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1.
Nat Commun ; 6: 7822, 2015 Jul 28.
Artigo em Inglês | MEDLINE | ID: mdl-26215380

RESUMO

Genetic screens are powerful tools to identify the genes required for a given biological process. However, for technical reasons, comprehensive screens have been restricted to very few model organisms. Therefore, although deep sequencing is revealing the genes of ever more insect species, the functional studies predominantly focus on candidate genes previously identified in Drosophila, which is biasing research towards conserved gene functions. RNAi screens in other organisms promise to reduce this bias. Here we present the results of the iBeetle screen, a large-scale, unbiased RNAi screen in the red flour beetle, Tribolium castaneum, which identifies gene functions in embryonic and postembryonic development, physiology and cell biology. The utility of Tribolium as a screening platform is demonstrated by the identification of genes involved in insect epithelial adhesion. This work transcends the restrictions of the candidate gene approach and opens fields of research not accessible in Drosophila.


Assuntos
Desenvolvimento Embrionário/genética , Proteínas de Insetos/genética , Metamorfose Biológica/genética , Oogênese/genética , Interferência de RNA , Tribolium/genética , Animais , Besouros/embriologia , Besouros/genética , Besouros/fisiologia , Sequenciamento de Nucleotídeos em Larga Escala , Larva/genética , Pupa/genética , Tribolium/embriologia , Tribolium/fisiologia
2.
Nucleic Acids Res ; 43(Database issue): D720-5, 2015 Jan.
Artigo em Inglês | MEDLINE | ID: mdl-25378303

RESUMO

The iBeetle-Base (http://ibeetle-base.uni-goettingen.de) makes available annotations of RNAi phenotypes, which were gathered in a large scale RNAi screen in the red flour beetle Tribolium castaneum (iBeetle screen). In addition, it provides access to sequence information and links for all Tribolium castaneum genes. The iBeetle-Base contains the annotations of phenotypes of several thousands of genes knocked down during embryonic and metamorphic epidermis and muscle development in addition to phenotypes linked to oogenesis and stink gland biology. The phenotypes are described according to the EQM (entity, quality, modifier) system using controlled vocabularies and the Tribolium morphological ontology (TrOn). Furthermore, images linked to the respective annotations are provided. The data are searchable either for specific phenotypes using a complex 'search for morphological defects' or a 'quick search' for gene names and IDs. The red flour beetle Tribolium castaneum has become an important model system for insect functional genetics and is a representative of the most species rich taxon, the Coleoptera, which comprise several devastating pests. It is used for studying insect typical development, the evolution of development and for research on metabolism and pest control. Besides Drosophila, Tribolium is the first insect model organism where large scale unbiased screens have been performed.


Assuntos
Bases de Dados Genéticas , Genes de Insetos , Interferência de RNA , Tribolium/genética , Animais , Feminino , Internet , Fenótipo , Tribolium/anatomia & histologia , Tribolium/embriologia , Interface Usuário-Computador
3.
New Phytol ; 202(2): 565-581, 2014 Apr.
Artigo em Inglês | MEDLINE | ID: mdl-24433459

RESUMO

Six transcription regulatory genes of the Verticillium plant pathogen, which reprogrammed nonadherent budding yeasts for adhesion, were isolated by a genetic screen to identify control elements for early plant infection. Verticillium transcription activator of adhesion Vta2 is highly conserved in filamentous fungi but not present in yeasts. The Magnaporthe grisea ortholog conidiation regulator Con7 controls the formation of appressoria which are absent in Verticillium species. Vta2 was analyzed by using genetics, cell biology, transcriptomics, secretome proteomics and plant pathogenicity assays. Nuclear Vta2 activates the expression of the adhesin-encoding yeast flocculin genes FLO1 and FLO11. Vta2 is required for fungal growth of Verticillium where it is a positive regulator of conidiation. Vta2 is mandatory for accurate timing and suppression of microsclerotia as resting structures. Vta2 controls expression of 270 transcripts, including 10 putative genes for adhesins and 57 for secreted proteins. Vta2 controls the level of 125 secreted proteins, including putative adhesins or effector molecules and a secreted catalase-peroxidase. Vta2 is a major regulator of fungal pathogenesis, and controls host-plant root infection and H2 O2 detoxification. Verticillium impaired in Vta2 is unable to colonize plants and induce disease symptoms. Vta2 represents an interesting target for controlling the growth and development of these vascular pathogens.


