studying ageing and dynamic single-cell responses in budding yeast. PLoS ONE. 2014;9:e100042 doi: 10.1371/journal.pone.0100042 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 26.Spivey EC, Xhemalce B, Shear JB, Finkelstein IJ. 3D-Printed Microfluidic Microdissector for High-Throughput Studies of Cellular Aging. Anal Chem. 2014;86: 7406–12. doi: 10.1021/ac500893a [DOI] [PMC free article] [PubMed] [Google Scholar]
- 27.Spivey EC, Jones SK, Rybarski JR, Saifuddin FA, Finkelstein IJ. An aging-independent replicative lifespan in a symmetrically dividing eukaryote. Elife. eLife Sciences Publications Limited; 2017;6: e20340 doi: 10.7554/eLife.20340 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 28.Powell EO. Growth Rate and Generation Time of Bacteria, with Special Reference to Continuous Culture. J Gen Microbiol. 1956;15: 492–511. doi: 10.1099/00221287-15-3-492 [DOI] [PubMed] [Google Scholar]
- 29.Wakamoto Y, Grosberg AY, Kussell E. Optimal lineage principle for age-structured populations. Evolution. 2012;66: 115–34. doi: 10.1111/j.1558-5646.2011.01418.x [DOI] [PubMed] [Google Scholar]
- 30.Hashimoto M, Nozoe T, Nakaoka H, Okura R, Akiyoshi S, Kaneko K, et al. Noise-driven growth rate gain in clonal cellular populations. Proc Natl Acad Sci U S A. National Academy of Sciences; 2016;113: 3251–56. doi: 10.1073/pnas.1519412113 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 31.Magidson V, Khodjakov A. Circumventing photodamage in live-cell microscopy. Methods Cell Biol. 2013;114: 545–60. doi: 10.1016/B978-0-12-407761-4.00023-3 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 32.Broering TJ, Parker JSL, Joyce PL, Kim J, Nibert ML. Mammalian reovirus nonstructural protein microNS forms large inclusions and colocalizes with reovirus microtubule-associated protein micro2 in transfected cells. J Virol. American Society for Microbiology; 2002;76: 8285–97. doi: 10.1128/JVI.76.16.8285-8297.2002 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 33.Broering TJ, Arnold MM, Miller CL, Hurt JA, Joyce PL, Nibert ML. Carboxyl-proximal regions of reovirus nonstructural protein muNS necessary and sufficient for forming factory-like inclusions. J Virol. American Society for Microbiology; 2005;79: 6194–206. doi: 10.1128/JVI.79.10.6194-6206.2005 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 34.Parry BR, Surovtsev IV, Cabeen MT, O’Hern CS, Dufresne ER, Jacobs-Wagner C. The bacterial cytoplasm has glass-like properties and is fluidized by metabolic activity. Cell. 2014;156: 183–94. doi: 10.1016/j.cell.2013.11.028 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 35.Mitchison JM. The growth of single cells. Exp Cell Res. 1957;13: 244–62. doi: 10.1016/0014-4827(57)90005-8 [DOI] [PubMed] [Google Scholar]
- 36.Johnson B. Autoradiographic analysis of regional cell wall growth of yeasts Schizosaccharomyces pombe. Exp Cell Res. 1965;39: 613–24. doi: 10.1016/0014-4827(65)90064-9 [DOI] [PubMed] [Google Scholar]
- 37.May JW. Sites of cell-wall extension demonstrated by the use of fluorescent antibody. Exp Cell Res. 1962;27: 170–2. doi: 10.1016/0014-4827(62)90060-5 [DOI] [PubMed] [Google Scholar]
- 38.Burman LG, Raichler J, Park JT. Evidence for diffuse growth of the cylindrical portion of the Escherichia coli murein sacculus. J Bacteriol. 1983;155: 983–8. Available: http://www.ncbi.nlm.nih.gov/pubmed/6350274 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 39.de Pedro MA, Quintela JC, Höltje JV, Schwarz H. Murein segregation in Escherichia coli. J Bacteriol. 1997;179: 2823–34. Available: http://www.ncbi.nlm.nih.gov/pubmed/9139895 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 40.Scheffers DJ, Pinho MG. Bacterial cell wall synthesis: new insights from localization studies. Microbiol Mol Biol Rev. 2005;69: 585–607. doi: 10.1128/MMBR.69.4.585-607.2005 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 41.Mitchison JM, Nurse P. Growth in cell length in the fission yeast Schizosaccharomyces pombe. J Cell Sci. 1985;75: 357–76. Available: http://www.ncbi.nlm.nih.gov/pubmed/4044680 [DOI] [PubMed] [Google Scholar]
