Difference between revisions of "Manuscript Details"
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− | |title=A Semantic Problem Solving Environment for Integrative Parasite Research: Identification of Intervention Targets for Trypanosoma cruzi. | + | |title=A Semantic Problem Solving Environment for Integrative Parasite Research: Identification of Intervention Targets for ''Trypanosoma cruzi''. |
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− | Research in the parasite domain requires analyzing experimental lab data along with relevant public data resources. This task is difficult for biologists who may not possess adequate computational skills to process all the data that are in different format and stored at different locations. We, therefore, developed an intuitive and easy to use semantic problem solving environment (SPSE) for parasite research where researchers may query their lab data that is integrated with public data resources using ontologies. Other features of SPSE include integrated support for capturing and querying provenance information, and a visual query-processing tool that allows biologists to formulate complex queries without learning the query language syntax. We demonstrate the significance of SPSE by using it to query integrated data to identify gene knockout and/or other intervention (i.e., drug or vaccination) targets for T. cruzi. These queries help parasite researchers discover new or existing knowledge, which is implicitly present in the data. The evaluation results of the SPSE demonstrate improved usability than existing systems/approaches and support for design of complex queries, which was not present earlier. | + | Research in the parasite domain requires analyzing experimental lab data along with relevant public data resources. This task is difficult for biologists who may not possess adequate computational skills to process all the data that are in different format and stored at different locations. We, therefore, developed an intuitive and easy to use semantic problem solving environment (SPSE) for parasite research where researchers may query their lab data that is integrated with public data resources using ontologies. Other features of SPSE include integrated support for capturing and querying provenance information, and a visual query-processing tool that allows biologists to formulate complex queries without learning the query language syntax. We demonstrate the significance of SPSE by using it to query integrated data to identify gene knockout and/or other intervention (i.e., drug or vaccination) targets for ''T. cruzi''. These queries help parasite researchers discover new or existing knowledge, which is implicitly present in the data. The evaluation results of the SPSE demonstrate improved usability than existing systems/approaches and support for design of complex queries, which was not present earlier. |
− | Below we mention all three queries along with Cuebee demo that shows how complex SPARQL queries can be formulated with | + | Below we mention all three queries along with Cuebee demo that shows how complex SPARQL queries can be formulated easily with minimal skills and ontology background. |
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Revision as of 19:35, 11 July 2011
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