Open Access

Complete genome sequence of Cryptobacterium curtum type strain (12-3T)

  • Konstantinos Mavrommatis1,
  • Rüdiger Pukall2,
  • Christine Rohde2,
  • Feng Chen1,
  • David Sims1, 3,
  • Thomas Brettin1, 3,
  • Cheryl Kuske1, 3,
  • John C. Detter1, 3,
  • Cliff Han1, 3,
  • Alla Lapidus1,
  • Alex Copeland1,
  • Tijana Glavina Del Rio1,
  • Matt Nolan1,
  • Susan Lucas1,
  • Hope Tice1,
  • Jan-Fang Cheng1,
  • David Bruce1, 3,
  • Lynne Goodwin1, 3,
  • Sam Pitluck1,
  • Galina Ovchinnikova1,
  • Amrita Pati1,
  • Natalia Ivanova1,
  • Amy Chen4,
  • Krishna Palaniappan4,
  • Patrick Chain1, 5,
  • Patrik D’haeseleer1, 5,
  • Markus Göker2,
  • Jim Bristow1,
  • Jonathan A. Eisen1, 6,
  • Victor Markowitz4,
  • Philip Hugenholtz1,
  • Manfred Rohde7,
  • Hans-Peter Klenk2 and
  • Nikos C. Kyrpides1
Standards in Genomic Sciences20091:1020093

DOI: 10.4056/sigs.12260

Published: 29 September 2009

Abstract

Cryptobacterium curtum Nakazawa et al. 1999 is the type species of the genus, and is of phylogenetic interest because of its very distant and isolated position within the family Coriobacteriaceae. C. curtum is an asaccharolytic, opportunistic pathogen with a typical occurrence in the oral cavity, involved in dental and oral infections like periodontitis, inflammations and abscesses. Here we describe the features of this organism, together with the complete genome sequence, and annotation. This is the first complete genome sequence of the actinobacterial family Coriobacteriaceae, and this 1,617,804 bp long single replicon genome with its 1364 protein-coding and 58 RNA genes is part of the Genomic Encyclopedia of Bacteria and Archaea project.

Keywords

oral infections opportunistic pathogenic periodontitis non-spore-former anaerobic asaccharolytic Coriobacteriaceae

Introduction

Strain 12-3T (= DSM 15641 = ATCC 700683 = CCUG 43107) is the type strain of Cryptobacterium curtum, which is the sole species within the genus Cryptobacterium [1]. C. curtum was described by Nakazawa et al. in 1999 [1]. The organism is of significant interest because of its position in the tree of life where it was initially wrongly placed close to Eubacterium (Firmicutes) to be then relocated in the phylum Actinobacteria, close to the Coriobacteriaceae [1]. Here we present a summary classification and a set of features for C. curtum 12-3T, together with the description of the complete genomic sequencing and annotation.

Classification and features

The type strain 12-3T and a second strain of the species, KV43-B, both classified in C. curtum were isolated from a periodontal pocket sample of an adult patient and from necrotic dental pulp, respectively [1]. C. curtum can also be isolated from human oral and dental infections like pulpal inflammations, advanced caries [1], dental abscesses or periodontitis [2]. 16S rRNA gene sequence analysis revealed that the two isolates represent a distinct lineage within the family Coriobacteriaceae, between the neighboring genera Eggerthella and Slackia (Figure 1). No significant matches with any 16S rRNA sequences from environmental genomic samples and surveys are reported at the NCBI BLAST server (February 2009).
Figure 1.

Phylogenetic tree of C. curtum 12-3T and most type strains of the family Coriobacteriaceae, inferred from 1422 aligned 16S rRNA characters [3,4] under the maximum likelihood criterion [5]. The tree was rooted with type strains of the genera Collinsella and Coriobacterium. The branches are scaled in terms of the expected number of substitutions per site. Numbers above branches are support values from 1000 bootstrap replicates if larger than 60%. Strains with a genome sequencing project registered in GOLD [6] are printed in blue; published genomes in bold, including two of which are reported in this issue of SIGS [7,8]

