80 research outputs found
Extensive regulation of metabolism and growth during the cell division cycle
Yeast cells grown in culture can spontaneously synchronize their respiration,
metabolism, gene expression and cell division. Such metabolic oscillations in
synchronized cultures reflect single-cell oscillations, but the relationship
between the oscillations in single cells and synchronized cultures is poorly
understood. To understand this relationship and the coordination between
metabolism and cell division, we collected and analyzed DNA-content,
gene-expression and physiological data, at hundreds of time-points, from
cultures metabolically-synchronized at different growth rates, carbon sources
and biomass densities. The data enabled us to extend and generalize an
ensemble-average-over-phases (EAP) model that connects the population-average
gene-expression of asynchronous cultures to the gene-expression dynamics in the
single-cells comprising the cultures. The extended model explains the
carbon-source specific growth-rate responses of hundreds of genes. Our data
demonstrate that for a given growth rate, the frequency of metabolic cycling in
synchronized cultures increases with the biomass density. This observation
underscores the difference between metabolic cycling in synchronized cultures
and in single cells and suggests entraining of the single-cell cycle by a
quorum-sensing mechanism. Constant levels of residual glucose during the
metabolic cycling of synchronized cultures indicate that storage carbohydrates
are required to fuel not only the G1/S transition of the division cycle but
also the metabolic cycle. Despite the large variation in profiled conditions
and in the time-scale of their dynamics, most genes preserve invariant dynamics
of coordination with each other and with the rate of oxygen consumption.
Similarly, the G1/S transition always occurs at the beginning, middle or end of
the high oxygen consumption phases, analogous to observations in human and
drosophila cells.Comment: 34 pages, 7 figure
Measuring differential gene expression by short read sequencing: quantitative comparison to 2-channel gene expression microarrays
<p>Abstract</p> <p>Background</p> <p>High-throughput cDNA synthesis and sequencing of poly(A)-enriched RNA is rapidly emerging as a technology competing to replace microarrays as a quantitative platform for measuring gene expression.</p> <p>Results</p> <p>Consequently, we compared full length cDNA sequencing to 2-channel gene expression microarrays in the context of measuring differential gene expression. Because of its comparable cost to a gene expression microarray, our study focused on the data obtainable from a single lane of an Illumina 1 G sequencer. We compared sequencing data to a highly replicated microarray experiment profiling two divergent strains of <it>S. cerevisiae</it>.</p> <p>Conclusion</p> <p>Using a large number of quantitative PCR (qPCR) assays, more than previous studies, we found that neither technology is decisively better at measuring differential gene expression. Further, we report sequencing results from a diploid hybrid of two strains of <it>S. cerevisiae </it>that indicate full length cDNA sequencing can discover heterozygosity and measure quantitative allele-specific expression simultaneously.</p
Diverse conditions support near-zero growth in yeast: Implications for the study of cell lifespan
Bakerβs yeast has a finite lifespan and ages in two ways: a mother cell can only divide so many times (its replicative lifespan), and a non-dividing cell can only live so long (its chronological lifespan). Wild and laboratory yeast strains exhibit natural variation for each type of lifespan, and the genetic basis for this variation has been generalized to other eukaryotes, including met-azoans. To date, yeast chronological lifespan has chiefly been studied in relation to the rate and mode of functional decline among non-dividing cells in nutrient-depleted batch culture. However, this culture method does not accurately capture two major classes of long-lived metazoan cells: cells that are terminally differentiated and metabolically active for periods that approximate animal lifespan (e.g. cardiac myocytes), and cells that are pluripotent and metabolically quiescent (e.g. stem cells). Here, we consider alternative ways of cultivating Saccharomyces cerevisiae so that these different metabolic states can be explored in non-dividing cells: (i) yeast cultured as giant colonies on semi-solid agar, (ii) yeast cultured in retentostats and provided sufficient nutrients to meet minimal energy requirements, and (iii) yeast encapsulated in a semisolid matrix and fed ad libitum in bioreactors. We review the physiology of yeast cultured under each of these conditions, and explore their potential to provide unique insights into determinants of chronological lifespan in the cells of higher eukaryotes
Accurate proteome-wide protein quantification from high-resolution 15N mass spectra
In quantitative mass spectrometry-based proteomics, the metabolic incorporation of a single source of 15N-labeled nitrogen has many advantages over using stable isotope-labeled amino acids. However, the lack of a robust computational framework for analyzing the resulting spectra has impeded wide use of this approach. We have addressed this challenge by introducing a new computational methodology for analyzing 15N spectra in which quantification is integrated with identification. Application of this method to an Escherichia coli growth transition reveals significant improvement in quantification accuracy over previous methods
Riboneogenesis in Yeast
SummaryGlucose is catabolized in yeast via two fundamental routes, glycolysis and the oxidative pentose phosphate pathway, which produces NADPH and the essential nucleotide component ribose-5-phosphate. Here, we describe riboneogenesis, a thermodynamically driven pathway that converts glycolytic intermediates into ribose-5-phosphate without production of NADPH. Riboneogenesis begins with synthesis, by the combined action of transketolase and aldolase, of the seven-carbon bisphosphorylated sugar sedoheptulose-1,7-bisphosphate. In the pathway's committed step, sedoheptulose bisphosphate is hydrolyzed to sedoheptulose-7-phosphate by the enzyme sedoheptulose-1,7-bisphosphatase (SHB17), whose activity we identified based on metabolomic analysis of the corresponding knockout strain. The crystal structure of Shb17 in complex with sedoheptulose-1,7-bisphosphate reveals that the substrate binds in the closed furan form in the active site. Sedoheptulose-7-phosphate is ultimately converted by known enzymes of the nonoxidative pentose phosphate pathway to ribose-5-phosphate. Flux through SHB17 increases when ribose demand is high relative to demand for NADPH, including during ribosome biogenesis in metabolically synchronized yeast cells
Systematic Planning of Genome-Scale Experiments in Poorly Studied Species
