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Science, Vol 290, Issue 5499, 2144-2148 , 15 December 2000
Abstract of this Article
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Abstract
Full Text
Global Analysis of the Genetic Network Controlling a Bacterial Cell Cycle
Michael T. Laub, Harley H. McAdams, Tamara Feldblyum, Claire M. Fraser, and Lucy Shapiro

Supplementary Material

Supplemental Table 1. Previously known Caulobacter cell cycle-regulated genes. For each Caulobacter gene characterized before the publication of this report, the cell type in which maximal expression is observed is listed (SW = swarmer, ST = stalk, PD = predivisional) along with the corresponding reference. Additionally, for flagellar genes, the temporal class (I, II, III, or IV) is listed. Alternative names for genes are listed in parentheses. Of the 74 genes listed, all but alkB and tacA were represented on the microarrays printed for this study. The 72 genes on the microarray and listed here as previously identified cell cycle-regulated genes were all identified in this study as cell cycle-regulated mRNAs, with expression timing closely matching that published previously.
GenePeak expression*Reference
alkBST(1)
ccrMlate PD(2)
cheAlate PD(3)
cheBlate PD(3)
cheDlate PD(3)
cheRlate PD(3)
cheWlate PD(3)
cheYIlate PD(3)
cheYIIlate PD(3)
cheYIIIlate PD(3)
ctrAST/class I(4)
divJSW(5)
divKlate PD(6)
dnaAlate PD, SW(7)
dnaJlate PD, SW(8)
dnaKlate PD, SW(8)
dnaNST(9)
dnaXST(10)
flaA1 (flmA)early PD/class III(11)dag
flaA2 (flmB)early PD/class III(11)dag
flaDearly PD/class III(11)dag
flaFearly PD/class III(11)dag
flaG (flmH)early PD/class III(11)dag
flaN (flgK)early PD/class III(11)dag
flaZ (flmE)early PD/class III(11)dag
flbA (flmG)early PD/class III(11)dag
flbDearly PD/class III(11)dag
flbEearly PD/class III(11)dag
flbF (flhA)early PD/class II(11)dag
flbGearly PD/class III(11)dag
flbH (flgD)early PD/class III(11)dag
flbTearly PD/class III(11)dag
flbYearly PD/class III(11)dag
flaEearly PD/class III(11)dag
fliYearly PD/class III(11)dag
flgEearly PD/class III(11)dag
flgFearly PD/class III(11)dag
flgGearly PD/class III(11)dag
flgHearly PD/class III(11)dag
flgIearly PD/class III(11)dag
fliFearly PD/class II(11)dag
fliGearly PD/class II(11)dag
fliIearly PD/class II(11)dag
fliJearly PD/class II(11)dag
fliLearly PD/class II(11)dag
fliMearly PD/class II(11)dag
fliNearly PD/class II(11)dag
fliPearly PD/class II(11)dag
fliQearly PD/class II(11)dag
fliRearly PD/class II(11)dag
fliXearly PD/class II(11)dag
fljJlate PD/class IV(11)dag
fljKlate PD/class IV(11)dag
fljLlate PD/class IV(11)dag
fljMlate PD/class IV(11)dag
fljNlate PD/class IV(11)dag
fljOlate PD/class IV(11)dag
ftsAearly PD(12)
ftsQearly PD(12)
ftsZstalk(13)
groELlate PD, SW(14)
groESlate PD, SW(14)
gyrBST(9, 15)
hemEST(16)
hfaAlate PD(17)
mcpAlate PD(3)
parAlate PD(18)
parBlate PD(18)
parCST(19)
parEST(19)
pilAlate PD, SW(20)
podJST(21)
rpoNearly PD(22)
tacAearly PD(23)
*For most genes (see individual references for details and exceptions), their identification as cell cycle-regulated is based on analysis of the gene's (or operon's) promoter fused to lacZ. Immunoprecipitation of b-galactosidase at cell cycle time points allows tracking of promoter activity during cell cycle progression. The timing ascertained by b-gal assay may differ slightly from those obtained by microarray analysis, but maximal time of expression and overall pattern matches for each gene listed above.
dagFor flagellar genes (classes II, III, and IV), the expression patterns are summarized and individually referenced in (11).


Supplemental Figure 1. . An expanded, annotated version of Fig. 1 of the report. Clustered expression profiles for the 553 identified cell cycle-regulated transcripts are organized by time of peak expression. Profiles for genes are in rows with temporal progression through the cell cycle running from left to right. Ratios for each time point are represented using the color scale at the bottom of the figure. Clustering was done using the self-organizing map analysis of the GeneCluster software (24) and plotted using TreeView software (25). Each cluster is numbered; gene names, TIGR ORF numbers, and functional annotation information are listed on the right of the clustergram.


