Use artificial neural network to align biological ontologies. 2008

Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
Dept Biostatistics, Bioinformatics, and Epidemiology, Medical University of South Carolina, Charleston, SC 29425, USA. huang@musc.edu

BACKGROUND Being formal, declarative knowledge representation models, ontologies help to address the problem of imprecise terminologies in biological and biomedical research. However, ontologies constructed under the auspices of the Open Biomedical Ontologies (OBO) group have exhibited a great deal of variety, because different parties can design ontologies according to their own conceptual views of the world. It is therefore becoming critical to align ontologies from different parties. During automated/semi-automated alignment across biological ontologies, different semantic aspects, i.e., concept name, concept properties, and concept relationships, contribute in different degrees to alignment results. Therefore, a vector of weights must be assigned to these semantic aspects. It is not trivial to determine what those weights should be, and current methodologies depend a lot on human heuristics. RESULTS In this paper, we take an artificial neural network approach to learn and adjust these weights, and thereby support a new ontology alignment algorithm, customized for biological ontologies, with the purpose of avoiding some disadvantages in both rule-based and learning-based aligning algorithms. This approach has been evaluated by aligning two real-world biological ontologies, whose features include huge file size, very few instances, concept names in numerical strings, and others. CONCLUSIONS The promising experiment results verify our proposed hypothesis, i.e., three weights for semantic aspects learned from a subset of concepts are representative of all concepts in the same ontology. Therefore, our method represents a large leap forward towards automating biological ontology alignment.

UI MeSH Term Description Entries
D000465 Algorithms A procedure consisting of a sequence of algebraic formulas and/or logical steps to calculate or determine a given task. Algorithm
D012660 Semantics The relationships between symbols and their meanings. Semantic
D016247 Information Storage and Retrieval Organized activities related to the storage, location, search, and retrieval of information. Information Retrieval,Data Files,Data Linkage,Data Retrieval,Data Storage,Data Storage and Retrieval,Information Extraction,Information Storage,Machine-Readable Data Files,Data File,Data File, Machine-Readable,Data Files, Machine-Readable,Extraction, Information,Files, Machine-Readable Data,Information Extractions,Machine Readable Data Files,Machine-Readable Data File,Retrieval, Data,Storage, Data
D016571 Neural Networks, Computer A computer architecture, implementable in either hardware or software, modeled after biological neural networks. Like the biological system in which the processing capability is a result of the interconnection strengths between arrays of nonlinear processing nodes, computerized neural networks, often called perceptrons or multilayer connectionist models, consist of neuron-like units. A homogeneous group of units makes up a layer. These networks are good at pattern recognition. They are adaptive, performing tasks by example, and thus are better for decision-making than are linear learning machines or cluster analysis. They do not require explicit programming. Computational Neural Networks,Connectionist Models,Models, Neural Network,Neural Network Models,Neural Networks (Computer),Perceptrons,Computational Neural Network,Computer Neural Network,Computer Neural Networks,Connectionist Model,Model, Connectionist,Model, Neural Network,Models, Connectionist,Network Model, Neural,Network Models, Neural,Network, Computational Neural,Network, Computer Neural,Network, Neural (Computer),Networks, Computational Neural,Networks, Computer Neural,Networks, Neural (Computer),Neural Network (Computer),Neural Network Model,Neural Network, Computational,Neural Network, Computer,Neural Networks, Computational,Perceptron
D018875 Vocabulary, Controlled A specified list of terms with a fixed and unalterable meaning, and from which a selection is made when CATALOGING; ABSTRACTING AND INDEXING; or searching BOOKS; JOURNALS AS TOPIC; and other documents. The control is intended to avoid the scattering of related subjects under different headings (SUBJECT HEADINGS). The list may be altered or extended only by the publisher or issuing agency. (From Harrod's Librarians' Glossary, 7th ed, p163) Controlled Vocabulary,Thesaurus,Controlled Thesauri,Controlled Thesaurus,Thesauri,Controlled Vocabularies,Thesauri, Controlled,Thesaurus, Controlled,Vocabularies, Controlled
D019295 Computational Biology A field of biology concerned with the development of techniques for the collection and manipulation of biological data, and the use of such data to make biological discoveries or predictions. This field encompasses all computational methods and theories for solving biological problems including manipulation of models and datasets. Bioinformatics,Molecular Biology, Computational,Bio-Informatics,Biology, Computational,Computational Molecular Biology,Bio Informatics,Bio-Informatic,Bioinformatic,Biologies, Computational Molecular,Biology, Computational Molecular,Computational Molecular Biologies,Molecular Biologies, Computational

Related Publications

Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
September 2009, BMC bioinformatics,
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
October 2006, JPMA. The Journal of the Pakistan Medical Association,
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
September 2010, Journal of neurosurgery,
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
July 2020, Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference,
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
January 2021, Methods in molecular biology (Clifton, N.J.),
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
September 2023, BMJ supportive & palliative care,
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
January 2022, Tzu chi medical journal,
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
January 2021, PeerJ. Computer science,
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
February 2021, Journal of biomedical materials research. Part B, Applied biomaterials,
Jingshan Huang, and Jiangbo Dang, and Michael N Huhns, and W Jim Zheng
July 1996, The British journal of psychiatry : the journal of mental science,
Copied contents to your clipboard!