- 42.Arlia-Ciommo A, Piano A, Leonov A, Svistkova V, Titorenko VI. Quasi-programmed aging of budding yeast: a trade-off between programmed processes of cell proliferation, differentiation, stress response, survival and death defines yeast lifespan. Cell Cycle. 2014;13: 3336–49. doi: 10.4161/15384101.2014.965063 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 43.Amen T, Kaganovich D. Dynamic droplets: the role of cytoplasmic inclusions in stress, function, and disease. Cell Mol Life Sci. 2015;72: 401–15. doi: 10.1007/s00018-014-1740-y [DOI] [PMC free article] [PubMed] [Google Scholar]
- 44.Miller SBM, Mogk A, Bukau B. Spatially organized aggregation of misfolded proteins as cellular stress defense strategy. J Mol Biol. 2015;427: 1564–74. doi: 10.1016/j.jmb.2015.02.006 [DOI] [PubMed] [Google Scholar]
- 45.Harman D. Aging: a theory based on free radical and radiation chemistry. J Gerontol. 1956;11: 298–300. doi: 10.1093/geronj/11.3.298 [DOI] [PubMed] [Google Scholar]
- 46.Frisard M, Ravussin E. Energy Metabolism and Oxidative Stress: Impact on the Metabolic Syndrome and the Aging Process. Endocrine. 2006;29: 27–32. doi: 10.1385/ENDO:29:1:27 [DOI] [PubMed] [Google Scholar]
- 47.Selman C, Blount JD, Nussey DH, Speakman JR. Oxidative damage, ageing, and life-history evolution: where now? Trends Ecol Evol. 2012;27: 570–7. doi: 10.1016/j.tree.2012.06.006 [DOI] [PubMed] [Google Scholar]
- 48.Speakman JR, Blount JD, Bronikowski AM, Buffenstein R, Isaksson C, Kirkwood TBL, et al. Oxidative stress and life histories: unresolved issues and current needs. Ecol Evol. 2015;5: 5745–57. doi: 10.1002/ece3.1790 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 49.Brauer MJ, Huttenhower C, Airoldi EM, Rosenstein R, Matese JC, Gresham D, et al. Coordination of growth rate, cell cycle, stress response, and metabolic activity in yeast. Mol Biol Cell. 2008;19: 352–67. doi: 10.1091/mbc.E07-08-0779 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 50.Elliott B, Futcher B. Stress resistance of yeast cells is largely independent of cell cycle phase. Yeast. 1993;9: 33–42. doi: 10.1002/yea.320090105 [DOI] [PubMed] [Google Scholar]
- 51.Zakrzewska A, van Eikenhorst G, Burggraaff JEC, Vis DJ, Hoefsloot H, Delneri D, et al. Genome-wide analysis of yeast stress survival and tolerance acquisition to analyze the central trade-off between growth rate and cellular robustness. Mol Biol Cell. 2011;22: 4435–46. doi: 10.1091/mbc.E10-08-0721 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 52.Demetrius L. Caloric Restriction, Metabolic Rate, and Entropy. Journals Gerontol Ser A. 2004;59: B902–15. doi: 10.1093/gerona/59.9.B902 [DOI] [PubMed] [Google Scholar]
- 53.Falcone C, Mazzoni C. External and internal triggers of cell death in yeast. Cell Mol Life Sci. Springer; 2016;73: 2237–50. doi: 10.1007/s00018-016-2197-y [DOI] [PMC free article] [PubMed] [Google Scholar]
- 54.Furnari B, Rhind N, Russell P. Cdc25 mitotic inducer targeted by chk1 DNA damage checkpoint kinase. Science. 1997;277: 1495–7. Available: http://www.ncbi.nlm.nih.gov/pubmed/9278510 [DOI] [PubMed] [Google Scholar]
- 55.Farrugia G, Balzan R. Oxidative stress and programmed cell death in yeast. Front Oncol. Frontiers Media SA; 2012;2: 64 doi: 10.3389/fonc.2012.00064 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 56.Low CP, Yang H. Programmed cell death in fission yeast Schizosaccharomyces pombe. Biochim Biophys Acta. 2008;1783: 1335–49. doi: 10.1016/j.bbamcr.2008.02.002 [DOI] [PubMed] [Google Scholar]
- 57.Circu ML, Aw TY. Reactive oxygen species, cellular redox systems, and apoptosis. Free Radic Biol Med. NIH Public Access; 2010;48: 749–62. doi: 10.1016/j.freeradbiomed.2009.12.022 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 58.Shankaranarayana GD, Motamedi MR, Moazed D, Grewal SIS. Sir2 regulates histone H3 lysine 9 methylation and heterochromatin assembly in fission yeast. Curr Biol. 2003;13: 1240–6. Available: http://www.ncbi.nlm.nih.gov/pubmed/12867036 [DOI] [PubMed] [Google Scholar]