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Supplemental Figure 2a. Expanded, annotated versions of Fig. 2, A to C, of the report, with expression profiles for functionally related sets of genes. For each cell cycle-regulated function, the expression profiles of associated genes are shown as color bars, coded as in Web figure 1. The class I-IV flagellar genes shown in (C) are expressed in temporal order consistent with their known ordering in flagella construction. The column labeled ctrAts shows the change in expression level for each gene in response to loss of CtrA function where blue, black, and yellow indicate decrease, no change, and increase, respectively. For each gene, the corresponding TIGR ORF number and one-line annotation information are listed to the right of its profile.


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Supplemental Figure 2b.


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Supplemental Figure 2c.


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Supplemental Figure 3. An expanded, detailed version of Fig. 3 of the report. The CtrA regulatory network governing Caulobacter cell cycle progression with newly identified pathways shown in red. Phosphorylated CtrA, binding to a conserved motif, autoregulates its own transcription (26), and activates the transcription of sets of genes required for flagellar biogenesis, DNA methylation, pili biogenesis, cell division, and six other operons of unknown function. CtrA also acts as a repressor of the newly identified G1-S sigma factors sigT and sigU and, as previously suggested, of ftsZ (13). Binding of CtrA to sites in the origin of replication inhibits replication initiation (26). In addition, our results suggest there are at least 113 genes in a wide range of functional categories that appear to be indirectly regulated by CtrA; these include members of the chemotaxis machinery, ribosomal subunits, RNA polymerase subunits, and NADH dehydrogenase categories. CtrA is proteolyzed at the G1-S transition by the protease ClpPX (27). The histidine kinases CckA and DivL mediate CtrA phosphorylation. DivK, DivJ, and PleC are all thought to be involved in a cell cycle phosphorelay [reviewed in (28, 29)].


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Supplemental Figure 4. Expanded, annotated version of Fig. 4 of the report. Regulatory genes expressed in a cell cycle-dependent pattern. Genes encoding histidine kinases, response regulators, and sigma factors that are transcribed as a function of the cell cycle are shown at the time of their peak expression levels during the cell cycle. Newly identified regulatory genes are denoted by their predicted type and numbered based on their order of expression in the cell cycle: black, response regulators with an identifiable output domain; green, single-domain response regulators; red, histidine kinases; blue, histidine kinases with a fused response regulator domain; and orange (, sigma factors. Underlined genes have been characterized previously. The genes in black boxes encode proteins that are known to be dynamically localized during the cell cycle. TIGR ORF numbers are listed for each gene shown.


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Supplemental Figure 5. Distribution of cell cycle-regulated genes within functional categories. The number of genes in each category is in parentheses. Genes were assigned to a functional category based on the classification scheme defined by Clusters of Orthologous Genes (COGs) (30).


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METHODS

Wild-Type Time Course Methods
A culture of wild-type Caulobacter (CB15N) was grown in minimal media supplemented with glucose (M2G) at 28°C to an OD660 of 0.3 and then synchronized as described (4). After resuspension of isolated swarmer cells in fresh M2G, cells were harvested at 15-min intervals for the duration of the 150-min cell cycle.

RNA from cells harvested at each time point was reverse-transcribed into Cy3-labeled cDNA, and competitively hybridized on a microarray with a Cy5-labeled reference cDNA from a mid-log phase asynchronous culture. Thus, subsequent log ratios (Cy3:Cy5) greater or less than zero indicate higher or lower RNA abundance, respectively, relative to the averaged RNA levels in the unsynchronized reference population. Details of RNA preparation, cDNA probe preparation, and microarray hybridization are at (31).

Identification of Cell Cycle-Regulated Transcripts / Discrete Cosine Transform Analysis
To identify cell cycle-dependent transcripts, the discrete cosine transform (DCT) (see devbio1.stanford.edu/usr/hm/Mathematica/Discrete Transforms/index.html) was calculated for each of the 2966 expression profiles with valid data. Three parameters were calculated for each profile: (i) the maximum DCT coefficient, (ii) the percentage of signal power contained in the first four DCT coefficients, and (iii) the peak-to-trough ratio of the profile. A cell cycle-dependent profile is expected to have a large maximum DCT coefficient, a significant percentage of total signal power in the lower frequency (e.g., the first four) DCT coefficients, and a high peak-to-trough ratio. We selected profiles for which parameters i, ii, and iii (above) were (a) geq 0.0017, geq 0.8, and geq 1.8, or (b) geq 0.0017, geq 0.6, geq 3.0, respectively. These parameters were chosen to minimize the false positive rate and to ensure inclusion of previously known cell cycle-regulated genes as described below. This procedure selected 579 candidate profiles.

As the synchronization procedure involved a shift from 4°C to 28°C at the zero time point, some genes responding to this temperature shift were anticipated in the 579 candidate profiles. These potential heat shock genes were identified by two criteria: (i) their profiles showed maximal expression at the zero time point followed by an immediate drop to minimal expression for the remainder of the time course, and (ii) their expression levels in an asynchronous population subjected to the same temperature shift were similar to the levels seen in the synchronized, swarmer cell population at the zero time point (data not shown). Genes that are expressed at a higher level in the synchronized population relative to the unsynchronized population after the same temperature shift are thus swarmer-specific and not heat shock-responsive. The original group of 579 candidate cell cycle-regulated genes contained 26 genes that responded solely to the synchronization method and were discarded; this led to a final group of 553 apparently cell cycle-regulated genes.

