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1.
Curr Biol ; 21(1): R25-7, 2011 Jan 11.
Article in English | MEDLINE | ID: mdl-21215932

ABSTRACT

Animals perceive light typically by photoreceptor neurons assembled in eyes, but some also use non-eye photosensory neurons. Multidendritic neurons in the body wall of Drosophila larvae have now been shown to use an unconventional phototransduction mechanism to sense light.


Subject(s)
Drosophila/physiology , Integumentary System/physiology , Photoreceptor Cells, Invertebrate/physiology , Animals , Larva/physiology , Light , Neurons/physiology
2.
J Biotechnol ; 142(1): 38-49, 2009 Jun 01.
Article in English | MEDLINE | ID: mdl-19480946

ABSTRACT

The phylogenetic structure of the microbial community residing in a fermentation sample from a production-scale biogas plant fed with maize silage, green rye and liquid manure was analysed by an integrated approach using clone library sequences and metagenome sequence data obtained by 454-pyrosequencing. Sequencing of 109 clones from a bacterial and an archaeal 16S-rDNA amplicon library revealed that the obtained nucleotide sequences are similar but not identical to 16S-rDNA database sequences derived from different anaerobic environments including digestors and bioreactors. Most of the bacterial 16S-rDNA sequences could be assigned to the phylum Firmicutes with the most abundant class Clostridia and to the class Bacteroidetes, whereas most archaeal 16S-rDNA sequences cluster close to the methanogen Methanoculleus bourgensis. Further sequences of the archaeal library most probably represent so far non-characterised species within the genus Methanoculleus. A similar result derived from phylogenetic analysis of mcrA clone sequences. The mcrA gene product encodes the alpha-subunit of methyl-coenzyme-M reductase involved in the final step of methanogenesis. BLASTn analysis applying stringent settings resulted in assignment of 16S-rDNA metagenome sequence reads to 62 16S-rDNA amplicon sequences thus enabling frequency of abundance estimations for 16S-rDNA clone library sequences. Ribosomal Database Project (RDP) Classifier processing of metagenome 16S-rDNA reads revealed abundance of the phyla Firmicutes, Bacteroidetes and Euryarchaeota and the orders Clostridiales, Bacteroidales and Methanomicrobiales. Moreover, a large fraction of 16S-rDNA metagenome reads could not be assigned to lower taxonomic ranks, demonstrating that numerous microorganisms in the analysed fermentation sample of the biogas plant are still unclassified or unknown.


Subject(s)
Archaea/genetics , Bacteria/genetics , DNA, Ribosomal/genetics , Genome, Archaeal , Genome, Bacterial , Methane/metabolism , Phylogeny , Archaea/metabolism , Bacteria/metabolism , Biodegradation, Environmental , Biomass , Bioreactors , Gene Library , Genes, Archaeal , Genes, Bacterial , Methanomicrobiaceae/genetics , Methanomicrobiaceae/metabolism , Oxidoreductases/genetics , RNA, Ribosomal, 16S/genetics , Sequence Alignment , Sequence Analysis, DNA
3.
BMC Bioinformatics ; 10: 56, 2009 Feb 11.
Article in English | MEDLINE | ID: mdl-19210774

ABSTRACT

BACKGROUND: Metagenomics, or the sequencing and analysis of collective genomes (metagenomes) of microorganisms isolated from an environment, promises direct access to the "unculturable majority". This emerging field offers the potential to lay solid basis on our understanding of the entire living world. However, the taxonomic classification is an essential task in the analysis of metagenomics data sets that it is still far from being solved. We present a novel strategy to predict the taxonomic origin of environmental genomic fragments. The proposed classifier combines the idea of the k-nearest neighbor with strategies from kernel-based learning. RESULTS: Our novel strategy was extensively evaluated using the leave-one-out cross validation strategy on fragments of variable length (800 bp - 50 Kbp) from 373 completely sequenced genomes. TACOA is able to classify genomic fragments of length 800 bp and 1 Kbp with high accuracy until rank class. For longer fragments > or = 3 Kbp accurate predictions are made at even deeper taxonomic ranks (order and genus). Remarkably, TACOA also produces reliable results when the taxonomic origin of a fragment is not represented in the reference set, thus classifying such fragments to its known broader taxonomic class or simply as "unknown". We compared the classification accuracy of TACOA with the latest intrinsic classifier PhyloPythia using 63 recently published complete genomes. For fragments of length 800 bp and 1 Kbp the overall accuracy of TACOA is higher than that obtained by PhyloPythia at all taxonomic ranks. For all fragment lengths, both methods achieved comparable high specificity results up to rank class and low false negative rates are also obtained. CONCLUSION: An accurate multi-class taxonomic classifier was developed for environmental genomic fragments. TACOA can predict with high reliability the taxonomic origin of genomic fragments as short as 800 bp. The proposed method is transparent, fast, accurate and the reference set can be easily updated as newly sequenced genomes become available. Moreover, the method demonstrated to be competitive when compared to the most current classifier PhyloPythia and has the advantage that it can be locally installed and the reference set can be kept up-to-date.


