Your browser doesn't support javascript.
loading
Show: 20 | 50 | 100
Results 1 - 3 de 3
Filter
Add more filters










Database
Language
Publication year range
1.
Genome Biol ; 9(5): R89, 2008.
Article in English | MEDLINE | ID: mdl-18507872

ABSTRACT

WikiProteins enables community annotation in a Wiki-based system. Extracts of major data sources have been fused into an editable environment that links out to the original sources. Data from community edits create automatic copies of the original data. Semantic technology captures concepts co-occurring in one sentence and thus potential factual statements. In addition, indirect associations between concepts have been calculated. We call on a 'million minds' to annotate a 'million concepts' and to collect facts from the literature with the reward of collaborative knowledge discovery. The system is available for beta testing at http://www.wikiprofessional.org.


Subject(s)
Databases, Protein , Proteins/genetics , Software , Information Storage and Retrieval , Internet
2.
Int J Med Inform ; 77(5): 354-62, 2008 May.
Article in English | MEDLINE | ID: mdl-17827057

ABSTRACT

BACKGROUND: Text-mining has been used to link biomedical concepts, such as genes or biological processes, to each other for annotation purposes or the generation of new hypotheses. To relate two concepts to each other several authors have used the vector space model, as vectors can be compared efficiently and transparently. Using this model, a concept is characterized by a list of associated concepts, together with weights that indicate the strength of the association. The associated concepts in the vectors and their weights are derived from a set of documents linked to the concept of interest. An important issue with this approach is the determination of the weights of the associated concepts. Various schemes have been proposed to determine these weights, but no comparative studies of the different approaches are available. Here we compare several weighting approaches in a large scale classification experiment. METHODS: Three different techniques were evaluated: (1) weighting based on averaging, an empirical approach; (2) the log likelihood ratio, a test-based measure; (3) the uncertainty coefficient, an information-theory based measure. The weighting schemes were applied in a system that annotates genes with Gene Ontology codes. As the gold standard for our study we used the annotations provided by the Gene Ontology Annotation project. Classification performance was evaluated by means of the receiver operating characteristics (ROC) curve using the area under the curve (AUC) as the measure of performance. RESULTS AND DISCUSSION: All methods performed well with median AUC scores greater than 0.84, and scored considerably higher than a binary approach without any weighting. Especially for the more specific Gene Ontology codes excellent performance was observed. The differences between the methods were small when considering the whole experiment. However, the number of documents that were linked to a concept proved to be an important variable. When larger amounts of texts were available for the generation of the concepts' vectors, the performance of the methods diverged considerably, with the uncertainty coefficient then outperforming the two other methods.


Subject(s)
Abstracting and Indexing/methods , Database Management Systems , Natural Language Processing , Neural Networks, Computer , Artificial Intelligence , Confidence Intervals , Database Management Systems/statistics & numerical data , Databases, Genetic , Gene Expression Profiling/statistics & numerical data , Genes , Information Theory , Likelihood Functions , Pattern Recognition, Automated/methods , Protein Interaction Mapping , PubMed , ROC Curve , Terminology as Topic , Uncertainty , Vocabulary, Controlled
3.
Proteomics ; 7(6): 921-31, 2007 Mar.
Article in English | MEDLINE | ID: mdl-17370270

ABSTRACT

Attribution of the most probable functions to proteins identified by proteomics is a significant challenge that requires extensive literature analysis. We have developed a system for automated prediction of implicit and explicit biologically meaningful functions for a proteomics study of the nucleolus. This approach uses a set of vocabulary terms to map and integrate the information from the entire MEDLINE database. Based on a combination of cross-species sequence homology searches and the corresponding literature, our approach facilitated the direct association between sequence data and information from biological texts describing function. Comparison of our automated functional assignment to manual annotation demonstrated our method to be highly effective. To establish the sensitivity, we defined the functional subtleties within a family containing a highly conserved sequence. Clustering of the DEAD-box protein family of RNA helicases confirmed that these proteins shared similar morphology although functional subfamilies were accurately identified by our approach. We visualized the nucleolar proteome in terms of protein functions using multi-dimensional scaling, showing functional associations between nucleolar proteins that were not previously realized. Finally, by clustering the functional properties of the established nucleolar proteins, we predicted novel nucleolar proteins. Subsequently, nonproteomics studies confirmed the predictions of previously unidentified nucleolar proteins.


Subject(s)
MEDLINE , Nuclear Proteins , Amino Acid Sequence , Animals , DEAD-box RNA Helicases/chemistry , DEAD-box RNA Helicases/genetics , DEAD-box RNA Helicases/metabolism , Databases, Protein , Humans , Molecular Sequence Data , Nuclear Proteins/chemistry , Nuclear Proteins/genetics , Nuclear Proteins/metabolism , Proteome
SELECTION OF CITATIONS
SEARCH DETAIL
...