To estimate the number of false positives included in this set of 553 genes, the entire data set was randomly shuffled (2356 genes with 11 time points each = 25,916 randomly shuffled data points) and subjected to the same DCT analysis procedure. Only 46 of the 2356 randomized expression profiles exceeded the chosen parameters; accordingly, the false positive rate is estimated to be less than 9% (46/553). All genes shown by biochemical methods to be cell cycle-regulated were present in the set of genes identified as cell cycle-regulated. Visual inspection of the 553 individual profiles also confirmed the cyclical expression patterns of these genes.

Analysis of ctrA Mutant Strains
Wild-type and ctrA401ts Caulobacter strains were grown at the permissive temperature of 28°C in peptone-yeast extract (PYE) media to an OD660 of 0.05 and then shifted to the restrictive temperature of 37°C. Cells were collected at 0 and 4 hours after the shift with total RNA harvested and treated as described in (31). RNA levels on microarrays were compared in three ways, where "mutant" represents the ctrA401ts strain and "control" is the isogenic, wild-type strain: (a) control at 0 hours vs. control at 4 hours, (b) control at 0 hours vs. mutant at 0 hours, (c) mutant at 0 hours vs. mutant at 4 hours. Each of the three comparisons was done twice, using independent wild-type and ctrA401ts colonies each time, with results averaged. The correlation coefficient for the duplicate experiments was greater than 95%. To identify genes whose expression changes significantly in response to the ctrA mutation, we multiplied the ratios of mutant at 4 hours/mutant at 0 hours (c) and mutant at 0 hours/control at 0 hours (b) to yield a ratio of mutant at 4 hours/control at 0 hours, which we termed the ctrAts ratio. This ratio should reflect changes in expression of a gene in the mutant strain relative to the wild type at either the permissive (b) or restrictive (c) temperature, or both. Genes whose ctrAts ratio showed at least a 1.75-fold change in either direction were considered as significant. However, those genes whose expression changed significantly in the control at 0 hours vs. control at 4 hours hybridization (a) were eliminated, since these are genes responding to the temperature shift alone and not to loss of CtrA function. The threshold of 1.75 was chosen because microarray-based comparison of RNA prepared from independent colonies of the same strain, grown under identical conditions, indicated that 100% of the 2966 spots analyzed showed less than twofold variability and 96% of spots varied less than 1.75-fold.

Strains LS3326 and LS3327 were grown overnight in PYE + 0.05% glucose, diluted back to an OD660 of 0.025 in PYE, grown to an OD660 of 0.05, and then induced by addition of xylose to a final concentration of 0.05%. LS3327 contains the plasmid pJS71 with a xylose-inducible promoter driving expression of ctrAD51ED3W. This allele encodes a CtrA derivative with a C-terminal three-amino acid truncation rendering it resistant to normal, cell cycle-dependent proteolysis. In addition, a critical aspartate is replaced with a glutamate, D51E, that partially mimics constitutive phosphorylation. LS3326 contains the plasmid pJS71 with no insert as a control. RNA for microarray hybridization was harvested as described in (31) from cells collected at 0 and 4 hours after addition of xylose. As with ctrA401ts, three comparisons were made with microarrays (each comparison was done twice, independently), where "mutant" represents the inducible ctrAD51ED3W strain and "control" is the isogenic parent strain: (d) control at 0 hours vs. control at 4 hours, (e) control at 0 hours vs. mutant at 0 hours, (f) mutant at 0 hours vs. mutant at 4 hours. Identification of significantly affected genes was done in the same manner as the ctrA401ts experiment, but with a ratio of mutant at 4 hours/control at 0 hours calculated by multiplying ratios from hybridizations (e) and (f). This ratio summarizes changes resulting from induction of the CtrA allele (f) or leaky expression in repressive conditions (e). Genes that responded only to xylose addition to the media (d) were eliminated.

Promoter Analysis
A promoter database containing the 600 base pairs upstream of the predicted start codon of each predicted ORF was constructed. A profile of known CtrA binding sites was built using MEME (Multiple Expectation Maximization Motif Elicitation), available through the GCG software package (Genetics Computer Group, Madison, WI). This profile was then used with MotifSearch (GCG software) to identify candidate CtrA binding sites in the promoter database. CtrA binding sites were selected by requiring a combined MotifSearch P value of < 0.01 and a minimum 7 out of 9 match to the consensus CtrA binding site of TTAA-n7-TTAAC.

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Abstract of this Article
Full Text of this Article

Volume 290, Number 5499, Issue of 15 Dec 2000, p. 2144.
Copyright © 2004 by The American Association for the Advancement of Science. All rights reserved.

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