Genome-scale datasets have been used extensively in model organisms to screen for specific candidates or to predict functions for uncharacterized genes. However, despite the availability of extensive knowledge in model organisms, the planning of genome-scale experiments in poorly studied species is still based on the intuition of experts or heuristic trials. We propose that computational and systematic approaches can be applied to drive the experiment planning process in poorly studied species based on available data and knowledge in closely related model organisms. In this paper, we suggest a computational strategy for recommending genome-scale experiments based on their capability to interrogate diverse biological processes to enable protein function assignment. To this end, we use the data-rich functional genomics compendium of the model organism to quantify the accuracy of each dataset in predicting each specific biological process and the overlap in such coverage between different datasets. Our approach uses an optimized combination of these quantifications to recommend an ordered list of experiments for accurately annotating most proteins in the poorly studied related organisms to most biological processes, as well as a set of experiments that target each specific biological process. The effectiveness of this experiment- planning system is demonstrated for two related yeast species: the model organism Saccharomyces cerevisiae and the comparatively poorly studied Saccharomyces bayanus. Our system recommended a set of S. bayanus experiments based on an S. cerevisiae microarray data compendium. In silico evaluations estimate that less than 10% of the experiments could achieve similar functional coverage to the whole microarray compendium. This estimation was confirmed by performing the recommended experiments in S. bayanus, therefore significantly reducing the labor devoted to characterize the poorly studied genome. This experiment-planning framework could readily be adapted to the design of other types of large-scale experiments as well as other groups of organisms
Directing Experimental Biology: A Case Study in Mitochondrial Biogenesis
Computational approaches have promised to organize collections of functional genomics data into testable predictions of gene and protein involvement in biological processes and pathways. However, few such predictions have been experimentally validated on a large scale, leaving many bioinformatic methods unproven and underutilized in the biology community. Further, it remains unclear what biological concerns should be taken into account when using computational methods to drive real-world experimental efforts. To investigate these concerns and to establish the utility of computational predictions of gene function, we experimentally tested hundreds of predictions generated from an ensemble of three complementary methods for the process of mitochondrial organization and biogenesis in Saccharomyces cerevisiae. The biological data with respect to the mitochondria are presented in a companion manuscript published in PLoS Genetics (doi:10.1371/journal.pgen.1000407). Here we analyze and explore the results of this study that are broadly applicable for computationalists applying gene function prediction techniques, including a new experimental comparison with 48 genes representing the genomic background. Our study leads to several conclusions that are important to consider when driving laboratory investigations using computational prediction approaches. While most genes in yeast are already known to participate in at least one biological process, we confirm that genes with known functions can still be strong candidates for annotation of additional gene functions. We find that different analysis techniques and different underlying data can both greatly affect the types of functional predictions produced by computational methods. This diversity allows an ensemble of techniques to substantially broaden the biological scope and breadth of predictions. We also find that performing prediction and validation steps iteratively allows us to more completely characterize a biological area of interest. While this study focused on a specific functional area in yeast, many of these observations may be useful in the contexts of other processes and organisms
Predicting Cellular Growth from Gene Expression Signatures
Maintaining balanced growth in a changing environment is a fundamental
systems-level challenge for cellular physiology, particularly in microorganisms.
While the complete set of regulatory and functional pathways supporting growth
and cellular proliferation are not yet known, portions of them are well
understood. In particular, cellular proliferation is governed by mechanisms that
are highly conserved from unicellular to multicellular organisms, and the
disruption of these processes in metazoans is a major factor in the development
of cancer. In this paper, we develop statistical methodology to identify
quantitative aspects of the regulatory mechanisms underlying cellular
proliferation in Saccharomyces cerevisiae. We find that the
expression levels of a small set of genes can be exploited to predict the
instantaneous growth rate of any cellular culture with high accuracy. The
predictions obtained in this fashion are robust to changing biological
conditions, experimental methods, and technological platforms. The proposed
model is also effective in predicting growth rates for the related yeast
Saccharomyces bayanus and the highly diverged yeast
Schizosaccharomyces pombe, suggesting that the underlying
regulatory signature is conserved across a wide range of unicellular evolution.
We investigate the biological significance of the gene expression signature that
the predictions are based upon from multiple perspectives: by perturbing the
regulatory network through the Ras/PKA pathway, observing strong upregulation of
growth rate even in the absence of appropriate nutrients, and discovering
putative transcription factor binding sites, observing enrichment in
growth-correlated genes. More broadly, the proposed methodology enables
biological insights about growth at an instantaneous time scale, inaccessible by
direct experimental methods. Data and tools enabling others to apply our methods
are available at http://function.princeton.edu/growthrate
Uniform nomenclature for the mitochondrial contact site and cristae organizing system
The mitochondrial inner membrane contains a large protein complex that functions in inner membrane organization and formation of membrane contact sites. The complex was variably named the mitochondrial contact site complex, mitochondrial inner membrane organizing system, mitochondrial organizing structure, or Mitofilin/Fcj1 complex. To facilitate future studies, we propose to unify the nomenclature and term the complex "mitochondrial contact site and cristae organizing system" and its subunits Mic10 to Mic60
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