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Mathematical modeling and big data analytics in biomedicine

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dc.contributor.author Brusic, V.
dc.date.accessioned 2015-10-22T12:13:34Z
dc.date.available 2015-10-22T12:13:34Z
dc.date.issued 2014
dc.identifier.uri http://nur.nu.edu.kz/handle/123456789/426
dc.description.abstract The World's total data is doubling every two years. Data expansion includes growth in quantity, complexity, and types of data. The enormous rate of generation and on-line access to data is profoundly changing the way how business is conducted. Biomedical data include research and development data, clinical data, activity and cost data, patient behavior data, basic science data, and standards and ontologies, among others. Furthermore, Big Data approaches are increasingly needed for utilization of results from various Omics studies. Specific applications include predictive and content analytics that support drug discovery and optimization, the development of new diagnostic methods, and personalization of medicine. Biomedical data vary in granularity, quality, and complexity. There is a variety of sources and data formats - web pages, publications, technical reports, and databases. The challenge is to make the transition from data to actionable knowledge. ru_RU
dc.language.iso en ru_RU
dc.publisher Nazarbayev University ru_RU
dc.subject biomedical data ru_RU
dc.subject mathematical modeling ru_RU
dc.subject data formats ru_RU
dc.subject T-cell immunome ru_RU
dc.subject big data analysis ru_RU
dc.title Mathematical modeling and big data analytics in biomedicine ru_RU
dc.type Abstract ru_RU


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