The very short and non-motile rods form tiny translucent colonies of less than 1 mm in diameter on BHI-blood agar without hemolysis after prolonged incubation under strictly anaerobic conditions (Table 1). Transmission electron micrographs of ultrathin sections of C. curtum 12-3T showed a single-layered Gram-positive cell wall of approximately 10 nm thickness (Figure 2) [1]. Carbohydrates are not metabolized; the species is asaccharolytic [1]. C. curtum is non-reactive in most biochemical tests. The human oral cavity contains arginine and other amino acids and oligopeptides due to proteinase and peptidase activities. C. curtum degrades arginine through arginine deiminase pathway [15]. Like Slackia exigua, a closely related species, these bacteria are very difficult to cultivate. Optimal doubling time is 12 hours [15]. There are no chemotaxonomic data available to C. curtium strain 12-3T.
Figure 2.

Scanning electron micrograph of C. curtum 12-3T

Table 1.

Classification and general features of C. curtum 12-3T according to the MIGS recommendations [9]

MIGS ID

Property

Term

Evidence code

 

Current classification

Domain Bacteria

TAS [10]

 

Phylum Actinobacteria

TAS [11]

 

Class Actinobacteria

TAS [12]

 

Order Coriobacteriales

TAS [12]

 

Family Coriobacteriaceae

TAS [12]

 

Genus Cryptobacterium

TAS [1]

 

Species Cryptobacterium curtum

TAS [1]

 

Type strain 12-3

TAS [1]

 

Gram stain

positive

TAS [1]

 

Cell shape

very short rods

TAS [1]

 

Motility

nonmotile

TAS [1]

 

Sporulation

non-sporulating

TAS [1]

 

Temperature range

mesophile

TAS [1]

 

Optimum temperature

37°C

NAS

 

Salinity

normal

TAS [1]

MIGS-22

Oxygen requirement

obligate anaerobic

TAS [1]

 

Carbon source

asaccharolytic

TAS [1]

 

Energy source

arginine, lysine

NAS

MIGS-6

Habitat

human oral microflora

TAS [1]

MIGS-15

Biotic relationship

free living, growth on enzymatic degradation products of inflamed tissues

NAS

MIGS-14

Pathogenicity

periodontal infections

TAS [1]

 

Biosafety level

1 (+)

TAS [13]

 

Isolation

infected human oral cavity

TAS [1]

MIGS-4

Geographic location

not reported

NAS

MIGS-5

Sample collection time

about 1995

TAS [1]

MIGS-4.1

Latitude - Longitude

not reported

 

MIGS-4.2

   

MIGS-4.3

Depth

not reported

 

MIGS-4.4

Altitude

not reported

 

Evidence codes - IDA: Inferred from Direct Assay (first time in publication); TAS: Traceable Author Statement (i.e., a direct report exists in the literature); NAS: Non-traceable Author Statement (i.e., not directly observed for the living, isolated sample, but based on a generally accepted property for the species, or anecdotal evidence). These evidence codes are from the Gene Ontology project [14]. If the evidence code is IDA, then the property was directly observed for a live isolate by one of the authors, or an expert or reputable institution mentioned in the acknowledgements.

Figure 1 shows the phylogenetic neighborhood of C. curtum strain 12-3T in a 16S rRNA based tree. Analysis of the three 16S rRNA gene sequences in the genome of strain 12-3T indicated that the genes differ by at most one nucleotide from each other, but differ by 15 nucleotides and eight ambiguities (1.1%) from the previously published 16S rRNA sequence generated from DSM 15641 (AB019260). The higher sequence coverage and overall improved level of sequence quality in whole-genome sequences, as compared to ordinary gene sequences, implies that the significant differences between the genome data and the reported 16S rRNA gene sequence might be due to sequencing errors in the previously reported sequence data.

Genome sequencing and annotation

Genome project history

This organism was selected for sequencing on the basis of each phylogenetic position, and is part of the Genomic Encyclopedia of Bacteria and Archaea project [16]. The genome project is deposited in the Genome OnLine Database [6] and the complete genome sequence in GenBank. Sequencing, finishing and annotation were performed by the DOE Joint Genome Institute (JGI). A summary of the project information is shown in Table 2.
Table 2.