Assuntos
Estruturas Fúngicas/crescimento & desenvolvimento , Regulação Fúngica da Expressão Gênica , Genes Fúngicos , Doenças das Plantas/microbiologia , Raízes de Plantas/microbiologia , Fatores de Transcrição/genética , Verticillium/genética , Brassica napus/microbiologia , Proteínas Fúngicas/genética , Proteínas Fúngicas/metabolismo , Solanum lycopersicum/microbiologia , Ativação Transcricional , Verticillium/crescimento & desenvolvimento , Verticillium/patogenicidade , Leveduras
4.
Nucleic Acids Res ; 37(Web Server issue): W101-5, 2009 Jul.
Artigo em Inglês | MEDLINE | ID: mdl-19429689

RESUMO

Metagenomic sequencing projects yield numerous sequencing reads of a diverse range of uncultivated and mostly yet unknown microorganisms. In many cases, these sequencing reads cannot be assembled into longer contigs. Thus, gene prediction tools that were originally developed for whole-genome analysis are not suitable for processing metagenomes. Orphelia is a program for predicting genes in short DNA sequences that is available through a web server application (http://orphelia.gobics.de). Orphelia utilizes prediction models that were created with machine learning techniques on the basis of a wide range of annotated genomes. In contrast to other methods for metagenomic gene prediction, Orphelia has fragment length-specific prediction models for the two most popular sequencing techniques in metagenomics, chain termination sequencing and pyrosequencing. These models ensure highly specific gene predictions.


Assuntos
Microbiologia Ambiental , Genes , Genômica , Software , Internet , Fases de Leitura Aberta , Análise de Sequência de DNA , Interface Usuário-Computador
5.
BMC Bioinformatics ; 9: 217, 2008 Apr 28.
Artigo em Inglês | MEDLINE | ID: mdl-18442389

RESUMO

BACKGROUND: Metagenomics is an approach to the characterization of microbial genomes via the direct isolation of genomic sequences from the environment without prior cultivation. The amount of metagenomic sequence data is growing fast while computational methods for metagenome analysis are still in their infancy. In contrast to genomic sequences of single species, which can usually be assembled and analyzed by many available methods, a large proportion of metagenome data remains as unassembled anonymous sequencing reads. One of the aims of all metagenomic sequencing projects is the identification of novel genes. Short length, for example, Sanger sequencing yields on average 700 bp fragments, and unknown phylogenetic origin of most fragments require approaches to gene prediction that are different from the currently available methods for genomes of single species. In particular, the large size of metagenomic samples requires fast and accurate methods with small numbers of false positive predictions. RESULTS: We introduce a novel gene prediction algorithm for metagenomic fragments based on a two-stage machine learning approach. In the first stage, we use linear discriminants for monocodon usage, dicodon usage and translation initiation sites to extract features from DNA sequences. In the second stage, an artificial neural network combines these features with open reading frame length and fragment GC-content to compute the probability that this open reading frame encodes a protein. This probability is used for the classification and scoring of gene candidates. With large scale training, our method provides fast single fragment predictions with good sensitivity and specificity on artificially fragmented genomic DNA. Additionally, this method is able to predict translation initiation sites accurately and distinguishes complete from incomplete genes with high reliability. CONCLUSION: Large scale machine learning methods are well-suited for gene prediction in metagenomic DNA fragments. In particular, the combination of linear discriminants and neural networks is promising and should be considered for integration into metagenomic analysis pipelines. The data sets can be downloaded from the URL provided (see Availability and requirements section).


Assuntos
Inteligência Artificial , Mapeamento Cromossômico/métodos , DNA Bacteriano/genética , Genoma Bacteriano/genética , Reconhecimento Automatizado de Padrão/métodos , Análise de Sequência de DNA/métodos , Algoritmos
6.
BMC Bioinformatics ; 7: 121, 2006 Mar 09.
Artigo em Inglês | MEDLINE | ID: mdl-16526950

RESUMO

BACKGROUND: Although it is not difficult for state-of-the-art gene finders to identify coding regions in prokaryotic genomes, exact prediction of the corresponding translation initiation sites (TIS) is still a challenging problem. Recently a number of post-processing tools have been proposed for improving the annotation of prokaryotic TIS. However, inherent difficulties of these approaches arise from the considerable variation of TIS characteristics across different species. Therefore prior assumptions about the properties of prokaryotic gene starts may cause suboptimal predictions for newly sequenced genomes with TIS signals differing from those of well-investigated genomes. RESULTS: We introduce a clustering algorithm for completely unsupervised scoring of potential TIS, based on positionally smoothed probability matrices. The algorithm requires an initial gene prediction and the genomic sequence of the organism to perform the reannotation. As compared with other methods for improving predictions of gene starts in bacterial genomes, our approach is not based on any specific assumptions about prokaryotic TIS. Despite the generality of the underlying algorithm, the prediction rate of our method is competitive on experimentally verified test data from E. coli and B. subtilis. Regarding genomes with high G+C content, in contrast to some previously proposed methods, our algorithm also provides good performance on P. aeruginosa, B. pseudomallei and R. solanacearum. CONCLUSION: On reliable test data we showed that our method provides good results in post-processing the predictions of the widely-used program GLIMMER. The underlying clustering algorithm is robust with respect to variations in the initial TIS annotation and does not require specific assumptions about prokaryotic gene starts. These features are particularly useful on genomes with high G+C content. The algorithm has been implemented in the tool "TICO" (TIs COrrector) which is publicly available from our web site.


