Biological Ontologies and Semantic Biology

Biological Ontologies and Semantic Biology
Author: John Hancock
Publsiher: Frontiers Media SA
Total Pages: 107
Release: 2014-10-03
Genre: Biotechnology
ISBN: 9782889192779

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As the amount of biological information and its diversity accumulates massively there is a critical need to facilitate the integration of this data to allow new and unexpected conclusions to be drawn from it. The Semantic Web is a new wave of web- based technologies that allows the linking of data between diverse data sets via standardised data formats (“big data”). Semantic Biology is the application of semantic web technology in the biological domain (including medical and health informatics). The Special Topic encompasses papers in this very broad area, including not only ontologies (development and applications), but also text mining, data integration and data analysis making use of the technologies of the Semantic Web. Ontologies are a critical requirement for such integration as they allow conclusions drawn about biological experiments, or descriptions of biological entities, to be understandable and integratable despite being contained in different databases and analysed by different software systems. Ontologies are the standard structures used in biology, and more broadly in computer science, to hold standardized terminologies for particular domains of knowledge. Ontologies consist of sets of standard terms, which are defined and may have synonyms for ease of searching and to accommodate different usages by different communities. These terms are linked by standard relationships, such as “is_a” (an eye “is_a” sense organ) or “part_of” (an eye is “part_of” a head). By linking terms in this way, more detailed, or granular, terms can be linked to broader terms, allowing computation to be carried out that takes these relationships into account.

Introduction to Bio Ontologies

Introduction to Bio Ontologies
Author: Peter N. Robinson,Sebastian Bauer
Publsiher: CRC Press
Total Pages: 514
Release: 2011-06-22
Genre: Computers
ISBN: 9781439836668

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Introduction to Bio-Ontologies explores the computational background of ontologies. Emphasizing computational and algorithmic issues surrounding bio-ontologies, this self-contained text helps readers understand ontological algorithms and their applications.The first part of the book defines ontology and bio-ontologies. It also explains the importan

Semantic Web

Semantic Web
Author: Christopher J. O. Baker,Kei-Hoi Cheung
Publsiher: Springer Science & Business Media
Total Pages: 449
Release: 2007-04-14
Genre: Science
ISBN: 9780387484389

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This book introduces advanced semantic web technologies, illustrating their utility and highlighting their implementation in biological, medical, and clinical scenarios. It covers topics ranging from database, ontology, and visualization to semantic web services and workflows. The volume also details the factors impacting on the establishment of the semantic web in life science and the legal challenges that will impact on its proliferation.

Bio Ontologies

Bio Ontologies
Author: Bijan Parsia,Michel Dumontier
Publsiher: Wiley
Total Pages: 400
Release: 2013-03-25
Genre: Medical
ISBN: 047050496X

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This invaluable book covers the opportunities and challenges in building HCLS ontologies and looks at state of the art and future opportunities. Primarily focused on OWL2, the most popular ontology language, it utilizes case studies to help illustrate lessons learned through concrete examples. The definitive guide for the design and use of expressive bio-ontologies compatible with the rapidly evolving Semantic Web, this book will be the go-to resource for practicing professionals and researchers in the field.

The Ontology of Physics for Biology

The Ontology of Physics for Biology
Author: Daniel L. Cook,John H. Gennari,Maxwell L. Neal
Publsiher: CRC Press
Total Pages: 241
Release: 2023-12-15
Genre: Science
ISBN: 9780429892332

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This book introduces semantic representations of multiscale, multidomain physiological systems that link to qualitative reasoning and to quantitative analysis of biophysical processes in health and disease. Two major public health problems, diabetes and hypertension, serve as use-cases to illustrate the depth and rigor of such representations for logical inference and quantitative analysis. Central to this approach is the Ontology of Physics for Biology (OPB) that formally represents the foundations of classical physics and engineering system dynamics that are the basis for our understanding of biomedical entities, processes, and functional relationships. Furthermore, we introduce OPB-based software for annotating and abstracting available biosimulation models for reuse, recombination, and for archiving of physics-based biomedical knowledge. We have formalized and leveraged physics-based biological knowledge as a working view of physiology and biophysics from three distinct perspectives: (1) biologists and biomedical investigators, (2) biophysicists and bioengineers, and (3) biomedical ontologists and informaticists. We present a logical and intuitive semantics of classical physics as a tool for mediating and translating biophysical knowledge among biomedical domains. Daniel L. Cook, MD, PhD John H. Gennari, PhD Maxwell L. Neal, PhD