Subject(s)
Environmental Microbiology , Genome , Genomics/methods , Software , Algorithms , Archaea/classification , Archaea/genetics , Bacteria/classification , Bacteria/genetics , Classification/methods , Cluster Analysis , Software Validation
4.
J Biotechnol ; 136(1-2): 77-90, 2008 Aug 31.
Article in English | MEDLINE | ID: mdl-18597880

ABSTRACT

Composition and gene content of a biogas-producing microbial community from a production-scale biogas plant fed with renewable primary products was analysed by means of a metagenomic approach applying the ultrafast 454-pyrosequencing technology. Sequencing of isolated total community DNA on a Genome Sequencer FLX System resulted in 616,072 reads with an average read length of 230 bases accounting for 141,664,289 bases sequence information. Assignment of obtained single reads to COG (Clusters of Orthologous Groups of proteins) categories revealed a genetic profile characteristic for an anaerobic microbial consortium conducting fermentative metabolic pathways. Assembly of single reads resulted in the formation of 8752 contigs larger than 500 bases in size. Contigs longer than 10kb mainly encode house-keeping proteins, e.g. DNA polymerase, recombinase, DNA ligase, sigma factor RpoD and genes involved in sugar and amino acid metabolism. A significant portion of contigs was allocated to the genome sequence of the archaeal methanogen Methanoculleus marisnigri JR1. Mapping of single reads to the M. marisnigri JR1 genome revealed that approximately 64% of the reference genome including methanogenesis gene regions are deeply covered. These results suggest that species related to those of the genus Methanoculleus play a dominant role in methanogenesis in the analysed fermentation sample. Moreover, assignment of numerous contig sequences to clostridial genomes including gene regions for cellulolytic functions indicates that clostridia are important for hydrolysis of cellulosic plant biomass in the biogas fermenter under study. Metagenome sequence data from a biogas-producing microbial community residing in a fermenter of a biogas plant provide the basis for a rational approach to improve the biotechnological process of biogas production.


Subject(s)
Archaea/physiology , Bioreactors/microbiology , Chromosome Mapping/methods , Genome, Archaeal/genetics , Methane/metabolism , Sequence Analysis, DNA/methods , Base Sequence , Biotechnology/methods , Molecular Sequence Data
5.
J Biotechnol ; 136(1-2): 91-101, 2008 Aug 31.
Article in English | MEDLINE | ID: mdl-18611419

ABSTRACT

A total community DNA sample from an agricultural biogas reactor continuously fed with maize silage, green rye, and small proportions of chicken manure has recently been sequenced using massively parallel pyrosequencing. In this study, the sample was computationally characterized without a prior assembly step, providing quantitative insights into the taxonomic composition and gene content of the underlying microbial community. Clostridiales from the phylum Firmicutes is the most prevalent phylogenetic order, Methanomicrobiales are dominant among methanogenic archaea. An analysis of Operational Taxonomic Units (OTUs) revealed that the entire microbial community is only partially covered by the sequenced sample, despite that estimates suggest only a moderate overall diversity of the community. Furthermore, the results strongly indicate that archaea related to the genus Methanoculleus, using CO2 as electron acceptor and H2 as electron donor, are the main producers of methane in the analyzed biogas reactor sample. A phylogenetic analysis of glycosyl hydrolase protein families suggests that Clostridia play an important role in the digestion of polysaccharides and oligosaccharides. Finally, the results unveiled that most of the organisms constituting the sample are still unexplored.


Subject(s)
Archaea/classification , Archaea/physiology , Bioreactors/microbiology , Chromosome Mapping/methods , Genome, Archaeal/genetics , Methane/metabolism , Sequence Analysis, DNA/methods , Base Sequence , Molecular Sequence Data , Species Specificity
6.
Bioinformatics ; 24(14): 1568-74, 2008 Jul 15.
Article in English | MEDLINE | ID: mdl-18535082

ABSTRACT

MOTIVATION: Modern high-throughput sequencing technologies enable the simultaneous analysis of organisms in an environment. The analysis of species diversity and the binning of DNA fragments of non-sequenced species for assembly are two major challenges in sequence analysis. To achieve reasonable binnings and classifications, DNA fragment structure has to be represented appropriately, so it can be processed by machine learning algorithms. RESULTS: Hierarchically growing hyperbolic Self-Organizing maps (H(2)SOMs) are trained to cluster small variable-length DNA fragments (0.2-50 kb) of 350 prokaryotic organisms at six taxonomic ranks Superkingdom, Phylum, Class, Order, Genus and Species in the Tree of Life. DNA fragments are mapped to three different types of feature vectors based on the genomic signature: basic features, features considering the importance of oligonucleotide patterns as well as contrast enhanced features. The H (2)SOM classifier achieves high classification rates while at the same time its visualization allows further insights into the projected data and has the potential to support binning of short sequence reads, because DNA fragments can be grouped into phylogenetic groups. AVAILABILITY: An implementation of the H(2)HSOM classifier in Matlab is provided at www.techfak.uni-bielefeld.de/ags/ani/projects/HHSOMSeqData.