Assuntos
Algoritmos , Inteligência Artificial , Códon de Iniciação/genética , Reconhecimento Automatizado de Padrão/métodos , Fatores de Iniciação em Procariotos/genética , Biossíntese de Proteínas/genética , Análise de Sequência de DNA/métodos , Sequência de Bases , Análise por Conglomerados , Dados de Sequência Molecular
7.
Bioinformatics ; 21(17): 3568-9, 2005 Sep 01.
Artigo em Inglês | MEDLINE | ID: mdl-15994191

RESUMO

UNLABELLED: We provide the tool 'TICO' (Translation Initiation site COrrection) for improving the results of conventional gene finders for prokaryotic genomes with regard to exact localization of the translation initiation site (TIS). At the current state TICO provides an interface for direct post processing of the predictions obtained from the widely used program GLIMMER. Our program is based on a clustering algorithm for completely unsupervised scoring of potential TIS locations. AVAILABILITY: Our tool can be freely accessed through a web interface at http://tico.gobics.de/ CONTACT: maike@gobics.de


Assuntos
Algoritmos , Códon de Iniciação/genética , Genoma Bacteriano , Biossíntese de Proteínas/genética , Análise de Sequência de DNA/métodos , Software , Sequência de Bases , Dados de Sequência Molecular , Células Procarióticas
8.
BMC Bioinformatics ; 5: 169, 2004 Oct 28.
Artigo em Inglês | MEDLINE | ID: mdl-15511290

RESUMO

BACKGROUND: Kernel-based learning algorithms are among the most advanced machine learning methods and have been successfully applied to a variety of sequence classification tasks within the field of bioinformatics. Conventional kernels utilized so far do not provide an easy interpretation of the learnt representations in terms of positional and compositional variability of the underlying biological signals. RESULTS: We propose a kernel-based approach to datamining on biological sequences. With our method it is possible to model and analyze positional variability of oligomers of any length in a natural way. On one hand this is achieved by mapping the sequences to an intuitive but high-dimensional feature space, well-suited for interpretation of the learnt models. On the other hand, by means of the kernel trick we can provide a general learning algorithm for that high-dimensional representation because all required statistics can be computed without performing an explicit feature space mapping of the sequences. By introducing a kernel parameter that controls the degree of position-dependency, our feature space representation can be tailored to the characteristics of the biological problem at hand. A regularized learning scheme enables application even to biological problems for which only small sets of example sequences are available. Our approach includes a visualization method for transparent representation of characteristic sequence features. Thereby importance of features can be measured in terms of discriminative strength with respect to classification of the underlying sequences. To demonstrate and validate our concept on a biochemically well-defined case, we analyze E. coli translation initiation sites in order to show that we can find biologically relevant signals. For that case, our results clearly show that the Shine-Dalgarno sequence is the most important signal upstream a start codon. The variability in position and composition we found for that signal is in accordance with previous biological knowledge. We also find evidence for signals downstream of the start codon, previously introduced as transcriptional enhancers. These signals are mainly characterized by occurrences of adenine in a region of about 4 nucleotides next to the start codon. CONCLUSIONS: We showed that the oligo kernel can provide a valuable tool for the analysis of relevant signals in biological sequences. In the case of translation initiation sites we could clearly deduce the most discriminative motifs and their positional variation from example sequences. Attractive features of our approach are its flexibility with respect to oligomer length and position conservation. By means of these two parameters oligo kernels can easily be adapted to different biological problems.


Assuntos
Códon de Iniciação/genética , Modelos Genéticos , Fatores de Iniciação em Procariotos/genética , Algoritmos , Inteligência Artificial , Biologia Computacional/métodos , Gráficos por Computador , Bases de Dados Genéticas , Escherichia coli K12/genética , Genes Bacterianos/genética , Alinhamento de Sequência/métodos
9.
In Silico Biol ; 3(4): 441-51, 2003.
Artigo em Inglês | MEDLINE | ID: mdl-14965344

RESUMO

The performance of gene-predicting tools varies considerably if evaluated with respect to the parameters sensitivity and specificity or their capability to identify the correct start codon. We were interested to validate tools for gene prediction and to implement a metatool named YACOP, which combines existing tools and has a higher performance. YACOP parses and combines the output of the three gene-predicting systems Criticia, Glimmer and ZCURVE. It outperforms each of the programs tested with its high sensitivity and specificity values combined with a larger number of correctly predicted gene starts. Performance of YACOP and the gene-finding programs was tested by comparing their output with a carefully selected set of annotated genomes. We found that the problem of identifying genes in prokaryotic genomes by means of computational analysis was solved satisfactorily. In contrast, the correct localization of the start codon still appeared to be a problem, as in all cases under test at least 7.8% and up to 32.3% of the positions given in the annotations differed from the locus predicted by any of the programs tested. YACOP can be downloaded from http://www.g2l.bio.uni-goettingen.de.


Assuntos
Técnicas Genéticas , Software , Algoritmos , Códon de Iniciação/genética , Bases de Dados Genéticas , Escherichia coli/genética , Genes Bacterianos , Genômica/estatística & dados numéricos , Salmonella typhimurium/genética
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