- 59.Alper BJ, Job G, Yadav RK, Shanker S, Lowe BR, Partridge JF. Sir2 is required for Clr4 to initiate centromeric heterochromatin assembly in fission yeast. EMBO J. 2013;32: 2321–2335. doi: 10.1038/emboj.2013.143 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 60.Uritani M, Hidaka H, Hotta Y, Ueno M, Ushimaru T, Toda T. Fission yeast Tor2 links nitrogen signals to cell proliferation and acts downstream of the Rheb GTPase. Genes to Cells. 2006;11: 1367–1379. doi: 10.1111/j.1365-2443.2006.01025.x [DOI] [PubMed] [Google Scholar]
- 61.Alvarez B, Moreno S. Fission yeast Tor2 promotes cell growth and represses cell differentiation. J Cell Sci. 2006;119: 4475–4485. doi: 10.1242/jcs.03241 [DOI] [PubMed] [Google Scholar]
- 62.Otsubo Y, Yamamato M. TOR Signaling in Fission Yeast. Crit Rev Biochem Mol Biol. Taylor & Francis; 2008;43: 277–283. doi: 10.1080/10409230802254911 [DOI] [PubMed] [Google Scholar]
- 63.Orij R, Postmus J, Ter Beek A, Brul S, Smits GJ. In vivo measurement of cytosolic and mitochondrial pH using a pH-sensitive GFP derivative in Saccharomyces cerevisiae reveals a relation between intracellular pH and growth. Microbiology. 2009;155: 268–78. doi: 10.1099/mic.0.022038-0 [DOI] [PubMed] [Google Scholar]
- 64.Yaginuma H, Kawai S, Tabata K V, Tomiyama K, Kakizuka A, Komatsuzaki T, et al. Diversity in ATP concentrations in a single bacterial cell population revealed by quantitative single-cell imaging. Sci Rep. Nature Publishing Group; 2014;4: 6522 doi: 10.1038/srep06522 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 65.Zhao Y, Hu Q, Cheng F, Su N, Wang A, Zou Y, et al. SoNar, a Highly Responsive NAD+/NADH Sensor, Allows High-Throughput Metabolic Screening of Anti-tumor Agents. Cell Metab. NIH Public Access; 2015;21: 777–89. doi: 10.1016/j.cmet.2015.04.009 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 66.Boersma AJ, Zuhorn IS, Poolman B. A sensor for quantification of macromolecular crowding in living cells. Nat Methods. Nature Publishing Group, a division of Macmillan Publishers Limited. All Rights Reserved; 2015;12: 227–229. doi: 10.1038/nmeth.3257 [DOI] [PubMed] [Google Scholar]
- 67.Tewson PH, Martinka S, Shaner NC, Hughes TE, Quinn AM. New DAG and cAMP Sensors Optimized for Live-Cell Assays in Automated Laboratories. J Biomol Screen. SAGE Publications; 2016;21: 298–305. doi: 10.1177/1087057115618608 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 68.Tsien RY, Miyawaki A, Llopis J, Heim R, McCaffery JM, Adams JA, et al. Fluorescent indicators for Ca2+ based on green fluorescent proteins and calmodulin. Nature. Nature Publishing Group; 1997;388: 882–887. doi: 10.1038/42264 [DOI] [PubMed] [Google Scholar]
- 69.Quake SR. From Micro- to Nanofabrication with Soft Materials. Science (80-). 2000;290: 1536–40. doi: 10.1126/science.290.5496.1536 [DOI] [PubMed] [Google Scholar]
- 70.Friend J, Yeo L. Fabrication of microfluidic devices using polydimethylsiloxane. Biomicrofluidics. 2010;4 doi: 10.1063/1.3259624 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 71.Qin D, Xia Y, Whitesides GM. Soft lithography for micro- and nanoscale patterning. Nat Protoc. 2010;5: 491–502. doi: 10.1038/nprot.2009.234 [DOI] [PubMed] [Google Scholar]
- 72.Bähler J, Wu JQ, Longtine MS, Shah NG, McKenzie A, Steever AB, et al. Heterologous modules for efficient and versatile PCR-based gene targeting in Schizosaccharomyces pombe. Yeast. 1998;14: 943–51. doi: 10.1002/(SICI)1097-0061(199807)14:10<943::AID-YEA292>3.0.CO;2-Y [DOI] [PubMed] [Google Scholar]
- 73.Matsuyama A, Shirai A, Yashiroda Y, Kamata A, Horinouchi S, Yoshida M. pDUAL, a multipurpose, multicopy vector capable of chromosomal integration in fission yeast. Yeast. 2004;21: 1289–1305. doi: 10.1002/yea.1181 [DOI] [PubMed] [Google Scholar]
- 74.Matsuyama A, Arai R, Yashiroda Y, Shirai A, Kamata A, Sekido S, et al. ORFeome cloning and global analysis of protein localization in the fission yeast Schizosaccharomyces pombe. Nat Biotechnol. 2006;24: 841–7. doi: 10.1038/nbt1222 [DOI] [PubMed] [Google Scholar]
- 75.Nakaoka H, Wakamoto Y. (2017) Data from: Aging, mortality and the fast growth trade-off of Schizosaccharomyces pombe. Dryad Digital Repository. http://dx.doi.org/10.5061/dryad.s2t5t [DOI] [PMC free article] [PubMed] [Google Scholar]
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
Data Availability Statement
Data are available from the Dryad repository: http://dx.doi.org/10.5061/dryad.s2t5t.