Subject(s)
Computational Biology/methods , DNA/chemistry , Multigene Family , Sequence Analysis, DNA/methods , Algorithms , Archaeal Proteins/genetics , Artificial Intelligence , Bacterial Proteins/genetics , Classification , Cluster Analysis , Databases, Genetic , Models, Genetic , Models, Statistical , Oligonucleotides/chemistry , Phylogeny
7.
Nucleic Acids Res ; 36(7): 2230-9, 2008 Apr.
Article in English | MEDLINE | ID: mdl-18285365

ABSTRACT

Metagenomics is providing striking insights into the ecology of microbial communities. The recently developed massively parallel 454 pyrosequencing technique gives the opportunity to rapidly obtain metagenomic sequences at a low cost and without cloning bias. However, the phylogenetic analysis of the short reads produced represents a significant computational challenge. The phylogenetic algorithm CARMA for predicting the source organisms of environmental 454 reads is described. The algorithm searches for conserved Pfam domain and protein families in the unassembled reads of a sample. These gene fragments (environmental gene tags, EGTs), are classified into a higher-order taxonomy based on the reconstruction of a phylogenetic tree of each matching Pfam family. The method exhibits high accuracy for a wide range of taxonomic groups, and EGTs as short as 27 amino acids can be phylogenetically classified up to the rank of genus. The algorithm was applied in a comparative study of three aquatic microbial samples obtained by 454 pyrosequencing. Profound differences in the taxonomic composition of these samples could be clearly revealed.


Subject(s)
Algorithms , Environmental Microbiology , Genomics/methods , Phylogeny , DNA/classification , RNA, Ribosomal, 16S/classification , Software , Water Microbiology
8.
Bioinformatics ; 22(14): e281-9, 2006 Jul 15.
Article in English | MEDLINE | ID: mdl-16873483

ABSTRACT

MOTIVATION: Novel sequencing techniques can give access to organisms that are difficult to cultivate using conventional methods. When applied to environmental samples, the data generated has some drawbacks, e.g. short length of assembled contigs, in-frame stop codons and frame shifts. Unfortunately, current gene finders cannot circumvent these difficulties. At the same time, the automated prediction of genes is a prerequisite for the increasing amount of genomic sequences to ensure progress in metagenomics. RESULTS: We introduce a novel gene finding algorithm that incorporates features overcoming the short length of the assembled contigs from environmental data, in-frame stop codons as well as frame shifts contained in bacterial sequences. The results show that by searching for sequence similarities in an environmental sample our algorithm is capable of detecting a high fraction of its gene content, depending on the species composition and the overall size of the sample. The method is valuable for hunting novel unknown genes that may be specific for the habitat where the sample is taken. Finally, we show that our algorithm can even exploit the limited information contained in the short reads generated by 454 technology for the prediction of protein coding genes. AVAILABILITY: The program is freely available upon request.


Subject(s)
Chromosome Mapping/methods , DNA, Bacterial/genetics , Environmental Microbiology , Environmental Monitoring/methods , Genome, Bacterial/genetics , Sequence Alignment/methods , Sequence Analysis, DNA/methods , Algorithms , Bacteria/genetics , Bacteria/isolation & purification , Base Sequence , Molecular Sequence Data
9.
Nucleic Acids Res ; 33(17): 5691-702, 2005.
Article in English | MEDLINE | ID: mdl-16214803

ABSTRACT

The release of the 1000th complete microbial genome will occur in the next two to three years. In anticipation of this milestone, the Fellowship for Interpretation of Genomes (FIG) launched the Project to Annotate 1000 Genomes. The project is built around the principle that the key to improved accuracy in high-throughput annotation technology is to have experts annotate single subsystems over the complete collection of genomes, rather than having an annotation expert attempt to annotate all of the genes in a single genome. Using the subsystems approach, all of the genes implementing the subsystem are analyzed by an expert in that subsystem. An annotation environment was created where populated subsystems are curated and projected to new genomes. A portable notion of a populated subsystem was defined, and tools developed for exchanging and curating these objects. Tools were also developed to resolve conflicts between populated subsystems. The SEED is the first annotation environment that supports this model of annotation. Here, we describe the subsystem approach, and offer the first release of our growing library of populated subsystems. The initial release of data includes 180 177 distinct proteins with 2133 distinct functional roles. This data comes from 173 subsystems and 383 different organisms.


Subject(s)
Genome, Archaeal , Genome, Bacterial , Genomics/methods , Software , Acyl Coenzyme A/metabolism , Coenzyme A/biosynthesis , Computational Biology , Internet , Leucine/metabolism , Ribosomal Proteins/classification , Terminology as Topic , Vocabulary, Controlled
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