Integration of large datasets for plant model organisms

نویسندگان

  • Yves Sucaet
  • Basil Nikolau
  • Shashi K. Gadia
  • David Fernandez-Baca
چکیده

This dissertation is concerned with bioinformatics data integration. The first chapter illustrates the current state of biological pathway databases in general, and in particular, plant pathway databases. Key studies are cited to illustrate the potential benefits that may come from further research into integration methods. Different models are explored to interface with the various stakeholders of biological data repositories. A public website (http://www.metnetonline.org) was built to address the role of a bioinformatics data warehouse as a server for external third parties. A dedicated API (MetNetAPI: http://www.metnetonline.org/api) accommodates bioinformaticians (and software developers in general) who wish to build advanced applications on top of MetNet. The API (implemented as .NET and Java libraries) was designed to be as user-friendly to programmers, as the public website is to end-users. Finally, a hybrid model is examined: the use of XML as a repository for information integration, downstream processing, and data manipulation. An overview of the use of XML in biological applications is included. MetNetAPI functions according to certain principles; a subset of the API is abstracted and implemented to interface with a range of other public databases. This results in a new bioinformatics toolkit that can be used to mix and match data from heterogeneous sources in a transparent manner. An example would be the grafting of protein-protein interaction data on top of araCyc pathways.

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تاریخ انتشار 2016