Data Mining in Biomedicine Using Ontologies

Data Mining in Biomedicine Using Ontologies
Author: Mihail Popescu,Dong Xu
Publsiher: Artech House
Total Pages: 279
Release: 2009
Genre: Medical
ISBN: 9781596933712

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Presently, a growing number of ontologies are being built and used for annotating data in biomedical research. Thanks to the tremendous amount of data being generated, ontologies are now being used in numerous ways, including connecting different databases, refining search capabilities, interpreting experimental/clinical data, and inferring knowledge. This cutting-edge resource introduces you to latest developments in bio-ontologies. The book provides you with the theoretical foundations and examples of ontologies, as well as applications of ontologies in biomedicine, from molecular levels to clinical levels. You also find details on technological infrastructure for bio-ontologies. This comprehensive, one-stop volume presents a wide range of practical bio-ontology information, offering you detailed guidance in the clustering of biological data, protein classification, gene and pathway prediction, and text mining. More than 160 illustrations support key topics throughout the book.

Ontologies for Bioinformatics

Ontologies for Bioinformatics
Author: Kenneth Baclawski,Tianhua Niu
Publsiher: Unknown
Total Pages: 448
Release: 2006
Genre: Computers
ISBN: UOM:39015063182078

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Ontologies as a critical framework for the vast amounts of data in the postgenomic era: an introduction to the basic concepts and applications of ontologies and ontology languages for the life sciences. Recent advances in biotechnology, spurred by the Human Genome Project, have resulted in the accumulation of vast amounts of new data. Ontologies--computer-readable, precise formulations of concepts (and the relationship among them) in a given field--are a critical framework for coping with the exponential growth of valuable biological data generated by high-output technologies. This book introduces the key concepts and applications of ontologies and ontology languages in bioinformatics and will be an essential guide for bioinformaticists, computer scientists, and life science researchers.The three parts of Ontologies for Bioinformatics ask, and answer, three pivotal questions: what ontologies are; how ontologies are used; and what ontologies could be (which focuses on how ontologies could be used for reasoning with uncertainty). The authors first introduce the notion of an ontology, from hierarchically organized ontologies to more general network organizations, and survey the best-known ontologies in biology and medicine. They show how to construct and use ontologies, classifying uses into three categories: querying, viewing, and transforming data to serve diverse purposes. Contrasting deductive, or Boolean, logic with inductive reasoning, they describe the goal of a synthesis that supports both styles of reasoning. They discuss Bayesian networks as a way of expressing uncertainty, describe data fusion, and propose that the World Wide Web can be extended to support reasoning with uncertainty. They call this inductive reasoning web the Bayesian web.

Information Theoretic Evaluation for Computational Biomedical Ontologies

Information Theoretic Evaluation for Computational Biomedical Ontologies
Author: Wyatt Travis Clark
Publsiher: Springer Science & Business Media
Total Pages: 50
Release: 2014-01-09
Genre: Computers
ISBN: 9783319041384

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The development of effective methods for the prediction of ontological annotations is an important goal in computational biology, yet evaluating their performance is difficult due to problems caused by the structure of biomedical ontologies and incomplete annotations of genes. This work proposes an information-theoretic framework to evaluate the performance of computational protein function prediction. A Bayesian network is used, structured according to the underlying ontology, to model the prior probability of a protein's function. The concepts of misinformation and remaining uncertainty are then defined, that can be seen as analogs of precision and recall. Finally, semantic distance is proposed as a single statistic for ranking classification models. The approach is evaluated by analyzing three protein function predictors of gene ontology terms. The work addresses several weaknesses of current metrics, and provides valuable insights into the performance of protein function prediction tools.