Genome sequencing project information

MIGS ID

Property

Term

MIGS-31

Finishing quality

Finished

MIGS-28

Libraries used

Three genomic libraries: two Sanger libraries - 8 kb pMCL200 and fosmid pcc1Fos - and one 454 pyrosequence standard library

MIGS-29

Sequencing platforms

ABI3730, 454 GS FLX

MIGS-31.2

Sequencing coverage

12.9× Sanger; 20× pyrosequence

MIGS-30

Assemblers

Newbler version 1.1.02.15, phrap

MIGS-32

Gene calling method

Genemark 4.6b, tRNAScan-SE-1.23, infernal 0.81, GenePRIMP

 

INSDC / Genbank ID

CP001682

 

Genbank Date of Release

August 26, 2009

 

GOLD ID

Gc01086

 

NCBI Project ID

20739

 

Database: IMG-GEBA

2500901758

MIGS-13

Source material identifier

DSM 15641

 

Project relevance

Tree of Life, GEBA

Growth conditions and DNA isolation

C. curtum strain 12-3T, DSM 15641, was grown anaerobically in DSMZ medium 78 (Chopped Meat Medium) [17], supplemented with 1 g/l arginine, at 37°C. DNA was isolated from 1–1.5 g of cell paste using Qiagen Genomic 500 DNA Kit (Qiagen, Hilden, Germany) with protocol modification st/FT [16] for cell lysis.

Genome sequencing and assembly

The genome was sequenced using a combination of Sanger and 454 sequencing platforms. All general aspects of library construction and sequencing performed at the JGI can be found at http://www.jgi.doe.gov/. 454 Pyrosequencing reads were assembled using the Newbler assembler version 1.1.02.15 (Roche). Large Newbler contigs were broken into 1,799 overlapping fragments of 1000bp and entered into assembly as pseudo-reads. The sequences were assigned quality scores based on Newbler consensus q-scores with modifications to account for overlap redundancy and to adjust inflated q-scores. A hybrid 454/Sanger assembly was made using the parallel phrap assembler (High Performance Software, LLC). Possible mis-assemblies were corrected with Dupfinisher [18] or transposon bombing of bridging clones (Epicentre Biotechnologies, Madison, WI). Gaps between contigs were closed by editing in Consed, custom primer walk or PCR amplification. 47 Sanger finishing reads were produced to close gaps, to resolve repetitive regions, and to raise the quality of the finished sequence. The error rate of the completed genome sequence is less than 1 in 100,000. Together all sequence types provided 32.9x coverage of the genome.

Genome annotation

Genes were identified using GeneMark [19] as part of the genome annotation pipeline in the Integrated Microbial Genomes Expert Review (IMG-ER) system [20], followed by a round of manual curation using the JGI GenePRIMP pipeline [21]. The predicted CDSs were translated and used to search the National Center for Biotechnology Information (NCBI) nonredundant database, UniProt, TIGRFam, Pfam, PRIAM, KEGG, COG, and InterPro databases. The tRNAScanSE tool [22] was used to find tRNA genes, whereas ribosomal RNAs were found by using the tool RNAmmer [23]. Other non coding RNAs were identified by searching the genome for the Rfam profiles using INFERNAL (v0.81) [24]. Additional gene prediction analysis and manual functional annotation was performed within the Integrated Microbial Genomes (IMG) platform (http://img.jgi.doe.gov) [25].

Metabolic network analysis

The metabolic Pathway/Genome Database (PGDB) was computationally generated using Pathway Tools software version 12.5 [26] and MetaCyc version 12.5 [27], based on annotated EC numbers and a customized enzyme name mapping file. It has undergone no subsequent manual curation and may contain errors, similar to a Tier 3 BioCyc PGDB [28].

Genome properties

The genome is 1,617,804 bp long and comprises one main circular chromosome with a 50.9% GC content (Table 3 and Figure 3). Of the 1422 genes predicted, 1364 were protein coding genes, and 58 RNAs. A total of 7 pseudogenes were also identified. Among the majority of protein coding genes (78.5%) were assigned with a putative function while the remaining were annotated as hypothetical proteins. The properties and the statistics of the genome are summarized in Table 3. The distribution of genes into COG functional categories is presented in Table 4, and a cellular overview diagram is presented in Figure 4, followed by a summary of metabolic network statistics shown in Table 5.
Figure 3.

Graphical circular map of the genome. From outside to the center: Genes on forward strand (color by COG categories), Genes on reverse strand (color by COG categories), RNA genes (tRNAs green, rRNAs red, other RNAs black), GC content, GC skew.

Figure 4.

Schematic cellular overview diagram of all pathways of C. curtum 12-3T. Nodes represent metabolites, with shape indicating class of metabolite. Lines represent reactions.

Table 3.

Genome Statistics

Attribute

Value

% of Total

Genome size (bp)

1,617,804

 

DNA Coding region (bp)

1,439,290

88.97%

DNA G+C content (bp)

823,649

50.91%

Number of replicons

1

 

Extrachromosomal elements

0

 

Total genes

1425

100.00%

RNA genes

58

2.37%

rRNA operons

3

 

Protein-coding genes

1364

95.92%

Pseudo genes

7

0.49%

Genes with function prediction

1117

78.55%

Genes in paralog clusters

77

5.41%

Genes assigned to COGs

1103

77.57%

Genes assigned Pfam domains

1104

77.64%

Genes with signal peptides

276

19.37%

Genes with transmembrane helices

206

14.46%

CRISPR repeats

0

 
Table 4.

Number of genes associated with the general COG functional categories

Code

Value

%

Description

J

128

9.4

Translation, ribosomal structure and biogenesis

A

1

0.1

RNA processing and modification

K

94

6.9

Transcription

L

74

5.5

Replication, recombination and repair

B

1

0.1

Chromatin structure and dynamics

D

15

1.1

Cell cycle control, mitosis and meiosis

Y

0

0.0

Nuclear structure

V

20

1.5

Defense mechanisms

T

64

4.7

Signal transduction mechanisms

M

70

5.1

Cell wall/membrane biogenesis

N

1

0.1

Cell motility

Z

1

0.1

Cytoskeleton

W

0

0.0

Extracellular structures

U

20

1.5

Intracellular trafficking and secretion

O

55

4.0

Posttranslational modification, protein turnover, chaperones

C

100

7.3

Energy production and conversion

G

41

3.0

Carbohydrate transport and metabolism

E

96

7.0

Amino acid transport and metabolism

F

47

3.4

Nucleotide transport and metabolism

H

69

5.1

Coenzyme transport and metabolism

I

39

2.9

Lipid transport and metabolism

P

70

5.1

Inorganic ion transport and metabolism

Q

9

0.7

Secondary metabolites biosynthesis, transport and catabolism

R

119

8.7

General function prediction only

S

81

5.9

Function unknown

-

261

19.1

Not in COGs

Table 5.

Metabolic Network Statistics

Attribute

Value

Total genes

1422

Enzymes

316

Enzymatic reactions

606

Metabolic pathways

115

Metabolites

506

Declarations

Acknowledgements

We would like to gratefully acknowledge the help of Gabriele Gehrich-Schröter for growing C. curtum cultures and Susanne Schneider for DNA extraction and quality analysis (both at DSMZ). This work was performed under the auspices of the US Department of Energy Office of Science, Biological and Environmental Research Program, and by the University of California, Lawrence Berkeley National Laboratory under contract No. DE-AC02-05CH11231, Lawrence Livermore National Laboratory under Contract No. DE-AC52-07NA27344, and Los Alamos National Laboratory under contract No. DE-AC02-06NA25396, as well as German Research Foundation (DFG) INST 599/1-1.

Authors’ Affiliations

(1)
DOE Joint Genome Institute
(2)
DSMZ - German Collection of Microorganisms and Cell Cultures GmbH
(3)
Bioscience Division, Los Alamos National Laboratory
(4)
Biological Data Management and Technology Center, Lawrence Berkeley National Laboratory
(5)
Lawrence Livermore National Laboratory
(6)
University of California Davis Genome Center
(7)
HZI - Helmholtz Centre for Infection Research

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Copyright

© The Author(s) 2009